Dynamic and concordance-assisted learning for risk stratification with application to Alzheimer's disease.

Journal: Biostatistics (Oxford, England)
Published Date:

Abstract

Dynamic prediction models capable of retaining accuracy by evolving over time could play a significant role for monitoring disease progression in clinical practice. In biomedical studies with long-term follow up, participants are often monitored through periodic clinical visits with repeat measurements until an occurrence of the event of interest (e.g. disease onset) or the study end. Acknowledging the dynamic nature of disease risk and clinical information contained in the longitudinal markers, we propose an innovative concordance-assisted learning algorithm to derive a real-time risk stratification score. The proposed approach bypasses the need to fit regression models, such as joint models of the longitudinal markers and time-to-event outcome, and hence enjoys the desirable property of model robustness. Simulation studies confirmed that the proposed method has satisfactory performance in dynamically monitoring the risk of developing disease and differentiating high-risk and low-risk population over time. We apply the proposed method to the Alzheimer's Disease Neuroimaging Initiative data and develop a dynamic risk score of Alzheimer's Disease for patients with mild cognitive impairment using multiple longitudinal markers and baseline prognostic factors.

Authors

  • Wen Li
  • Ruosha Li
    Department of Biostatistics and Data Science, The University of Texas School of Public Health, Houston, TX 77030, United States.
  • Ziding Feng
    Department of Biostatistics, The University of Texas MD Anderson Cancer Center, Houston Texas 77030, U.S.A.
  • Jing Ning
    Christian Doppler Laboratory for Applied Metabolomics, 1090 Vienna, Austria.