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. Author manuscript; available in PMC: 2014 Apr 12.
Published in final edited form as: Public Health Genomics. 2013 Apr 12;16(3):10.1159/000349924. doi: 10.1159/000349924

Potential Bias in the Bank: What Distinguishes Refusers, Non-responders and Participants in a Clinic-based Biobank?

Jennifer L Ridgeway 1, Leona C Han 2, Janet E Olson 3, Kandace A Lackore 1, Barbara A Koenig 4, Timothy J Beebe 1, Jeanette Y Ziegenfuss 5
PMCID: PMC3821039  NIHMSID: NIHMS496983  PMID: 23595106

Abstract

Background

Biobanks are an important resource for genetic and epidemiologic research, but bias may be introduced if those who accept the recruitment invitation differ systematically from those who do not in attributes important to health-related investigations. To understand potential bias in a clinic-based biobank of biological samples, including genetic data linked to Electronic Medical Record information, we compared patient characteristics and self-reported information among participants, non-responders, and refusers. We also compared reasons for non-participation between refusers and non-responders to elucidate potential pathways to reduce non-participation and any uncovered bias.

Methods

We mailed recruitment packets to 1600 adult patients with upcoming appointments at Mayo Clinic (Rochester, MN) and recorded their participation status. Administrative data were used to compare characteristics across groups. We used phone interviews with 26 non-responders and 26 refusers to collect self-reported information, including reasons for non-participation. Participants were asked to complete a mailed questionnaire.

Results

We achieved 26.2% participation (n=419) with 12.1% refusing (n=193) and 61.8% non-response (n=988). In multivariate analyses, sex, age, region of residence, and race/ethnicity were significantly associated with participation. The groups differed in information-seeking behaviors and research experience. Refusers more often cited privacy concerns while non-responders more often identified time constraints as the reason for non-participation.

Conclusion

For genomic medicine to advance, large, representative biobanks are required. Significant associations between patient characteristics and nonresponse, as well as systematic differences between refusers and nonresponders, could introduce bias. Oversampling or recruitment changes, including heightened attention to privacy protection and participation burden, may be necessary to increase participation among less-represented groups.

Keywords: biobank, non-response, research participation, informed consent

Introduction

Biobanks are an increasingly important method of collecting health-related information for research. Some of these biobanks include access not only to a biorepository of genetic materials, but also access to linked medical record data and self-reported health information gathered through questionnaires. Biobanks aim to be large enough to facilitate research on a number of diseases, some of which may have higher prevalence in certain populations. Failure to include a large and diverse population limits researchers’ ability to use the biobank for research that requires large numbers of samples from specific subsets of the population. Furthermore, to the extent that characteristics of less-represented persons are associated with disease-related genetic variants, a less-diverse collection may hamper research in genetic links to disease or treatment.

Research relying on biobank data linked to health information, especially self-reported questionnaire data, raises additional questions about representativeness. Like most forms of health research, less than complete participation raises concerns over selection bias and representation whereby those who accept the invitation to supply their health information to a biobank may differ systematically from those who do not in terms of attributes important to health-related investigations. Bias in questionnaire data, which may help identify environmental or social risk factors related to health outcomes, further limits the potential of biobanks to serve as a resource to explore the interaction of genetics, patient characteristic, risk factors, and outcomes.

In order to understand issues related to potential bias in biobanks that would limit representativeness, researchers must understand how patient characteristics are associated with participation and non-participation. Prior research suggests that biobank participation may be associated with characteristics including age and race, but there is limited research on characteristics associated with refusal to participate compared to non-response to an invitation to participate in a clinic-based biobank.[13]

