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PLOS ONE logoLink to PLOS ONE
. 2023 Feb 27;18(2):e0280441. doi: 10.1371/journal.pone.0280441

Patients’ preferences in dental care: A discrete-choice experiment and an analysis of willingness-to-pay

Susanne Felgner 1,*, Cornelia Henschke 1
Editor: Ted Loch-Temzelides2
PMCID: PMC9970100  PMID: 36848356

Abstract

Introduction

Dental diseases are a major problem worldwide. Costs are a burden on healthcare systems and patients. Missed treatments can have health and financial consequences. Compared to other health services, dental treatments are only covered in parts by statutory health insurance (SHI). Using the example of dental crowns for a cost-intensive treatment, our study aims to investigate whether (1) certain treatment attributes determine patients’ treatment choice, and (2) out-of-pocket payments represent a barrier to access dental care.

Methods

We conducted a discrete-choice-experiment by mailing questionnaires to 10,752 people in Germany. In presented scenarios the participants could choose between treatment options (A, B, or none) composed of treatment attribute levels (e.g., color of teeth) for posterior (PT) and anterior teeth (AT). Considering interaction effects, we used a D-efficient fractional factorial design. Choice analysis was performed using different models. Furthermore, we analyzed willingness-to-pay (WTP), preference of choosing no and SHI standard care treatment, and influence of socioeconomic characteristics on individual WTP.

Results

Out of n = 762 returned questionnaires (response rate of r = 7.1), n = 380 were included in the analysis. Most of the participants are in age group "50 to 59 years" (n = 103, 27.1%) and female (n = 249, 65.5%). The participants’ benefit allocations varied across treatment attributes. Aesthetics and durability of dental crowns play most important roles in decision-making. WTP regarding natural color teeth is higher than standard SHI out-of-pocket payment. Estimations for AT dominate. For both tooth areas, "no treatment" was a frequent choice (PT: 25.7%, AT: 37.2%). Especially for AT, treatment beyond SHI standard care was often chosen (49.8%, PT: 31.3%). Age, gender, and incentive measures (bonus booklet) influenced WTP per participant.

Conclusion

This study provides important insights into patient preferences for dental crown treatment in Germany. For our participants, aesthetic for AT and PT as well as out-of-pocket payments for PT play an important role in decision-making. Overall, they are willing to pay more than the current out-of-pockt payments for what they consider to be better crown treatments. Findings may be valuable for policy makers in developing measures that better match patient preferences.

Introduction

Understanding how patients assess various aspects of health care interventions is important for clinical, coverage, and policy decisions. As a result, considering patient preferences in health care decision-making and policy can improve utilization of interventions and public health programs, satisfaction with those, and patient adherence to finally improve effectiveness of health care services [1]. To identify preferences for various attributes of an intervention, stated preference methods such as the discrete-choice approach can be used, particularly to quantify stakeholders‘ preferences in health care. At the same time, this approach offers a mechanism for patients to participate in decision-making and may facilitate shared decision-making. In practice, the discrete-choice approach is also used to estimate willingness-to-pay for attributes, which is especially beneficial in the case of treatments where high co-payments may arise such as oral health services. Preferences of utilization of oral health services from patients’perspective have rarely been studied so far, although chronic and untreated dental diseases (e.g., caries) can lead to serious consequences such as pain, sepsis, reduced quality of life, and work productivity. This places a burden on patients in various aspects of their lives and on healthcare system in terms of capacity [2].

Although in Germany a broad range of oral health services is covered, high out-of-pocket payments may occur for patients. Regarding dentures, for instance, statutory health insurance (SHI) covers 60% of the standard care costs, which can be defined as broad coverage compared to other countries [3, 4]. Incentive measures, such as regular dental check-ups within the last five or ten years before respective treatment, may increase the SHI’s coverage [5]. Additionally, patients may take out private dental supplementary insurances to reduce out-of-pocket payments [6], and choose treatments beyond defined standard care. Nevertheless, perceived unmet needs in dental care still exist. Households with highest budget (fifth household budget quintile) take higher out-of-pocket payments than households with lowest budget (first household budget quintile) [7].

While costs of dental treatments seem to play a major role in patients‘ decision-making [8], the choice of a treatment may also be influenced by individual preferences regarding further attributes. Patients may value certain treatment attributes differently [9, 10], such as color of a dental crown. Former studies have investigated patient preferences for dentures [11], caries prevention measures [12], and willingness-to-pay for medical tourism [13]. We focus on a prosthodontic treatment–the placement of a full dental crown–due to high variability in options and costs to be borne by the patients themselves. In Germany, SHI covers a fixed subsidy of 50% (60% as of 10/2020) for standard treatment of dental crowns. The remaining 50% (40%) have to be paid out of pocket by patients, plus the difference of costs when choosing superior materials. The attributes out-of-pocket payment and aesthetics vary greatly between different dental crown treatments. These assumed (un)desirable attributes for patients move proportionally against each other, i.e., an aesthetically pleasing dental crown is expensive and vice versa. The SHI alternative may implicate an aesthetically unattractive result to patients (i.e., darker-colored not natural appealing dental crown). To our knowledge, this treatment has not yet been studied for the German health care system using an experimental approach. This study investigates patient preferences presented by benefit allocations to treatment attributes for dental crown treatments in Germany addressing the following research questions:

  1. To what extent do patients assign benefits to attributes of dental crown treatments and how does this influence their choice behavior?

  2. Can out-of-pocket payments be considered a barrier to patients‘ access when deciding for a dental treatment?

Methods

Discrete-choice experiments (DCE) are an established instrument particularly in health sciences [14] for measuring patient preferences in their choice behavior by estimating benefit assignments, and for calculating willingness-to-pay (WTP) taking out-of-pocket payments into account. Although, medical professionals usually recommend a treatment option, due to restricted coverage in oral health care services, final decisions are largely guided by patient preferences. A DCE is best suited to collect data for analyzing preferences of patients and their WTP. This is especially the case as patients have to decide between different treatment opportunities that come along with large variations in out-of-pocket payments. To analyze patient preferences, we therefore conducted a DCE. Furthermore, we analyzed overall (and individual) WTP to compare monetary value of respondents’ willingness-to-pay and the SHI out-of-pocket payment for each attribute. In addition, we conducted regression analyses to calculate the relationship between socio-economic and other characteristics of participants and defined decision variables. Descriptive analyses were used to illustrate quantitative results (S3, S4 and S6 Files).

Experimental design & questionnaire

Prior to the study, a systematic literature review [15] and focus group interviews [8] were conducted to identify attributes that influence patients in their choice for or against dental treatments. In the DCE dental treatments are presented as a combination of attribute levels in choice sets. As those attributes and levels should be plausible, and clinically relevant, being as realistic as possible [1618], we used most relevant treatment attributes identified. Levels for aesthetics, compatibility, durability [19], and out-of-pocket payment [5] were determined by research. We differentiate between two teeth areas "posterior teeth" (PT) and "anterior teeth" (AT), since different patient preferences can be assumed for it [20]. Attributes and levels were presented to (potential) participants in the questionnaire (S1 File: Questionnaire). For the attribute aesthetics, an extra document was created for visualization (S2 File: Document "Aesthetics"). Table 1 gives an overview of the treatment attributes and its levels.

Table 1. Treatment attributes and its levels.

Attribute Definition Levels
1. Aesthetics In terms of appearance, result of treatment individually perceived as beautiful. This attribute describes the visibility of a dental crown. ✓ Natural color
✓ Lightly visible
✓ Strongly visible
2. Compatibility Intolerance reaction of human body due to dental material in form of an allergic or a local toxic reaction1. ✓ No risk
✓ 1 out of 10,000 people with allergic or local toxic reaction
3. Durability Expected length of time from completion of a treatment to another new treatment that is medically or technically necessary. ✓ 5 years
✓ 10 years
✓ 15 years
✓ 25 years
4. Out-of-pocket payment Costs that must be paid by patient for dental crown treatment. The co-payment taken by health insurance has already been subtracted here. Posterior teeth
✓ 50 €
✓ 150 €
✓ 450 €
✓ 600 €
Anterior teeth
✓ 50 €
✓ 200 €
✓ 450 €
✓ 600 €

1 In rare cases (1 in 10,000 people), an intolerance reaction, i.e., an allergic or local toxic reaction, may occur. Allergies are characterized by symptoms such as dry mouth, toothache, and receding gums to discomfort in the throat, lip eczema or rash on the face. Local toxic reactions are non-allergic inflammations of the oral mucosa in the immediate vicinity of the tooth crown. In the cases described, depending on the severity of the clinical symptoms, the "problematic material" must be replaced or (the dental crown) removed completely.

Considering four attributes (x1-x4) with 3, 2, 4, and 4 levels, n = 9,216 possible choice sets resulted in a full factorial design (3x2x4x4 = 96; 96x96). Since this cannot be answered by an individual participant, a fractional factorial design was used [21] (S1 Table: Design output). Aiming at a 100% D-efficient design [21], and assuming interaction effects between the attributes x1 and x4, and x3 and x4, n = 96 choice sets were necessary (S2 Table: Calculation of D-efficiency). Ensuring that the questionnaire was manageable for our study participants [1], n = 12 questionnaire blocks were formed and randomly assigned to the participants [17]. For the design calculation we used the statistical software SAS (version 9.2). The %ChoicEff macro was used to create the experimental design, considering interactions as constraints via restrictions = option, and the %MktEx macro was used to create the choice sets. Blocked design was realized via the %mktblock macro [22].

The paper-based questionnaire was divided into an introductory part including the informed consent and explaining information on attributes and levels (part A), the choice scenarios (choice sets) to be answered by the participants (part B), and questions regarding the participants‘ (socioeconomic) characteristics (part C). Alternatives of dental crown treatment were presented in eight choice sets each, separated in part B1 focusing on PT and B2 on AT. Studies report that experiments including up to n = 32 scenarios are manageable by participants [1, 23]. This is in line with our study using n = 18 choice scenarios per questionnaire: n = 8 choice sets each for PT and AT, plus two additional sets to test reliability ("double question") and validity ("clear question") of responses (T = (2x8)+2 = 18). For the "clear question", the two-alternative-choice sets included only the best vs. worst attribute levels (e.g., 25 vs. 5 years durability). It can be assumed that only participants who understood the questionnaire’s content correctly answered this question appropriately. The participants were asked to select their preferred alternative with its attributes and levels.

