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Comparative Accuracy of Diagnosis by Collective Intelligence of Multiple Physicians vs Individual Physicians

IMPORTANCE: The traditional approach of diagnosis by individual physicians has a high rate of misdiagnosis. Pooling multiple physicians’ diagnoses (collective intelligence) is a promising approach to reducing misdiagnoses, but its accuracy in clinical cases is unknown to date. OBJECTIVE: To assess h...

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Autores principales: Barnett, Michael L., Boddupalli, Dhruv, Nundy, Shantanu, Bates, David W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Association 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6484633/
https://www.ncbi.nlm.nih.gov/pubmed/30821822
http://dx.doi.org/10.1001/jamanetworkopen.2019.0096
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author Barnett, Michael L.
Boddupalli, Dhruv
Nundy, Shantanu
Bates, David W.
author_facet Barnett, Michael L.
Boddupalli, Dhruv
Nundy, Shantanu
Bates, David W.
author_sort Barnett, Michael L.
collection PubMed
description IMPORTANCE: The traditional approach of diagnosis by individual physicians has a high rate of misdiagnosis. Pooling multiple physicians’ diagnoses (collective intelligence) is a promising approach to reducing misdiagnoses, but its accuracy in clinical cases is unknown to date. OBJECTIVE: To assess how the diagnostic accuracy of groups of physicians and trainees compares with the diagnostic accuracy of individual physicians. DESIGN, SETTING, AND PARTICIPANTS: Cross-sectional study using data from the Human Diagnosis Project (Human Dx), a multicountry data set of ranked differential diagnoses by individual physicians, graduate trainees, and medical students (users) solving user-submitted, structured clinical cases. From May 7, 2014, to October 5, 2016, groups of 2 to 9 randomly selected physicians solved individual cases. Data analysis was performed from March 16, 2017, to July 30, 2018. MAIN OUTCOMES AND MEASURES: The primary outcome was diagnostic accuracy, assessed as a correct diagnosis in the top 3 ranked diagnoses for an individual; for groups, the top 3 diagnoses were a collective differential generated using a weighted combination of user diagnoses with a variety of approaches. A version of the McNemar test was used to account for clustering across repeated solvers to compare diagnostic accuracy. RESULTS: Of the 2069 users solving 1572 cases from the Human Dx data set, 1228 (59.4%) were residents or fellows, 431 (20.8%) were attending physicians, and 410 (19.8%) were medical students. Collective intelligence was associated with increasing diagnostic accuracy, from 62.5% (95% CI, 60.1%-64.9%) for individual physicians up to 85.6% (95% CI, 83.9%-87.4%) for groups of 9 (23.0% difference; 95% CI, 14.9%-31.2%; P < .001). The range of improvement varied by the specifications used for combining groups’ diagnoses, but groups consistently outperformed individuals regardless of approach. Absolute improvement in accuracy from individuals to groups of 9 varied by presenting symptom from an increase of 17.3% (95% CI, 6.4%-28.2%; P = .002) for abdominal pain to 29.8% (95% CI, 3.7%-55.8%; P = .02) for fever. Groups from 2 users (77.7% accuracy; 95% CI, 70.1%-84.6%) to 9 users (85.5% accuracy; 95% CI, 75.1%-95.9%) outperformed individual specialists in their subspecialty (66.3% accuracy; 95% CI, 59.1%-73.5%; P < .001 vs groups of 2 and 9). CONCLUSIONS AND RELEVANCE: A collective intelligence approach was associated with higher diagnostic accuracy compared with individuals, including individual specialists whose expertise matched the case diagnosis, across a range of medical cases. Given the few proven strategies to address misdiagnosis, this technique merits further study in clinical settings.
