Abstract
Introduction
The United States Centers for Disease Control and Prevention (CDC) advises testing individuals for COVID-19 after exposure or if they display symptoms. However, a deeper understanding of demographic factors associated with testing hesitancy is necessary.
Methods
A US nationwide cross-sectional survey of adults with risk factors for developing severe COVID-19 (“high-risk” individuals) was conducted from August 18–September 5, 2023. Objectives included characterizing demographics and attitudes associated with COVID-19 testing. Inverse propensity weighting was used to weight the data to accurately reflect the high-risk adult US population as reflected in IQVIA medical claims data. We describe here the weighted results modeled to characterize demographic factors driving hesitancy.
Results
In the weighted sample of 5019 respondents at high risk for severe COVID-19, 58.2% were female, 37.8% were ≥ 65 years old, 77.1% were White, and 13.9% had a postgraduate degree. Overall, 67% were Non-testers (who indicated that they were unlikely or unsure of their likelihood of being tested within the next 6 months); these respondents were significantly more likely than Testers (who indicated a higher probability of testing within 6 months) to be female (60.2 vs. 54.1%; odds ratio [OR] [95% confidence interval (CI)], 1.3 [1.1‒1.4]), aged ≥ 65 years old (41.5 vs. 30.3%; OR [95% CI] compared with ages 18‒34 years, 0.6 [0.5‒0.7]), White (82.1 vs. 66.8%; OR [95% CI], 1.4 [1.1‒1.8]), and to identify as politically conservative (40.9 vs. 18.1%; OR [95% CI], 2.6 [2.3‒2.9]). In contrast, Testers were significantly more likely than Non-testers to have previous experience with COVID-19 testing, infection, or vaccination; greater knowledge regarding COVID-19 and testing; greater healthcare engagement; and concerns about COVID-19.
Conclusions
Older, female, White, rural-dwelling, and politically conservative high-risk adults are the most likely individuals to experience COVID-19 testing hesitancy. Understanding these demographic factors will help guide strategies to improve US testing rates.
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Why carry out this study? |
COVID-19 continues to be a major public health threat in the United States despite the availability of effective treatment for adults at high risk of progression to severe disease. |
Testing for COVID-19 is the first step toward receiving treatment and is recommended for those experiencing symptoms or who have been exposed; however, evidence suggests that many individuals are hesitant to be tested for COVID-19. |
In this study, a cross-sectional survey was used to identify the demographic, experiential, attitudinal, and healthcare engagement factors associated with COVID-19 testing hesitancy among US adults at high risk of progression to severe disease. |
What was learned from the study? |
Testing hesitancy was associated with female sex, White race, older age, rural communities, and conservative politics, whereas greater likelihood of testing was associated with past COVID-19 experience, greater knowledge of COVID-19–related topics, greater healthcare engagement, and greater concerns surrounding COVID-19. |
Future strategies to improve testing rates among US adults at high risk of COVID-19 can be optimized by tailoring interventions to the patient signatures that are characterized by the greatest rates of testing hesitancy, which may transcend typical social determinants of health. |
Introduction
In the United States, there have been more than 1 million deaths attributed to COVID-19 [1]. In May 2023, the World Health Organization declared that COVID-19 is no longer a public health emergency of international concern, citing declining mortality and morbidity rates and the considerable SARS-CoV-2 immunity levels in the population [2]. Despite the end of the public health emergency, however, COVID-19 remained a leading cause of US deaths in 2022 [3]; 300–500 Americans were dying each week from COVID-19, and many more were facing acute or chronic illness as a result of infection [4]. As of November 2023, COVID-19 was the cause of nearly 20,000 weekly hospitalizations and 2.5% of all weekly deaths reported in the United States [5]. Therefore, the US Centers for Disease Control and Prevention (CDC) continue to recommend SARS-CoV-2 testing for anyone who is experiencing COVID-19 symptoms or who has a known exposure to a SARS-CoV-2–positive individual [6].
