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Advancements in Artificial Intelligence for Precision Diagnosis and Treatment of Myocardial Infarction: A Comprehensive Review of Clinical Trials and Randomized Controlled Trials
9
Zitationen
10
Autoren
2024
Jahr
Abstract
Coronary artery disease (CAD) is still a serious global health issue that has a substantial impact on death and illness rates. The goal of primary prevention strategies is to lower the risk of developing CAD. Nevertheless, current methods usually rely on simple risk assessment instruments that might overlook significant individual risk factors. This limitation highlights the need for innovative methods that can accurately assess cardiovascular risk and offer personalized preventive care. Recent advances in machine learning and artificial intelligence (AI) have opened up interesting new avenues for optimizing primary preventive efforts for CAD and improving risk prediction models. By leveraging large-scale databases and advanced computational techniques, AI has the potential to fundamentally alter how cardiovascular risk is evaluated and managed. This review looks at current randomized controlled studies and clinical trials that explore the application of AI and machine learning to improve primary preventive measures for CAD. The emphasis is on their ability to recognize and include a range of risk elements in sophisticated risk assessment models.
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Autoren
Institutionen
- S Nijalingappa Medical College and HSK Hospital & Research Centre(IN)
- Jinnah Sindh Medical University(PK)
- Government Medical College(IN)
- Sri Venkateswara Medical College and Ruia Hospital(IN)
- SRM Dental College(IN)
- China Medical University(CN)
- Universidad Anáhuac Querétaro(MX)
- Southern Medical University(CN)
- Lakehead University(CA)
- Shri Venkateshwara University(IN)