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Performance of Google bard and ChatGPT in mass casualty incidents triage

Rick Kye Gan, Jude Chukwuebuka Ogbodo, Yong Zheng Wee, Ann Zee Gan, Pedro Arcos González

2023The American Journal of Emergency Medicine46 citationsDOIOpen Access PDF

Abstract

AIM: The objective of our research is to evaluate and compare the performance of ChatGPT, Google Bard, and medical students in performing START triage during mass casualty situations. METHOD: We conducted a cross-sectional analysis to compare ChatGPT, Google Bard, and medical students in mass casualty incident (MCI) triage using the Simple Triage And Rapid Treatment (START) method. A validated questionnaire with 15 diverse MCI scenarios was used to assess triage accuracy and content analysis in four categories: "Walking wounded," "Respiration," "Perfusion," and "Mental Status." Statistical analysis compared the results. RESULT: Google Bard demonstrated a notably higher accuracy of 60%, while ChatGPT achieved an accuracy of 26.67% (p = 0.002). Comparatively, medical students performed at an accuracy rate of 64.3% in a previous study. However, there was no significant difference observed between Google Bard and medical students (p = 0.211). Qualitative content analysis of 'walking-wounded', 'respiration', 'perfusion', and 'mental status' indicated that Google Bard outperformed ChatGPT. CONCLUSION: Google Bard was found to be superior to ChatGPT in correctly performing mass casualty incident triage. Google Bard achieved an accuracy of 60%, while chatGPT only achieved an accuracy of 26.67%. This difference was statistically significant (p = 0.002).

Topics & Concepts

TriageMass-casualty incidentMass CasualtyMedical emergencyMass gatheringMedicinePoison controlSuicide preventionNursingPublic healthDisaster Response and ManagementArtificial Intelligence in Healthcare and EducationCardiac Arrest and Resuscitation
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