The burden of poor COVID-19 outcomes is greatest among certain populations, including individuals aged ≥ 65 years and those with certain comorbidities including obesity; diabetes; chronic heart, kidney, lung, and liver disease; and an immunocompromised state [7,8,9] (termed “high-risk” individuals). These individuals remain particularly vulnerable to developing severe COVID-19 outcomes, including hospitalization and death, and surveillance and treatment remain critical to protect these vulnerable populations. Preventing these individuals from contracting SARS-CoV-2 is one important goal of testing, so that those who test positive can quarantine and avoid spreading the virus to those who may have risk factors for progression to severe disease [6, 10].
Another important goal of SARS-CoV-2 testing is to diagnose COVID-19 early so that affected individuals can be treated for the disease. In the United States, nonhospitalized adults and adolescents with mild to moderate COVID-19 who are at high risk of progression to severe disease are recommended to receive antiviral treatment in the following order of preference: nirmatrelvir/ritonavir, remdesivir, or molnupiravir (as an alternative for use in patients aged ≥ 18 years when preferred therapies are either unavailable, not feasible, or clinically inappropriate) [11]. Efficacy of treatment with nirmatrelvir/ritonavir in clinical trials has been demonstrated only with early commencement of antiviral therapy (i.e., within 5 days of symptom onset) [12], underscoring the need for timely testing and subsequent connection to care.
Despite CDC recommendations and the importance of testing for COVID-19, it is unclear to what extent individuals in the United States are getting tested when clinically indicated [13]. Many adults across countries including the United States experience testing hesitancy, defined as the reluctance or refusal to have oneself tested for COVID-19; this has been associated with various barriers including low health literacy or exposure to misinformation, lack of trust in the healthcare system, confusion regarding testing guidelines, limited testing site availability, fear of social stigma, fear of missed work and income due to a positive test, and perceiving the test as painful [10, 13,14,15,16]. In a previous survey of US adults, up to 30% of respondents indicated uncertainty or lack of willingness to be tested for COVID-19 [13]. However, there are limited data on the individual characteristics and beliefs that may be associated with testing hesitancy among high-risk adults in the United States.
Here, we conducted a nationwide survey designed to determine the demographic, experiential, and attitudinal factors associated with COVID-19 testing hesitancy among US adults at high risk for progression to severe COVID-19 during the Omicron era. Specifically, we asked whether testing hesitancy was associated with demographic factors such as age, gender, race/ethnicity, educational attainment, income level, and political affiliation. We also asked whether testing hesitancy was associated with previous COVID-19 diagnosis, vaccination, treatment, or level of engagement with the healthcare system. The goal was to identify factors that may drive testing hesitancy to ensure that interventions aiming to improve testing rates are tailored to the populations with the greatest need.
Methods
Study Design and Inclusion Criteria
This cross-sectional study was conducted through distribution of a survey regarding participants’ demographic and clinical characteristics, as well as experience with and attitudes toward COVID-19 and COVID-19 testing. The approximately 15-min online survey was distributed between August 18, 2023, and September 5, 2023. For inclusion, participants had to be aged ≥ 18 years and at high risk of developing severe complications from COVID-19 should they become infected; high risk categorization was based on criteria set forth by the CDC as of August 2023 [9].
Eligible participants were identified and recruited through clinical sites, physicians and other healthcare providers, referrals, advocacy group partnerships, and patient panels. An online screening tool was used to assess eligibility; patients deemed eligible were required to complete an informed consent form before they could receive a link to the survey. All participation was voluntary, and no monetary compensation was provided for survey respondents. The protocol was reviewed and approved for exemption by the local Institutional Review Board, WCG Clinical, under Title 45 CFR Sect. 46.104(d)(2).
