Abstract:
Survival analysis is a critical task in glioma patient management due to the inter and intra tumor
heterogeneity. In clinical practice, clinicians estimate the survival with their experience, which can be biased
and optimistic. Over the past decades, diverse survival analysis approaches were proposed incorporating
distinct data such as imaging and genetic information. The remarkable advancements in imaging and high
throughput omics and sequencing technologies have enabled the acquisition of this information of glioma
patients ef ciently, providing novel insights for survival estimation in the present day. Besides, in the past
years, machine learning techniques and deep learning have emerged into the eld of survival analysis of
glioma patients trading off the traditional statistical analysis-based survival analysis approaches. In this
survey paper, we explore the prognostic parameters acquired, utilizing diagnostic imaging techniques and
genomic platforms for survival or risk estimation of glioma patients. Further, we review the techniques,
learning and statistical analysis algorithms, along with their bene ts and limitations used for prognosis
prediction. Consequently, we highlight the challenges of the existing state-of-the-art survival prediction
studies and propose future directions in the eld of research.
Citation:
Wijethilake, N., Meedeniya, D., Chitraranjan, C., Perera, I., Islam, M., & Ren, H. (2021). Glioma survival analysis empowered with data engineering—A survey. IEEE Access, 9, 43168–43191. https://doi.org/10.1109/ACCESS.2021.3065965