AI and ML algorithms demonstrated superior diagnostic accuracy (e.g., arrhythmia detection accuracy 92.3% vs. 89.1%), risk prediction (AUC 0.865 vs. 0.765), 15-25% reduction in diagnostic errors, 20% faster emergency interventions, and a 23% reduction in heart failure hospitalizations in clinical implementations.
AI and ML offer significant improvements in cardiovascular diagnostic accuracy, risk stratification, and workflow efficiency, but require rigorous validation and mitigation of algorithmic bias for equitable clinical integration.
Cardiovascular disease remains the leading cause of global mortality with nearly 19 million deaths annually, while exponential growth in multimodal imaging, continuous monitoring, and electronic health record data has created analytical challenges exceeding traditional methods. This narrative review examines artificial intelligence (AI) and machine learning (ML) applications in cardiovascular medicine through a comprehensive literature analysis from 2019 to 2025, focusing on clinical validation and regulatory approvals. Current applications demonstrate significant clinical utility: automated ECG interpretation achieves > 90% accuracy in arrhythmia detection and predicts life-threatening arrhythmias up to two weeks before clinical onset; deep learning cardiac imaging analysis matches expert performance while reducing analysis time from 45 minutes to under 5 minutes; and ML risk prediction outperforms traditional scores with area under the curve values of 0.865 vs. 0.765. The FDA has approved 122 cardiology AI algorithms representing 14% of all clinical AI in the U.S. market, including ECG interpretation, echocardiographic measurement, and imaging analysis systems. Real-world implementations demonstrate 15–25% reductions in diagnostic errors and 20–30% faster emergency intervention times. However, substantial challenges persist: data quality limitations, algorithmic bias with 10–15% performance variation across populations, workflow integration barriers, and validation requirements. Future directions include multimodal systems, continuously learning algorithms, precision medicine applications, and equitable global implementation. Successful integration requires addressing limitations through diverse training datasets, transparent development, standardized validation, provider education, and maintaining physician autonomy. AI and ML represent powerful augmentation tools that, through evidence-based implementation, can transform cardiovascular care while preserving clinical expertise in decision-making.
Sharma et al. (Sun,) conducted a review in Patients with cardiovascular diseases in diverse clinical settings including arrhythmia, heart failure, acute coronary syndrome, and risk prediction cohorts. Artificial intelligence and machine learning algorithms in cardiovascular medicine vs. Traditional/statistical methods or standard care was evaluated on Primary clinical endpoints include diagnostic accuracy, risk prediction performance, and clinical outcomes such as hospitalization rates and time to emergency intervention. AI and ML algorithms demonstrated superior diagnostic accuracy (e.g., arrhythmia detection accuracy 92.3% vs. 89.1%), risk prediction (AUC 0.865 vs. 0.765), 15-25% reduction in diagnostic errors, 20% faster emergency interventions, and a 23% reduction in heart failure hospitalizations in clinical implementations.