Skip to main page content
U.S. flag

An official website of the United States government

Dot gov

The .gov means it’s official.
Federal government websites often end in .gov or .mil. Before sharing sensitive information, make sure you’re on a federal government site.

Https

The site is secure.
The https:// ensures that you are connecting to the official website and that any information you provide is encrypted and transmitted securely.

Access keys NCBI Homepage MyNCBI Homepage Main Content Main Navigation
Review
. 2021 May;26(3):545-552.
doi: 10.1007/s10741-020-10052-y. Epub 2020 Nov 9.

Machine learning and statistical methods for predicting mortality in heart failure

Affiliations
Review

Machine learning and statistical methods for predicting mortality in heart failure

Dineo Mpanya et al. Heart Fail Rev. 2021 May.

Abstract

Heart failure is a debilitating clinical syndrome associated with increased morbidity, mortality, and frequent hospitalization, leading to increased healthcare budget utilization. Despite the exponential growth in the introduction of pharmacological agents and medical devices that improve survival, many heart failure patients, particularly those with a left ventricular ejection fraction less than 40%, still experience persistent clinical symptoms that lead to an overall decreased quality of life. Clinical risk prediction is one of the strategies that has been implemented for the selection of high-risk patients and for guiding therapy. However, most risk predictive models have not been well-integrated into the clinical setting. This is partly due to inherent limitations, such as creating risk predicting models using static clinical data that does not consider the dynamic nature of heart failure. Another limiting factor preventing clinicians from utilizing risk prediction models is the lack of insight into how predictive models are built. This review article focuses on describing how predictive models for risk-stratification of patients with heart failure are built.

Keywords: Deep learning; Heart failure; Machine learning; Models; Predict.

PubMed Disclaimer

References

    1. Lippi G, Sanchis-Gomar F (2020) Global epidemiology and future trends of heart failure. AME Med J 2020(5):15
    1. Dokainish H, Teo K, Zhu J, Roy A, AlHabib KF, ElSayed A et al (2017) Global mortality variations in patients with heart failure: results from the International Congestive Heart Failure (INTER-CHF) prospective cohort study. Lancet Glob Health 5(7):e665–e672 - DOI
    1. Concise Oxford English Dictionary, 11th ed. 2006. Oxford University Press, New York
    1. Rahimi K, Bennett D, Conrad N, Williams TM, Basu J, Dwight J, Woodward M, Patel A, McMurray J, MacMahon S (2014) Risk prediction in patients with heart failure: a systematic review and analysis. JACC Heart Fail 2(5):440–446 - DOI
    1. Di Tanna GL, Wirtz H, Burrows KL, Globe G (2020) Evaluating risk prediction models for adults with heart failure: A systematic literature review. PLoS ONE 15(1): e0224135. https://doi.org/10.1371/journal.pone.0224135

Publication types

LinkOut - more resources