Survey Design and Piloting
Survey topics and questions were designed by referencing previous peer-reviewed publications regarding testing hesitancy and/or vaccine hesitancy [10, 13, 17, 18], US census demographic questions [19], and the US Census Household Pulse survey [20]; some survey questions were generated de novo through author collaboration. After the initial survey was prepared, it was rigorously tested by readers not involved in survey design to gauge appropriate length and readability. The survey then underwent a “soft launch,” during which it was distributed to 50 participants, and their responses were reviewed before full distribution.
The appropriate sample size to target when distributing the survey was determined through power analysis using a one-sample chi-square test for proportions [21]. To ensure sufficient statistical power, we recruited a total of 5000 participants, and each high-risk cohort was represented by a minimum of 50 respondents. To maximize participation and achieve the target sample, multiple survey samples were sent, and reminder invites were sent to those who had not yet participated.
Survey Questions
The survey is included in its entirety in the Supplementary Material. Participants were asked to fill out demographic and clinical information such as age, sex/gender, race, ethnicity, highest level of educational attainment, and annual household income, as well as identifying any conditions placing them at high risk of developing severe complications from COVID-19 [9]. To assess testing hesitancy, participants were asked the question, “In the next 6 months, how likely are you to test for COVID-19?” The 6-month window of evaluation was selected to include the winter respiratory season (based on distribution of the survey from August to September) but to be a limited enough horizon that the results could be interpreted meaningfully. When asked this question, participants could respond “definitely,” “probably,” “unsure,” “probably not,” or “definitely not.” For the purposes of the analysis, those who replied “definitely” or “probably” were defined as “Testers,” and those who replied “unsure,” “probably not,” or “definitely not” were defined as “Non-testers.”
To understand more nuanced factors potentially associated with the likelihood of being a Tester or Non-tester, participants were asked a series of questions regarding their knowledge about COVID-19–related topics, for which they could indicate that they were “not at all knowledgeable” or “un-knowledgeable” (grouped for analysis as “not knowledgeable”); “somewhat knowledgeable”; or “knowledgeable” or “extremely knowledgeable” (grouped for analysis as “proficient”). They were also asked to provide their typical frequency of healthcare provider visits and any recent hospitalizations, their past experience with either COVID-19 diagnosis or vaccination, and their general attitudes and concerns regarding COVID-19. To assess attitudes, participants were asked to indicate their level of agreement with various statements (e.g., “If I have symptoms of COVID-19, it’s important to me to test for COVID-19 right away”) by responding “completely disagree,” “disagree,” “unsure,” “agree,” or “completely agree.” Of note, those who responded “agree” or “completely agree” may also still be categorized as “Non-testers” based on responses to the query described above regarding their likelihood of testing for COVID-19 within the next 6 months. Each option was assigned a respective numeric value from 1 to 5 to calculate an average response value for Testers compared with Non-testers.
Data Analysis
To ensure generalizability of survey results to the population of US adults with COVID-19 risk factors, raw survey data were adjusted using inverse propensity weighting (IPW)[22]. This method was conducted by comparing demographic and clinical characteristics of the survey population with the same characteristics among a selected target population of 116 million high-risk patients (defined using the International Classification of Diseases-10 diagnosis codes; see Supplementary Material) within IQVIA medical claims data, an office-based database capturing > 75% of American Medical Association providers. Dating back to 2000, the IQVIA database sources over > 1.5 billion medical claims per year, which represent transactions for services performed by physicians in office, ambulatory, or general healthcare sites that are billed using the 837p (CMS-1500) claim form. Key attributes include patient and provider demographics; diagnosis, procedure, and treatment information; and insurance and cost details. The IPW technique adjusted for survey sample selection bias by matching the survey sample distribution to the target population. The propensity score of each respondent being sampled was calculated using demographic variables of sex/gender, age, and 14 selected high-risk conditions (Table 1); these variables were selected because they were common features available in both survey and IQVIA claims data and were similarly defined in the two datasets.
