Cargando…

The Promise and Pitfalls of Using Crowdsourcing in Research Prioritization for Back Pain: Cross-Sectional Surveys

BACKGROUND: The involvement of patients in research better aligns evidence generation to the gaps that patients themselves face when making decisions about health care. However, obtaining patients’ perspectives is challenging. Amazon’s Mechanical Turk (MTurk) has gained popularity over the past deca...

Descripción completa

Detalles Bibliográficos
Autores principales: Bartek, Matthew A, Truitt, Anjali R, Widmer-Rodriguez, Sierra, Tuia, Jordan, Bauer, Zoya A, Comstock, Bryan A, Edwards, Todd C, Lawrence, Sarah O, Monsell, Sarah E, Patrick, Donald L, Jarvik, Jeffrey G, Lavallee, Danielle C
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5650676/
https://www.ncbi.nlm.nih.gov/pubmed/28986339
http://dx.doi.org/10.2196/jmir.8821
_version_ 1783272747772674048
author Bartek, Matthew A
Truitt, Anjali R
Widmer-Rodriguez, Sierra
Tuia, Jordan
Bauer, Zoya A
Comstock, Bryan A
Edwards, Todd C
Lawrence, Sarah O
Monsell, Sarah E
Patrick, Donald L
Jarvik, Jeffrey G
Lavallee, Danielle C
author_facet Bartek, Matthew A
Truitt, Anjali R
Widmer-Rodriguez, Sierra
Tuia, Jordan
Bauer, Zoya A
Comstock, Bryan A
Edwards, Todd C
Lawrence, Sarah O
Monsell, Sarah E
Patrick, Donald L
Jarvik, Jeffrey G
Lavallee, Danielle C
author_sort Bartek, Matthew A
collection PubMed
description BACKGROUND: The involvement of patients in research better aligns evidence generation to the gaps that patients themselves face when making decisions about health care. However, obtaining patients’ perspectives is challenging. Amazon’s Mechanical Turk (MTurk) has gained popularity over the past decade as a crowdsourcing platform to reach large numbers of individuals to perform tasks for a small reward for the respondent, at small cost to the investigator. The appropriateness of such crowdsourcing methods in medical research has yet to be clarified. OBJECTIVE: The goals of this study were to (1) understand how those on MTurk who screen positive for back pain prioritize research topics compared with those who screen negative for back pain, and (2) determine the qualitative differences in open-ended comments between groups. METHODS: We conducted cross-sectional surveys on MTurk to assess participants’ back pain and allow them to prioritize research topics. We paid respondents US $0.10 to complete the 24-point Roland Morris Disability Questionnaire (RMDQ) to categorize participants as those “with back pain” and those “without back pain,” then offered both those with (RMDQ score ≥7) and those without back pain (RMDQ <7) an opportunity to rank their top 5 (of 18) research topics for an additional US $0.75. We compared demographic information and research priorities between the 2 groups and performed qualitative analyses on free-text commentary that participants provided. RESULTS: We conducted 2 screening waves. We first screened 2189 individuals for back pain over 33 days and invited 480 (21.93%) who screened positive to complete the prioritization, of whom 350 (72.9% of eligible) did. We later screened 664 individuals over 7 days and invited 474 (71.4%) without back pain to complete the prioritization, of whom 397 (83.7% of eligible) did. Those with back pain who prioritized were comparable with those without in terms of age, education, marital status, and employment. The group with back pain had a higher proportion of women (234, 67.2% vs 229, 57.8%, P=.02). The groups’ rank lists of research priorities were highly correlated: Spearman correlation coefficient was .88 when considering topics ranked in the top 5. The 2 groups agreed on 4 of the top 5 and 9 of the top 10 research priorities. CONCLUSIONS: Crowdsourcing platforms such as MTurk support efforts to efficiently reach large groups of individuals to obtain input on research activities. In the context of back pain, a prevalent and easily understood condition, the rank list of those with back pain was highly correlated with that of those without back pain. However, subtle differences in the content and quality of free-text comments suggest supplemental efforts may be needed to augment the reach of crowdsourcing in obtaining perspectives from patients, especially from specific populations.
format Online
Article
Text
id pubmed-5650676
institution National Center for Biotechnology Information
language English
publishDate 2017
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-56506762017-10-31 The Promise and Pitfalls of Using Crowdsourcing in Research Prioritization for Back Pain: Cross-Sectional Surveys Bartek, Matthew A Truitt, Anjali R Widmer-Rodriguez, Sierra Tuia, Jordan Bauer, Zoya A Comstock, Bryan A Edwards, Todd C Lawrence, Sarah O Monsell, Sarah E Patrick, Donald L Jarvik, Jeffrey G Lavallee, Danielle C J Med Internet Res Original Paper BACKGROUND: The involvement of patients in research better aligns evidence generation to the gaps that patients themselves face when making decisions about health care. However, obtaining patients’ perspectives is challenging. Amazon’s Mechanical Turk (MTurk) has gained popularity over the past decade as a crowdsourcing platform to reach large numbers of individuals to perform tasks for a small reward for the respondent, at small cost to the investigator. The appropriateness of such crowdsourcing methods in medical research has yet to be clarified. OBJECTIVE: The goals of this study were to (1) understand how those on MTurk who screen positive for back pain prioritize research topics compared with those who screen negative for back pain, and (2) determine the qualitative differences