Frederick M Lang, Benjamin C Lee, Dor Lotan, Mert R Sabuncu, Veli K Topkara
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引用次数: 0
摘要
在美国,心力衰竭(HF)影响着数百万人,每年导致数十万人死亡。尽管公共卫生负担沉重,但心力衰竭的医疗和设备疗法大大改善了临床疗效,在一部分患者中,还能逆转心脏结构和功能的异常,即所谓的 "心肌恢复"。通过识别高维数据中的新模式,人工智能(AI)和机器学习(ML)算法可以加强对心肌恢复的关键预测因素和分子驱动因素的识别。该领域的新兴研究已开始展示令人兴奋的成果,这些成果可能会推动医疗标准的发展。尽管将这一技术转化为临床实践仍存在重大障碍,但人工智能和 ML 有可能开创一个基于精准医疗的有目的心肌恢复计划的新时代。在这篇综述中,我们将讨论人工智能在预测心肌恢复方面的应用、人工智能在阐明心肌恢复的机理基础方面的潜在作用、人工智能在临床实践中的应用障碍以及未来的研究领域。
Role of Artificial Intelligence and Machine Learning to Create Predictors, Enhance Molecular Understanding, and Implement Purposeful Programs for Myocardial Recovery.
Heart failure (HF) affects millions of individuals and causes hundreds of thousands of deaths each year in the United States. Despite the public health burden, medical and device therapies for HF significantly improve clinical outcomes and, in a subset of patients, can cause reversal of abnormalities in cardiac structure and function, termed "myocardial recovery." By identifying novel patterns in high-dimensional data, artificial intelligence (AI) and machine learning (ML) algorithms can enhance the identification of key predictors and molecular drivers of myocardial recovery. Emerging research in the area has begun to demonstrate exciting results that could advance the standard of care. Although major obstacles remain to translate this technology to clinical practice, AI and ML hold the potential to usher in a new era of purposeful myocardial recovery programs based on precision medicine. In this review, we discuss applications of ML to the prediction of myocardial recovery, potential roles of ML in elucidating the mechanistic basis underlying recovery, barriers to the implementation of ML in clinical practice, and areas for future research.