The role of deep learning‐based survival model in improving survival prediction of patients with glioblastoma

Volume: 10, Issue: 20, Pages: 7048 - 7059
Published: Aug 28, 2021
Abstract
This retrospective study has been conducted to validate the performance of deep learning-based survival models in glioblastoma (GBM) patients alongside the Cox proportional hazards model (CoxPH) and the random survival forest (RSF). Furthermore, the effect of hyperparameters optimization methods on improving the prediction accuracy of deep learning-based survival models was investigated. Of the 305 cases, 260 GBM patients were included in our...
Paper Details
Title
The role of deep learning‐based survival model in improving survival prediction of patients with glioblastoma
Published Date
Aug 28, 2021
Volume
10
Issue
20
Pages
7048 - 7059
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