Development and internal validation of machine learning models for personalized survival predictions in spinal cord glioma patients

Feb 16, 2024The spine journal : official journal of the North American Spine Society

Machine learning models to predict survival chances for spinal cord tumor patients

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Abstract

4,913 patients were analyzed for 1-year survival outcomes in spinal cord glioma cases, with a 5.6% mortality rate.

  • The top machine learning models achieved an area under the receiver operating characteristic curve (AUROC) of 0.938 for 1-year mortality, 0.907 for 3-year mortality, and 0.902 for 5-year mortality.
  • Histology, tumor grade, age, surgery, radiotherapy, and tumor size are identified as significant predictors of survival outcomes.
  • An interactive online calculator has been developed to allow physicians to estimate individual survival outcomes using these models.
  • The study utilizes data from the National Cancer Database for patients diagnosed between 2010 and 2019.
  • Global analyses using SHAP indicate the relative importance of predictor variables for model performance.

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Full Text

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