Learning Bayesian networks for clinical time series analysis

被引:38
|
作者
van der Heijden, Maarten [1 ,2 ]
Velikova, Marina [1 ]
Lucas, Peter J. F. [1 ,3 ]
机构
[1] Radboud Univ Nijmegen, Inst Comp & Informat Sci, NL-6525 ED Nijmegen, Netherlands
[2] Radboud Univ Nijmegen, Med Ctr, Dept Primary & Community Care, NL-6525 ED Nijmegen, Netherlands
[3] Leiden Univ, Leiden Inst Adv Comp Sci, NL-2300 RA Leiden, Netherlands
关键词
Chronic disease management; Bayesian networks; Machine learning; Temporal modelling; Clinical time series; Chronic obstructive pulmonary disease; OBSTRUCTIVE PULMONARY-DISEASE; COPD; EXACERBATIONS; MANAGEMENT; KNOWLEDGE; SYSTEM;
D O I
10.1016/j.jbi.2013.12.007
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Introduction: Autonomous chronic disease management requires models that are able to interpret time series data from patients. However, construction of such models by means of machine learning requires the availability of costly health-care data, often resulting in small samples. We analysed data from chronic obstructive pulmonary disease (COPD) patients with the goal of constructing a model to predict the occurrence of exacerbation events, i.e., episodes of decreased pulmonary health status. Methods: Data from 10 COPD patients, gathered with our home monitoring system, were used for temporal Bayesian network learning, combined with bootstrapping methods for data analysis of small data samples. For comparison a temporal variant of augmented naive Bayes models and a temporal nodes Bayesian network (TNBN) were constructed. The performances of the methods were first tested with synthetic data. Subsequently, different COPD models were compared to each other using an external validation data set. Results: The model learning methods are capable of finding good predictive models for our COPD data. Model averaging over models based on bootstrap replications is able to find a good balance between true and false positive rates on predicting COPD exacerbation events. Temporal naive Bayes offers an alternative that trades some performance for a reduction in computation time and easier interpretation. (C) 2013 Elsevier Inc. All rights reserved.
引用
收藏
页码:94 / 105
页数:12
相关论文
共 50 条
  • [31] Learning and predicting time series by neural networks
    Freking, Ansgar
    Kinzel, Wolfgang
    Kanter, Ido
    Physical Review E - Statistical, Nonlinear, and Soft Matter Physics, 2002, 65 (05): : 1 - 050903
  • [32] Learning and predicting time series by neural networks
    Freking, A
    Kinzel, W
    Kanter, I
    PHYSICAL REVIEW E, 2002, 65 (05):
  • [33] Bayesian Learning using Gaussian Process for time series prediction
    Brahim-Belhouari, S
    Vesin, JM
    2001 IEEE WORKSHOP ON STATISTICAL SIGNAL PROCESSING PROCEEDINGS, 2001, : 433 - 436
  • [34] Bayesian learning on graphs for reasoning on image time-series
    Héas, P
    Datcu, M
    BAYESIAN INFERENCE AND MAXIMUM ENTROPY METHODS IN SCIENCE AND ENGINEERING, 2004, 735 : 127 - 134
  • [35] Bayesian inference of genetic regulatory networks from time series microarray data using dynamic Bayesian networks
    Huang, Yufei
    Wang, Jianyin
    Zhang, Jianqiu
    Sanchez, Maribel
    Wang, Yufeng
    Journal of Multimedia, 2007, 2 (03): : 46 - 56
  • [36] ANALYSIS OF LEARNING-PROCESSES OF CHAOTIC TIME-SERIES BY NEURAL NETWORKS
    HONDOU, T
    SAWADA, Y
    PROGRESS OF THEORETICAL PHYSICS, 1994, 91 (02): : 397 - 402
  • [37] Time Series Analysis of Dynamic Networks
    Wang, Yibing
    Cheon, Sanghyun
    Wang, Qun
    2012 FIFTH INTERNATIONAL SYMPOSIUM ON COMPUTATIONAL INTELLIGENCE AND DESIGN (ISCID 2012), VOL 1, 2012, : 503 - 506
  • [38] Time series analysis of temporal networks
    Sandipan Sikdar
    Niloy Ganguly
    Animesh Mukherjee
    The European Physical Journal B, 2016, 89
  • [39] Time series analysis by Kauffman networks
    Wan, HA
    INTERNATIONAL JOURNAL OF COMPUTER MATHEMATICS, 1996, 60 (1-2) : 49 - 61
  • [40] Time series analysis of temporal networks
    Sikdar, Sandipan
    Ganguly, Niloy
    Mukherjee, Animesh
    EUROPEAN PHYSICAL JOURNAL B, 2016, 89 (01):