Literature DB >> 33915991

Unity Is Intelligence: A Collective Intelligence Experiment on ECG Reading to Improve Diagnostic Performance in Cardiology.

Luca Ronzio1, Andrea Campagner1, Federico Cabitza1, Gian Franco Gensini2.   

Abstract

Medical errors have a huge impact on clinical practice in terms of economic and human costs. As a result, technology-based solutions, such as those grounded in artificial intelligence (AI) or collective intelligence (CI), have attracted increasing interest as a means of reducing error rates and their impacts. Previous studies have shown that a combination of individual opinions based on rules, weighting mechanisms, or other CI solutions could improve diagnostic accuracy with respect to individual doctors. We conducted a study to investigate the potential of this approach in cardiology and, more precisely, in electrocardiogram (ECG) reading. To achieve this aim, we designed and conducted an experiment involving medical students, recent graduates, and residents, who were asked to annotate a collection of 10 ECGs of various complexity and difficulty. For each ECG, we considered groups of increasing size (from three to 30 members) and applied three different CI protocols. In all cases, the results showed a statistically significant improvement (ranging from 9% to 88%) in terms of diagnostic accuracy when compared to the performance of individual readers; this difference held for not only large groups, but also smaller ones. In light of these results, we conclude that CI approaches can support the tasks mentioned above, and possibly other similar ones as well. We discuss the implications of applying CI solutions to clinical settings, such as cases of augmented 'second opinions' and decision-making.

Entities:  

Keywords:  ECG reading; collective intelligence; diagnostic error; medical decision support

Year:  2021        PMID: 33915991     DOI: 10.3390/jintelligence9020017

Source DB:  PubMed          Journal:  J Intell        ISSN: 2079-3200


  49 in total

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Journal:  Ann Intern Med       Date:  1957-07       Impact factor: 25.391

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3.  A solution to the single-question crowd wisdom problem.

Authors:  Dražen Prelec; H Sebastian Seung; John McCoy
Journal:  Nature       Date:  2017-01-25       Impact factor: 49.962

4.  The self-consistency model of subjective confidence.

Authors:  Asher Koriat
Journal:  Psychol Rev       Date:  2011-10-24       Impact factor: 8.934

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Authors:  Tingting Zhu; Alistair E W Johnson; Joachim Behar; Gari D Clifford
Journal:  Ann Biomed Eng       Date:  2013-12-25       Impact factor: 3.934

6.  The "laboratory" effect: comparing radiologists' performance and variability during prospective clinical and laboratory mammography interpretations.

Authors:  David Gur; Andriy I Bandos; Cathy S Cohen; Christiane M Hakim; Lara A Hardesty; Marie A Ganott; Ronald L Perrin; William R Poller; Ratan Shah; Jules H Sumkin; Luisa P Wallace; Howard E Rockette
Journal:  Radiology       Date:  2008-08-05       Impact factor: 11.105

7.  Crowdsourcing in medical research: concepts and applications.

Authors:  Joseph D Tucker; Suzanne Day; Weiming Tang; Barry Bayus
Journal:  PeerJ       Date:  2019-04-12       Impact factor: 2.984

8.  Detection Accuracy of Collective Intelligence Assessments for Skin Cancer Diagnosis.

Authors:  Ralf H J M Kurvers; Jens Krause; Giuseppe Argenziano; Iris Zalaudek; Max Wolf
Journal:  JAMA Dermatol       Date:  2015-12-01       Impact factor: 10.282

9.  Collective intelligence meets medical decision-making: the collective outperforms the best radiologist.

Authors:  Max Wolf; Jens Krause; Patricia A Carney; Andy Bogart; Ralf H J M Kurvers
Journal:  PLoS One       Date:  2015-08-12       Impact factor: 3.240

10.  Human-machine partnership with artificial intelligence for chest radiograph diagnosis.

Authors:  Bhavik N Patel; Louis Rosenberg; Gregg Willcox; David Baltaxe; Mimi Lyons; Jeremy Irvin; Pranav Rajpurkar; Timothy Amrhein; Rajan Gupta; Safwan Halabi; Curtis Langlotz; Edward Lo; Joseph Mammarappallil; A J Mariano; Geoffrey Riley; Jayne Seekins; Luyao Shen; Evan Zucker; Matthew Lungren
Journal:  NPJ Digit Med       Date:  2019-11-18
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