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Neuropsychiatric Disease and Treatment logoLink to Neuropsychiatric Disease and Treatment
. 2013 Sep 19;9:1359–1370. doi: 10.2147/NDT.S49520

Confusion assessment method: a systematic review and meta-analysis of diagnostic accuracy

Qiyun Shi 1,2,, Laura Warren 3, Gustavo Saposnik 2, Joy C MacDermid 1
PMCID: PMC3788697  PMID: 24092976

Abstract

Background

Delirium is common in the early stages of hospitalization for a variety of acute and chronic diseases.

Objectives

To evaluate the diagnostic accuracy of two delirium screening tools, the Confusion Assessment Method (CAM) and the Confusion Assessment Method for the Intensive Care Unit (CAM-ICU).

Methods

We searched MEDLINE, EMBASE, and PsychInfo for relevant articles published in English up to March 2013. We compared two screening tools to Diagnostic and Statistical Manual of Mental Disorders IV criteria. Two reviewers independently assessed studies to determine their eligibility, validity, and quality. Sensitivity and specificity were calculated using a bivariate model.

Results

Twenty-two studies (n = 2,442 patients) met the inclusion criteria. All studies demonstrated that these two scales can be administered within ten minutes, by trained clinical or research staff. The pooled sensitivities and specificity for CAM were 82% (95% confidence interval [CI]: 69%–91%) and 99% (95% CI: 87%–100%), and 81% (95% CI: 57%–93%) and 98% (95% CI: 86%–100%) for CAM-ICU, respectively.

Conclusion

Both CAM and CAM-ICU are validated instruments for the diagnosis of delirium in a variety of medical settings. However, CAM and CAM-ICU both present higher specificity than sensitivity. Therefore, the use of these tools should not replace clinical judgment.

Keywords: confusion assessment method, diagnostic accuracy, delirium, systematic review, meta-analysis

Introduction

Delirium is characterized by acute onset of an altered level of consciousness with fluctuating levels of orientation, memory, thought, and/or behavior.1 It is commonly observed among patients with an acute medical condition, especially patients in the internal medicine, neurology, psychiatry, and geriatric wards. Delirium has been associated with unfavorable outcomes including higher mortality, longer hospitalization, and a greater degree of dependence after discharge.2 Therefore, early recognition and prevention of delirium may improve outcomes in hospitalized patients.

Currently, two standard diagnostic criteria on delirium are the Diagnostic and Statistical Manual of Mental Disorders (DSM) IV criteria3 and International Classification of Diseases-10.4 However, neither of these diagnostic tools can be easily applied to daily bedside practice. Therefore, a variety of screening tools such as the Confusion Assessment Method (CAM),5 the Delirium Rating Scale,6 the Intensive Care Delirium Screening Checklist,7 and the Nursing Delirium Screening Scale8 have been developed. Among them, CAM is one of the most widely used diagnostic instruments for clinical and research purposes with proven psychometric properties.9 It was developed by Inouye et al based on DSM III for the purpose of enabling nonpsychiatric trained clinicians to identify delirium.5,10 Ely et al developed the Confusion Assessment Method for the Intensive Care Unit (CAM-ICU),11,12 an instrument specifically designed to assess nonverbal patients (ie, mechanically ventilated) based on the CAM algorithm. The objective of this study was to investigate whether a nonlanguage based method has impact on diagnostic accuracy of the scale and CAM-ICU performance in identifying delirium in a different spectrum of patients in comparison to CAM. Therefore, in this review, we compared CAM and CAM-ICU to DSM I V, a golden standard for delirium diagnosis applied to verbal versus nonverbal patients.

Materials and methods

Search sources and searches

Two reviewers (QS and LW) conducted a literature search of MEDLINE, EMBASE, and PsychInfo in March 2013. Computer searches based on keywords were conducted. References from previously retrieved articles were also searched. Details of search strategy can be found in Appendix 1.

Study selection

Research articles examining either CAM or CAM-ICU were included for review if they met the following inclusion criteria: (1) the study was designed as an observational, cross-sectional or case series study; (2) the reference test was DSM IV for delirium diagnosis; (3) diagnostic accuracy estimates were reported in the paper, including sensitivity, specificity, true positive, false positive, true negative, and false negative, or sufficient detail to derive these numbers; and (4) the study was written in English.