In reality, and particularly in health care, individuals face non-binary multiple choices [24]. For this reason, we created choice sets consisting of two unlabeled alternatives (A & B), and the option of "no treatment (opt-out)". An unlabeled design allowed us to assign attributes to the alternatives without being oriented to a defined treatment [25], and intended to reduce a possible bias. Including opt-out was necessary to create real life scenarios, and to explore patients‘ reasons against a treatment [25]. An example of a choice set can be seen in Table 2. Collected participants‘ (socioeconomic) characteristics are, e.g., age, income, insurance and oral health status. Furthermore, importance of the four treatment attributes was assessed for PT and AT via a 5-point Likert scale (dimension: very important–not important).

Table 2. Example of choice set.

1. Choice "anterior teeth"
Attributes Treatment A Treatment B
1. Aesthetics strongly visible natural color
2. Compatibility 1 out of 10,000 people with allergic or local toxic reaction no risk
3. Durability 10 years 25 years
4. Out-of-pocket payment 50 € 200 €
I choose … … treatment A.
ο
… treatment B.
ο
… none of the treatments.
ο

Data collection

The study was conducted in the German federal states Berlin and Brandenburg. Since it is more likely for patients at a more mature age to have experiences with dental crown treatments and to have significant financial resources of their own [13, 26], we addressed people aged 30 and older. We aimed at an equal distribution of urban and rural population. By prevailing conditions, number of districts and counties in these areas are similar [27]. Household incomes in Berlin and Brandenburg are the same overall and are approximately equally distributed among Brandenburg’s counties [28], with incomes in both states close to the national average [29]. Furthermore, we aimed at women and men equally distributed. In compliance with the European General Data Protection Regulation, address data of potential participants, considering the minimum age and an equal gender distribution, were requested according to §34 of the Federal Registration Act from residents’ registration offices of the city of Berlin and selected counties in Brandenburg. For organizational reasons, the study’s catchment area was limited to these states. For the state of Brandenburg, one registration office per district was randomly selected. The number of contacted registration offices was thus limited to at least 19 institutions. Potential participants, either from urban or rural areas, were randomly assigned to one of the twelve questionnaire blocks using the Software RStudio.

We used the rule of thumb by Orme [30] ((n x t x a)/c > = "500 to 1,000") to determine the sample size n for the DCE, creating a (minimum) recommended level of participants. For calculating the number of choice sets (t), the number of treatment alternatives per choice set (a), and the highest number of levels (c) were considered: t(A) = t(B) = 8, a = 2, and c = 3x4 = 12. The calculated sample size was n = 750 (minimum n = 375). Assuming a response rate of questionnaires of r = 7% resulting from further studies experiences at our department, the calculated number of questionnaires was n = 10,715. Rounding up the results and considering an equal distribution of questionnaires among urban and rural areas, a total of n = 10,752 questionnaires were sent out by mail.

Before the survey start, a pretest was conducted with n = 15 participants of diverse educational backgrounds and ages. Based on this, a few minor linguistic corrections for the questionnaire’s comprehensibility followed and a processing time of about 20 minutes was set. The final survey included the following documents: (1) questionnaire and cover letter, declaration of participation, and participant information, (2) extra document "Aesthetics", and (3) free-return envelope addressed to the department. As an incentive for participating in pretest and survey, 20 shopping vouchers of 50 € each, were raffled in a lottery. This study was approved by the ethics committee of the Charité Universitätsmedizin Berlin (application no. EA4/109/19).

Data editing & coding

According to predefined criteria, completed questionnaires were included for further consideration if (i) the declaration of participation was confirmed. Questionnaires were excluded, when (ii) failing the plausibility check: (a) "double question" was not answered in the same way, and (b) "clear question" was answered irrationally. Furthermore, questionnaires were excluded if (iii) >50% of the choice sets were not answered in section B1 and B2, (iv) the participants did not answer the question on their age or with "under 30 years", (v) the question on insurance coverage was not answered, or with "I don’t know", or "private health insurance", and (vi) the question on gender was not answered.

Regarding choice analysis the data set was effect coded which is recommended when an opt-out alternative is used [31]. Negative levels were selected as reference levels (and positive for WTP analysis) assuming to be unattractive for patients, i.e., strongly visible, risk of incompatibility, shortest duration (5 years), and highest costs (600 €). The reference level was coded with a value of -1. For all attributes of the opt-out, the very low value "-9999" was set because sum of benefit values would result in zero [32]. For calculation of the WTP over all participants the cost attribute was not effect coded but had continuous coding for more interpretable values [33]. For further analyses single variables were dummy coded, e.g., gender.

Since individual WTP cannot be estimated within a DCE [34], we defined a variable WTPmax_PT and _AT presenting the highest level value of the attribute out-of-pocket payment for a chosen treatment alternative across all alternatives per participant and teeth area. If opt-out was selected, we considered 0 €. To examine patients‘ behavior with respect to their choice between (I) "treatment" and opt-out, and (II) "SHI standard care" and "treatment beyond SHI standard care (SHI+)", we created further dependent variables as part of the choice analysis and depicted frequencies per participant and teeth area. The variable for "treatment" comprised the frequency of chosing treatment A or B in the choice set and "no treatment" comprised choice of opt-out. In the variable "SHI+" only choice sets with levels >SHI standard care of the attributes aesthetics and out-of-pocket payment were included: (a) lightly visible or natural color, and 450 € or 600 € for PT, and (b) natural color, and 450 € or 600 € for AT. Combinations of these levels are given in some choice sets of each questionnaire block.

Choice analysis & willingness-to-pay analysis

In Lancaster’s [35] and McFadden’s [36] random utility theory, it is assumed that the actual utility of a choice set is not directly observable. The total utility of a set is composed of observable and non-observable components. It is assumed that an individual chooses the alternative with a combination of attributes from which she or he has the greatest utility over the other selectable alternatives. An indirect utility function was estimated that represents the expected observable utility (V) for a person, and is composed of a combination of (non-)observable random components as error term (ε) [3739]. We specified the following utility function, in which the participants’ preferences for the attributes are captured and different utility allocations among attributes can be examined as a function of the participants‘ (socioeconomic) characteristics. The utility function V for individual i and alternative j in choice set s is to be expressed, in terms of the attributes of the alternatives (X) and characteristics of the participants (Z), as:

Uijs=Vijs+εijs=Xijs'ßj+Zi'γ+εijs

We assume the non-observable component is parametrically distributed and thus use a probalistic analysis of individual choice behavior [38]. The probability of choosing between given alternatives (J) is as follows:

Pij=ProbUji>UJiJj=Prob(Vji+εji>VJi+εJiJj)

Assuming that the error term is extreme-distributed, the probability of choosing alternative j, presenting the standard logit specification [38], is:

Lij=eßxijJeßxiJ

letting

Vji=ßxij

The model of utility for an individual i choosing a treatment alternative j can be estimated as:

Uijs=βaestheticsijs+βcompatibilityijs+βdurabilityijs+βoutofpocketpaymentijs+εijs

The utility appears as random, i.e., we cannot predict the choice. However, if we know the distribution of the random element, we can derive the probability of a choice. Depending on the assumptions for ε different analysis models must be applied. According to Bekker-Grob et al. [40], different restrictions have to be considered for each model. All analyses were performed using STATA software (version 15).

We first estimated a conditional logit model (CLM) to analyze how attributes determine the treatment choice. Basis for this analysis are constant choice sets per individual with varying attributes levels across alternatives as descriptive variable [41]. The CLM accounts for observed preference heterogeneity by including participants’ characteristics (Z variables) [25]. Assuming that the utility of each alternative depends on its attributes, CLM models the influence of attributes that vary between alternatives on the selection probability regardless of alternatives (A, B, or opt-out) [42]. In addition, interactions in participants‘ (socioeconomic) characteristics can be considered. However, the CLM has some restrictions: it does not account for unobserved heterogeneity resulting from differences in preferences among participants with the same characteristics or random choices [25]. It models the choice between alternatives as a function of the alternatives’ attributes but not of characteristics of the person making the choice [41]. Furthermore, CLM is making strong assumptions, i.e., independence of single, and irrelevant alternatives [Independence of Irrelevant Alternatives (IIA)] [36, 43]. The IIA describes the ratio of choice probability of two alternatives unaware of other alternatives. However, some alternatives vary more, and some are more similar in the choice sets of our study due to its design. These assumptions must be considered when data has panel character, e.g., participants making multiple choices [44], as it is the case in our study. These model characteristics and disadvantages were countered using other models. For CLM analysis the clogit command was used [45].

Second, we considered a mixed logit model (MXL) working with random parameters that vary between individuals to circumvent the IIA. The MXL allows for an estimation in which the independent assumption is violated by assuming that there is no independence in the choice behavior due to multiple choices by individual participants [25, 46]. It considers the alternatives’ attributes and characteristics of the individuals [41]. The MXL estimates a distribution around each mean preference parameter to avoid potential bias in the estimated mean preference weights due to unobserved heterogeneity [47]. In our calculations, we did not include participant characteristics in the explainable component V but used the MXL to estimate random parameters. This allowed us to account for random variation across participants, i.e., heterogeneity, of unobserved participant characteristics [48]. Random heterogeneity is evident from significant standard deviations per model parameter [49]. The calculations were performed using the mixlogit command [50].

Third, we estimated a generalized multinomial logit model (G-MNL) developed by Fiebig et al. [51]. This model provides for more flexible distributions, and accounts for unobserved preference heterogeneity by including random parameters into calculation, as well as scale heterogeneity [52]. Scale heterogeneity implies that choice behavior is more random for some individuals than for others [53]. Results of the G-MNL must be interpreted to allow for a more flexible distribution of confounded preference and scale heterogeneity, rather than estimating scale separately [25]. For G-MNL analysis we used the gmnl command [53].

