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Individual Survival Distributions: A More Effective Tool for Survival Prediction

  • Author / Creator
    Haider, Humza S
  • An accurate model of a patient’s individual survival distribution can help determine the appropriate treatment for terminal patients. Unfortunately, risk scores (e.g., from Cox Proportional Hazard models) do not provide survival probabilities, single-time probability models (e.g., the Gail model, predicting 5 year probability) only provides a probability for a single time point, and standard Kaplan-Meier survival curves provide only population averages for a large class of patients meaning they are not specific to individual patients. This motivates an alternative class of tools that can learn a model which provides an individual survival distribution which gives survival probabilities across all times.
    This work motivates such "individual survival distribution" (ISD) models, explains how they differ from standard models, and gives examples of common ISD models. It then discusses ways to evaluate such models and introduces a new approach, “D-Calibration”, which determines whether a model’s probability estimates are meaningful. We also discuss how these evaluation measures differ, and use them to evaluate many ISD prediction tools (both standard and state of the art) over a range of survival datasets. We further compare ISD models to common risk (non-ISD) models to demonstrate the superiority of our ISD class of models.

  • Subjects / Keywords
  • Graduation date
    Fall 2019
  • Type of Item
    Thesis
  • Degree
    Master of Science
  • DOI
    https://doi.org/10.7939/r3-srr8-2788
  • License
    Permission is hereby granted to the University of Alberta Libraries to reproduce single copies of this thesis and to lend or sell such copies for private, scholarly or scientific research purposes only. Where the thesis is converted to, or otherwise made available in digital form, the University of Alberta will advise potential users of the thesis of these terms. The author reserves all other publication and other rights in association with the copyright in the thesis and, except as herein before provided, neither the thesis nor any substantial portion thereof may be printed or otherwise reproduced in any material form whatsoever without the author's prior written permission.