Survival prediction of glioblastoma patients using modern deep learning and machine learning techniques.

Journal: Scientific reports
Published Date:

Abstract

In this study, we utilized data from the Surveillance, Epidemiology, and End Results (SEER) database to predict the glioblastoma patients' survival outcomes. To assess dataset skewness and detect feature importance, we applied Pearson's second coefficient test of skewness and the Ordinary Least Squares method, respectively. Using two sampling strategies, holdout and five-fold cross-validation, we developed five machine learning (ML) models alongside a feed-forward deep neural network (DNN) for the multiclass classification and regression prediction of glioblastoma patient survival. After balancing the classification and regression datasets, we obtained 46,340 and 28,573 samples, respectively. Shapley additive explanations (SHAP) were then used to explain the decision-making process of the best model. In both classification and regression tasks, as well as across holdout and cross-validation sampling strategies, the DNN consistently outperformed the ML models. Notably, the accuracy were 90.25% and 90.22% for holdout and five-fold cross-validation, respectively, while the corresponding R values were 0.6565 and 0.6622. SHAP analysis revealed the importance of age at diagnosis as the most influential feature in the DNN's survival predictions. These findings suggest that the DNN holds promise as a practical auxiliary tool for clinicians, aiding them in optimal decision-making concerning the treatment and care trajectories for glioblastoma patients.

Authors

  • Samin Babaei Rikan
    Department of Computer Engineering, Urmia University, Urmia, Iran.
  • Amir Sorayaie Azar
    Department of Computer Engineering, Urmia University, Urmia, Iran.
  • Amin Naemi
    Centre of Health Informatics and Technology, The Maersk Mc-Kinney Moller, Institute, University of Southern Denmark, Odense, Denmark.
  • Jamshid Bagherzadeh Mohasefi
    Department of Computer Engineering, Urmia Branch, Islamic Azad University, Urmia, Iran; Department of Electrical and Computer Engineering, Urmia University, Urmia, Iran. Electronic address: j.bagherzadeh@urmia.ac.ir.
  • Habibollah Pirnejad
    Department of Health Information Technology, Urmia University of Medical Sciences, Urmia, Iran; Patient Safety Research Center, Urmia University of Medical Sciences, Urmia, Iran; Erasmus School of Health Policy & Management (ESHPM), Erasmus University Rotterdam, Rotterdam, the Netherlands.
  • Uffe Kock Wiil
    Maersk Mc-Kinney Moller Institute, University of Southern Denmark, Denmark.