To estimate propensity scores, we initially selected a sample of high-risk patients from the IQVIA database. The selection was conducted at a ratio of 20:1 with respect to the number of survey respondents. Subsequently, logistic regression and XGBoost models were employed to compute the propensity scores. The weights were then calculated as the reciprocals of the propensity scores and were standardized to match the number of survey respondents. XGBoost, a gradient boosting framework that utilizes decision-tree–based ensemble machine learning [23], was chosen for its potential to yield superior results compared with logistic regression when using propensity score weighting for specific datasets [24]. The XGBoost model was able to calculate weights that closely aligned with the characteristics of the target population and was therefore selected for generating final inverse probability weights.
Statistical comparisons were conducted using Python Statsmodels module (Python version 3.6.8, Statsmodels version 0.12.2) to calculate odds ratios (ORs) and 95% CIs. Weighted univariate logistic regression was used to examine the association between the focal independent variables and COVID-19 testing hesitancy. Average attitudes were compared between Testers and Non-testers using Student’s t tests, where P < 0.05 was considered significant.
Results
Respondent Population
The survey was distributed to 35,000 individuals, of whom 9225 (26.4%) clicked on the distributed link to review the screening tool. Out of those 9225 individuals, 4104 either did not meet eligibility criteria, did not provide informed consent, or did not pass quality control; 13 began but did not complete the survey; and 5019 respondents (54.4%) completed all survey questions and comprised the full survey population. The population included a diverse sample of high-risk US adults representing several races, ethnicities, and levels of educational attainment; 66% were female, 52% were ≥ 50 years old, 77% were White, 45% had at most a high school education or General Educational Development Test (GED), and 84% had a household income of < $100,000 per year. The most commonly reported conditions placing respondents at high risk of developing severe COVID-19 complications were smoking (current or previous) and substance use disorders (n = 2356). Other commonly reported conditions included mental health disorders (e.g., anxiety, post-traumatic stress disorder, bipolar disorder, depression, or schizophrenia; n = 1877), inactive lifestyles (including being overweight or obese; n = 1274), and type 1 or type 2 diabetes (n = 1162).
Inverse Propensity Weighting
Several important characteristics were dissimilar between the respondent population and the target population (Table 1; Supplemental Fig. 1). Specifically, survey respondents were more likely to be female, aged < 50 years, and have certain comorbidities, such as smoking/substance abuse (including being a current or former smoker) or a physical or mental disability. After IPW, the weighted survey distribution aligned well with the target population, where absolute standard mean differences were all < 0.1 (Table 1; Supplemental Fig. 1). Of the weighted population, 58.2% were female, 77.1% were White, 33.4% were politically conservative, 37.8% were ≥ 65 years old, 13.9% had a postgraduate degree, and 82.8% had a household income of < $100,000 per year (Table 2).
Respondent Demographics Associated with COVID-19 Testing Hesitancy
Overall, 3370 out of 5019 respondents in the weighted population (67.1%) indicated a low probability of being tested for COVID-19 within the next 6 months and were therefore classified as Non-testers (Supplemental Fig. 2). The likelihood of being a Non-tester was significantly associated with several demographic characteristics (Table 2; Fig. 1). Compared with Testers (those who indicated a high probability of being tested in the next 6 months), Non-testers had a significantly greater representation of respondents who were female (OR [95% CI], 1.3 [1.1‒1.4]), aged ≥ 65 years (OR [95% CI] compared with ages 18‒34 years, 0.6 [0.5‒0.7]), White (OR [95% CI] compared with all respondents who indicated a race other than White, 1.4 [1.1‒1.8]), of non-Hispanic ethnicity (OR [95% CI] compared with all respondents who indicated Hispanic, Latino, or Spanish origin, 0.6 [0.5‒0.7]), and politically conservative (OR [95% CI] compared with respondents who indicated liberal politics, 2.6 [2.3‒2.9]). Regional trends were apparent as well, such that respondents in the Northeast region of the United States were significantly more likely to be Testers compared with respondents from the Midwest (OR [95% CI], 1.9 [1.6‒2.3]), South (OR [95% CI], 1.4 [1.2‒1.6]), or Western regions (OR [95% CI], 1.2 [1.0‒1.5]). Non-testers were also underrepresented among respondents from urban areas compared with either suburban (OR [95% CI], 1.6 [1.4‒1.9]) or rural communities (OR [95% CI], 2.0 [1.7‒2.4]).