We excluded papers on prevalence of delirium without diagnostic accuracy data, reference test other than DSM IV, or if the definition of delirium was unclear in the original paper. Figure 1 shows a flow chart of the search.

Figure 1.

Figure 1

Result of literature search.

Abbreviation: DSM-IV, Diagnostic and Statistical Manual of Mental Disorders IV.

Data extraction and quality assessment

Data were extracted to a form which included the following information: first author, year of publication, study population characteristics, name of tool, assessor of screening and reference test, diagnostic cut point used, and length of administration.

Quality Assessment of Diagnostic Accuracy Studies (QUADAS-2) guidelines13 were employed for this systematic review to assess the study quality. For the purposes of this systematic review, we decided that a low risk of bias was assumed if all the questions were answered “yes.” If an answer was either “no” or “unclear,” a high risk of bias or “unclear” was assigned to the corresponding domain. In the patient selection domain, we considered the studies which included conditions related to mental disorders (ie, dementia, psychosis) which mimic delirium as an “appropriate inclusion” because we believe a good scale can discriminate between people who have delirium and people who have other mental disorders. For the index domain, we considered that a threshold was prespecified in translation versions. In domain 4, flow and timing, we considered 3 hours between the index test and reference standard as a reasonable time interval due to the fluctuations of delirium presentation. We appraised other items following guidelines.13 For the applicability domain, studies were considered to be “high risk of bias” if no explicit description of inclusion and exclusion criteria were reported.

All data extraction and quality assessment were conducted by two reviewers (QS and LW). Discrepancies were resolved by discussion. A third reviewer (GS) was consulted if discrepancies remained.

Data synthesis and analysis

The estimates for sensitivity, specificity, and negative and positive likelihood ratios were computed using bivariate models14 and compared to the Moses-Littenberg method.15 We used a bivariate model which preserves the two-dimensional nature of sensitivity and specificity and treats these two estimates as a paired index, thus accounting for the possibility of correlation which other methods do not address. In contrast to a traditional funnel plot, which uses straight lines for pooled estimates, the bivariate model produces an ellipse with a pooled mean sensitivity/specificity, 95% confidence interval, and 95% prediction ellipse. As both the bivariate model and the Moses-Littenberg method require a 2 × 2 data table, in this meta-analysis, we either retrieved the data directly from the study or generated numbers16 based on the information presented in the original paper. Bivariate analyses were performed with PROC NLMixed with SAS (version 9.2, SAS Institute Inc, Cary, NC, USA) and figures were plotted using R (version 2.14, Lucent Technologies, Murray Hill, NJ, USA). We also built a summary receiver operating characteristic (SROC) curve using RevMan.17 Statistical significance was set a priori at an alpha level of 0.05.

Results

Characteristics of studies

A total of 22 studies8,11,12,1836 were identified for this systematic review (Table 1). Nine studies examined CAM (n = 1,033) while 13 assessed for CAM-ICU (n = 1,409). Overall, the mean age of patients included in these studies ranged from 54 to 85 years old. The percentage of patients diagnosed with delirium varied from 14%25 to 87%.12 The most common study populations were ventilated intensive care unit patients,11,12 geriatric inpatients,19,21,22 or postoperative patients.8,25,26 Most studies examined the accuracy of delirium diagnoses made by nondelirium health professionals such as general practitioners, nurses, or trained research assistants compared to delirium experts such as psychiatrists or geriatricians. In these studies, both CAM and CAM-ICU could be administered as a quick questionnaire. A number of studies18,21,27,29 focused on delirium which developed in the early stage of an acute disease while others monitored the patients from admission to discharge.11,12,24

Table 1.