To increase the numbers and diversity of samples in a biobank, researchers must further study participant motivations and barriers to participation. People who choose to participate in biobanks have been found to do so for a variety of reasons, including potential benefits to self, family, or future generations, and a desire to help advance science.[47] Reasons for non-participation identified by previous studies include lack of time, inconvenience, need for a blood draw, privacy and confidentiality concerns, mistrust of institutions, and discomfort about genetic research.[2, 5, 6, 811] However, much of what is known about biobank participation is limited to people who had contact with biobank staff, i.e. participants and active refusers, or is limited to participants versus non-participants, thereby failing to capture differences between refusers and non-responders. The existing literature is also somewhat limited to results based on individuals’ views of whether they would participate in the future, rather than concurrent biobank recruitment, or to individuals being recruited to disease-specific biobanks that may be of specific interest to a narrower pool of potential participants. This study was designed to overcome these limitations by comparing characteristics of participants, non-responders, and active refusers—as well as the major reasons for not participating among the latter two groups—during actual recruitment to a large clinic-based biobank located in Southeast Minnesota.

Methods

Setting and participant recruitment

The Mayo Clinic Biobank is characterized as a collection of biological samples, as well as patient-reported health information from a mailed survey and information in the Electronic Health Record (EHR) (http://mayoresearch.mayo.edu/mayo/research/biobank/). The Mayo Clinic Biobank is not disease-specific. It includes samples and health information from patients and healthy volunteers age 18 and older regardless of health history. At the time of this study, the biobank included samples and information for more than 20,000 patients (58% female and 95% white, with a median age of 62 years). When patients consent to Biobank participation, they agree to allow researchers to access these data for future studies and to share data though federal de-identified biorepositories.

The biobank recruits participants by mail and through recruitment desks in two locations of Mayo Clinic in Rochester, MN. The mail recruitment sample is randomly drawn from patient appointment calendars, with recruitment targeted at primary care clinic appointments. Selected individuals are sent a mailed invitation to participate in the biobank. We limited this study to individuals recruited by mail over a one month period in August 2011. During this time period, 1600 biobank recruitment packets were mailed. The packets included general information about the biobank, a consent form, a form to select an incentive worth $20, a health questionnaire (containing questions about health behaviors, environmental exposures and family health history), and instructions for providing a blood sample. Half of the potential participants over this time period were randomized to packets including the original consent form, and half to packets including a simplified consent form designed specifically for this study. A study comparing participant comprehension of informed consent information by form type is reported elsewhere.[12]

The original consent form, in use since biobank recruitment began in 2009, was developed with input from the Mayo Clinic Biobank community advisory board (CAB). At that time the CAB advocated for concise documents in the informed consent process, but regulatory and institutional requirements eventually led to a longer and more detail-heavy consent form than the one proposed. The simplified form developed for this study built on the work of those involved in developing the original form, as well as a review of the literature on plain language and readability in research documents, including recent work on developing simplified consent forms.[1320] A draft of our simplified form was reviewed by members of the CAB and an external ethics consultant. Relative to the original form, the simplified form was shorter (6 vs. 11 pages), used language at a lower reading-grade level (7.9 vs. 9.8), included illustrations (4 pictures vs. none), and eliminated passive-voice sentences. Length was shortened by reducing redundancies without sacrificing important content. All ethical and legal requirements were still met in the simplified version of the form. The Mayo Clinic Institutional Review Board approved this study. All patients in the recruitment pool received a cover letter describing this study that provided them the opportunity to opt out of the biobank, this study, or both.

Study design

The recruitment process and data collection steps are shown in Figure 1. All patients in the recruitment pool were coded to one of three types of participation status: participant, refuser and non-responder. Patients were considered participants for this study when they returned a signed biobank consent form to study staff. We did not track participants to see if they completed the eventual blood draw or the health questionnaire necessary for biobank participation. The biobank protocol called for patients to receive a follow-up phone call at 14 days if there was no response to the recruitment packet. If there was no response after an additional 14 days, patients were considered to be non-responders. Patients were classified as refusers if they checked a box on the recruitment letter indicating their desire to opt out of the biobank and returned it to biobank staff. Patients could also opt out of this additional study by checking another box on the recruitment letter. Recruitment status was verified for all patients after the study period ended on December 15, 2011.