Respondents with a postgraduate degree (either Master’s, professional, or doctoral degree) comprised a lower percentage of Non-testers versus Testers (12.5 vs. 16.7%; Table 2); this difference was significant when compared with respondents whose highest level of education was a high school diploma or GED, a Bachelor’s degree, or other, but was not significant in comparison with those who reported no schooling/some high school or an Associate’s degree (Fig. 1). There were no clear associations between likelihood of being a Non-tester and household income (Table 2; Fig. 1): Non-testers versus Testers had a smaller percentage of respondents earning both the lowest and the highest incomes.
Perceived Level of COVID-19 Knowledge Associated with COVID-19 Testing Hesitancy
Non-testers reported feeling less knowledgeable about COVID-19 compared with Testers (Fig. 2). Significant ORs for differences in percentages of Non-testers who reported themselves as “Not knowledgeable” versus “Proficient” were regarding the topics of conditions associated with high risk of developing severe COVID-19 (OR [95% CI], 1.3 [1.1‒1.7]), where to find COVID-19 at-home tests (OR [95% CI], 1.7 [1.3‒2.1]), and where to find information about getting those tests (OR [95% CI], 1.4 [1.1‒1.7]).
Past COVID-19 Experience and Associations with COVID-19 Testing Hesitancy
Compared with Non-testers, Testers were more likely to report previous experiences with COVID-19 testing, diagnosis, vaccination, death of someone they knew, or treatment (Fig. 3). Specifically, Testers included higher percentages of respondents who had been tested for COVID-19 within the past 12 months (OR [95% CI], 4.9 [4.2‒5.6]); Fig. 3A), had been diagnosed with COVID-19 at least once (OR [95% CI], 1.2 [1.1‒1.3]); Fig. 3B), had been vaccinated against COVID-19 (OR [95% CI], 2.8 [2.3‒3.3]); Fig. 3C), had personally known anyone who died from COVID-19 (OR [95% CI], 1.6 [1.5‒1.8]); Fig. 3D), or had received any type of treatment for COVID-19, including an inhaler, intravenous injection, or oral medication (OR [95% CI], 1.8 [1.5‒2.0]); Fig. 3E).
Feelings and Attitudes About COVID-19 and Associations with COVID-19 Testing Hesitancy
A greater percentage of Testers versus Non-testers reported being “extremely worried” about becoming ill with COVID-19 (18.9 vs. 4.5%; Fig. 4A). Non-testers, by comparison were more likely than Testers to report being “not at all” worried (31.1 vs. 13.1%; OR [95% CI] of “extremely” worried vs “not at all” worried, 9.9 [7.8‒12.6]). ORs (95% CIs) of comparisons between “extremely” worried versus “slightly,” “somewhat,” and “moderately” worried, respectively, were 6.2 (5.0‒7.8), 3.2 (2.5‒4.0), and 2.4 (1.9‒3.0). Regarding several statements indicating general concern and appreciation for the potential severity of COVID-19, Testers were also more likely than Non-testers to indicate agreement on each particular statement (Fig. 4B). The greatest differences in average level of agreement were regarding the statements “If I have symptoms of COVID-19, it’s important for me to test right away” (P < 0.001) and “My peer group (friends and family) regularly test for COVID-19” (P < 0.001).
