Predicting Long-Term Mortality in Patients With Acute Heart Failure by Using Machine Learning

医学 四分位间距 队列 危险分层 比例危险模型 接收机工作特性 射血分数 心力衰竭 内科学
作者
Jiesuck Park,In‐Chang Hwang,Goo-Yeong Cho,Jun‐Bean Park,JAE-HYEONG PARK,GOO-YEONG CHO
出处
期刊:Journal of Cardiac Failure [Elsevier]
卷期号:28 (7): 1078-1087 被引量:7
标识
DOI:10.1016/j.cardfail.2022.02.012
摘要

Background High mortality rates in patients with acute heart failure (AHF) necessitate proper risk stratification. However, risk-assessment tools for long-term mortality are largely lacking. We aimed to develop a machine-learning (ML)-based risk-prediction model for long-term all-cause mortality in patients admitted for AHF. Methods and Results The ML model, based on boosted a Cox regression algorithm (CoxBoost), was trained with 2704 consecutive patients hospitalized for AHF (median age 73 years, 55% male, and median left ventricular ejection fraction 38%). We selected 27 input variables, including 19 clinical features and 8 echocardiographic parameters, for model development. The best-performing model, along with pre-existing risk scores (BIOSTAT-CHF and AHEAD scores), was validated in an independent test cohort of 1608 patients. During the median 32 months (interquartile range 12–54 months) of the follow-up period, 1050 (38.8%) and 690 (42.9%) deaths occurred in the training and test cohorts, respectively. The area under the receiver operating characteristic curve (AUROC) of the ML model for all-cause mortality at 3 years was 0.761 (95% CI: 0.754–0.767) in the training cohort and 0.760 (95% CI: 0.752–0.768) in the test cohort. The discrimination performance of the ML model significantly outperformed those of the pre-existing risk scores (AUROC 0.714, 95% CI 0.706–0.722 by BIOSTAT-CHF; and 0.681, 95% CI 0.672–0.689 by AHEAD). Risk stratification based on the ML model identified patients at high mortality risk regardless of heart failure phenotypes. Conclusions The ML-based mortality-prediction model can predict long-term mortality accurately, leading to optimal risk stratification of patients with AHF.
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