Clinical Effectiveness of an Artificial Intelligence-Based Prediction Model for Cardiac Arrest in General Ward-Admitted Patients: A Non-Randomized Controlled Trial
  • Park, Mi Hwa
  • Kim, Mincheol
  • Lee, Man-Jong
  • Kim, Ah Jin
  • Cho, Kyung-Jae
  • 외 5명
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Background: Ward patients who experience clinical deterioration are at high risk of mortality. Conventional rapid response systems (RRS) using track-and-trigger protocols have not consistently demonstrated improved outcomes. This study evaluated the impact of an artificial intelligence (AI)-based cardiac arrest prediction model. Methods: This 1-year, prospective, non-randomized interventional trial assigned hospitalized patients with AI-based software as a medical device (AI-SaMD) high-risk alerts to groups based on their subsequent clinical response; those reassessed or treated within 24 h comprised the AI-SaMD-guided cohort, while the remainder formed the usual care cohort. Alerts prompted an optional but not mandatory treatment review. The primary outcome was ward-based cardiac arrest; the secondary outcome was in-hospital mortality. Multivariable regression analysis was used to adjust for potential confounders. Results: Of 35,627 general ward admissions, 2906 triggered an AI-SaMD alert. Among these, 1409 (48.4%) were allocated to the AI-SaMD-guided cohort. The incidence of cardiac arrest significantly decreased from 2.07% to 1.06% (adjusted risk ratio (RR), 0.54; 95% confidence interval (CI), 0.20-0.88; p < 0.01). In-hospital mortality also significantly declined (adjusted RR, 0.65; 95% CI, 0.32-0.98; p < 0.05). Conclusions: AI-SaMD-guided alerts were associated with reductions in cardiac arrest and in-hospital mortality without requiring additional resources, supporting their integration into current clinical workflows to improve patient safety and optimize RRS performance.

키워드

artificial intelligenceclinical deteriorationdeep learningDeepCARSearly warning scorecardiac arrestclinical trialreal-world evidencerapid response systemEARLY WARNING SCORECARDIOPULMONARY-RESUSCITATIONICUDETERIORATIONVALIDATIONRISKIMPLEMENTATIONMORTALITYOUTCOMESSYSTEM
제목
Clinical Effectiveness of an Artificial Intelligence-Based Prediction Model for Cardiac Arrest in General Ward-Admitted Patients: A Non-Randomized Controlled Trial
저자
Park, Mi HwaKim, MincheolLee, Man-JongKim, Ah JinCho, Kyung-JaeJang, JinhuiJung, JaehunChang, MineokYoo, DongjoonKim, Jung Soo
DOI
10.3390/diagnostics16020335
발행일
2026-01-20
유형
Article
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DIAGNOSTICS
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