Healthcare System Engagement and Associations with COVID-19 Testing Hesitancy
Testers typically had a greater level of engagement with the healthcare system compared with Non-testers (Fig. 5). Specifically, Testers had more frequent visits to their routine healthcare provider, whereby those who reported healthcare provider visits once per month were significantly more likely to be Testers compared with those who visited their provider 4 times per year (OR [95% CI], 2.8 [2.3‒3.4]), twice per year (OR [95% CI], 3.3 [2.7‒4.0]), once per year (OR [95% CI], 4.4 [3.6‒5.5]), or every 2 years or fewer (OR [95% CI], 5.9 [4.3‒8.2]). Among those who reported having had COVID-19 in the past, those who had spoken with their healthcare provider about their symptoms were significantly more likely to be Testers compared with those who had not (OR [95% CI], 1.4 [1.2‒1.6]). Respondents were also more likely to be Testers if they had been hospitalized for COVID-19 within the past year compared with those who were either not hospitalized (OR [95% CI], 5.0 [3.7‒6.7]) or were hospitalized for reasons other than COVID-19 (OR [95% CI], 3.2 [2.4‒4.4]).
Discussion
Results presented here provide novel insights regarding individual factors associated with COVID-19 testing hesitancy among US adults at high risk of progression to severe disease during the Omicron era. Most respondents (67.2%) indicated a low or uncertain probability of being tested for COVID-19 within the next 6 months. Non-testers were more likely than Testers to be women, aged ≥ 65 years, Non-Hispanic, White, from rural communities, and politically conservative. Compared with Testers, they were also less likely to report a high degree of knowledge regarding COVID-19–related topics, to have past experiences related to COVID-19, to report having concern about COVID-19 from a personal and public health perspective, and to have a high level of engagement with the healthcare system.
The high prevalence of COVID-19 testing hesitancy identified among survey respondents is particularly relevant in a landscape where effective treatments are available to reduce the likelihood of hospitalization and death among vulnerable individuals [11, 12]. Treatment can only be made available once SARS-CoV-2 positivity is determined. Even then, further barriers to treatment exist among individuals who test positive. In 2022, the CDC reported that out of all patients identified from a large nationwide database who were eligible to receive nirmatrelvir/ritonavir, only 28.4% had been prescribed the medication within 5 days of diagnosis [25]. This phenomenon of treatment underutilization has been corroborated by data from additional recent reports as well [26, 27]. Treatment for COVID-19 is also prescribed disparately across races and ethnicities, including among those who are high risk of progression to severe disease [28]. In our survey, 45.3% of respondents indicated a past COVID-19 diagnosis but only 21.9% of respondents indicated having received any type of treatment, despite all respondents having a high risk of progression to severe disease. As a caveat, however, it was not determined how many respondents may have been diagnosed before treatments were made available.
Many cultural and societal factors are likely to contribute to the differences in testing hesitancy across demographic groups, and the complex interactions between these factors may transcend typical social determinants of health. For instance, neither income level nor level of educational attainment was clearly associated with testing hesitancy in our survey, nor did we observe a greater likelihood of testing hesitancy among racial and ethnic minorities. We did, however, observe a greater proportion of Non-testers among those dwelling in rural compared with urban or suburban communities, which supports the need to expand access to testing sites and points of purchase for home testing kits, as has been described previously [29, 30]. Given the importance of equitable testing access and the compounding issue that those with less access to pharmacies are often the individuals at greatest risk of severe COVID-19 [30], government-funded Test-to-Treat programs were developed in 2022 as a rapid means to provide testing, prescriptions, and medications to underserved populations [29]. Although this was productive, many rural communities remain without access [29, 31]. Recent efforts by the National Institutes of Health, the Administration for Strategic Preparedness and Response, and the CDC to deploy home-based Test-to-Treat programs hold significant promise to overcome geographical barriers [32, 33], but testing hesitancy may pose an upstream challenge for broader utilization of these initiatives.
We also observed a greater prevalence of Non-testers versus Testers among female respondents, indicating that testing hesitancy may be more prominent among women compared with men in the United States. This is likely related to various social factors, which may include a consistently identified preference among women for nonpharmaceutical methods of disease prevention and management (e.g., hand-washing) compared with pharmaceutical methods (e.g., vaccination) [16, 34,35,36].