Fig. 1.

Fig. 1

Recruitment process, participation decisions and data collection. The study process started with recruitment of participants to the biobank. Based on their response to the invitation, individuals were classified as participants, nonresponders or refusers. Participants were asked to complete a mailed questionnaire, while refusers and nonresponders were recruited for a telephone interview. * Stratified by original and simplified consent form type. † The study protocol was for patients to receive a phone call reminder after 14 days. Due to staffing issues, not all patients received a call.

Study staff tracked the number and time of contacts and attempted contacts during recruitment, as well as when responses were received, and this information was stored in the study database. Patient characteristics, including age and sex, were identified from registration records for all patients in the study.

Patients who consented to biobank participation were sent a follow-up questionnaire specific to this study within 14 days of consent to gather information about personal characteristics and views on research. Also assessed at this time was comprehension of information included in the consent forms. Discussion of the results on informed consent comprehension is presented elsewhere.[12]

Refusers and non-responders to the biobank who did not opt out of this study were contacted by trained telephone interviewers from the Mayo Clinic Survey Research Center for a semi-structured interview about their reasons for non-participation and to gather information about personal characteristics and views about research. Respondents were assured that the interviewers were not trying to change their mind but rather were simply attempting to get information about their reasons for not participating. Interviewers used prompts to elicit further detail on reasons for non-participation if respondents said they were too busy or did not have time to participate. Interviewers contacted refusers and non-responders until they completed 26 interviews in each group (with each group stratified by consent form type: original or simplified version). Interviews were audio recorded for those patients who provided verbal consent. (Figure 1.)

Analysis methods

Quantitative analysis

We began with comparison of basic patient characteristics and response rates across the three groups. We compared responses on close-ended questions from refuser and non-responder phone interviews, as well as responses to questions that appeared in both the interview scripts and the participant questionnaire. Comparisons were made using the t test, χ2 test, or Fisher’s exact test where appropriate.

We used multivariable linear regression to determine whether consent form type, sex, age category, area of residence (based on the patient’s home address), and race/ethnicity were independently associated with recruitment outcomes. A variable indicating whether the patient received a follow-up reminder phone call was included in exploratory analyses. All statistical analyses were performed using SAS version 9.2 (SAS Institute Inc., Cary, NC). A significance level of 0.05 was used for all statistical analyses.

Qualitative analysis

The audio files of refuser and non-responder interviews were imported into NVivo version 9 qualitative data analysis software (QSR International, Victoria, Australia). A trained qualitative analyst listened to all audio files and transcribed verbatim the responses to open-ended questions directly in NVivo. Methods of content analysis were used to interpret the data. The analyst started with familiarization of the data and identification of a priori and emergent categories and then coded text to each of the categories. The coded text was analyzed within group (refusers and non-responders). All interview responses fit into at least one of the identified categories. Analytic memos describing interpretation of the results for the two groups were shared with the study team for review. Coded text was grouped into themes and translated into quantitative data in order to compare frequencies of reasons between refusers and non-responders. Although we did not test for significant differences between these groups, these data show the intensity of themes within each group.[21]

Results

Quantitative results

Patient characteristics and response rates

Our data file included the participation decision and demographic characteristics for all of the patients in the recruitment pool (n=1600). Over the study period, the biobank achieved a 26.2% participation rate (n=419) with an additional 12.1% actively refusing participation (n=193) and 61.8% not responding (n=988). Table 1 shows the results of four multivariate logistic regression models. In model 1, female sex, age categories 45 and older, residence outside the 11-county region where Mayo Clinic is located, and non-Hispanic white race/ethnicity were positively associated with participation relative to non-participation. The simplified consent form was associated with lower odds of participation. In model 2, non-response relative to participation, we found that the simplified form was associated with increased odds of non-response, while female sex, age categories 45 and older, residence outside of Minnesota, and non-Hispanic white identification were associated with lower odds of non-response. In the model of refusal versus participation, model 3, age 75-plus was associated with increased odds of refusal, while residence outside the region was associated with lower odds of refusal. In model 4, refusal versus non-response, female sex and older age categories were associated with increased odds of refusal, while living in other areas of Minnesota or in states outside the Midwest was associated with lower odds of refusal. (Table 1.)

