Division of Cardiology, Department of Medicine, Northwestern University Feinberg School of Medicine, Chicago, IL, USA; Department of Preventive Medicine, Northwestern University Feinberg School of Medicine, Chicago, IL, USA; Bluhm Cardiovascular Institute Center for Artificial Intelligence, Northwestern Medicine, Chicago, IL, USA. Electronic address: https://twitter.com/FarazA.
Department of Preventive Medicine, Northwestern University Feinberg School of Medicine, Chicago, IL, USA; Bluhm Cardiovascular Institute Center for Artificial Intelligence, Northwestern Medicine, Chicago, IL, USA. Electronic address: https://twitter.com/yuanhypnosluo.
Heart Fail Clin. 2022 Apr;18(2):287-300. doi: 10.1016/j.hfc.2021.12.002. Epub 2022 Mar 4.
Heart failure with preserved ejection fraction (HFpEF) represents a prototypical cardiovascular condition in which machine learning may improve targeted therapies and mechanistic understanding of pathogenesis. Machine learning, which involves algorithms that learn from data, has the potential to guide precision medicine approaches for complex clinical syndromes such as HFpEF. It is therefore important to understand the potential utility and common pitfalls of machine learning so that it can be applied and interpreted appropriately. Although machine learning holds considerable promise for HFpEF, it is subject to several potential pitfalls, which are important factors to consider when interpreting machine learning studies.
射血分数保留的心衰(HFpEF)是一种典型的心血管疾病,机器学习可能会改善针对这种疾病的靶向治疗和发病机制的理解。机器学习涉及从数据中学习的算法,它有可能为 HFpEF 等复杂临床综合征指导精准医学方法。因此,了解机器学习的潜在用途和常见陷阱非常重要,以便能够适当地应用和解释它。虽然机器学习在 HFpEF 中具有很大的应用前景,但它也存在一些潜在的陷阱,这些陷阱是在解释机器学习研究时需要考虑的重要因素。