Notably, our study identified a greater prevalence of Non-testers versus Testers among those who held politically conservative attitudes, as well as among those characterized by demographic characteristics associated with political conservatism in the United States (e.g., being non-Hispanic, White, aged ≥ 50 years, and living in a rural community) [37]. This is consistent with previous studies showing that those who identify as politically conservative have increased rates of vaccine hesitancy, reduced compliance with public health guidelines regarding COVID-19, fewer concerns about the potential severity of COVID-19, and increased tolerance of societal risks [38,39,40]. Many of these factors were also independently associated with testing hesitancy in the present study as well as others [10, 16]. These trends may be due in part to the spread of COVID-19 misinformation regarding the pandemic [16, 39], although they are likely to result from an interplay of many factors contributing to testing hesitancy.
Despite clear guidance from the CDC about benefits of treatment with nirmatrelvir/ritonavir for patients at high risk for progression to severe COVID-19 [11], recent reports suggest substantial underutilization of oral antivirals [25,26,27]. This treatment hesitancy may be emblematic of testing hesitancy. Greater recognition of testing hesitancy among high-risk patients and factors associated with it can allow care providers to address upstream barriers of suboptimal treatment of COVID-19. Considering the combinations of characteristics that were and were not associated with testing hesitancy in our survey, the effectiveness of any interventions designed to improve adherence with testing guidelines may be optimized by tailoring focus and communication styles to specific patient signatures, or groupings of demographics and other characteristics, rather than focusing on a single descriptor. By emphasizing a multifaceted, evidence-based approach tailored toward the appropriate audience, national and community efforts to increase COVID-19 testing can potentially be less costly and have greater overall efficiency.
Effective strategies to reduce testing hesitancy can be implemented at the level of healthcare providers, policy makers, and local community messaging. Healthcare providers can play a pivotal role in educating patients on the value of testing for COVID-19, especially during the influenza season given the potential for co-infection [41,42,43] and the importance of differentiating between the two infections to ensure appropriate clinical intervention. Based on the findings of our survey that testing hesitancy was associated with lower healthcare system engagement, it is imperative that providers optimize the limited time they may have with their patients to ensure adequate understanding of COVID-19 symptoms, testing options, and available treatments. Additionally, our findings suggest the need to develop targeted, culturally sensitive tactics to effectively address testing hesitancy across communities. These strategies may include tailored education aligned with conservative values, influential community messengers, messages emphasizing societal as well as personal benefits, rigorous misinformation mitigation, and ongoing data-driven assessments. Expanding the existing programs to deploy localized vaccination clinics, particularly in rural areas [29], should also be a priority.
Strengths of our study included a diverse survey population, as well as the IPW methodology used to improve generalizability of the survey population to the target population of US adults with risk factors for progression to severe COVID-19 based on a large, representative data set. Although the survey population was not a perfect representation of the target population (likely due to biased sampling selection, nonresponse bias, or sampling error), characteristics were well matched after IPW.
