Survival neural networks for time-to-event prediction in longitudinal study

被引:0
|
作者
Jianfei Zhang
Lifei Chen
Yanfang Ye
Gongde Guo
Rongbo Chen
Alain Vanasse
Shengrui Wang
机构
[1] Université de Sherbrooke,Département d’informatique
[2] Fujian Normal University,College of Mathematics and Informatics
[3] Case Western Reserve University,Department of Computer and Data Sciences
[4] Université de Sherbrooke,Département de médecine de famille et de médecine d’urgence
[5] Centre Hospitalier Universitaire de Sherbrooke (CHUS),undefined
来源
关键词
Time-to-event prediction; Longitudinal study; Survival neural network; Classification probability; Time-dependent covariate;
D O I
暂无
中图分类号
学科分类号
摘要
Time-to-event prediction has been an important practical task for longitudinal studies in many fields such as manufacturing, medicine, and healthcare. While most of the conventional survival analysis approaches suffer from the presence of censored failures and statistically circumscribed assumptions, few attempts have been made to develop survival learning machines that explore the underlying relationship between repeated measures of covariates and failure-free survival probability. This requires a purely dynamic-data-driven prediction approach, free of survival models or statistical assumptions. To this end, we propose two real-time survival networks: a time-dependent survival neural network (TSNN) with a feed-forward architecture and a recurrent survival neural network (RSNN) incorporating long short-term memory units. The TSNN additively estimates a latent failure risk arising from the repeated measures and performs multiple binary classifications to generate prognostics of survival probability, while the RSNN with time-dependent input covariates implicitly estimates the relation between these covariates and the survival probability. We propose a novel survival learning criterion to train the neural networks by minimizing the censoring Kullback–Leibler divergence, which guarantees monotonicity of the resulting probability. Besides the failure-event AUC, C-index, and censoring Brier score, we redefine a survival time estimate to evaluate the performance of the competing models. Experiments on four datasets demonstrate the great promise of our approach in real applications.
引用
收藏
页码:3727 / 3751
页数:24
相关论文
共 50 条
  • [31] Time-to-event analysis with artificial neural networks:: An integrated analytical and rule-based study for breast cancer
    Lisboa, Paulo J. G.
    Etchells, Terence A.
    Jarman, Ian H.
    Aung, M. S. Hane
    Chabaud, Sylvie
    Bachelot, Thomas
    Pero, David
    Gargi, Therese
    Bourdes, Valerie
    Bonnevay, Stephane
    Negrier, Sylvie
    2007 IEEE INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, VOLS 1-6, 2007, : 2532 - +
  • [32] Evaluation of dipolar neural networks in survival time prediction
    Kretowska, M
    Bobrowski, L
    NEURAL NETWORKS AND SOFT COMPUTING, 2003, : 230 - 235
  • [33] Time-to-event survival statistics in ophthalmology: Methodological research
    Layton, Christopher J.
    Layton, Danielle M.
    CLINICAL AND EXPERIMENTAL OPHTHALMOLOGY, 2020, 48 (09): : 1136 - 1145
  • [34] Survival analysis: Part I - analysis time-to-event
    In, Junyong
    Lee, Dong Kyu
    KOREAN JOURNAL OF ANESTHESIOLOGY, 2018, 71 (03) : 182 - 191
  • [35] Generalized survival models for correlated time-to-event data
    Liu, Xing-Rong
    Pawitan, Yudi
    Clements, Mark S.
    STATISTICS IN MEDICINE, 2017, 36 (29) : 4743 - 4762
  • [36] Evidential time-to-event prediction with calibrated uncertainty quantification
    Huang, Ling
    Xing, Yucheng
    Mishra, Swapnil
    Denux, Thierry
    Feng, Mengling
    INTERNATIONAL JOURNAL OF APPROXIMATE REASONING, 2025, 181
  • [37] Tightly integrated multiomics-based deep tensor survival model for time-to-event prediction
    Zhang, Jasper Zhongyuan
    Xu, Wei
    Hu, Pingzhao
    BIOINFORMATICS, 2022, 38 (12) : 3259 - 3266
  • [38] Joint models for multiple longitudinal processes and time-to-event outcome
    Yang, Lili
    Yu, Menggang
    Gao, Sujuan
    JOURNAL OF STATISTICAL COMPUTATION AND SIMULATION, 2016, 86 (18) : 3682 - 3700
  • [39] Jointly modeling time-to-event and longitudinal data: a Bayesian approach
    Huang, Yangxin
    Hu, X. Joan
    Dagne, Getachew A.
    STATISTICAL METHODS AND APPLICATIONS, 2014, 23 (01): : 95 - 121
  • [40] Jointly modeling time-to-event and longitudinal data: a Bayesian approach
    Yangxin Huang
    X. Joan Hu
    Getachew A. Dagne
    Statistical Methods & Applications, 2014, 23 : 95 - 121