Quality of all models was assessed using Akaike’s and Schwarz’ Bayesian information criterion (AIC and BIC) (and LL–log likelihood) [25]. The AIC estimates the amount of lost information of a model, and the BIC additionally adapts to the sample size [54]. AIC and BIC should therefore be as low as possible [55]. The most suitable model was chosen.

Based on the results of that model the WTP was calculated. WTP represents the amount of a cost attribute an average participant is willing to pay for one unit of an attribute in relation to the reference level [56]. In these linear models where each attribute in the utility function is associated with a single weight, the ratio of the two utility parameters was used to estimate the WTP. The following function calculates the participants‘ WTP, where βia is a coefficient on one focused attribute "a", and βib is a coefficient on the cost attribute "b" [57, 58], which is out-of-pocket payment in our study:

WTP=ßia/ßib

Furthermore, an estimation on alternative specific constants (ASC) was done via an ASC-logit model (ASCL) allowing us to include the individual characteristics as independent variables in the analysis. The aim was to examine the influence of regulatory instruments, participants‘ (socioeconomic) characteristics, and the importance of attributes on choice for or against a treatment at all ("treatment" vs. opt-out), and a SHI+ treatment. For the latter analysis, only choice sets representing exactly these treatments as a combination of levels were considered. Therefore, the number of choices is lower here. For analysis we used the asclogit command [59].

Regression analyses were performed to determine the influence of participants’ socioeconomic characteristics [age, gender, income, employment status, residence (urban or rural)], treatment attributes, a bonus booklet, supplementary dental insurance, and its combination on the decision variables individual WTPmax, frequency of choosing opt-out and a SHI+ treatment. Analyses were conducted as follows: correlation analysis for refinement of subsequent multiple regression analysis, and graphical presentation of relevant categorial variables.

Results

Response rate and participants‘ characteristics

We received n = 762 questionnaires ensuring the response rate of r = 7.1%. According to our in-/exclusion criteria, data sets had to be excluded from further consideration. Fig 1 gives an overview on numbers of selected questionnaires and data sets regarding criteria. Finally, n = 380 data sets could be included in the analysis. We were thus above the minimum required number of participants (see chapt. 2.2). Most of the participants belong to age group "50 to 59 years" (n = 103, 27.1%). The majority is female (n = 249, 65.5%), has a university degree (n = 166, 43.7%), and is employed full-time (n = 173, 45.5%). Medium and low household incomes are most common (Table 3). Most of the participants indicated not having a dental supplementary insurance (n = 256, 67.4%). In contrast, a large proportion of our participants indicated having a bonus booklet (n = 329, 86.6%). Regarding their oral health, a large proportion of the participants stated to have a "good" (n = 170, 44.7%) or "very good" (n = 34, 9.0%) self-perceived status. Some participants (n = 49, 12.9%) had already decided against dental crown treatment in the past due to high costs (n = 17, 36.2%), or they considered a dental crown treatment as "unnecessary" (n = 14, 29.8%). Further reasons include questioning tooth preservation, and allergies (S3 File: Participants‘ reasons against a dental crown). Aditionally, majority of the participants (n = 238, 62.6%) indicated that they would always decide against a strong visible dental crown. Only a few would choose darker colors (golden-metal: n = 23, 29.9%; dark grey metallic: n = 6, 7.8%) (S4 File: Participants‘ decision for dental crown color). On average, it took the participants 18.5 minutes (range: 4–90min) to complete the questionnaire (S3 Table: Results on questions–Questionnaire Part C; S5 File: Codebook of analysis).

Fig 1. Selection of questionnaires and data sets, numbers regarding citeria.

Fig 1

Table 3. Participants‘ characteristics.

Participants’ characteristics Total n = 380 (100%)
Age 30 to 39 years 68 (17.89)
40 to 49 years 51 (13.42)
50 to 59 years 103 (27.11)
60 to 69 years 75 (19.74)
70 to 79 years 43 (11.32)
80 to 89 years 18 (4.74)
90 years and older 1 (0.26)
no answer / not clear 21 (5.53)
Gender Female 249 (65.53)
Male 130 (34.21)
Other 1 (0.26)
Residence urban region 203 (53.42)
rural region 177 (46.58)
Education (technical) university degree 166 (43.68)
vocational training 115 (30.26)
(technical) A-level 22 (5.79)
high school diploma– 10 years 26 (6.84)
high school diploma– 9 years 13 (3.42)
Other 3 (0.79)
no answer / not clear 35 (9.21)
Employment full-time 173 (45.53)
part-time 54 (14.21)
university/college student (not employed) 1 (0.26)
Unemployed 11 (2.89)
retirement due to illness 16 (4.21)
retirement due to age 95 (25.00)
Other 13 (3.42)
no answer / not clear 17 (4.47)
Income (household/month) under 500 € 8 (2.11)
500 to under 1,500 € 48 (12.63)
1,500 to under 2,500 € 124 (32.63)
2,500 to under 4,500 € 152 (40.00)
4,500 to under 6,500 € 48 (12.63)
over 6,500 € 6 (1.58)
no answer / not clear 26 (6.84)

Importance of treatment attributes

Regarding the importance of the four treatment attributes, durability (PT: n = 274, 72.1%; AT: n = 263, 69.2%) and compatibility (PT: n = 197, 51.8%; AT: n = 216, 56.8%) are assessed "very important" by our participants. Also, assessment of out-of-pocket payment is equally given for both teeth areas. The picture changes for the assessment of aesthetics. For PT aesthetics was assessed least as "very important" (n = 26, 6.8%) by our participants, and for AT it is most frequently given (n = 290, 76.3%) (S6 File: Importance of treatment attributes assessed by participants).

Results of discrete-choice, willingness-to-pay, and regression analysis

Estimations using the different models have produced different AIC and BIC. Lowest coefficient values were calculated for the MXL model (AIC/BIC PT: 5,176/5,312; AT: 4,692/4,827). Since MXL also makes the realistic acceptable assumption of including random parameters, we considered these results. For this reason, we have also performed the WTP calculation based on the MXL using the wtp command [57]. The "no. of observations" in the (appendix) tables do not refer to the population sample size, but to the dataset rows included in the analyses, and therefore vary between the models. Rows with missings, and of non-relevant choice sets (e.g., SHI levels in ASCL) were excluded. Single G-MNL results are presented in the following (S4 Table: Coefficients of G-MNL estimations, including marginal effects; S5 Table: Coefficients of CLM estimations, including marginal effects).

(i.) Discrete-choice-models

The participants preferred lightly visible (Coef.: 0.687, p<0.01) and natural color PT (Coef.: 1.290, p<0.01) compared to a strongly visible color of the teeth. The probability of choosing natural color instead of lightly visible teeth is almost four times larger compared to the reference level, measured by marginal effects [dy/dx: 1.247, p<0.01; vs. lightly visible (dy/dx: 0.334, p<0.01)]. In addition, the participants preferred a treatment without risk of incompatibility (Coef.: 0.465, p<0.01). A durability of 25 years was associated with higher preferences by our participants compared to other levels [Coef.: 1.540, p<0.01; e.g., vs. 15 years (Coef.: 0.477, p<0.01)]. The participants preferred low out-of-pocket payments, e.g., 50 € (Coef.: 0.776, p<0.01) and 150 € (Coef.: 0.965, p<0.01).

The results are similar for AT. Lightly visible (Coef.: 1.026, p<0.01) and natural color teeth (Coef.: 3.392, p<0.01) are assigned higher preferences than compared to strongly visible crowns. Similarly, no-risk treatments regarding compatibility (Coef.: 0.200, p<0.05) are assigned higher preferences by the participants, as well as for the longest durability of 25 years (Coef.: 0.835, p<0.01).

Comparing the results of both teeth areas, aesthetics of the AT can be considered more important for the participants since the probability of choosing a natural color crown is approximately three times higher than for the PT compared to the reference level according to marginal effects results [dy/dx: 3.449, p<0.01; vs. PT (dy/dx: 1.247, p<0.01)]. For teeth in both teeth areas, no-risk treatments and the highest possible durability of 25 years are preferred by the participants. The preferred out-of-pocket payment corresponds to the co-payment of current SHI standard care, for PT and AT. Considering all coefficients, the level natural color for AT stands out. Overall, this level of the attribute aesthetics is preferred by the participants in their decision-making. Coefficients of the MXL model for PT can be seen in Table 4 (S6 Table: Coefficients of MXL estimations for anterior teeth, S7 Table: Marginal effects of MXL estimations).

Table 4. Coefficients of the MXL model.
Mixed logit model (MXL)
Posterior teeth
Attributes (Ref. negative levels) Levels Coef. Std. Err. t-value (z) p-value (P>|z|) [95% Conf. interval] Sig.
Aesthetics strongly visible–reference level
lightly visible 0.687 0.103 6.680 0.000 0.485 0.888 ***
natural color 1.290 0.113 11.410 0.000 1.068 1.512 ***
Compatibility 1 out of 10,000 people with allergic or local toxic reaction–reference level
no risk 0.465 0.086 5.400 0.000 0.296 0.634 ***
Durability 5 years–reference level
10 years 0.159 0.121 1.310 0.189 -0.078 0.395
15 years 0.477 0.112 4.270 0.000 0.258 0.695 ***
25 years 1.540 0.140 11.000 0.000 1.266 1.815 ***
Out-of-pocket payment 600 €–reference level
450 € 0.191 0.113 1.690 0.091 -0.030 0.411 *
150 € 0.965 0.107 9.000 0.000 0.755 1.175 ***
50 € 0.776 0.130 5.960 0.000 0.521 1.031 ***
Log likelihood -2,569.2494 (Iteration 8)
Prob > chi2 0.0
LR chi2(9) 459.8
No. of observations 9,039

AIC / BIC (Akaike’s & Schwarz’s Bayesian information criteria): 5,176 / 5,312

*** p < .01,

** p < .05,

* p < .1

(ii.) ASC-logit models

(ii.1) Analysis of choice between "treatment" and "no treatment (opt-out)". For PT, the opt-out alternative, i.e., no treatment, was selected in 25.7% (n = 774) of the choice scenarios by the participants [AT: 37.2% (n = 1,122)]. A combination of bonus booklet and supplementary dental insurance increases the likelihood of choosing a treatment (Coef. PT: 0.335, AT: 0.377; p<0.05). This is also true for higher aged participants (Coef. PT: 0.119, AT: 0.087; p<0.01), being a resident of an urban region (Coef. PT: 0.131, AT: 0.129; p<0.01), and for an increased importance of the attribute aesthetics (Coef. PT: 0.154, p<0.01; AT: 0.1, p<0.05). Furthermore, gender, bonus booklet, and importance of out-of-pocket payments have an impact on our participants’ choice behavior.

