Risk of Mortality Prediction Involving Time-Varying Covariates for Patients with Heart Failure Using Deep Learning

被引:2
|
作者
Nakamura, Keijiro [1 ]
Zhou, Xue [2 ]
Sahara, Naohiko [1 ]
Toyoda, Yasutake [1 ]
Enomoto, Yoshinari [1 ]
Hara, Hidehiko [1 ]
Noro, Mahito [3 ]
Sugi, Kaoru [3 ]
Huang, Ming [2 ]
Moroi, Masao [1 ]
Nakamura, Masato [1 ]
Zhu, Xin [4 ]
机构
[1] Toho Univ, Ohashi Med Ctr, Div Cardiovasc Med, Tokyo 1538515, Japan
[2] Nara Inst Sci & Technol, Grad Sch Sci & Technol, Ikoma 6300192, Japan
[3] Odawara Cardiovasc Hosp, Div Cardiovasc Med, Odawara 2500873, Japan
[4] Univ Aizu, Grad Dept Comp & Informat Syst, Aizu Wakamatsu 9658580, Japan
基金
日本学术振兴会;
关键词
deep learning; heart failure; mortality; risk prediction; time-varying covariates; DIAGNOSIS; EPIDEMIOLOGY; PROGNOSIS; OUTCOMES;
D O I
10.3390/diagnostics12122947
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Heart failure (HF) is challenging public medical and healthcare systems. This study aimed to develop and validate a novel deep learning-based prognostic model to predict the risk of all-cause mortality for patients with HF. We also compared the performance of the proposed model with those of classical deep learning- and traditional statistical-based models. The present study enrolled 730 patients with HF hospitalized at Toho University Ohashi Medical Center between April 2016 and March 2020. A recurrent neural network-based model (RNNSurv) involving time-varying covariates was developed and validated. The proposed RNNSurv showed better prediction performance than those of a deep feed-forward neural network-based model (referred as "DeepSurv") and a multivariate Cox proportional hazard model in view of discrimination (C-index: 0.839 vs. 0.755 vs. 0.762, respectively), calibration (better fit with a 45-degree line), and ability of risk stratification, especially identifying patients with high risk of mortality. The proposed RNNSurv demonstrated an improved prediction performance in consideration of temporal information from time-varying covariates that could assist clinical decision-making. Additionally, this study found that significant risk and protective factors of mortality were specific to risk levels, highlighting the demand for an individual-specific clinical strategy instead of a uniform one for all patients.
引用
收藏
页数:14
相关论文
共 50 条
  • [21] Prediction of mortality in heart failure by machine learning. Comparison with statistical modeling
    Scrutinio, Domenico
    Amitrano, Federica
    Guida, Pietro
    Coccia, Armando
    Pagano, Gaetano
    D'addio, Gianni
    Passantino, Andrea
    EUROPEAN JOURNAL OF INTERNAL MEDICINE, 2025, 133 : 106 - 112
  • [22] Machine Learning for Mortality Prediction in Patients With Heart Failure With Mildly Reduced Ejection Fraction
    Tian, Pengchao
    Liang, Lin
    Zhao, Xuemei
    Huang, Boping
    Feng, Jiayu
    Huang, Liyan
    Huang, Yan
    Zhai, Mei
    Zhou, Qiong
    Zhang, Jian
    Zhang, Yuhui
    JOURNAL OF THE AMERICAN HEART ASSOCIATION, 2023, 12 (12):
  • [23] Renal dysfunction is a time-varying risk predictor of sudden cardiac death in heart failure
    Sobue, Yoshihiro
    Watanabe, Eiichi
    Funato, Yusuke
    Yanase, Masanobu
    Izawa, Hideo
    ESC HEART FAILURE, 2024, 11 (05): : 2481 - +
  • [24] Emergency Heart Failure Mortality Risk Grade score performance for 7-day mortality prediction in patients with heart failure attended at the emergency department: validation in a Spanish cohort
    Gil, Victor
    Miro, Oscar
    Schull, Michael J.
    Llorens, Pere
    Herrero-Puente, Pablo
    Jacob, Javier
    Rios, Jose
    Lee, Douglas S.
    Martin-Sanchez, Francisco J.
    EUROPEAN JOURNAL OF EMERGENCY MEDICINE, 2018, 25 (03) : 169 - 177
  • [25] Risk prediction of mortality for patients with heart failure in England: observational study in primary care
    Bottle, Alex
    Newson, Roger
    Faitna, Puji
    Hayhoe, Benedict
    Cowie, Martin R.
    ESC HEART FAILURE, 2023, 10 (02): : 824 - 833
  • [26] “Get with the Guidelines Heart Failure Risk Score” for mortality prediction in patients undergoing MitraClip
    Christos Iliadis
    Maximilian Spieker
    Refik Kavsur
    Clemens Metze
    Martin Hellmich
    Patrick Horn
    Ralf Westenfeld
    Vedat Tiyerili
    Marc Ulrich Becher
    Malte Kelm
    Georg Nickenig
    Stephan Baldus
    Roman Pfister
    Clinical Research in Cardiology, 2021, 110 : 1871 - 1880
  • [27] Clinical Risk Prediction Tools in Patients Hospitalized With Heart Failure
    Fonarow, Gregg C.
    REVIEWS IN CARDIOVASCULAR MEDICINE, 2012, 13 (01) : E14 - E23
  • [28] Development and Validation of a Mortality Risk Prediction Model Using Global Longitudinal Strain in Patients With Acute Heart Failure
    Hwang, In-Chang
    Cho, Goo-Yeong
    Choi, Hong-Mi
    Yoon, Yeonyee E.
    Park, Jin Joo
    Park, Jun-Bean
    Park, Jae-Hyeong
    CIRCULATION, 2018, 138
  • [29] Acute Heart Failure (HF) Mortality Prediction in Emergent Care: The Emergency Heart Failure Mortality Risk Grade
    Lee, Douglas S.
    Stitt, Audra
    Austin, Peter C.
    Stukel, Therese A.
    Schull, Michael J.
    Chong, Alice
    Newton, Gary E.
    Lee, Jacques S.
    Tu, Jack V.
    CIRCULATION, 2011, 124 (21)
  • [30] Joint Forecasting and Interpolation of Time-Varying Graph Signals Using Deep Learning
    Lewenfus, Gabriela
    Martins, Wallace A.
    Chatzinotas, Symeon
    Ottersten, Bjorn
    IEEE TRANSACTIONS ON SIGNAL AND INFORMATION PROCESSING OVER NETWORKS, 2020, 6 (06): : 761 - 773