Characteristics of studies included in systematic review

Author Place of study Target population Screening test* Assessor of screening test Length of screening test administration (mean) Assessor of reference test When test was administrated Sample size Mean/median age Incidence of delirium (%)
Ely11,12 US Ventilated ICU patients CAM-ICU Nurse 2 min Psychiatrist, neurologist, geriatrician Daily after admission 96 55.3 83
Ely11,12 US Ventilated ICU patients CAM-ICU Nurse or intensivist Not reported Psychiatrist, geriatrician Daily after admission 38 60 87
Fabbri18 Brazil Inpatients >60 admitted to emergency department Brazilian version of CAM-ICU Geriatrician Not reported Psychiatrist Within 24 h of admission 100 73.8 17
Laurila21 Finland Inpatients >70 admitted to acute geriatric wards Finnish version of CAM Geriatrician Not reported Geriatrician Within 6 h of admission in work days 81 85 39.5
Lin23 Taiwan Ventilated ICU patients Chinese version of CAM-ICU Research assistant Not reported Psychiatrist Within 5 days of admission 109 D: 73.9
ND: 73.3
22.4
Gonzalez19 Spain Inpatients >6S Spanish version of CAM General physician or psychiatrist 7 min Psychiatrist Not reported 133 77.7 24
Leung22 Hong Kong Inpatients >65 admitted to rehabilitation unit CAM, Nu-DESC Family physician CAM: 10 min Nu-DESC: 1 min Psychiatrist Within 48 hours of admission 100 83.4 25
Radtke25 Germany Postoperative patients in recovery room CAM, Nu-DESC Trained research assistant, supervised by a psychiatrist Not reported Same as screening test Patients ready for discharge from recovery room 154 53.8 14
Ryan27 Ireland Patients admitted to palliative care unit CAM Non consultant hospital doctor Not reported Psychiatrist Within 24 h of admission 52 67.3 31.5
Guenther32 Germany Patients admitted to surgical ICU CAM-ICU Intensivist and medical student 50 seconds Psychiatrist Within 4 h of admission 44 D: 74
ND: 61
46
Luetz8 Germany Postoperative patients admitted to ICU CAM-ICU Nu-DESC Physician and nurse Not reported Psychiatrist or intensivist 1st postoperative day 156 Range 64–80 40
Radtke26 Germany Postoperative patients CAM, Nu-DESC Trained research assistant, supervised by a psychiatrist CAM: 5 min Nu-DESC: 1.27 min Same as screening test 12 h before surgery and ended at 6th postoperative day or at hospital discharge 88 D: 68.7
ND: 64.7
19
Gusmao-Flores30 Brazil Patients admitted to medical and surgical ICU Portuguese version of CAM-ICU Intensivist Not reported Psychiatrist, neurologist, Not reported 119 57 38.6
van Eijk28 The Netherlands Patients admitted to ICU Dutch version of CAM-ICU Nurse Not reported Psychiatrist, geriatricians, neurologist Not reported 282 59 28
Heo20 Korea Ventilated and non-ventilated patients in ICU Korean version of CAM-ICU Nurse Not reported Psychiatrist Not reported 22 68 72.7
Neufeld34 US Patients admitted in oncology unit CAM-ICU Trained evaluator Not reported Psychiatry resident Daily assessment 117 57 26
Wongpakaran25 Thailand Inpatients Thai version of CAM Family physician 7.77 min Psychiatrist Within 72 hours of admission 66 74.5 56.1
Adamis33 Greece Patients admitted to ICU ≥24 hours Greek version of CAM-ICU ICU staff 6 min Psychiatrist Daily in the morning 71 61.5 33.8
Mitasova24 Czech Republic Inpatient with acute stroke CAM-ICU Physician A few min Neurologist, neurophysiologist 1st day after stroke till at least 7 days 129 72.5 42.6
Ryan35 Ireland Inpatients in general hospital CAM Medicine consultants or senior trainees Not reported Psychiatrist Within 6 hours of admission 280 69 19.6
Thomas31 Germany Inpatients ≥80 years old CAM Physician in training or gerontologist Not reported Psychologist or geriatrician 3rd day of admission 79 84.1 28
Wang36 China Patients admitted to ICU Chinese version of CAM-ICU Nurse Not reported Neurologist Daily assessment 126 74 48.4

Notes:

*

Indicates that if there is no specification, the English version was used in the assessment.

Abbreviations: CAM, Confusion Assessment Method; D, delirium group; Nu-DESC, the Nursing Delirium Screening Scale; ND, nondelirium group; ICU, intensive care unit; CAM-ICU, Confusion Assessment Method for the Intensive Care Unit

Study quality

There were no disagreements in quality assessment between the reviewers that affected the categorization of studies as high or low risk of bias (Table 3). All 22 studies were considered to have a low risk of bias with respect to the reference test part. However, 13 studies had a high risk of bias for the patient selection criteria due to the inappropriate exclusion of demented or psychotic patients who were easily confused with delirium patients. One quarter of studies did not explain whether the assessor was blinded either to the reference test or index test. Therefore, these potentially unblinded studies were assigned as “high risk” for bias. Approximately 20% of studies scored as unclear or a high risk of bias because the interval time between the two tests exceeded 3 hours. Most studies had high applicability. Only three studies had a high risk of bias for the patient selection criteria as a result of vague descriptions of inclusion and exclusion criteria.