(ii.2) Analysis of choice between "SHI standard care" and "treatment beyond SHI standard care (SHI+)". In 31.3% (n = 480) of the choice scenarios for PT, in which a decision could be made between a SHI+ treatment versus treatment below standard care (n = 1,533 decisions in total), the participants chose SHI+. This occurred more frequently for AT: in 49.8% (n = 449) of the decisions (n = 902 in total) they decided for SHI+. As the importance of the attribute aesthetics increases, the participants decided against SHI standard care for teeth of both teeth areas and favored treatments beyond that (Coef. PT: -0.243, p<0.01; AT: -0.18, p<0.05). For AT, the participants chose SHI standard care as the importance of out-of-pocket payments increases (Coef.: 0.17, p<0.1). Regression analysis was additionally performed with the same dependent variables (see chapt. 3.1.iv.) [S8 Table: Coefficients of ASCL estimations "treatment" vs. "no treatment (opt-out)", S9 Table: Coefficients of ASCL estimations "SHI standard care" and "treatment beyond SHI standard care (SHI+)"].

(iii.) Willingness-to-pay

For PT, the out-of-pocket payment of SHI standard care is set at 150 €. For the attributes aesthetics (strongly visible) and compatibility (risk) levels, there is no participants’ willingness-to-pay. Regarding a durability of 15 years, WTP is higher (258 €). Considering attributes‘ most positive "high quality" treatment levels, we see the following: for natural color teeth, the WTP is 380 €, for a treatment without risk of incompatibility, the participants are willing to pay 162 €, and for dental crowns with 25 years durability 508 €. For AT, the out-of-pocket payment is 200 €. The participants would pay 362 € for lightly visible anterior teeth, but there is no willingness-to-pay for a risk of incompatibility. For dental crowns with a durability of 10 years, the participants are willing to pay 73 €, for natural color teeth 914 €, for risk-free treatments 92 €, and 282 € for a durability of 25 years. Comparing both teeth areas, we see that WTP for aesthetics is higher for anterior teeth, especially at the natural color level. On the contrary, WTP for compatibility and durability is higher for PT (S10 Table: WTP analysis framework, and results).

(iv.) Regression analysis

The results of correlation analyses, and calculation of the variance inflation factors (VIF), led to the exclusion of certain variables (e.g., combination of bonus booklet and dental supplementary insurance) from regression analyses. Statistical significance (applicable to the following reported results) was not given for all calculations.

With an increasing age (Coef. PT: -13.78, p<0.01; AT: -13.73, p<0.05), WTPmax decreases. Furthermore, with the presence of a bonus booklet (Coef. PT: 114.79, p<0.01; AT: 111.66, p<0.01), it increases. For AT, also gender (Coef. female: -91.01, p<0.01) has an influence. Female participants more often accepted high out-of-pocket payment amounts.

Individual variables are also correlated with the decision against a treatment ("no treatment") for PT and AT: with increasing age (Coef. PT: 0.21, p<0.01; AT: 0.21, p<0.01), residence in smaller towns (Coef. PT: -0.24, p<0.05; AT: -0.25, p<0.05), non-existence of a bonus booklet (Coef. PT: -1.21, p<0.05; AT: -1.21, p<0.05), and having a dental supplementary insurance (Coef. PT: 0.71, p<0.05; AT: 0.71, p<0.05), the decision against a treatment has been made more frequently. The participants‘ gender (Coef. female: 0.81, p<0.05) also plays a role regarding decisions for AT. Female respondents are less likely to decide against a treatment.

The more important co-payment (Coef. PT: -0.21, p<0.05; AT: -0.21, p<0.1), the less often a treatment outside SHI standard care was chosen. With the existence of a bonus booklet (Coef. PT: 0.96, p<0.01; AT: 0.74, p<0.05), SHI+ was chosen more often. For PT, the importance of aesthetics (Coef. 0.26, p<0.01) also has an influence. The more important aesthetics, the more often SHI+ was chosen by the participants. For AT, gender (Coef. female: -0.51, p<0.05), and residence (Coef.: 0.17, p<0.05) additionally influenced their decisions. Females and residents of smaller towns were less likely to choose a more cost-intensive treatment (S11 Table: Tables on correlation analysis, VIF values, and regression analysis; S7 File: Regression plots on WTPmax and SHI+ analysis).

Discussion

This study provides important insights into factors determining patients‘ choice behavior in dental care, while distinguishing between the two teeth areas, PT and AT. The focus of the choice analyses was on highest benefit expectations assigned by the participants to attributes and its levels of dental crown treatment, as well as the participants‘ willingness-to-pay. Further analyses focused on incentive measures provided by SHI and private health insurance, on choice for or against a treatment ("no treatment"), and for a treatment beyond SHI standard care, and the influence of the participants’ (socioeconomic) characteristics in decision-making.

Our results show that aesthetics is an important factor for the participants in their choice of a dental crown treatment. For AT, aesthetics has a higher weight for the participants. Highest benefit allocations are assigned to "natural color", i.e., tooth-colored, dental crowns, which should be indistinguishable from natural teeth in terms of visibility. Results on the importance of aesthetics underline our choice analysis estimates. Furthermore, the importance of aesthetic aspects of AT has already been shown in previous research [60, 61]. For PT, durability and treatment attributes such as functionality [62, 63] might be more meaningful. Nevertheless, even for PT, natural color teeth are preferred over strongly visible. Risk of a local toxic or allergic reaction seems to have rather less weight among the participants. For PT and AT, the coefficient for non-risk in the choice analysis is small. It can be assumed patients accept those risks. These values may result from the experimental design, i.e., extremely preferred (especially for AT) or non-preferred expressions were opposite to the risk attribute level. Besides, this may result from the fact that the probability of occurrence of a local toxic or allergic reaction appears low, also based on the participants’ awareness and experiences (e.g., does not know about allergies, former allergic reactions were mild) [64]. The attribute durability of a dental crown has a great influence on the participants’ decision-making, for both teeth areas. Highest benefit is clearly assigned to the highest duration of 25 years. A long life cycle could mean convenience for patients: lower costs in the long term, fewer visits at the dentist which may be painful, etc. However, present conditions may stand in the way of this patient desire. Dental crowns made of common materials (e.g., SHI standard care restorations) have an average life span of 15 years. For high-quality and -priced dental crowns, durability could be a few years higher (e.g., gold alloys) [65, 66]. Ultimately, the quest for long lifetime materials needs to be realized through further research activities. Out-of-pocket payments play an important role in our participants treatment choice, independently from teeth area. Nevertheless, these would require high co-payments, especially for AT. In the context of choice analysis, it is important to note that this is a benefit allocation. The participants might have associated high costs with other treatment characteristics, such as high quality [67].

We determined the participants’ willingness-to-pay for treatments with a natural color dental crown, i.e., the best possible attribute level. For both teeth areas and both cost attributes, the maximum amount to pay is above the level of SHI standard care. The participants are willing to pay much more for AT. High WTP values are possible due to the design with closed-ended questions [68]. Nevertheless, it should be noted that these values refer to the entirety of the participants and cannot be attributed to an individual participant [34]. Further analysis of the cost attribute revealed that willingness-to-pay per participants decreases with increasing age. Reduced incomes at an older age (e.g., pension), expensive treatments, or a reduced awareness of aesthetically high-quality as well as prioritization of functionality could be a reason [6971]. Presumably, the older the patient, the more intentional the dentist is in communicating that a dental crown is possibly the last and only alternative for tooth preservation [72]. There may be financial and pragmatic reasons for choosing the SHI standard care alternative. Previous studies have examined inequalities in dental treatment utilization. Besides income, financial wealth is one reason [7375].

Descriptive analysis showed that a large proportion of the participants owns a bonus booklet, but only a few participants have taken out a dental supplementary insurance. The proportions correspond to those for Germany: only about a quarter of SHI-insured people have private supplementary insurance [76]. Some participants stated they had already rejected dental crowns in the past, for reasons of cost and lack of necessity from their point of view. Combining bonus booklet and supplementary insurance makes patients more likely to choose a treatment than no treatment at all, for both teeth areas. It should be noted that this approach is used to reduce out-of-pocket payments, regardless of which form of care is chosen. However, it should also be noted that private supplementary insurances incur fees and cannot be financed by every patient [77]. If no dental supplementary insurance has made, out-of-pocket payment might remain at a high level. Patients might choose the most inexpensive alternative, including no treatment, although, SHI provides incentive measures. Medical necessity of dental treatments seems to be irrelevant for the participants. One assumption of our questionnaire was, that the dental crown treatment is found to be necessary by a dentist. Patients’ attitude has been reported in former articles [78, 79]. Overall, SHI standard care is accepted by patients, especially in older age groups, when aesthetics takes a back seat, and cost and functionality aspects become more relevant. However, it is apparent that there is a desire for more aesthetically pleasing and long-lasting alternatives. The former point is given especially for AT. Many patients keep a bonus booklet and make use of it (proof of at least 5 years annual check-ups in a row). SHI should target further possibilities and combinations of bonus measures to reduce access barriers to care and improve utilization of routine check-ups that can prevent caries. These measures could be linked to conditions that promote patients’ oral health behavior, as the bonus booklet successfully demonstrates [80].

