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Applications of artificial intelligence and machine learning in heart failure.


ABSTRACT: Machine learning (ML) is a sub-field of artificial intelligence that uses computer algorithms to extract patterns from raw data, acquire knowledge without human input, and apply this knowledge for various tasks. Traditional statistical methods that classify or regress data have limited capacity to handle large datasets that have a low signal-to-noise ratio. In contrast to traditional models, ML relies on fewer assumptions, can handle larger and more complex datasets, and does not require predictors or interactions to be pre-specified, allowing for novel relationships to be detected. In this review, we discuss the rationale for the use and applications of ML in heart failure, including disease classification, early diagnosis, early detection of decompensation, risk stratification, optimal titration of medical therapy, effective patient selection for devices, and clinical trial recruitment. We discuss how ML can be used to expedite implementation and close healthcare gaps in learning healthcare systems. We review the limitations of ML, including opaque logic and unreliable model performance in the setting of data errors or data shift. Whilst ML has great potential to improve clinical care and research in HF, the applications must be externally validated in prospective studies for broad uptake to occur.

SUBMITTER: Averbuch T 

PROVIDER: S-EPMC9707916 | biostudies-literature | 2022 Jun

REPOSITORIES: biostudies-literature

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Applications of artificial intelligence and machine learning in heart failure.

Averbuch Tauben T   Sullivan Kristen K   Sauer Andrew A   Mamas Mamas A MA   Voors Adriaan A AA   Gale Chris P CP   Metra Marco M   Ravindra Neal N   Van Spall Harriette G C HGC  

European heart journal. Digital health 20220513 2


Machine learning (ML) is a sub-field of artificial intelligence that uses computer algorithms to extract patterns from raw data, acquire knowledge without human input, and apply this knowledge for various tasks. Traditional statistical methods that classify or regress data have limited capacity to handle large datasets that have a low signal-to-noise ratio. In contrast to traditional models, ML relies on fewer assumptions, can handle larger and more complex datasets, and does not require predict  ...[more]

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