Table 3.

Quality assessment of included papers

Study Risk of bias
Applicability
Patient selection Index test Reference standard Flow and timing Patient selection Index test Reference standard
Ely11,12 High Low Low Unclear Low Low Low
Ely11,12 High Low Low Low Low Low Low
Fabbri18 High Unclear Low Low High Low Low
Laurila21 Low Low Low Low Low Low Low
Lin23 High Low Low High Low Low Low
Gonzalez19 High Low Low Low High Low Low
Leung22 Low Low Low Unclear High Low Low
Ryan27 Low Low Low Low Low Low Low
Radtke25 High Unclear Unclear Low Low Low Low
Radtke26 High Unclear Unclear Unclear Low Low Low
Guenther32 High Low Low High Low Low Low
Luetz8 High Low Low Low Low Low Low
Wongpakaran29 Low Low Low Low Low Low Low
van Eijk28 Low Low Low High Low Low Low
Gusmao-Flores30 High Low Low Low Low Low Low
Heo20 High Unclear Unclear Unclear Low Low Low
Neufeld34 Low Low Low Low Low Low Low
Adamis33 Low Low Low Low Low Low Low
Mitasova24 High Low Low High Low Low Low
Ryan35 Low Unclear Unclear High Low Low Low
Thomas31 High Low Low High Low Low Low
Wang36 Low Low Low Low Low Low Low

Test accuracy of CAM and CAM-ICU

The psychometric properties of delirium screening tests are summarized in Table 2. Overall, CAM and CAM-ICU demonstrated similar performance characteristics when diagnosing delirium in both ventilated and nonventilated patients. The sensitivity of pooled CAM and CAM-ICU were 82% (95% confidence interval [CI]: 69%–91%) and 81% (95% CI: 57%–93%), respectively. The specificity of the two scales were 99% (95% CI: 87%–100%) and 98% (95% CI: 86%–100%), respectively. Figure 2 shows the bivariate summary estimates of sensitivity and specificity for CAM and CAM-ICU diagnostic accuracy. It also contains the 95% CI and prediction ellipses. The red dot shows the mean estimate of CAM-ICU, which was very close to CAM although the sensitivity was slightly lower. The solid line represents the 95% CI. We observed that CAM-ICU had a similar variance in comparison to CAM. The dotted lines represent the 95% prediction ellipses. As expected, CAM-ICU had a wider prediction range than CAM.

Table 2.

Diagnostic accuracy of included screening test

Test Sensitivity (%) Specificity (%) PPV (%) NPV (%) Reliability (%)
CAM
Fabbri18 94.1 96.4 84.2 98.7 86
Laurila21 81.2 83.7 76.5 87.2 Not reported
Gonzalez19 90 100 100 96.9 89
Radtke25 42.9 98.5 81.8 91.6 Not reported
Leung22 76 100 100 92.6 94
Ryan27 88.2 100 100 94.9 Not reported
Radtke26 74.9 100 Not reported Not reported 100
Wongpakaran29 91.9 100 100 90.6 91
Adamis33 Rater 1: 87.5 Rater 1: 91.5 Rater 1: 84 Rater 1: 94 75
Rater 2: 79.2 Rater 2: 87.2 Rater 2: 76 Rater 2: 89
Ryan35 71 83 75 80 Not reported
Thomas31 74 100 100 91 Not reported
Pooled CAM 82 (69, 91) 99 (87, 100)
CAM-ICU
Ely11,12 Nurse 1: 100 Nurse 1: 98 Nurse 1: 92 Nurse 1: 100 96
Nurse 2: 93 Nurse 2: 100 Nurse 2: 100 Nurse 2: 98
Ely11,12 Nurse 1: 95
Nurse 2: 96
Intensivist: 100
Nurse 1: 93
Nurse 2: 93
Intensivist: 89
Not reported Not reported 79–95
Lin23 Rater 1: 91 Rater 1: 98 Rater 1: 91 Rater 1: 98 91
Rater 2: 95 Rater 2: 98 Rater 2: 91 Rater 2: 99
Luetz8 81 96 Not reported Not reported 89
Guenther32 Rater 1: 88 Rater 1: 100 Rater 1: 100 Rater 1: 91 Rater 1: 94
Rater 2: 92 Rater 2: 100 Rater 2: 100 Rater 2: 94 Rater 2: 96
Gusmao-Flores30 72.5 96.2 90.6 87.4 Not reported
Heo20 Nurse 1: 89.8
Nurse 2: 77.4
Nurse 1: 72.4
Nurse 2: 75.8
Not reported Not reported 81
van Eijk28 46.7 98.1 94.6 72.2 63
Neufeld34 18 99 88 85 20
Mitasova24 76 98 91 94 94
Wang36 Nurse 1: 91.8 Nurse 1: 90.8 Nurse 1: 90.3 Nurse 1: 92.2 92
Nurse 2: 93.4 Nurse 2: 87.7 Nurse 2: 87.7 Nurse 2: 93.4
Pooled CAM-ICU 81 (57, 93) 98 (86, 100)