Table 1.

Multivariate-adjusted ORs for participation, non-response, and refusal to participate in the Biobank

Characteristic Model 1: Participant vs. non-participation* (N=1600)
Model 2: Non-responder vs. participant (N=1407)
Model 3: Refuser vs. participant (N=612)
Model 4: Refuser vs. non-responder (N=1181)
Adj. OR P Value Adj. OR P Value Adj. OR P Value Adj. OR P Value




Simplified consent form 0.67 <0.001 1.53 <0.001 1.31 0.15 0.85 0.32
Female 1.38 <0.01 0.67 <0.01 0.97 0.87 1.49 0.02
Age category
 Age 21–34 1 [Ref.] 1 [Ref.] 1 [Ref.] 1 [Ref.]
 Age 35–44 1.38 0.21 0.69 0.15 1.10 0.82 1.61 0.21
 Age 45–54 1.92 <0.01 0.47 <0.001 1.07 0.85 2.24 0.02
 Age 55–64 2.14 <0.001 0.38 <0.0001 1.76 0.13 4.54 <0.0001
 Age 65–74 2.77 <0.0001 0.26 <0.0001 2.00 0.06 8.18 <0.0001
 Age 75+ 2.49 <0.001 0.27 <0.0001 2.52 0.02 10.13 <0.0001
Area of residence
 Olmsted County 1 [Ref.] 1 [Ref.] 1 [Ref.] 1 [Ref.]
 Southeast MN 0.80 0.24 1.26 0.25 1.49 0.13 1.22 0.39
 Other MN 1.49 0.02 0.74 0.11 0.48 <0.01 0.59 0.04
 IA, WI, ND, SD 1.94 <0.001 0.61 0.02 0.30 <0.001 0.55 0.06
 Other US 1.45 0.03 0.81 0.24 0.43 <0.01 0.51 <0.01
Non-Hispanic white 1.60 0.01 0.64 0.02 0.61 0.07 0.93 0.78

Abbreviations: Ref., reference; Adj. OR, adjusted odds ratio

*

Non-participation includes non-responders and refusers

Southeast MN is the eleven counties surrounding and including Olmsted County

Other MN is all other counties in MN except those in Southeast MN

Biobank knowledge

We received 305 study questionnaires from the 419 participants (72.8% response) and completed telephone interviews with 26 non-responders and 26 refusers. Among refusers and non-responders contacted for a phone interview, there were no significant differences on sex, age, area of residence, or race/ethnicity between those who agreed to phone follow-up and those who did not. Among participants, there were significant differences on age and race/ethnicity between those who returned the study questionnaire and those who did not, with higher shares of older participants and non-Hispanic white participants returning the questionnaire.

As shown in Figure 2, participants, refusers and non-responders had similar knowledge but differing information seeking behavior. Only 20% of participants had prior knowledge of the Mayo Clinic Biobank, compared with 23% of refusers and 19% of non-responders (differences not significant). There were significant differences between groups when people were asked if they looked for information to help them make a decision about participating in the biobank (42% of participants, 26.9% of refusers, and 7.7% of non-responders, p<0.001). Respondents were specifically asked if they consulted biobank staff (in person or by phone), a family member, a friend or co-worker, a health care provider, the internet, or some other source. People who looked for information most often cited family members as their source, followed by biobank staff (in-person or by phone). Fewer people consulted a friend or coworker, a health care provider, or the internet.

Fig. 2.