in open-ended comments between groups. METHODS: We conducted cross-sectional surveys on MTurk to assess participants’ back pain and allow them to prioritize research topics. We paid respondents US $0.10 to complete the 24-point Roland Morris Disability Questionnaire (RMDQ) to categorize participants as those “with back pain” and those “without back pain,” then offered both those with (RMDQ score ≥7) and those without back pain (RMDQ <7) an opportunity to rank their top 5 (of 18) research topics for an additional US $0.75. We compared demographic information and research priorities between the 2 groups and performed qualitative analyses on free-text commentary that participants provided. RESULTS: We conducted 2 screening waves. We first screened 2189 individuals for back pain over 33 days and invited 480 (21.93%) who screened positive to complete the prioritization, of whom 350 (72.9% of eligible) did. We later screened 664 individuals over 7 days and invited 474 (71.4%) without back pain to complete the prioritization, of whom 397 (83.7% of eligible) did. Those with back pain who prioritized were comparable with those without in terms of age, education, marital status, and employment. The group with back pain had a higher proportion of women (234, 67.2% vs 229, 57.8%, P=.02). The groups’ rank lists of research priorities were highly correlated: Spearman correlation coefficient was .88 when considering topics ranked in the top 5. The 2 groups agreed on 4 of the top 5 and 9 of the top 10 research priorities. CONCLUSIONS: Crowdsourcing platforms such as MTurk support efforts to efficiently reach large groups of individuals to obtain input on research activities. In the context of back pain, a prevalent and easily understood condition, the rank list of those with back pain was highly correlated with that of those without back pain. However, subtle differences in the content and quality of free-text comments suggest supplemental efforts may be needed to augment the reach of crowdsourcing in obtaining perspectives from patients, especially from specific populations. JMIR Publications 2017-10-06 /pmc/articles/PMC5650676/ /pubmed/28986339 http://dx.doi.org/10.2196/jmir.8821 Text en ©Matthew A Bartek, Anjali R Truitt, Sierra Widmer-Rodriguez, Jordan Tuia, Zoya A Bauer, Bryan A Comstock, Todd C Edwards, Sarah O Lawrence, Sarah E Monsell, Donald L Patrick, Jeffrey G Jarvik, Danielle C Lavallee. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 06.10.2017. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on http://www.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Bartek, Matthew A
Truitt, Anjali R
Widmer-Rodriguez, Sierra
Tuia, Jordan
Bauer, Zoya A
Comstock, Bryan A
Edwards, Todd C
Lawrence, Sarah O
Monsell, Sarah E
Patrick, Donald L
Jarvik, Jeffrey G
Lavallee, Danielle C
The Promise and Pitfalls of Using Crowdsourcing in Research Prioritization for Back Pain: Cross-Sectional Surveys
title The Promise and Pitfalls of Using Crowdsourcing in Research Prioritization for Back Pain: Cross-Sectional Surveys
title_full The Promise and Pitfalls of Using Crowdsourcing in Research Prioritization for Back Pain: Cross-Sectional Surveys
title_fullStr The Promise and Pitfalls of Using Crowdsourcing in Research Prioritization for Back Pain: Cross-Sectional Surveys
title_full_unstemmed The Promise and Pitfalls of Using Crowdsourcing in Research Prioritization for Back Pain: Cross-Sectional Surveys
title_short The Promise and Pitfalls of Using Crowdsourcing in Research Prioritization for Back Pain: Cross-Sectional Surveys
title_sort promise and pitfalls of using crowdsourcing in research prioritization for back pain: cross-sectional surveys
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5650676/
https://www.ncbi.nlm.nih.gov/pubmed/28986339
http://dx.doi.org/10.2196/jmir.8821
work_keys_str_mv AT bartekmatthewa thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT truittanjalir thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT widmerrodriguezsierra thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT tuiajordan thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT bauerzoyaa thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT comstockbryana thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT edwardstoddc thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT lawrencesaraho thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT monsellsarahe thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT patrickdonaldl thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT jarvikjeffreyg thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT lavalleedaniellec thepromiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT bartekmatthewa promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT truittanjalir promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT widmerrodriguezsierra promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT tuiajordan promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT bauerzoyaa promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT comstockbryana promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT edwardstoddc promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT lawrencesaraho promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT monsellsarahe promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT patrickdonaldl promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT jarvikjeffreyg promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys
AT lavalleedaniellec promiseandpitfallsofusingcrowdsourcinginresearchprioritizationforbackpaincrosssectionalsurveys