Random survival forests for dynamic predictions of a time-to-event outcome using a longitudinal biomarker

被引:27
|
作者
Pickett, Kaci L. [1 ]
Suresh, Krithika [2 ,3 ]
Campbell, Kristen R. [1 ]
Davis, Scott [4 ]
Juarez-Colunga, Elizabeth [1 ,2 ]
机构
[1] Univ Colorado, Dept Pediat, Anschutz Med Campus, Aurora, CO 80045 USA
[2] Univ Colorado, Dept Biostat & Informat, Anschutz Med Campus, Aurora, CO 80045 USA
[3] Univ Colorado, Adult & Child Consortium Hlth Outcomes & Delivery, Anschutz Med Campus, Aurora, CO 80045 USA
[4] Univ Colorado, Div Renal Dis & Hypertens, Anschutz Med Campus, Aurora, CO 80045 USA
关键词
Area under the curve; Joint modeling; Landmarking; Prediction accuracy; Variable importance; REGRESSION;
D O I
10.1186/s12874-021-01375-x
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background Risk prediction models for time-to-event outcomes play a vital role in personalized decision-making. A patient's biomarker values, such as medical lab results, are often measured over time but traditional prediction models ignore their longitudinal nature, using only baseline information. Dynamic prediction incorporates longitudinal information to produce updated survival predictions during follow-up. Existing methods for dynamic prediction include joint modeling, which often suffers from computational complexity and poor performance under misspecification, and landmarking, which has a straightforward implementation but typically relies on a proportional hazards model. Random survival forests (RSF), a machine learning algorithm for time-to-event outcomes, can capture complex relationships between the predictors and survival without requiring prior specification and has been shown to have superior predictive performance. Methods We propose an alternative approach for dynamic prediction using random survival forests in a landmarking framework. With a simulation study, we compared the predictive performance of our proposed method with Cox landmarking and joint modeling in situations where the proportional hazards assumption does not hold and the longitudinal marker(s) have a complex relationship with the survival outcome. We illustrated the use of the RSF landmark approach in two clinical applications to assess the performance of various RSF model building decisions and to demonstrate its use in obtaining dynamic predictions. Results In simulation studies, RSF landmarking outperformed joint modeling and Cox landmarking when a complex relationship between the survival and longitudinal marker processes was present. It was also useful in application when there were several predictors for which the clinical relevance was unknown and multiple longitudinal biomarkers were present. Individualized dynamic predictions can be obtained from this method and the variable importance metric is useful for examining the changing predictive power of variables over time. In addition, RSF landmarking is easily implementable in standard software and using suggested specifications requires less computation time than joint modeling. Conclusions RSF landmarking is a nonparametric, machine learning alternative to current methods for obtaining dynamic predictions when there are complex or unknown relationships present. It requires little upfront decision-making and has comparable predictive performance and has preferable computational speed.
引用
下载
收藏
页数:14
相关论文
共 50 条
  • [1] Random survival forests for dynamic predictions of a time-to-event outcome using a longitudinal biomarker
    Kaci L Pickett
    Krithika Suresh
    Kristen R Campbell
    Scott Davis
    Elizabeth Juarez-Colunga
    BMC Medical Research Methodology, 21
  • [2] Dynamic predictions using flexible joint models of longitudinal and time-to-event data
    Barrett, Jessica
    Su, Li
    STATISTICS IN MEDICINE, 2017, 36 (09) : 1447 - 1460
  • [3] Dynamic Predictions and Prospective Accuracy in Joint Models for Longitudinal and Time-to-Event Data
    Rizopoulos, Dimitris
    BIOMETRICS, 2011, 67 (03) : 819 - 829
  • [4] Combining Dynamic Predictions From Joint Models for Longitudinal and Time-to-Event Data Using Bayesian Model Averaging
    Rizopoulos, Dimitris
    Hatfield, Laura A.
    Carlin, Bradley P.
    Takkenberg, Johanna J. M.
    JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2014, 109 (508) : 1385 - 1397
  • [5] 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
  • [6] On Longitudinal Prediction with Time-to-Event Outcome: Comparison of Modeling Options
    Maziarz, Marlena
    Heagerty, Patrick
    Cai, Tianxi
    Zheng, Yingye
    BIOMETRICS, 2017, 73 (01) : 83 - 93
  • [7] Time-to-Event Analysis with Unknown Time Origins via Longitudinal Biomarker Registration
    Wang, Tianhao
    Ratcliffe, Sarah J.
    Guo, Wensheng
    JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2023, 118 (543) : 1968 - 1983
  • [8] Survival neural networks for time-to-event prediction in longitudinal study
    Jianfei Zhang
    Lifei Chen
    Yanfang Ye
    Gongde Guo
    Rongbo Chen
    Alain Vanasse
    Shengrui Wang
    Knowledge and Information Systems, 2020, 62 : 3727 - 3751
  • [9] WEIGHTED BIOMARKER VARIABILITY IN JOINT ANALYSIS OF LONGITUDINAL AND TIME-TO-EVENT DATA
    Wang, Chunyu
    Shen, Jiaming
    Charalambous, Christiana
    Pan, Jianxin
    ANNALS OF APPLIED STATISTICS, 2024, 18 (03): : 2576 - 2595
  • [10] Survival neural networks for time-to-event prediction in longitudinal study
    Zhang, Jianfei
    Chen, Lifei
    Ye, Yanfang
    Guo, Gongde
    Chen, Rongbo
    Vanasse, Alain
    Wang, Shengrui
    KNOWLEDGE AND INFORMATION SYSTEMS, 2020, 62 (09) : 3727 - 3751