Fig. 2

Biobank knowledge and research participation by group. Refusers, nonresponders and participants were asked whether they had heard of the Mayo Clinic Biobank before receiving the recruitment packet in the mail. They were also presented with a list of resources, such as the Biobank staff and family member, and asked whether they had consulted any of these resources or any other resource in making their participation decision. Individuals who consulted any resource are included as having looked for information in the second set of columns. Individuals were asked to report how much of the consent form they read in 5 categories ranging from ‘all of it’ to ‘none of it.’ The final set of columns displays those who reported that they read all or most of the document. p-Values were calculated using Fisher’s exact test.

There were also significant differences in the share of people who read all or most of the consent form (79.2% of participants, 69.2% of refusers, and 23.1% of non-responders, p<0.001). Among participants, more than three-fourths of patients read all or most of the form regardless of whether they received the original or the simplified version (77.8% vs 74.6% respectively, p=0.52). The proportion who read all or most of the form was higher for patients who received the simplified version than the original version in the refuser and non-responder groups (84.6% vs 53.8%, p=0.20, and 30.8% vs 15.4%, p=0.64, respectively).

Views on research

As shown in Figure 3, refusers were much more likely than non-responders to have participated in medical research in the past (65% vs. 27%, p=0.005), but they were equally likely to claim that they would participate in the future. Findings were also similar on questions about confidentiality of medical information and privacy of genetic information, with about half of people in each group responding that they were concerned or very concerned about these issues. (Figure 3.)

Fig. 3.

Fig. 3

Views on research, refusers and nonresponders. Refusers and nonrefusers were asked if they had ever participated in medical research in the past (yes/no) as well as being asked a question about whether they would participate in the future on a 4-point scale from ‘very likely’ to ‘very unlikely’. In separate questions, respondents were asked how concerned they were about the confidentiality of their medical information and the privacy of their genetic information using a 4-point scale from ‘very concerned’ to ‘not at all concerned’. p-Values based on χ2 test.

Qualitative results

Interviews with refusers and non-responders provided greater detail on reasons for non-participation. Table 2 lists the main themes from interviews: being too busy to participate, and concerns about confidentiality. There were notable differences in the prevalence of these themes between refusers and non-responders, as shown in Figure 4. A majority of non-responders (n=19, 73%) said they were too busy or didn’t have time to complete one of the biobank participation requirements including reading the materials (n=5) or completing the survey (n=4). Most interviewees gave general feedback about being “too busy,” in many instances noting feeling overwhelmed by things going on in their life and biobank participation being a low priority for them.

Table 2.

Overview of reasons for non-participation in the Mayo Clinic Biobank, qualitative interview questions with refusers and non-responders

Theme Subtheme Illustrative quote
Too busy to participate Not enough time to complete the study materials “I just looked at it, and it was so thick, it was several pages, and I thought I just don’t have time for that now.” [Male, age 53 (non-responder)]
“Well, I started to fill out the paperwork, I wanted to, but it was just way too much to fill out and I was really busy.” [Female, age 70 (non-responder)]
Not a priority given life demands “I had 11 different things going on at once. It wasn’t at the top of my list.” [Male, age 51 (non-responder)]
“Just busy. Right now my life is planning a wedding and moving…Just chose not to do it. I had other things that were a priority for me.” [Female, age 27 (non-responder)]
Concerns about confidentiality of medical information or privacy of genetic information Concerned about sharing information with researchers outside Mayo Clinic “I would be down there in five minutes if it was just strictly for Mayo. But this day and age, yes, they tell me you’re a bar code, but I’m a firm believer that somewhere down the line that bar code is going to turn into a name.” [Male, age 71 (refuser)]
“I have participated in research at Mayo before, but this is a privacy issue. I don’t think I want Mayo Clinic giving my information, especially my genetic information, to someone else.” [Male, age 70 (refuser)]
Concerns about electronic data storage “Things are getting so, with the internet, you can find out a lot of stuff really easy. I guess personally I don’t know anyone who has really been affected by that but you hear stories…five years ago I would not have been concerned at all. I’m probably more concerned now.” [Female, age 55 (refuser)]
Concerns about information getting into the wrong hands “When I was reading the consent, there was a part in there that said, I can’t quite remember, that they wouldn’t be able to protect or confirm that my blood sample would possibly be in the hands of future people who make decisions with insurance and life insurance and that kind of stuff.” [Female, age 51 (refuser)]

Fig. 4.

