Litcius/Paper detail

Clinical Effectiveness of an Artificial Intelligence-Based Prediction Model for Cardiac Arrest in General Ward-Admitted Patients: A Non-Randomized Controlled Trial

M. G. Park, Mincheol Kim, Man-Jong Lee, Ah Jin Kim, Kyung-Jae Cho, Ji-Uk Jang, Jaehun Jung, Mineok Chang, Dongjoon Yoo, Jung Soo Kim

2026Diagnostics5 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

MedicineConfidence intervalRandomized controlled trialEmergency medicineIntensive care medicineClinical trialIncidence (geometry)Clinical effectivenessClinical prediction ruleOutcome (game theory)Risk assessmentMedical emergencyClinical endpointRelative riskPrimary careClinical judgmentInterval (graph theory)Cardiac catheterisationInternal medicineProtocol (science)MEDLINEAdvanced cardiac life supportPatient safetyWorkflowSepsis Diagnosis and TreatmentArtificial Intelligence in Healthcare and EducationCardiac Arrest and Resuscitation
Clinical Effectiveness of an Artificial Intelligence-Based Prediction Model for Cardiac Arrest in General Ward-Admitted Patients: A Non-Randomized Controlled Trial | Litcius