Predicting Survival In Malignant Glioma Using Artifcial Intelligence.
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European Journal of Medical Research
Abstract
Malignant gliomas, including glioblastoma, are amongst the most aggressive primary brain tumours, characterised by rapid progression and a poor prognosis. Survival analysis is an essential aspect of glioma management
and research, as most studies use time-to-event outcomes to assess overall survival (OS) and progression-free
survival (PFS) as key measures to evaluate patients. However, predicting survival using traditional methods such
as the Kaplan–Meier estimator and the Cox Proportional Hazards (CPH) model has faced many challenges and inaccuracies. Recently, advances in artificial intelligence (AI), including machine learning (ML) and deep learning (DL),
have enabled significant improvements in survival prediction for glioma patients by integrating multimodal data
such as imaging, clinical parameters and molecular biomarkers. This study highlights the comparative effectiveness
of imaging-based, non-imaging and combined AI models. Imaging models excel at identifying tumour-specifc
features through radiomics, achieving high predictive accuracy. Non-imaging approaches also excel in utilising clinical
and genetic data to provide complementary insights, whilst combined methods integrate multiple data modalities
and have the greatest potential for accurate survival prediction. Limitations include data heterogeneity, interpret‑
ability challenges and computational demands, particularly in resource-limited settings. Solutions such as federated
learning, lightweight AI models and explainable AI frameworks are proposed to overcome these barriers. Ultimately,
the integration of advanced AI techniques promises to transform glioma management by enabling personalised
treatment strategies and improved prognostic accuracy.
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Research Article
Citation
Awuah, W. A., Ben-Jaafar, A., Roy, S., Nkrumah-Boateng, P. A., Tan, J. K., Abdul-Rahman, T., & Atallah, O. (2025). Predicting survival in malignant glioma using artificial intelligence. European Journal of Medical Research, 30(1), 61.
