A Comprehensive Systematic Review for Cardiovascular Disease using Machine Learning Techniques

Islam D. S. Aabdalla, D. Vasumathi
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Abstract

The global upswing in cardiovascular disease (CVD) cases presents a critical challenge. While the ultimate goal remains elusive, improving CVD prediction accuracy is vital. Machine learning and deep learning are crucial for decoding complex health data, enhancing cardiac imaging, and predicting disease outcomes in clinical practice. This systematic literature review meticulously analyses CVD using machine learning techniques, with a particular emphasis on algorithms for classification and prediction. The metaanalysis covers 343 references from 2020 to November 2023, preceding a thorough examination of 65 selected references. Acknowledging current hurdles in CVD classification methods that impede practical use, this systematic literature review (SLR) is conducted. The study provides valuable insights for researchers and healthcare professionals, facilitating the integration of clinical applications in machine learning settings related to CVD. It also aids in promptly identifying potential threats and implementing precautionary measures. The study also recognizes prevalent classical machine learning methods, emphasizing their clinically relevant diagnostic outcomes. Deliberating on current trends, algorithms, and potential areas for future research offers a comprehensive insight into the present state of affairs.
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利用机器学习技术对心血管疾病进行全面系统综述
全球心血管疾病(CVD)病例的上升带来了严峻的挑战。虽然最终目标仍难以实现,但提高心血管疾病预测的准确性至关重要。机器学习和深度学习对于解码复杂的健康数据、增强心脏成像和预测临床实践中的疾病结果至关重要。这篇系统性文献综述细致分析了使用机器学习技术的心血管疾病,并特别强调了分类和预测算法。荟萃分析涵盖了 2020 年至 2023 年 11 月期间的 343 篇参考文献,在此之前还对 65 篇精选参考文献进行了深入研究。由于心血管疾病分类方法目前存在的障碍阻碍了实际应用,因此进行了这项系统性文献综述(SLR)。本研究为研究人员和医疗保健专业人员提供了宝贵的见解,促进了与心血管疾病相关的机器学习设置中临床应用的整合。它还有助于及时发现潜在威胁并实施预防措施。该研究还认识到了流行的经典机器学习方法,强调了其临床相关的诊断结果。对当前趋势、算法和未来研究的潜在领域进行讨论,有助于全面了解目前的状况。
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