Asset Details
MbrlCatalogueTitleDetail
Do you wish to reserve the book?
Effects of Excluding Those Who Report Having “Syndomitis” or “Chekalism” on Data Quality: Longitudinal Health Survey of a Sample From Amazon’s Mechanical Turk
by
Qureshi, Nabeel
, Edelen, Maria Orlando
, Kapteyn, Arie
, Hays, Ron D
, Herman, Patricia M
, Rodriguez, Anthony
in
Anxiety
/ Back pain
/ Clinical assessment
/ Clinical outcomes
/ Cognitive ability
/ Cognitive functioning
/ Crowdsourcing
/ Data quality
/ Demography
/ Health status
/ Health Surveys
/ Humans
/ Information systems
/ Intelligence
/ Internet
/ Male
/ Measurement
/ Measures
/ Mental depression
/ Mental health
/ Original Paper
/ Pain
/ Physical ability
/ Polls & surveys
/ Reliability
/ Reproducibility of Results
/ Respondents
/ Response rates
/ Self Report
/ Sleep
/ Sleep disorders
/ Sleep Wake Disorders
/ Social participation
/ Social roles
/ Surveys and Questionnaires
/ Transgender persons
/ United States
2023
Hey, we have placed the reservation for you!
By the way, why not check out events that you can attend while you pick your title.
You are currently in the queue to collect this book. You will be notified once it is your turn to collect the book.
Oops! Something went wrong.
Looks like we were not able to place the reservation. Kindly try again later.
Are you sure you want to remove the book from the shelf?
Effects of Excluding Those Who Report Having “Syndomitis” or “Chekalism” on Data Quality: Longitudinal Health Survey of a Sample From Amazon’s Mechanical Turk
by
Qureshi, Nabeel
, Edelen, Maria Orlando
, Kapteyn, Arie
, Hays, Ron D
, Herman, Patricia M
, Rodriguez, Anthony
in
Anxiety
/ Back pain
/ Clinical assessment
/ Clinical outcomes
/ Cognitive ability
/ Cognitive functioning
/ Crowdsourcing
/ Data quality
/ Demography
/ Health status
/ Health Surveys
/ Humans
/ Information systems
/ Intelligence
/ Internet
/ Male
/ Measurement
/ Measures
/ Mental depression
/ Mental health
/ Original Paper
/ Pain
/ Physical ability
/ Polls & surveys
/ Reliability
/ Reproducibility of Results
/ Respondents
/ Response rates
/ Self Report
/ Sleep
/ Sleep disorders
/ Sleep Wake Disorders
/ Social participation
/ Social roles
/ Surveys and Questionnaires
/ Transgender persons
/ United States
2023
Oops! Something went wrong.
While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Effects of Excluding Those Who Report Having “Syndomitis” or “Chekalism” on Data Quality: Longitudinal Health Survey of a Sample From Amazon’s Mechanical Turk
by
Qureshi, Nabeel
, Edelen, Maria Orlando
, Kapteyn, Arie
, Hays, Ron D
, Herman, Patricia M
, Rodriguez, Anthony
in
Anxiety
/ Back pain
/ Clinical assessment
/ Clinical outcomes
/ Cognitive ability
/ Cognitive functioning
/ Crowdsourcing
/ Data quality
/ Demography
/ Health status
/ Health Surveys
/ Humans
/ Information systems
/ Intelligence
/ Internet
/ Male
/ Measurement
/ Measures
/ Mental depression
/ Mental health
/ Original Paper
/ Pain
/ Physical ability
/ Polls & surveys
/ Reliability
/ Reproducibility of Results
/ Respondents
/ Response rates
/ Self Report
/ Sleep
/ Sleep disorders
/ Sleep Wake Disorders
/ Social participation
/ Social roles
/ Surveys and Questionnaires
/ Transgender persons
/ United States
2023
Please be aware that the book you have requested cannot be checked out. If you would like to checkout this book, you can reserve another copy
We have requested the book for you!
Your request is successful and it will be processed during the Library working hours. Please check the status of your request in My Requests.
Oops! Something went wrong.
Looks like we were not able to place your request. Kindly try again later.
Effects of Excluding Those Who Report Having “Syndomitis” or “Chekalism” on Data Quality: Longitudinal Health Survey of a Sample From Amazon’s Mechanical Turk
Journal Article
Effects of Excluding Those Who Report Having “Syndomitis” or “Chekalism” on Data Quality: Longitudinal Health Survey of a Sample From Amazon’s Mechanical Turk
2023
Request Book From Autostore
and Choose the Collection Method
Overview
Researchers have implemented multiple approaches to increase data quality from existing web-based panels such as Amazon's Mechanical Turk (MTurk).
This study extends prior work by examining improvements in data quality and effects on mean estimates of health status by excluding respondents who endorse 1 or both of 2 fake health conditions (\"Syndomitis\" and \"Chekalism\").
Survey data were collected in 2021 at baseline and 3 months later from MTurk study participants, aged 18 years or older, with an internet protocol address in the United States, and who had completed a minimum of 500 previous MTurk \"human intelligence tasks.\" We included questions about demographic characteristics, health conditions (including the 2 fake conditions), and the Patient Reported Outcomes Measurement Information System (PROMIS)-29+2 (version 2.1) preference-based score survey. The 3-month follow-up survey was only administered to those who reported having back pain and did not endorse a fake condition at baseline.
In total, 15% (996/6832) of the sample endorsed at least 1 of the 2 fake conditions at baseline. Those who endorsed a fake condition at baseline were more likely to identify as male, non-White, younger, report more health conditions, and take longer to complete the survey than those who did not endorse a fake condition. They also had substantially lower internal consistency reliability on the PROMIS-29+2 scales than those who did not endorse a fake condition: physical function (0.69 vs 0.89), pain interference (0.80 vs 0.94), fatigue (0.80 vs 0.92), depression (0.78 vs 0.92), anxiety (0.78 vs 0.90), sleep disturbance (-0.27 vs 0.84), ability to participate in social roles and activities (0.77 vs 0.92), and cognitive function (0.65 vs 0.77). The lack of reliability of the sleep disturbance scale for those endorsing a fake condition was because it includes both positively and negatively worded items. Those who reported a fake condition reported significantly worse self-reported health scores (except for sleep disturbance) than those who did not endorse a fake condition. Excluding those who endorsed a fake condition improved the overall mean PROMIS-29+2 (version 2.1) T-scores by 1-2 points and the PROMIS preference-based score by 0.04. Although they did not endorse a fake condition at baseline, 6% (n=59) of them endorsed at least 1 of them on the 3-month survey and they had lower PROMIS-29+2 score internal consistency reliability and worse mean scores on the 3-month survey than those who did not report having a fake condition. Based on these results, we estimate that 25% (1708/6832) of the MTurk respondents provided careless or dishonest responses.
This study provides evidence that asking about fake health conditions can help to screen out respondents who may be dishonest or careless. We recommend this approach be used routinely in samples of members of MTurk.
This website uses cookies to ensure you get the best experience on our website.