Some limitations must be mentioned. The study is limited to the states of Berlin and Brandenburg. A region-typical choice behavior is conceivable here. When selecting the regional areas to which the questionnaires were sent, we took care to ensure an equal distribution of household incomes across federal states’ districts and counties. Nevertheless, a large proportion of the participants tended to belong to low household incomes groups. This may have biased the results, particularly regarding financial preferences. Since the sample is small due to the experimental design, descriptive results may not be representative for Germany. In the results of the models, especially ASCL, there is partly no statistical significance, although we have reached the minimum sample size. Accordingly, there are gaps in the answers to the research questions. Although the treatment attributes and their levels were designed to be as realistic as possible, it should be noted that the presentation of the treatment alternatives in the questionnaire probably does not reflect real life decision-making situations of the individual participants: choice scenarios were limited to a few attributes and levels. More factors probably play a role in patients’ treatment decision, including possible medical consequences or the relationship with the dentist [81, 82], and there may be more than two alternatives to choose from. The questionnaire, including n = 18 choice scenarios, was also very complex. Possibly, participants applied heuristics to simplify decision situations [1]. Also, conditions under which the questionnaires were completed are unclear, e.g., maybe participants were influenced by relatives. Additionally, the participants could not ask questions in case of any ambiguities.

The often non-statistical-significance of the regression analyses results can be explained by the fact that the participant number was small. However, there is no guideline for minimum population numbers for regressions. Study’s focus was a DCE, in which the experimental design allows small populations [57]. Statistical significances were given for most results in the choice analyses. It should also be noted that in the choice analyses, values of the coefficients were sometimes small, i.e., close to the reference level, or close between levels. Results should be interpreted accordingly.

Conclusion

Dental interventions such as crown treatments, involve difficult decisions on the optimal allocation of resources for health care systems and patients. This study provides important insights into patient preferences for crown treatment in Germany. Findings show that aesthetic for AT and PT as well as out-of-pocket payments for PT play an important role in the decision for dental crown treatments. Overall, participants are willing to pay more out of pocket compared to out-of-pocket payment that arises for SHI standard care, with a considerably higher willingness-to-pay for AT. Having a bonus booklet increased the willingness-to-pay. Although, the findings should be interpreted with caution due to limitations of choice experiments and the regional restriction to two federal states in Germany, it may also be valuable for policy makers and health insurance funds in developing dental health care programs, creating incentive structures, and planning the provision of dental services that better match patient preferences. For further studies, participants from all income groups should be targeted and included in the analysis in equal proportions (e.g., randomization within income groups), and regression analyses should be planned with larger populations.

Supporting information

S1 File. Questionnaire.

(PDF)

S2 File. Document "Aesthetics".

(PDF)

S3 File. Participants‘ reasons against a dental crown.

(TIFF)

S4 File. Participants‘ decision for dental crown color.

(TIFF)

S5 File. Codebook of analysis.

(XLSX)

S6 File. Importance of treatment attributes assessed by participants.

(TIF)

S7 File. Regression plots on WTPmax and SHI+ analysis.

(DOCX)

S1 Table. Design output.

(DOCX)

S2 Table. Calculation of D-efficiency.

(DOCX)

S3 Table. Results on questions–Questionnaire Part C.

(DOCX)

S4 Table. Coefficients of G-MNL estimations, including marginal effects.

(DOCX)

S5 Table. Coefficients of CLM estimations, including marginal effects.

(DOCX)

S6 Table. Coefficients of MXL estimations for anterior teeth.

(DOCX)

S7 Table. Marginal effects of MXL estimations.

(DOCX)

S8 Table. Coefficients of ASCL estimations "treatment" vs. "no treatment (opt-out)".

(DOCX)

S9 Table. Coefficients of ASCL estimations "SHI standard care" and "treatment beyond SHI standard care (SHI+)".

(DOCX)

S10 Table. WTP analysis framework, and results.

(DOCX)

S11 Table. Tables on correlation analysis, VIF values, and regression analysis.

(DOCX)

S1 Dataset

(XLSX)

Acknowledgments

For a better readability in the text, we used the terms posterior and anterior teeth. In the questionnaire (according to SHI context) the terms "non-visible tooth area" and "visible tooth area" were used representing different tooth numbers from a definitional point of view (see dental scheme in S1 and S2 Files).

We sincerely thank the respondents for participating in our study. Also, we thank the illustrator Juliane Lüke for a layout of the extra document "Aesthetics", and student assistant Hauke Langhoff.

We acknowledge support by the German Research Foundation and the Open Access Publication Fund of TU Berlin.

Data Availability

An anonymized minimal data set of the choice analysis is included as Supporting Information. This data set complies with the requirements of the ethics committee and the institution's data protection officer's requirements. Individual participant data may only be presented in aggregated form according to the ethics application. The ethics application has been accepted by the ethics committee of the Charité Universitätsmedizin Berlin (application no. EA4/109/19; contact details: Charité – Universitätsmedizin Berlin, Ethikkommission der Charité, Charitéplatz 1, 10117 Berlin).

Funding Statement

This study was funded through the Berlin Centre for Health Economics Research by the German Federal Ministry of Education and Research (grant no. 01EH1604A), URL: www.bmbf.de. Both authors are grant recipients. The funder had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

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Decision Letter 0

Ted Loch-Temzelides

8 Aug 2022

PONE-D-22-18370A discrete-choice experiment and an analysis of patients' willingness-to-pay in dental carePLOS ONE

Dear Dr. Felgner,

Thank you for submitting your manuscript to PLOS ONE. After careful consideration, we feel that it has merit but does not fully meet PLOS ONE’s publication criteria as it currently stands. Therefore, we invite you to submit a revised version of the manuscript that addresses the points raised during the review process.

The referee, who is an expert in the field, makes some excellent and constructive points. Please make sure to address each of them when preparing the revised version.

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We look forward to receiving your revised manuscript.

Kind regards,

Ted Loch-Temzelides

Academic Editor

PLOS ONE

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"Upon re-submitting your revised manuscript, please upload your study’s minimal underlying data set as either Supporting Information files or to a stable, public repository and include the relevant URLs, DOIs, or accession numbers within your revised cover letter. For a list of acceptable repositories, please see http://journals.plos.org/plosone/s/data-availability#loc-recommended-repositories. Any potentially identifying patient information must be fully anonymized.

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We will update your Data Availability statement to reflect the information you provide in your cover letter.

Additional Editor Comments:

This paper deals with a topical health choice question in the context of dental care. It investigates how treatment attributes and out-of-pocket expenses determine patients’ treatment choices. The statistical analysis is based on a data set created by the authors involving responses to questionnaires. The analysis reveals that aesthetics and durability play an important role in patients’ decisions. In addition, out-of-pocket cost aspects appear to be at least somewhat relevant in the choice of dental care services.

The analysis is well-executed and tightly focused. When revising the paper, the authors should spend some additional time motivating the particular statistical techniques used and why they are the appropriate methods to address the problem at hand.

Line 491: the last sentence in the conclusion appears to be incomplete.

[Note: HTML markup is below. Please do not edit.]

Reviewers' comments:

Reviewer's Responses to Questions

Comments to the Author

1. Is the manuscript technically sound, and do the data support the conclusions?

The manuscript must describe a technically sound piece of scientific research with data that supports the conclusions. Experiments must have been conducted rigorously, with appropriate controls, replication, and sample sizes. The conclusions must be drawn appropriately based on the data presented.

Reviewer #1: Partly

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2. Has the statistical analysis been performed appropriately and rigorously?

Reviewer #1: Yes

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3. Have the authors made all data underlying the findings in their manuscript fully available?

The PLOS Data policy requires authors to make all data underlying the findings described in their manuscript fully available without restriction, with rare exception (please refer to the Data Availability Statement in the manuscript PDF file). The data should be provided as part of the manuscript or its supporting information, or deposited to a public repository. For example, in addition to summary statistics, the data points behind means, medians and variance measures should be available. If there are restrictions on publicly sharing data—e.g. participant privacy or use of data from a third party—those must be specified.

Reviewer #1: No

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Reviewer #1: Yes

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Reviewer #1: Referee Report

A discrete-choice experiment and an analysis of patients' willingness-to-pay in dental care :A discrete-choice experiment in dental care

This paper uses a discrete choice experiment to investigate the effect of treatment attributes on patients’ treatment choice of dental crowns and whether out-of-pocket payments represent a barrier to access dental care. The authors analyzed willingness to pay and how socioeconomic characteristics affect it. Out of 10,752 emailed questionnaires and 762 returns, the authors include 380 in the analysis and find that aesthetics and durability of the crowns are the more preferred attributes, and that demographic characteristics influenced the willingness to pay. This paper is quite interesting. The research design, analysis, and discussion of potential policy concerns was quite clear and concise. I have a few comments.

Comments on the content

1. It would be great to focus on the novelty of the paper. I realize that the authors mention that they focus on a treatment that is found in the SHI benefit basket but a discussion of why it is important and how it is specifically differentiated from previous studies would improve readability substantially.

2. In Line 89, the authors mention the methods used. I agree that these methods are well understood in the health sciences literature but some discussion on why these are relevant to answer the question of interest would be great.

3. The experiment provides two unlabeled alternatives and the option of no treatment. However, as the authors note, individuals face multiple choices. Therefore, just providing two choices may not elicit the preferences as there might be behavioral biases in real life. For example, patients might choose a worse alternative in all attributes if they are averse to searching for multiple treatments or if that was marketed better. In this context, it would have been interesting to see if patients respond differently to different size of choice sets.

4. There could be a selection bias in the response as most individuals included in the study have medium and low household incomes. Hence, the estimated parameters could be biased. Specifically, the authors mention earlier in the text that dental crown treatments might require significant financial resources but since most of the individuals who responded have low household incomes, it raises questions about the external validity of the experiment.

5. I am quite confused by the different sample size on the choice model result tables. It would be good to explain why these sample sizes are different.

6. The lack of statistical significance on the results for anterior teeth maybe due to a low sample size. It would be good to send more questionnaires. If not, then it would improve readability to move that table to the appendix.

7. It is great that the authors discuss the external validity of their experiment, but it would have been interesting to get their take on why that might be a problem in the specific case of dental crowns.

