在农村社区识别和消除企图报名参加人类健康改善干预试验的欺诈行为。

IF 2.3 Q3 BIOCHEMICAL RESEARCH METHODS Methods and Protocols Pub Date : 2024-11-09 DOI:10.3390/mps7060093
Karla L Hanson, Grace A Marshall, Meredith L Graham, Deyaun L Villarreal, Leah C Volpe, Rebecca A Seguin-Fowler
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引用次数: 0

摘要

使用互联网招募参与者参与研究试验是有效的,但也会吸引大量的欺诈企图,尤其是通过社交媒体。我们借鉴了以往的文献,在招募农村居民参与一项基于社区的健康改善干预试验时,严格识别并消除了欺诈企图。我们在本文中的目标是描述我们识别欺诈企图的动态过程,量化每项行动所识别出的欺诈企图,并就如何最大限度地减少欺诈性回应提出建议。分析是描述性的。验证方法分为四个阶段:(1) 招募、资格筛选和验证;(2) 需要更严格审查的调查期;(3) 基线数据清理;(4) 首次年度跟踪调查期间的验证。共记录了 19,665 次注册尝试,其中 74.4% 被认为是欺诈行为。自动检查研究区域外的 IP 地址(22.1%)和重新验证码筛选(10.1%)有效地识别了许多欺诈尝试。主动调查程序识别出的欺诈案例最多(33.7%),但需要研究人员与试图注册的个人进行耗时的互动。有些自动验证过于热心:在所有同意者中,有 32.1% 的人在随访时提供了无效的出生日期,研究人员积极与他们联系,核实或更正了他们的出生日期。我们预计,鉴于生成式人工智能的最新进展,欺诈性回复将越来越细微,适应性也将越来越强。研究人员将需要平衡自动验证和主动验证技术,以适应感兴趣的主题、招募人群和可接受的参与者负担。
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Identifying and Removing Fraudulent Attempts to Enroll in a Human Health Improvement Intervention Trial in Rural Communities.

Using the internet to recruit participants into research trials is effective but can attract high numbers of fraudulent attempts, particularly via social media. We drew upon the previous literature to rigorously identify and remove fraudulent attempts when recruiting rural residents into a community-based health improvement intervention trial. Our objectives herein were to describe our dynamic process for identifying fraudulent attempts, quantify the fraudulent attempts identified by each action, and make recommendations for minimizing fraudulent responses. The analysis was descriptive. Validation methods occurred in four phases: (1) recruitment and screening for eligibility and validation; (2) investigative periods requiring greater scrutiny; (3) baseline data cleaning; and (4) validation during the first annual follow-up survey. A total of 19,665 attempts to enroll were recorded, 74.4% of which were considered fraudulent. Automated checks for IP addresses outside study areas (22.1%) and reCAPTCHA screening (10.1%) efficiently identified many fraudulent attempts. Active investigative procedures identified the most fraudulent cases (33.7%) but required time-consuming interaction between researchers and individuals attempting to enroll. Some automated validation was overly zealous: 32.1% of all consented individuals who provided an invalid birthdate at follow-up were actively contacted by researchers and could verify or correct their birthdate. We anticipate fraudulent responses will grow increasingly nuanced and adaptive given recent advances in generative artificial intelligence. Researchers will need to balance automated and active validation techniques adapted to the topic of interest, population being recruited, and acceptable participant burden.

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来源期刊
Methods and Protocols
Methods and Protocols Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (miscellaneous)
CiteScore
3.60
自引率
0.00%
发文量
85
审稿时长
8 weeks
期刊最新文献
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