Fig. 4

Reasons for nonparticipation, refusers and nonresponders. Refusers and nonresponders were asked to report the reason for their participation decision. Responses were coded to these themes and frequencies were compared between groups.

In contrast, only three refusers noted being too busy as a reason for non-participation (12%). One woman who stated a time constraint specified that she would have participated if the survey was online; she indicated that the materials stated a tighter turnaround time than she was able to meet. Another said she might have participated if remuneration made it worth her while. Unlike non-responders this group did not state that they were “just too busy” or indicate that they were overwhelmed by other things going on in their lives, although three people indicated poor health as being the reason for not participating. Instead patients cited specific reasons for refusing such as decisions not to travel to Mayo Clinic for their care (biobank participants usually coordinate the blood draw with a scheduled clinic appointment time) or the inconvenience of traveling back and forth to Mayo Clinic (with two people noting that they believed there was a chance that they would need to travel to Mayo Clinic again for something related to the biobank study), or negative feelings about Mayo Clinic, going to the doctor, or giving blood. One noted a concern that Mayo Clinic could “end up making a large profit from it, rather than using it purely for research,” and one person said that the materials led him to believe that he would incur medical costs by participating.

While both groups answered similarly on questions about confidentiality of medical information and privacy of genetic information, refusers were more likely to cite this as the reason for their non-participation. In particular, they noted concerns about sharing information with researchers outside Mayo Clinic, concerns about electronic data storage, and concerns about information getting into the wrong hands, e.g. people that make insurance decisions.

Discussion

Our study sought to identify characteristics of biobank participants, refusers, and nonresponders so that we could begin to understand potential nonresponse bias and decision factors for the latter two groups. We found that there are differences not only between participants and non-participants, but between refusers and non-responders. Women and older patients were more likely to respond to the biobank recruitment packet, whether to participate in the biobank or to notify staff that they were refusing, than to ignore the Biobank invitation altogether. We had hoped that the simplified consent form designed for this study would increase participation and appeal to young patients in particular, but our results did not provide any evidence that it resulted in recruitment gains. If biobanks strive to ensure adequate representation of men, younger patients, and minority patients, oversampling or strategies other than mere modification of the consent process may be necessary.

Generally we saw that individuals who actively refused to participate in the biobank were informed and engaged patients. They were just as likely as participants and non-responders to have heard about the biobank in the past, and they actively sought information about the biobank. One in four refusers said they looked for information to help them make a decision, and two-thirds said they read all or most of the consent form—nearly as many as in the participant group. Although our interview numbers were too small to detect a significant difference (13 refusers who received the original form and 13 that received the simplified version), we did find that a higher share of refusers who received the simplified form read all or most of it than refusers who received the original form (84.6% vs 53.8%, p=0.20), suggesting that those refusers may have had more information about the biobank.

If these patients make non-participation decisions after less complete review of the mailed materials and if further review would have led them to agree to participate based on better comprehension, biobank staff may need to consider the delivery of key messages up front or in a manner that is more easily and immediately understood. Likewise, assessment of perceived burden deserves more attention. Both the original and simplified consent forms were accompanied by several other materials, including the health questionnaire. Future research should better assess not only which participation requirements or recruitment materials add to the perception of burden, thus helping biobank staff determine an acceptable level of burden in the non-responder group. This information would be beneficial to future recruitment efforts.