8. It would be interesting to see how the choice behavior is dependent on the accessibility to dental clinics by the respondent at an administrative district level as that data

Other Minor Comments

1. I found some typos in the text that I mention below.

a. Line 54- “methods” instead of “methodes”

b. Line 73 – “decision making” instead of “decisions making”

c. Line 81 – “addressing” instead of “adressing”

d. Line 119 – “scenarios” instead of “szenarios”

e. Line 155 - “backgrounds” instead of “backrounds”

f. Line 246 – “Akaike” instead of “Akaik”

g. Line 303 – “Coefficient” instead of “coefficiant” (Recurring Mistake)

h. Line 383 – “Booklet” instead of “booklet booklet”

2. I also found that there were some formatting errors with the quotes in some places. Rather than having ‘ “text” ‘, I found some places with ‘ ,,text” ‘.

**********

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Reviewer #1: No

**********

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PLoS One. 2023 Feb 27;18(2):e0280441. doi: 10.1371/journal.pone.0280441.r002

Author response to Decision Letter 0


27 Dec 2022

Dear Prof. Dr. Loch-Temzelides,

First, we would like to thank you and your team for giving us the opportunity to revise the manuscript. We addressed all mentioned concerns carefully and have responded to each recommendation as directly as possible. We have found your and the reviewer’s comments to be very insightful and helpful and feel that the manuscript has greatly benefited from it.

Below please find our responses (in non-bold letters) to each of the points raised by you, including the points on journal requirements, and the reviewer (in bold letters).

We have included a marked-up copy of our manuscript highlighting the changes to the original version ("Revised Manuscript with Track Changes", revised parts are marked in yellow) as well as an unmarked version ("Manuscript").

Furthermore, we would like to politely ask for a change of the manuscript title from "A discrete-choice experiment and an analysis of patients' willingness-to-pay in dental care" to "Patients' preferences in dental care: a discrete-choice experiment and an analysis of willingness-to-pay". The new title more clearly reflects the contents of the manuscript. This will give the (potential) reader more information about the manuscript and should arouse interest even more.

Please do not hesitate to contact me if anything remains unclear or further revisions are needed.

Once again, we thank you very much for your time!

Yours sincerely,

Susanne Felgner

Journal Requirements

When submitting your revision, we need you to address these additional requirements.

1. Please ensure that your manuscript meets PLOS ONE's style requirements, including those for file naming. The PLOS ONE style templates can be found at

https://journals.plos.org/plosone/s/file?id=wjVg/PLOSOne_formatting_sample_main_body.pdf and

https://journals.plos.org/plosone/s/file?id=ba62/PLOSOne_formatting_sample_title_authors_affiliations.pdf.

Thank you for the advice on formatting. We have removed the short title on the title page and made revisions in the manuscript, i.e., we changed “Figure 1” to “Fig 1” (line 305); and we changed level 1, 2 and 3 (and 4) headings to 18pt, 16pt and 14pt (and 12pt) font, and further changed headings to bold type, and removed italics.

2. In your Data Availability statement, you have not specified where the minimal data set underlying the results described in your manuscript can be found. PLOS defines a study's minimal data set as the underlying data used to reach the conclusions drawn in the manuscript and any additional data required to replicate the reported study findings in their entirety. All PLOS journals require that the minimal data set be made fully available. For more information about our data policy, please see http://journals.plos.org/plosone/s/data-availability.

"Upon re-submitting your revised manuscript, please upload your study’s minimal underlying data set as either Supporting Information files or to a stable, public repository and include the relevant URLs, DOIs, or accession numbers within your revised cover letter. For a list of acceptable repositories, please see http://journals.plos.org/plosone/s/data-availability#loc-recommended-repositories. Any potentially identifying patient information must be fully anonymized.

Important: If there are ethical or legal restrictions to sharing your data publicly, please explain these restrictions in detail. Please see our guidelines for more information on what we consider unacceptable restrictions to publicly sharing data: http://journals.plos.org/plosone/s/data-availability#loc-unacceptable-data-access-restrictions. Note that it is not acceptable for the authors to be the sole named individuals responsible for ensuring data access.

We will update your Data Availability statement to reflect the information you provide in your cover letter.

In agreement with the ethics committee and our institution's data protection officer we have added an anonymized minimal data set (“Minimal_data_set”) of the choice analysis, without considering individual participants’ characteristics, to the Supporting Information of our manuscript. Individual participant data may only be presented in aggregated form according to the ethics application, as in Table 3 on participants’ characteristics (p.12f.). We have changed the information in the data availability statement accordingly.

The ethics application has been accepted by the ethics committee of the Charité Universitätsmedizin Berlin (application no. EA4/109/19; contact details: Charité – Universitätsmedizin Berlin, Ethikkommission der Charité, Charitéplatz 1, 10117 Berlin).

In addition to the authors, only the employees of the department have access to the data.

Additional Editor Comments

This paper deals with a topical health choice question in the context of dental care. It investigates how treatment attributes and out-of-pocket expenses determine patients’ treatment choices. The statistical analysis is based on a data set created by the authors involving responses to questionnaires. The analysis reveals that aesthetics and durability play an important role in patients’ decisions. In addition, out-of-pocket cost aspects appear to be at least somewhat relevant in the choice of dental care services.

Thank you for the assessment.

The analysis is well-executed and tightly focused. When revising the paper, the authors should spend some additional time motivating the particular statistical techniques used and why they are the appropriate methods to address the problem at hand.

Thank you for the advice. The statistical methods used in our study are choice analysis (i.e., discrete-choice experiment analysis), willingness-to-pay analysis (WTP), and regression analysis. Choice analysis was chosen because it can be used to elicit respondents' preferences. It is used particularly in health sciences to explain patients' choice behavior. The different models applied resulted from the structure of the data, which resulted from the assumptions of the scenarios. For example, we decided for an unlabeled design of the choice sets, since in real-world patients are free to choose between various treatment alternatives. As it was not our concern to investigate or improve an already existing treatment of defined characteristics, a labeled design was excluded for the experiment. The unlabeled design, as well as the number of choice alternatives, lead us to the application of the different models to fulfill our study’s aims: (1) conditional logit model (CLM) to consider treatment characteristics for participants’ decision-making; (2) mixed logit model (MXL) as CLM alternative to also consider treatment characteristics but using an estimate of random parameters to account for heterogeneity, i.e., random variation across participants, due to unobserved characteristics; (3) generalized multinomial logit model (G-MNL) considering scale heterogeneity across participants in this regard; and (4) ASC logit model (ASCL, estimations on alternative specific constants) to include the individual characteristics as independent variables on defined choice scenarios (treatment vs. no treatment, SHI+ treatment). The result values of considered models for analysis on treatment characteristics on the participants’ choice behavior had to meet certain criteria (Akaike's and Schwarz' Bayesian information criterion: AIC and BIC). A willingness-to-pay analysis directly followed the mixed logit model choice analysis, since best AIC and BIC values were given and due to the methodological reason that WTP estimations are based on choice analysis results. Using willingness-to-pay analysis enabled us to consider patients' treatment choices. It allowed us to determine respondents’ monetary maximum value for each attribute level. Thus, a comparison of the amount of out-of-pocket payments resulting from SHI’s benefit basket and respondents’ willingness-to-pay was possible, which in turn allowed for an assessment of SHI co-payment from patients’ perspective. We chose an additional regression analysis to calculate an assumed relationship between socioeconomic characteristics of the participants and variables expressing decisions (e.g., choosing opt-out).

In the methods section, we now give a more detailed introduction why we used these methods in the study: “Discrete-choice experiments (DCE) are an established instrument particularly in health sciences [14] for measuring patient preferences in their choice behavior by estimating benefit assignments, and for calculating willingness-to-pay (WTP) taking out-of-pocket payments into account. Although, medical professionals usually recommend a treatment option, due to restricted coverage in oral health care services, final decisions are largely guided by patient preferences. A DCE is best suited to collect data for analyzing preferences of patients and their WTP. This is especially the case as patients have to decide between different treatment opportunities that come along with large variations in out-of-pocket payments. To analyze patient preferences, we therefore conducted a DCE. Furthermore, we analyzed overall (and individual) WTP to compare monetary value of respondents’ willingness-to-pay and the SHI out-of-pocket payment for each attribute. In addition, we conducted regression analyses to calculate the relationship between socio-economic and other characteristics of participants and defined decision variables. Descriptive analyses were used to illustrate quantitative results (S3, S4, and S6 Files).” (line 94ff.). Further, we revised the methods section to better explain and justify the choice and application of the MXL to the reader since to us this seemed to be not clear enough so far. Following information has been added: “The MXL estimates a distribution around each mean preference parameter to avoid potential bias in the estimated mean preference weights due to unobserved heterogeneity [47]. In our calculations, we did not include participant characteristics in the explainable component V but used the MXL to estimate random parameters. This allowed us to account for random variation across participants, i.e., heterogeneity, of unobserved participant characteristics [48]. Random heterogeneity is evident from significant standard deviations per model parameter [49].” (line 264ff.).

Line 491: the last sentence in the conclusion appears to be incomplete.

Thank you for pointing out this. We have changed the sentence in the conclusion accordingly: "For further studies, participants from all income groups should be targeted and included in the analysis in equal proportions (e.g., randomization within income groups), and regression analyses should be planned with larger populations." (line 529ff.).

Reviewers’ comments to the author

I Reviewer's Responses to Questions

1. Is the manuscript technically sound, and do the data support the conclusions?

The manuscript must describe a technically sound piece of scientific research with data that supports the conclusions. Experiments must have been conducted rigorously, with appropriate controls, replication, and sample sizes. The conclusions must be drawn appropriately based on the data presented. Reviewer #1: Partly

Several measures were applied to make the experiment rigorous: (1) a d-efficient design was applied (line 123). The d-efficiency value was calculated and an acceptable high value of 100% was achieved (S2 Table), and (2) SAS software was used to design the choice sets so that bias and human error could be excluded (line 127f.). Further, (3) a pretest was conducted (line 178ff.). In this context, the comprehensibility of the questionnaire was reviewed and revised.

You are quite right that conclusions should be drawn more clearly from the results. We therefore revised the conclusions section in the text: “Dental interventions such as crown treatments, involve difficult decisions on the optimal allocation of resources for health care systems and patients. This study provides important insights into patient preferences for crown treatment in Germany. Findings show that aesthetic for AT and PT as well as out-of-pocket payments for PT play an important role in the decision for dental crown treatments. Overall, participants are willing to pay more out of pocket compared to out-of-pocket payment that arises for SHI standard care, with a considerably higher willingness-to-pay for AT. Having a bonus booklet increased the willingness-to-pay. Although, the findings should be interpreted with caution due to limitations of choice experiments and the regional restriction to two federal states in Germany, it may also be valuable for policy makers and health insurance funds in developing dental health care programs, creating incentive structures, and planning the provision of dental services that better match patient preferences.” (line 519ff.).

