Analysis of MRI Biomarkers for Brain Cancer Survival Prediction

09/03/2021
by   Subhashis Banerjee, et al.
5

Prediction of Overall Survival (OS) of brain cancer patients from multi-modal MRI is a challenging field of research. Most of the existing literature on survival prediction is based on Radiomic features, which does not consider either non-biological factors or the functional neurological status of the patient(s). Besides, the selection of an appropriate cut-off for survival and the presence of censored data create further problems. Application of deep learning models for OS prediction is also limited due to the lack of large annotated publicly available datasets. In this scenario we analyse the potential of two novel neuroimaging feature families, extracted from brain parcellation atlases and spatial habitats, along with classical radiomic and geometric features; to study their combined predictive power for analysing overall survival. A cross validation strategy with grid search is proposed to simultaneously select and evaluate the most predictive feature subset based on its predictive power. A Cox Proportional Hazard (CoxPH) model is employed for univariate feature selection, followed by the prediction of patient-specific survival functions by three multivariate parsimonious models viz. Coxnet, Random survival forests (RSF) and Survival SVM (SSVM). The brain cancer MRI data used for this research was taken from two open-access collections TCGA-GBM and TCGA-LGG available from The Cancer Imaging Archive (TCIA). Corresponding survival data for each patient was downloaded from The Cancer Genome Atlas (TCGA). A high cross validation C-index score of 0.82±.10 was achieved using RSF with the best 24 selected features. Age was found to be the most important biological predictor. There were 9, 6, 6 and 2 features selected from the parcellation, habitat, radiomic and region-based feature groups respectively.

READ FULL TEXT

page 4

page 5

page 11

page 19

research
06/05/2023

Brain Tumor Recurrence vs. Radiation Necrosis Classification and Patient Survivability Prediction

GBM (Glioblastoma multiforme) is the most aggressive type of brain tumor...
research
01/05/2019

Deep Convolutional Neural Networks for Imaging Data Based Survival Analysis of Rectal Cancer

Recent radiomic studies have witnessed promising performance of deep lea...
research
06/28/2023

Prediction of Rapid Early Progression and Survival Risk with Pre-Radiation MRI in WHO Grade 4 Glioma Patients

Recent clinical research describes a subset of glioblastoma patients tha...
research
08/30/2021

An Interpretable Web-based Glioblastoma Multiforme Prognosis Prediction Tool using Random Forest Model

We propose predictive models that estimate GBM patients' health status o...
research
03/07/2020

Large-scale benchmark study of survival prediction methods using multi-omics data

Multi-omics data, that is, datasets containing different types of high-d...
research
06/26/2019

Analyzing Verbal and Nonverbal Features for Predicting Group Performance

This work analyzes the efficacy of verbal and nonverbal features of grou...

Please sign up or login with your details

Forgot password? Click here to reset