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-  2019 

Combining multimodal imaging and treatment features improves machine learning‐based prognostic assessment in patients with glioblastoma multiforme

DOI: 10.1002/cam4.1908

Keywords: biomarker, FET‐PET, glioblastoma, machine learning, MRI, prognostic model, VASARI

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Abstract:

For Glioblastoma (GBM), various prognostic nomograms have been proposed. This study aims to evaluate machine learning models to predict patients' overall survival (OS) and progression‐free survival (PFS) on the basis of clinical, pathological, semantic MRI‐based, and FET‐PET/CT‐derived information. Finally, the value of adding treatment features was evaluated

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