Accordingly, we revised the abstract conclusion: “This study provides important insights into patient preferences for dental crown treatment in Germany. For our participants, aesthetic for AT and PT as well as out-of-pocket payments for PT play an important role in decision-making. Overall, they are willing to pay more than the current out-of-pocket payments for what they consider to be better crown treatments. Findings may be valuable for policy makers in developing measures that better match patient preferences.” (line 43ff.).

2. Has the statistical analysis been performed appropriately and rigorously? Reviewer #1: Yes

Thank you for the assessment.

3. Have the authors made all data underlying the findings in their manuscript fully available?

The PLOS Data policy requires authors to make all data underlying the findings described in their manuscript fully available without restriction, with rare exception (please refer to the Data Availability Statement in the manuscript PDF file). The data should be provided as part of the manuscript or its supporting information, or deposited to a public repository. For example, in addition to summary statistics, the data points behind means, medians and variance measures should be available. If there are restrictions on publicly sharing data—e.g. participant privacy or use of data from a third party—those must be specified. Reviewer #1: No

We have added an anonymized minimal data set (“Minimal_data_set”) of the choice analysis, without considering individual participants’ characteristics, to the Supporting Information of our manuscript. This complies with the requirements of the ethics committee and our institution's data protection officer. Individual participant data may only be presented in aggregated form according to the ethics application, as in Table 3 on participants’ characteristics (p.12f.). We have changed the information in the data availability statement accordingly. Please excuse if our data availability statements have been incorrect and misleading so far!

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Reviewer #1: Yes

Thank you for the assessment.

5. Review Comments to the Author

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Reviewer #1: Referee Report - A discrete-choice experiment and an analysis of patients' willingness-to-pay in dental care :A discrete-choice experiment in dental care

This paper uses a discrete choice experiment to investigate the effect of treatment attributes on patients’ treatment choice of dental crowns and whether out-of-pocket payments represent a barrier to access dental care. The authors analyzed willingness to pay and how socioeconomic characteristics affect it. Out of 10,752 emailed questionnaires and 762 returns, the authors include 380 in the analysis and find that aesthetics and durability of the crowns are the more preferred attributes, and that demographic characteristics influenced the willingness to pay. This paper is quite interesting. The research design, analysis, and discussion of potential policy concerns was quite clear and concise. I have a few comments.

Thank you for the assessment.

II Comments on the content

1. It would be great to focus on the novelty of the paper. I realize that the authors mention that they focus on a treatment that is found in the SHI benefit basket but a discussion of why it is important and how it is specifically differentiated from previous studies would improve readability substantially.

Thank you for your suggestion. As described in the introduction of the manuscript, we focus on full dental crowns, a treatment that is included in the SHI benefit basket. The special feature of this treatment is that the attributes out-of-pocket payment and aesthetics can vary greatly, depending on the chosen treatment. The assumed most (un)attractive treatments for patients according to attribute levels may be in contrast to each other, i.e., a natural color crown is very expensive, and an aesthetically less appealing strongly visible dark-colored crown is the most inexpensive possibility for patients. Treatment choices via the choice scenarios in our experiment should therefore clearly show which attributes are most important to patients, and whether they may have to make compromises.

The SHI standard care treatment might be the most cost-effective alternative to patients as it guarantees a medically necessary treatment in compliance with the principle of economic efficiency, but aesthetically it is an unattractive solution. Due to these circumstances, patient preferences can be determined especially with regard to these two attributes. Furthermore, we see whether cost coverage by SHI is considered sufficient by patients. To our knowledge, there are no studies for the German health care system so far, considering dental crown treatment, using the methodological approach of a discrete-choice-experiment, and focusing patient preferences. To emphasize the special nature and novelty of our study, we have revised the introduction: “We focus on a prosthodontic treatment – the placement of a full dental crown – due to high variability in options and costs to be borne by the patients themselves. In Germany, SHI covers a fixed subsidy of 50% (60% as of 10/2020) for standard treatment of dental crowns. The remaining 50% (40%) have to be paid out of pocket by patients, plus the difference of costs when choosing superior materials. The attributes out-of-pocket payment and aesthetics vary greatly between different dental crown treatments. These assumed (un)desirable attributes for patients behave proportionally against each other, i.e., an aesthetically pleasing dental crown is expensive and vice versa. The SHI alternative may implicate an aesthetically unattractive result to patients (i.e., darker-colored not natural appealing dental crown). To our knowledge, this treatment has not yet been studied for the German health care system using an experimental approach.” (line 76ff.).

2. In Line 89, the authors mention the methods used. I agree that these methods are well understood in the health sciences literature but some discussion on why these are relevant to answer the question of interest would be great.

Thank you for pointing out this. We now included a part on the relevance of DCE and WTP and why it is suitable to answer the research questions: “Discrete-choice experiments (DCE) are an established instrument particularly in health sciences [14] for measuring patient preferences in their choice behavior by estimating benefit assignments, and for calculating willingness-to-pay (WTP) taking out-of-pocket payments into account. Although, medical professionals usually recommend a treatment option, due to restricted coverage in oral health care services, final decisions are largely guided by patient preferences.” (line 94ff.).

3. The experiment provides two unlabeled alternatives and the option of no treatment. However, as the authors note, individuals face multiple choices. Therefore, just providing two choices may not elicit the preferences as there might be behavioral biases in real life. For example, patients might choose a worse alternative in all attributes if they are averse to searching for multiple treatments or if that was marketed better. In this context, it would have been interesting to see if patients respond differently to different size of choice sets.

Thank you for your comment. We completely agree with you that in real life, patients have more than just two or three (in the case of opt-out) treatments to choose from. We set the number of treatment alternatives to n=2, as this is sufficient in an unlabeled design to determine preferences or benefit assignments to attributes. To ensure a balanced distribution of the attributes’ values across all choice sets, we used an experimental design, i.e., its order was output by the SAS software. To ensure evaluability, we might have had to present participants with twice as many choice sets. This would probably have had a negative effect on the willingness to participate but also on the individuals’ concentration when filling in the questionnaires [1]. Nevertheless, we thank you again for this advice. Regarding follow-up studies, we will consider the point raised by you.

4. There could be a selection bias in the response as most individuals included in the study have medium and low household incomes. Hence, the estimated parameters could be biased. Specifically, the authors mention earlier in the text that dental crown treatments might require significant financial resources but since most of the individuals who responded have low household incomes, it raises questions about the external validity of the experiment.

Thank you for the assessment. When planning to send out the questionnaires, we looked at the topic of disposable household incomes in the two focused federal states Berlin and Brandenburg, and its distribution in districts and counties. According to our sources, household incomes are given equally over all Berlin districts in total and the counties of Brandenburg in total, and between the counties. Moreover, number of districts and counties in urban and rural areas in these two states is similar (n=16 and n=14) [2, 3]. In addition, the incomes in Berlin and Brandenburg are close to the national average [4]. The questionnaires were distributed randomly. Thus, we could not influence which income groups were reached and how often. Therefore, we could initially expect to reach all income groups with our questionnaires. To avoid presenting participants extreme values for the attribute out-of-pocket payment, we made graduations here with roughly equal intervals (i.e., 50, 150, and 200, 450, and 600 €, respectively). An acceptable amount of out-of-pocket payment should have been given for each income group.

Unfortunately, we could not influence the household income group of the participants who actually returned the questionnaire and which was included in the analyses. It seems reasonable to assume that people with low incomes were more willing to participate in our survey on dental treatments and its costs in order to express their opinion than people with higher incomes.

However, we have added the point raised by you to the limitations: “When selecting the regional areas to which the questionnaires were sent, we took care to ensure an equal distribution of household incomes across federal states’ districts and counties. Nevertheless, a large proportion of the participants tended to belong to low household incomes groups. This may have biased the results, particularly regarding financial preferences.” (line 494ff.). In addition, we added a note to the conclusion: “Although, the findings should be interpreted with caution due to limitations of choice experiments and the regional restriction to two federal states in Germany, […].” (line 525f.). Furthermore, we have added information on our considerations regarding the household income distribution: “We aimed at an equal distribution of urban and rural population. By prevailing conditions, number of districts and counties in these areas are similar [27]. Household incomes in Berlin and Brandenburg are the same overall and are approximately equally distributed among Brandenburg's counties [28], with incomes in both states close to the national average [29]. Furthermore, we aimed at women and men equally distributed. In compliance with the European General Data Protection Regulation, address data of potential participants, considering the minimum age and an equal gender distribution, were requested according to §34 of the Federal Registration Act from residents' registration offices of the city of Berlin and selected counties in Brandenburg.” (line 157ff.).

5. I am quite confused by the different sample size on the choice model result tables. It would be good to explain why these sample sizes are different.

Thank you for pointing out this. We assume that you are referring to the "no. of observations" that can be found in the results tables. This is not the sample size, but rather the number of data rows that the STATA software included in the analyses. The number of participants whose data records were included in each choice analysis is always the same at n=380. Depending on the question (and thus the model), different numbers of data rows were identified as missings and were not included in the analyses. Therefore, the "no. of observations" varies between the tables. In the case of the ASCL models, the difference in the "no. of observations" to the other tables is particularly large. The reason for this is that only certain choice sets were included in the analysis (i.e., only with SHI standard treatment attributes). Thus, the number of evaluated data rows and thus "no. of observation" has been greatly reduced.

In the results section of the manuscript, we have added a text passage for explanation accordingly: “The "no. of observations" in the (appendix) tables do not refer to the population sample size, but to the dataset rows included in the analyses, and therefore vary between the models. Rows with missings, and of non-relevant choice sets (e.g., SHI levels in ASCL) were excluded.” (line 339ff.).

6. The lack of statistical significance on the results for anterior teeth maybe due to a low sample size. It would be good to send more questionnaires. If not, then it would improve readability to move that table to the appendix.