The level to which refusers and non-responders were engaged in information seeking behaviors related to the biobank also helps explain findings on confidentiality concerns. Refusers and non-responders were equally concerned about the confidentiality of their medical information and the privacy of their genetic information, but only refusers, who were far more likely to read the consent materials, cited that as a reason for non-participation. Nonresponders, on the other hand, may have been too busy to read the materials enough to understand the potential risks around data disclosure. While it is always important for patients to fully read and comprehend the informed consent materials before they decide to participate in research, failing to understand and adequately consent to biobank participation may raise unique concerns given the unknowns regarding future use of samples. Poor comprehension could also lead to poorly-informed non-participation decisions. Issues like profit-making, costs, and risks to data privacy were addressed in our consent document, but the interviews with non-participants revealed that some respondents did not accurately recall that information. Research by Han et al. shows that participants perform poorly on key questions about information in the consent document (regardless of whether the patient received the original or the simplified form),[12] but it is possible that refusers are better informed. Future assessment of consent comprehension among non-participants could add to understanding on this issue, including whether there are key issues about biobanking that are most influential in refuser and non-responder decision making specifically.

Our findings are consistent with other studies that identified concern about confidentiality and privacy of information, concerns about data sharing, and trust in the institution as issues, but we add to the literature by identifying reasons for non-responders and refusers separately and in a real world recruitment situation. An important strength of this study was that we were able to observe actual participation decisions. Our results showing refusers were more likely than non-responders to participate in research in the past but equally likely to say they would participate in the future confirms that hypothetical research questions may give biased results.

While our study has a number of strengths, potential limitations warrant mention and consideration. First, Mayo Clinic patients may have built a trust with Mayo Clinic that may or may not translate to biobanks constructed in other contexts and/or for other purposes. These issues may be especially important for biobanks where participation involves a blood draw, a health questionnaire, and access to medical record data into an unknown future. Second, due to staffing limitations, not all patients received a follow-up phone call if they did not respond to the recruitment packet within 14 days, as was the protocol. However, we explored the influence of this phone call in multivariate analysis and found that this did not affect our findings. Third, we did not follow-up with a representative sample of refusers and non-responders. Rather, these were individuals we were able to contact through phone follow-up and who agreed to be interviewed. As such, they are not complete abstainers from research by the very nature of this inclusion criterion. Furthermore, we limited the telephone interviews in length to reduce barriers to recruitment in the interview, but more in-depth interviews would likely have yielded richer data to inform our results and in-person interviews would have allowed for greater probing on issues related to materials and remove concerns about interviewee recall. Nonetheless we believe that this limitation is not unique to this particular investigation. Finally, our research is restricted to requests to participate in a single biobank at one point in time. Findings may not be fully generalizable, but they may apply to other biobanks that recruit patients by mail coordinated with a scheduled clinical visit.

In conclusion, significant associations between patient characteristics and nonresponse, as well as systematic differences between refusers and nonresponders, could introduce bias in biobank research. Oversampling or changes in biobank recruitment procedures, including heightened attention to privacy protection, may be necessary to increase participation among less-represented groups if the biobank is to be a large, diverse resource for genetic research. Future research with a wide range of patient groups, including young men and people from a variety of racial or ethnic groups, should be undertaken to supplement the small but burgeoning literature on reasons for biobank participation, refusal, and nonresponse.

Acknowledgments

This research was conducted at Mayo Clinic, Rochester, MN

The authors would like to thank the staff of the Mayo Clinic Biobank, especially Jodi Morrisette and Kari Anderson, as well as the staff of the Mayo Clinic Survey Research Center and the Biomedical Ethics Research Unit, especially Marguerite Robinson. This research was presented at the Academy Health Annual Research Meeting, June 24–26, 2012, Orlando, FL.

Source of Funding

The project described was supported by Grant Number U01 HG04599 from the National Human Genome Research Institute and by CTSA Grant Number UL1 TR000135 from the National Center for Advancing Translational Sciences (NCATS), a component of the National Institutes of Health (NIH). This project was additionally supported by the Mayo Clinic Center for Individualized Medicine.

Footnotes

Conflicts of Interest

The authors declare no conflicts of interest with this work, financial or otherwise.

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