Advancing healthcare practice and education via data sharing: demonstrating the utility of open data by training an artificial intelligence model to assess cardiopulmonary resuscitation skills
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Published:2024-09-09
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ISSN:1382-4996
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Container-title:Advances in Health Sciences Education
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language:en
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Short-container-title:Adv in Health Sci Educ
Author:
Constable Merryn D.ORCID, Zhang Francis XiatianORCID, Conner Tony, Monk DanielORCID, Rajsic JasonORCID, Ford ClaireORCID, Park Laura JillianORCID, Platt AlanORCID, Porteous DebraORCID, Grierson LawrenceORCID, Shum Hubert P. H.ORCID
Abstract
AbstractHealth professional education stands to gain substantially from collective efforts toward building video databases of skill performances in both real and simulated settings. An accessible resource of videos that demonstrate an array of performances – both good and bad—provides an opportunity for interdisciplinary research collaborations that can advance our understanding of movement that reflects technical expertise, support educational tool development, and facilitate assessment practices. In this paper we raise important ethical and legal considerations when building and sharing health professions education data. Collective data sharing may produce new knowledge and tools to support healthcare professional education. We demonstrate the utility of a data-sharing culture by providing and leveraging a database of cardio-pulmonary resuscitation (CPR) performances that vary in quality. The CPR skills performance database (collected for the purpose of this research, hosted at UK Data Service’s ReShare Repository) contains videos from 40 participants recorded from 6 different angles, allowing for 3D reconstruction for movement analysis. The video footage is accompanied by quality ratings from 2 experts, participants’ self-reported confidence and frequency of performing CPR, and the demographics of the participants. From this data, we present an Automatic Clinical Assessment tool for Basic Life Support that uses pose estimation to determine the spatial location of the participant’s movements during CPR and a deep learning network that assesses the performance quality.
Publisher
Springer Science and Business Media LLC
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