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Artificial Intelligence and Machine Learning Based Models for Prediction and Treatment of Cardiovascular Diseases: A Review
0
Zitationen
2
Autoren
2022
Jahr
Abstract
Advances in Machine Learning (ML) algorithms, computing and Artificial Intelligence (AI)-based systems have been gradually finding applications in several domains including medical and health care systems. By using big data analytics and machine learning methodologies, AI has become a promising tool in the diagnosis and treatment of cardiovascular diseases. AI-ML based applications enhance our understanding of different parameters and phenotypes of heart diseases and lead to newer therapeutic strategies to tackle different types of cardiovascular ailments, a newer approach to cardiovascular drug therapy and a post-marketing survey of prescription drugs. Although AI has wide range of applications, it is in infant stage and has certain limitations in the clinical use of results and their interpretations such as data privacy, selection bias etc, which may result in wrong conclusions. Thus, AI-ML is a transformative technology and has immense potential in health care systems. This review covers various aspects of cardiovascular diseases (CVDs) and illustrate AI and ML based methods including supervised, unsupervised and deep learning and their applications in cardiovascular imaging, cardiovascular risk prediction and newer drug targets.
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