Our study also had some important limitations. First, all questions, potential responses, and statements included in the survey were selected by the authors rather than solicited through focus groups, which may have introduced investigator bias about which factors and considerations are the most important. In particular, cognitive bias may have been introduced based upon whether questions were framed positively or negatively regarding attitudes toward COVID-19 or COVID-19 testing (framing effect, whereby respondents may be influenced by how information is presented rather than by what they are being asked [44]). Second, knowledge was assessed only by self-report; no objective measure was used to test understanding of each topic. Third, the survey population may have been impacted by survey responder bias, whereby certain demographics or other characteristics may have been associated with likelihood of accepting or declining the invitation to participate. Differences in survey response behavior across demographic groups have been identified previously, including a higher likelihood of online survey participation among women compared with men [45]. Because the survey was only available online, this also biased the sample to exclude anyone who did not have access to the internet or have the required technological skills. Some clear differences between the survey population and the target population (from IQVIA claims data) were identified, such as much greater representation of certain comorbidities (e.g., current or former smoking and/or substance abuse) among respondents; these differences may have been the result of broadly worded questions regarding comorbidities as reflected in the CDC descriptions of high-risk conditions [9], compared with the comorbidity data from the IQVIA database, which are aggregated through medical claims rather than self-report. However, IPW was used to minimize any such differences as much as possible. Finally, respondents were grouped into categories of Testers and Non-testers based solely on their reported likelihood of testing within 6 months, regardless of the potential rationale for their response. This may have resulted in an overestimation of Non-testers, and it is not clear which respondents may have been willing or unwilling to test for COVID-19 under the CDC-recommended circumstances of either experiencing symptoms or having a known exposure to a SARS-CoV-2-positive individual. To address this limitation, a follow-up manuscript is planned that will describe the circumstances under which respondents would or would not choose to get tested for COVID-19.
Conclusions
Among US adults at high risk of progression to severe COVID-19, testing hesitancy was associated with being female, aged ≥ 65 years, non-Hispanic, White, rural, and politically conservative. Higher rates of testing hesitancy were also associated with less knowledge, experience, and concern regarding COVID-19, as well as less engagement with the healthcare system. Understanding these factors can be used to promote adherence to testing guidelines by enabling healthcare providers and policy-makers to develop evidence-based communication strategies and access expansions that are tailored to the individuals with the greatest need.
Data Availability
The datasets generated during and/or analyzed during the current study are available from the corresponding author on reasonable request.
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Medical Writing/Editorial Assistance
The authors would like to thank Brett Hauber and Josh Coulter for their valuable guidance and feedback on the design of the survey instrument. Medical writing support was provided by Anna Stern, PhD, of ICON (Blue Bell, PA, USA) and was fully funded by Pfizer.
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Sponsorship for this study and the journal’s Rapid Service Fee were funded by Pfizer Inc (New York, NY, USA).
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Annlouise R. Assaf, Gurinder Sidhu, Mehnaz Bader, and Stephen Watt were involved with study conceptualization, methodology development, article review and editing, and funding acquisition. Apurv Soni was involved with study conceptualization, methodology development, and article review and editing. Joseph C. Cappelleri and Carly Herbert were involved with methodology development and article review and editing. Florin Draica and Iqra Arham were involved with study conceptualization and article review and editing. Camille Jimenez and Michael Bois were involved with article review and editing. Eliza Silvester, Jessica Meservey, Valerie Eng, Megan Nelson, Yong Cai, Aakansha Nangarlia, Zhiyi Tian, and Yanping Liu were involved with methodology development, conducting the survey, analyzing the data, and article review and editing. All authors read and approved the final manuscript.
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Annlouise R. Assaf, Gurinder Sidhu, Joseph C. Cappelleri, Florin Draica, Iqra Arham, Mehnaz Bader, Camille Jimenez, Michael Bois, and Stephen Watt are employees of Pfizer and may hold stock or stock options. Apurv Soni and Carly Herbert have no conflicts of interest to declare. Eliza Silvester, Jessica Meservey, Valerie Eng, Megan Nelson, Yong Cai, Aakansha Nangarlia, Zhiyi Tian, and Yanping Liu are employees of IQVIA, which received funding from Pfizer to perform analyses for the study.
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The protocol was reviewed and approved for exemption by the local Institutional Review Board under Title 45 CFR Sect. 46.104(d)(2). All subjects provided informed consent to participate in the study.
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Assaf, A.R., Sidhu, G.S., Soni, A. et al. Cross-Sectional Survey of Factors Contributing to COVID-19 Testing Hesitancy Among US Adults at Risk of Severe Outcomes from COVID-19. Infect Dis Ther (2024). https://doi.org/10.1007/s40121-024-01001-5
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DOI: https://doi.org/10.1007/s40121-024-01001-5