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Online surveys have become a key tool of modern health research, offering a fast, cost-effective, and convenient means of data collection. It enables researchers to access diverse populations, such as those underrepresented in traditional studies, and facilitates the collection of stigmatized or sensitive behaviors through greater anonymity. However, the ease of participation also introduces significant challenges, particularly around data integrity and rigor. As fraudulent responses-whether from bots, repeat responders, or individuals misrepresenting themselves-become more sophisticated and pervasive, ensuring the rigor of online surveys has never been more crucial. This article provides a comprehensive synthesis of practical strategies that help to increase the rigor of online surveys through the detection and removal of fraudulent data. Drawing on recent literature and case studies, we outline several options that address the full research cycle from predata collection strategies to validation post data collection. We emphasize the integration of automated screening techniques (eg, CAPTCHAs and honeypot questions) and attention checks (eg, trap questions) for purposeful survey design. Robust recruitment procedures (eg, concealed eligibility criteria and 2-stage screening) and a proper incentive or compensation structure can also help to deter fraudulent participation. We examine the merits and limitations of different sampling methodologies, including river sampling, online panels, and crowdsourcing platforms, offering guidance on how to select samples based on specific research objectives. Post data collection, we discuss metadata-based techniques to detect fraudulent data (eg, duplicate email or IP addresses, response time analysis), alongside methods to better screen for low-quality responses (eg, inconsistent response patterns and improbable qualitative responses). The escalating sophistication of fraud tactics, particularly with the growth of artificial intelligence (AI), demands that researchers continuously adapt and stay vigilant. We propose the use of dynamic protocols, combining multiple strategies into a multipronged approach that can better filter for fraudulent data and evolve depending on the type of responses received across the data collection process. However, there is still significant room for strategies to develop, and it should be a key focus for upcoming research. As online surveys become increasingly integral to health research, investing in robust strategies to screen for fraudulent data and increasing the rigor of studies is key to upholding scientific integrity.
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http://dx.doi.org/10.2196/68092 | DOI Listing |
Palliat Med Rep
June 2025
Dartmouth Geisel School of Medicine, Missoula, Montana, USA.
The field of hospice and palliative care in the United States is experiencing serious problems and faces an uncertain future. Quality of hospice care is highly variable. Unethical hospice business practices are common in some regions.
View Article and Find Full Text PDFIntroduction: Historically, federal grant terminations have been rare and almost exclusively used in cases of misconduct. Under the current presidential administration, however, grant terminations have been common, with thousands of grants terminated across federal agencies such as the National Institutes of Health (NIH) and the National Science Foundation. Although there have been scattered reports of the impact of these terminations on individual researchers, there has not yet been a systematic investigation of the impact on the overall scientific community.
View Article and Find Full Text PDFOnline J Public Health Inform
August 2025
College of Public Health, The Ohio State University, 1841 Neil Ave, Columbus, OH, 43210, United States, 1 6142924647.
Background: Threats to data integrity have always existed in online human subjects research, but it appears these threats have become more common and more advanced in recent years. Researchers have proposed various techniques to address satisficers, repeat participants, bots, and fraudulent participants; yet, no synthesis of this literature has been conducted.
Objective: This study undertakes a scoping review of recent methods and ethical considerations for addressing threats to data integrity in online research.
J Comp Physiol A Neuroethol Sens Neural Behav Physiol
August 2025
Division of Biology and Biological Engineering & Department of Computing and Mathematical Sciences, California Institute of Technology, Pasadena, CA, 91103, USA.
In her book Why trust Science?, Naomi Oreskes examines the question of what it means to say that "science corrects itself", highlighting the importance of the social process of science and specifically the importance of scientists challenging each other in the pursuit of truth. In a recent preprint, a colleague and I did exactly that, reviewing a corpus of work by Australian neuroethologist Mandyam Srinivasan and identifying numerous problems across ten of his papers, including several instances of identical data being reported for different experiments. In a recent editorial, Eric Warrant dismisses our critiques of Srinivasan's work as "sloppiness all of us are capable of", and instead focuses on attacking us, sometimes conflating criticisms of others of Srinivasan's work with ours.
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