Journal
2024

Machine Learning for Cardiovascular Healthcare: Opportunities, Challenges, and the Path Forward

Authors
Nasrullah Masud
Abstract
Machine learning (ML) is revolutionizing cardiovascular healthcare by enhancing diagnostic accuracy, risk prediction, and personalized treatment strategies. This review systematically examines the current landscape of ML applications in cardiovascular medicine, focusing on areas such as imaging, wearable technology, and predictive analytics. Notable advancements include AI-driven analysis of electrocardiograms for early detection of atrial fibrillation and the use of convolutional neural networks in interpreting cardiac imaging modalities like echocardiography and cardiac magnetic resonance imaging. Additionally, ML algorithms have demonstrated efficacy in predicting long-term cardiovascular risks using chest X-rays, offering a non-invasive approach to patient assessment. Despite these promising developments, challenges persist, including data heterogeneity, algorithmic bias, and the need for explainable AI to ensure clinical trust and regulatory compliance. Federated learning emerges as a potential solution to data privacy concerns, enabling collaborative model training without compromising patient confidentiality. Furthermore, the integration of ML into clinical workflows necessitates standardized regulatory frameworks and interdisciplinary collaboration among clinicians, data scientists, and policymakers.? This review underscores the transformative potential of ML in cardiovascular healthcare while highlighting the imperative to address ethical, technical, and regulatory challenges. Future research should prioritize the development of transparent, equitable, and clinically integrated ML models to fully realize the benefits of AI-driven cardiovascular care.?
Publication Details
Published In:
Journal of Angiotherapy, Volume 8, Issue 12, Page 1-8
Publication Year:
2024
Publication Date:
December 2024
Type:
Journal
Total Authors:
1