Note: Figures in brackets 95% CI.

Abbreviations: CAM, Confusion Assessment Method; CAM-ICU, Confusion Assessment Method for the intensive Care Unit; NPV, negative predictive value; PPv, positive predictive value; CI, confidence interval.

Figure 2.

Figure 2

Bivariate estimate of sensitivity and specificity.

Notes: Bivariate summary estimates of sensitivity and specificity for delirium screening test with 95% confidence and prediction ellipses. Upper left dots represent sensitivity and specificity of the Confusion Assessment Method and the Confusion Assessment Method for the intensive Care Unit. Smaller ellipses represent 95% confidence interval of sensitivity and specificity. Larger ellipses represent 95% confidence interval of prediction sensitivity and specificity. Red color represents the Confusion Assessment Method for the intensive Care Unit and the black color represents the Confusion Assessment Method.

Abbreviations: CAM, Confusion Assessment Method; CAM-ICU, Confusion Assessment Method for the intensive Care Unit.

Figure 3 shows the SROC curves for all 22 studies. Six studies were identified to deviate from the average ROC curves. Three studies had high specificity but low sensitivity while another three had moderate to high sensitivity and specificity. Otherwise, all other studies showed high values for both sensitivity and specificity. The funnel plot (Figure 4) shows the distribution of sensitivity and specificity across studies. A greater degree of homogeneity in specificity was observed across studies in comparison to sensitivity.

Figure 3.

Figure 3

Summary receiver operating characteristic curve of delirium screen scales.

Figure 4.

Figure 4

Funnel plot of delirium screen scales.

Abbreviations: TP, true positive; FP, false positive; FN, false negative; TN, true negative.

Due to a lack of an adequate number of studies, we could not perform subgroup analysis to investigate potential factors, such as patient characteristics, type of disease, and difference in assessors influence on accuracy. On the other hand, CAM shows a good reliability across the studies, ranging from 86% to 94%. CAM-ICU demonstrated more variance in reliability, ranging from 20% to 96% (Table 2).

Discussion

The diagnosis of delirium in different settings constitutes a challenge. Despite a variety of existing tools, limited information is available on the performance and psychometric properties of these tools. In the present systematic review and meta-analysis, we identified 22 papers with 2,449 patients which studied the accuracy of the two most commonly used tools (CAM and CAM-ICU) in the diagnosis of delirium over the past decade against the standard delirium diagnostic test (DSM-IV).

CAM and CAM-ICU are tools which can be administrated quickly, and have high sensitivity and specificity for early identification of delirium in a variety of hospitalized populations.

This review builds on previous work by Wei et al37 in 2006. In addition to the incorporation of more recent studies, we also employed QUADAS-2 for quality assessment and compared two statistical analysis methods when examining the accuracy performance of CAM and CAM-ICU, which had not previously been done. Overall, CAM and CAM-ICU showed moderate to high sensitivity, high specificity, and moderate to high reliability. Both tests can be administrated by health professionals with appropriate training to obtain the reliable results. In contrast to Wei et al’s finding,37 we observed higher specificity for both CAM and CAM-ICU in comparison to the sensitivity. This may be a result of differences in statistical methodology. However, the results shown in this paper support Wei et al’s recommendation that given the relatively low values of sensitivity (approximately 80%–85%), clinicians should not base delirium diagnoses solely on either CAM or CAM-ICU assessments; rather they should use the tests in addition to their clinical judgment.37