Thank you for your suggestion. Due to personnel and financial resources, it is unfortunately not possible for us to send additional questionnaires. We fully agree with you that the table section on anterior teeth in Table 4 disturbs the flow of reading. Therefore, we have removed this part of the table from the manuscript and added it as a single table to the appendix (S6 Table).

When calculating the sample size for this discrete-choice experiment, we followed Orme's rule of thumbs [5]. With a number of n=380 participants, we had reached the minimum number of participants, albeit at the lower minimum limit (n=375). Since the rule of thumb was apparently not entirely successful for our study, we therefore added half a sentence to the discussion section (limitations): „In the results of the models, especially ASCL, there is partly no statistical significance, although we have reached the minimum sample size for DCE according to the rule of thumb by Orme [30].” (line 499f.).

7. It is great that the authors discuss the external validity of their experiment, but it would have been interesting to get their take on why that might be a problem in the specific case of dental crowns.

Thank you for the assessment. The external validity was tested by adding a choice set to the questionnaire in which two alternatives with only best vs. worst attribute levels were given (so-called "clear question"). The assumption was that only participants who understood the questionnaire in its content would naturally choose the alternative with the best levels combination. In the case of dental crowns, this best (vs. worst) alternative is particularly easy to determine, since it can be defined as follows: best aesthetics (natural color vs. strongly visible), lowest risk (no risk vs. risk of allergic or local toxic reaction), longest durability (25 years vs. 5 years), and lowest cost (50 € vs. 600 € out-of-pocket payment). In terms of price-performance-ratio, this alternative is assumed to be the best (worst) choice.

We have added a sentence to the methods section explaining what is meant by the “clear question”: “For the "clear question", the two-alternative-choice sets included only the best vs. worst attribute levels (e.g., 25 vs. 5 years durability). It can be assumed that only participants who understood the questionnaire’s content correctly answered this question appropriately.” (line 138ff.).

8. It would be interesting to see how the choice behavior is dependent on the accessibility to dental clinics by the respondent at an administrative district level as that data

Thank you for the assessment. By depicting the "urban" and "rural" area, we have tried to include the participants’ region of residence component in the analyses (e.g., results of regression analyses, line 412f.). Unfortunately, we do not have data on the locations of medical institutions (dental practices, etc.) that provide dental crown treatments. An analysis in this respect would presumably involve data research on locations of medical institutions and would be time-consuming, but definitely is an interesting point to be considered in further studies.

III Other Minor Comments

1. I found some typos in the text that I mention below.

Thank you very much for the comments on typos in our manuscript! We have revised the typos in the manuscript.

a. Line 54- “methods” instead of “methodes”

b. Line 73 – “decision making” instead of “decisions making”

c. Line 81 – “addressing” instead of “adressing”

d. Line 119 – “scenarios” instead of “szenarios”

e. Line 155 - “backgrounds” instead of “backrounds”

f. Line 246 – “Akaike” instead of “Akaik”

g. Line 303 – “Coefficient” instead of “coefficiant” (Recurring Mistake)

h. Line 383 – “Booklet” instead of “booklet booklet”

2. I also found that there were some formatting errors with the quotes in some places. Rather than having ‘ “text” ‘, I found some places with ‘ ,,text” ‘.

Thank you very much for your very helpful assessment! We have made the corrections of the quotation marks in the manuscript.

References

1. Bech M, Kjaer T, Lauridsen J. Does the number of choice sets matter? Results from a web survey applying a discrete choice experiment. Health Econ. 2011;20:273–86. doi:10.1002/hec.1587.

2. Statistics Berlin Brandenburg. Regional statistics. National accounts - Berlin and Brandenburg 2018. [Amt für Statistik Berlin-Brandenburg. Regionalstatistiken. Volkswirtschaftliche Gesamtrechnungen - Berlin und Brandenburg 2018.] URL: https://www.statistik-berlin-brandenburg.de/regionalstatistiken/r-gesamt_neu.asp?Ptyp=410&Sageb=82000&creg=BBB&anzwer=8 (Accessed: 03/15/2020).

3. Statistics Berlin Brandenburg. Regional statistics. Population - Berlin and Brandenburg 2018. [Amt für Statistik Berlin-Brandenburg. Regionalstatistiken. Bevölkerung - Berlin und Brandenburg 2018.] URL: https://www.statistik-berlin-brandenburg.de/regionalstatistiken/r-gesamt_neu.asp?Ptyp=410&Sageb=12015&creg=BBB&anzwer=6 (Accessed: 03/15/2020).

4. Destatis - Federal Statistical Office. National Accounts of the federal states (redistribution calculation) - Disposable income of private households: federal states, years. 2017. [Destatis - Statistisches Bundesamt. VGR der Länder (Umverteilungsrechnung) - Verfügbares Einkommen der privaten Haushalte: Bundesländer, Jahre. 2017.] URL: https://www-genesis.destatis.de/genesis/online?operation=abruftabelleBearbeiten&levelindex=1&levelid=1662814398480&auswahloperation=abruftabelleAuspraegungAuswaehlen&auswahlverzeichnis=ordnungsstruktur&auswahlziel=werteabruf&code=82411-0001&auswahltext=&wertauswahl=225&wertauswahl=1111&werteabruf=Werteabruf#abreadcrumb. (Accessed: 09/11/2022).

5. Orme BK. Getting started with conjoint analysis: strategies for product design and pricing research: 2nd ed.: Madison, WI: Research Publishers, 2010.

Attachment

Submitted filename: Response_to_Reviewers.docx

Decision Letter 1

Ted Loch-Temzelides

2 Jan 2023

Patients’ preferences in dental care: a discrete-choice experiment and an analysis of willingness-to-pay

PONE-D-22-18370R1

Dear Dr. Felgner,

We’re pleased to inform you that your manuscript has been judged scientifically suitable for publication and will be formally accepted for publication once it meets all outstanding technical requirements.

Within one week, you’ll receive an e-mail detailing the required amendments. When these have been addressed, you’ll receive a formal acceptance letter and your manuscript will be scheduled for publication.

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Kind regards,

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Academic Editor

PLOS ONE

Additional Editor Comments (optional):

The authors did a good a job in addressing the referee's comments. The small sample size and the resulting statistical significance issues remain, but this is not something that could be addressed in this study and it is best left to future research. Some minor expositional suggestions follow:

1. Although you are studying several different regressions, perhaps it is best to label the corresponding sections (e.g., line 402) as "regression analysis" instead of using the plural form.

2. Line 61. Consider using: "quality of life, and reduced productivity"

3. Line 82. Consider replacing "behave" with "move"

4. Line 86. Consider eliminating "Therefore"

5. Lines 110-114 read somewhat repetitive. Please consider rewriting.

6. Line 252. Consider replacing: "unrealistic" with "strong"

7. Line 428 Consider using: "... two teeth areas, PT and AT. The focus of..."

8. Line 456. Consider replacing "Nevertheless, high co-payments would be paid by them, especially for AT" with "Nevertheless these would require high co-payments, especially for AT"

9. Line 471. Consider using: "...income, financial wealth..."

Acceptance letter

Ted Loch-Temzelides

6 Jan 2023

PONE-D-22-18370R1

Patients’ preferences in dental care: a discrete-choice experiment and an analysis of willingness-to-pay

Dear Dr. Felgner:

I'm pleased to inform you that your manuscript has been deemed suitable for publication in PLOS ONE. Congratulations! Your manuscript is now with our production department.

If your institution or institutions have a press office, please let them know about your upcoming paper now to help maximize its impact. If they'll be preparing press materials, please inform our press team within the next 48 hours. Your manuscript will remain under strict press embargo until 2 pm Eastern Time on the date of publication. For more information please contact onepress@plos.org.

If we can help with anything else, please email us at plosone@plos.org.

Thank you for submitting your work to PLOS ONE and supporting open access.

Kind regards,

PLOS ONE Editorial Office Staff

on behalf of

Dr. Ted Loch-Temzelides

Academic Editor

PLOS ONE

Associated Data

    This section collects any data citations, data availability statements, or supplementary materials included in this article.

    Supplementary Materials

    S1 File. Questionnaire.

    (PDF)

    S2 File. Document "Aesthetics".

    (PDF)

    S3 File. Participants‘ reasons against a dental crown.

    (TIFF)

    S4 File. Participants‘ decision for dental crown color.

    (TIFF)

    S5 File. Codebook of analysis.

    (XLSX)

    S6 File. Importance of treatment attributes assessed by participants.

    (TIF)

    S7 File. Regression plots on WTPmax and SHI+ analysis.

    (DOCX)

    S1 Table. Design output.

    (DOCX)

    S2 Table. Calculation of D-efficiency.

    (DOCX)

    S3 Table. Results on questions–Questionnaire Part C.

    (DOCX)

    S4 Table. Coefficients of G-MNL estimations, including marginal effects.

    (DOCX)

    S5 Table. Coefficients of CLM estimations, including marginal effects.

    (DOCX)

    S6 Table. Coefficients of MXL estimations for anterior teeth.

    (DOCX)

    S7 Table. Marginal effects of MXL estimations.

    (DOCX)

    S8 Table. Coefficients of ASCL estimations "treatment" vs. "no treatment (opt-out)".

    (DOCX)

    S9 Table. Coefficients of ASCL estimations "SHI standard care" and "treatment beyond SHI standard care (SHI+)".

    (DOCX)

    S10 Table. WTP analysis framework, and results.

    (DOCX)

    S11 Table. Tables on correlation analysis, VIF values, and regression analysis.

    (DOCX)

    S1 Dataset

    (XLSX)

    Attachment

    Submitted filename: Response_to_Reviewers.docx

    Data Availability Statement

    An anonymized minimal data set of the choice analysis is included as Supporting Information. This data set complies with the requirements of the ethics committee and the institution's data protection officer's requirements. Individual participant data may only be presented in aggregated form according to the ethics application. The ethics application has been accepted by the ethics committee of the Charité Universitätsmedizin Berlin (application no. EA4/109/19; contact details: Charité – Universitätsmedizin Berlin, Ethikkommission der Charité, Charitéplatz 1, 10117 Berlin).


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