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spelling pubmed-64846332019-05-21 Comparative Accuracy of Diagnosis by Collective Intelligence of Multiple Physicians vs Individual Physicians Barnett, Michael L. Boddupalli, Dhruv Nundy, Shantanu Bates, David W. JAMA Netw Open Original Investigation IMPORTANCE: The traditional approach of diagnosis by individual physicians has a high rate of misdiagnosis. Pooling multiple physicians’ diagnoses (collective intelligence) is a promising approach to reducing misdiagnoses, but its accuracy in clinical cases is unknown to date. OBJECTIVE: To assess how the diagnostic accuracy of groups of physicians and trainees compares with the diagnostic accuracy of individual physicians. DESIGN, SETTING, AND PARTICIPANTS: Cross-sectional study using data from the Human Diagnosis Project (Human Dx), a multicountry data set of ranked differential diagnoses by individual physicians, graduate trainees, and medical students (users) solving user-submitted, structured clinical cases. From May 7, 2014, to October 5, 2016, groups of 2 to 9 randomly selected physicians solved individual cases. Data analysis was performed from March 16, 2017, to July 30, 2018. MAIN OUTCOMES AND MEASURES: The primary outcome was diagnostic accuracy, assessed as a correct diagnosis in the top 3 ranked diagnoses for an individual; for groups, the top 3 diagnoses were a collective differential generated using a weighted combination of user diagnoses with a variety of approaches. A version of the McNemar test was used to account for clustering across repeated solvers to compare diagnostic accuracy. RESULTS: Of the 2069 users solving 1572 cases from the Human Dx data set, 1228 (59.4%) were residents or fellows, 431 (20.8%) were attending physicians, and 410 (19.8%) were medical students. Collective intelligence was associated with increasing diagnostic accuracy, from 62.5% (95% CI, 60.1%-64.9%) for individual physicians up to 85.6% (95% CI, 83.9%-87.4%) for groups of 9 (23.0% difference; 95% CI, 14.9%-31.2%; P < .001). The range of improvement varied by the specifications used for combining groups’ diagnoses, but groups consistently outperformed individuals regardless of approach. Absolute improvement in accuracy from individuals to groups of 9 varied by presenting symptom from an increase of 17.3% (95% CI, 6.4%-28.2%; P = .002) for abdominal pain to 29.8% (95% CI, 3.7%-55.8%; P = .02) for fever. Groups from 2 users (77.7% accuracy; 95% CI, 70.1%-84.6%) to 9 users (85.5% accuracy; 95% CI, 75.1%-95.9%) outperformed individual specialists in their subspecialty (66.3% accuracy; 95% CI, 59.1%-73.5%; P < .001 vs groups of 2 and 9). CONCLUSIONS AND RELEVANCE: A collective intelligence approach was associated with higher diagnostic accuracy compared with individuals, including individual specialists whose expertise matched the case diagnosis, across a range of medical cases. Given the few proven strategies to address misdiagnosis, this technique merits further study in clinical settings. American Medical Association 2019-03-01 /pmc/articles/PMC6484633/ /pubmed/30821822 http://dx.doi.org/10.1001/jamanetworkopen.2019.0096 Text en Copyright 2019 Barnett ML et al. JAMA Network Open. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the CC-BY License.
spellingShingle Original Investigation
Barnett, Michael L.
Boddupalli, Dhruv
Nundy, Shantanu
Bates, David W.
Comparative Accuracy of Diagnosis by Collective Intelligence of Multiple Physicians vs Individual Physicians
title Comparative Accuracy of Diagnosis by Collective Intelligence of Multiple Physicians vs Individual Physicians
title_full Comparative Accuracy of Diagnosis by Collective Intelligence of Multiple Physicians vs Individual Physicians
title_fullStr Comparative Accuracy of Diagnosis by Collective Intelligence of Multiple Physicians vs Individual Physicians
title_full_unstemmed Comparative Accuracy of Diagnosis by Collective Intelligence of Multiple Physicians vs Individual Physicians
title_short Comparative Accuracy of Diagnosis by Collective Intelligence of Multiple Physicians vs Individual Physicians
title_sort comparative accuracy of diagnosis by collective intelligence of multiple physicians vs individual physicians
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6484633/
https://www.ncbi.nlm.nih.gov/pubmed/30821822
http://dx.doi.org/10.1001/jamanetworkopen.2019.0096
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