A comparative study of methods for dynamic survival analysis

Wieske K. de Swart*, Marco Loog, Jesse H. Krijthe*

*Corresponding author for this work

Research output: Contribution to journalArticleScientificpeer-review

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Abstract

Introduction: Dynamic survival analysis has become an effective approach for predicting time-to-event outcomes based on longitudinal data in neurology, cognitive health, and other health-related domains. With advancements in machine learning, several new methods have been introduced, often using a two-stage approach: first extracting features from longitudinal trajectories and then using these to predict survival probabilities.

Methods: This work compares several combinations of longitudinal and survival models, assessing their predictive performance across different training strategies. Using synthetic and real-world cognitive health data from the Alzheimer's Disease Neuroimaging Initiative (ADNI), we explore the strengths and limitations of each model.

Results: Among the considered survival models, the Random Survival Forest consistently delivered strong results across different datasets, longitudinal models, and training strategies. On the ADNI dataset the best performing method was Random Survival Forest with the last visit benchmark and super landmarking with an average tdAUC of 0.96 and brier score of 0.07. Several other methods, including Cox Proportional Hazards and the Recurrent Neural Network, achieve similar scores. While the tested longitudinal models often struggled to outperform simple benchmarks, neural network models showed some improvement in simulated scenarios with sufficiently informative longitudinal trajectories.

Discussion: Our findings underscore the importance of aligning model selection and training strategies with the specific characteristics of the data and the target application, providing valuable insights that can inform future developments in dynamic survival analysis.
Original languageEnglish
Article number1504535
Number of pages19
JournalFrontiers in Neurology
Volume16
DOIs
Publication statusPublished - 2025

Keywords

  • survival analysis
  • dynamic prediction
  • longitudinal data
  • landmarking
  • machine learning
  • ADNI

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