It is not surprising that CAM and CAM-ICU demonstrated similar diagnostic accuracy as they are derived from the same algorithm. However, it is worth noticing that there are wider variances of sensitivity than specificity when applying these two screening scales. The CAM diagnostic algorithm is comprised of four components: (1) an acute onset of mental status changes of fluctuating course; (2) inattention; (3) disorganized thinking; and (4) an altered level of consciousness. The diagnosis of delirium is based on the presence of both component 1 and 2, and either 3 or 4. Missing any of these diagnostic criteria due to inadequate training in assessment may underestimate the percentage of delirium cases, especially hypoactive patients. Another possible reason for the variance in sensitivity is the difference in the rate of sedative drugs included in the studies which affects the diagnostic accuracy of delirium.38

We also observed a wide range of reliability across studies, especially for CAM-ICU. It is plausible that sedatives39,40 widely used in critical care units were causing the fuctuation in delirium.11,12,41 Therefore, it is important to adhere closely to the screening protocol with regard to the point of time assessment, observation period, as well as to provide sufficient training to medical or research staff when conducting delirium assessments.42,43

To our knowledge, this is the first systematic review and meta-analysis to evaluate CAM and CAM-ICU in comparison to DSM-IV using the bivariate model and Moses-Littenberg method. We appraised all studies with recently revised QUADAS-2 to assess quality. However, in the current review, we are only able to compare two of the most popular delirium screening tools. Further studies may be warranted to expand these findings.

Conclusion

Both CAM and CAM-ICU are validated instruments in the diagnosis of delirium in a variety of medical settings, including the emergency department, the postoperative recovery room, in palliative care, the stroke unit, and the rehabilitation unit. Health professionals with appropriate training can achieve similar accuracy to experts specializing in psychiatric evaluation. CAM and CAM-ICU both present higher specificity than sensitivity. Health professionals should be cautiously interpreting these results as superior sensitivity is expected to a screening scale. The incidence of delirium may be underestimated due to the relatively high rate of false negatives in a low sensitivity scale. Therefore, CAM and CAM-ICU instruments should not be relied on alone for diagnosis, but that application of clinical judgment (presumably based on application of DSM) is essential to diagnose the presence and severity of delirium.

Acknowledgments

The authors thank Michael Manno for assistance of figures preparation.

Appendix 1: Search stategy

Database: Ovid MEDLINE

Searched March 11, 2013

1946 to March week 2 2013

1. exp Delirium/
2. deliri$.ti,ab.
3. or/1–2 Validated diagnosis filter
Validated diagnosis filter
4. (exp sensitivity/ and specificity/) or sensitiv*.ti,ab.
5. *diagnosis/ or diagnos*.ti,ab.
6. *Diagnostic Tests, Routine/ or diagnostic.mp.
7. *diagnosis,differential/
8. di.fs.
9. (Test or assessment or scale or checklist or instrument).mp. [mp = title, abstract, original title, name of substance word, subject heading word, protocol supplementary concept, rare disease supplementary concept, unique identifier]
10. 3 and (or/4–8) and 9
11. limit 10 to English language

Embase Classic+Embase <1947 to 2013 week 11>

Search Strategy:

1. exp delirium/
2. deliri$.ti,ab.
3. 1 or 2
4. exp “SENSITIVITY AND SPECIFICITY”/
5. sensitivity.tw.
6. specificity.tw.
7. ((pre-test or pretest) adj probability).tw.
8. post-test probability.tw.
9. predictive value$.tw.
10. predictive value$.tw.
11. *Diagnostic Accuracy/
12. 3 and (or/4–11)

PsycINFO 1806 to March week 2 2013

Search Strategy:

1. (delirium or deliria).mp.
2. exp sensitivity/ and specificity/) or sensitiv*.ti,ab.
3. *diagnosis/ or diagnos*.ti,ab.
4. *Diagnostic Tests, Routine/ or diagnostic.mp.
5. (Test or assessment or scale or checklist or instrument).mp. [mp = title, abstract, heading word, table of contents, key concepts, original title, tests and measures]
6. 1 and (or/2–4) and 5

Authors’ contributions

QS and JCM conceived the study. QS and LW performed the database searches. QS undertook the statistical analysis. QS contributed to the writing of the first draft of the manuscript. All of the authors contributed to and have approved the final manuscript. GS and JCM both contributed as senior authors.

Disclosure

The authors report no conflict of interest in this work.

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