Artificial intelligence-based locoregional markers of brain peritumoral microenvironment.

in Scientific reports by Zahra Riahi Samani, Drew Parker, Hamed Akbari, Ronald L Wolf, Steven Brem, Spyridon Bakas, Ragini Verma

TLDR

  • The study aims to develop a set of markers that can help doctors understand how cancer cells infiltrate into the brain and how this affects patient outcomes. The researchers used a type of MRI called DTI to look at how water moves in the brain and found that certain areas had more restrictions on water movement. They then used this information to create a set of markers that could help doctors identify patients who are at higher risk of recurrence or who have a better chance of survival. The study's findings suggest that these markers could be used to help doctors make better decisions about treatment and care for patients with brain tumors.

Abstract

In malignant primary brain tumors, cancer cells infiltrate into the peritumoral brain structures which results in inevitable recurrence. Quantitative assessment of infiltrative heterogeneity in the peritumoral region, the area where biopsy or resection can be hazardous, is important for clinical decision making. Here, we derive a novel set of Artificial intelligence (AI)-based markers capturing the heterogeneity of tumor infiltration, by characterizing free water movement restriction in the peritumoral region using Diffusion Tensor Imaging (DTI)-based free water volume fraction maps. We leverage the differences in the peritumoral region of metastasis and glioblastomas, the former consisting of vasogenic versus the latter containing infiltrative edema, to extract a voxel-wise deep learning-based peritumoral microenvironment index (PMI). Descriptive characteristics of locoregional hubs of uniformly high PMI values are then extracted as AI-based markers to capture distinct aspects of infiltrative heterogeneity. The proposed markers are utilized to stratify patients' survival and IDH1 mutation status on a population of 275 adult-type diffuse gliomas (CNS WHO grade 4). Our results show significant differences in the proposed markers between patients with different overall survival and IDH1 mutation status (t test, Wilcoxon rank sum test, linear regression; p < 0.01). Clustering of patients using the proposed markers reveals distinct survival groups (logrank; p < 10, Cox hazard ratio = 1.82; p < 0.005). Our findings provide a panel of markers as surrogates of infiltration that might capture novel insight about underlying biology of peritumoral microstructural heterogeneity, providing potential biomarkers of prognosis pertaining to survival and molecular stratification, with applicability in clinical decision making.

Overview

  • The study aims to develop a novel set of AI-based markers capturing the heterogeneity of tumor infiltration in malignant primary brain tumors. The researchers used DTI-based free water volume fraction maps to characterize free water movement restriction in the peritumoral region and derived a voxel-wise deep learning-based peritumoral microenvironment index (PMI). The study's primary objective is to stratify patients' survival and IDH1 mutation status on a population of 275 adult-type diffuse gliomas (CNS WHO grade 4) using the proposed markers. The study's hypothesis is that the proposed markers will reveal distinct aspects of infiltrative heterogeneity and provide potential biomarkers of prognosis pertaining to survival and molecular stratification.

Comparative Analysis & Findings

  • The study compares the outcomes observed under different experimental conditions or interventions, specifically the proposed AI-based markers derived from DTI-based free water volume fraction maps. The researchers identified significant differences in the proposed markers between patients with different overall survival and IDH1 mutation status. The study's key findings suggest that the proposed markers can stratify patients into distinct survival groups and provide potential biomarkers of prognosis pertaining to survival and molecular stratification.

Implications and Future Directions

  • The study's findings have significant implications for the field of research and clinical practice, as they provide a panel of markers as surrogates of infiltration that might capture novel insight about underlying biology of peritumoral microstructural heterogeneity. The study suggests potential biomarkers of prognosis pertaining to survival and molecular stratification, with applicability in clinical decision making. Future research directions could explore the use of the proposed markers in other types of brain tumors, investigate the relationship between the proposed markers and other clinical and molecular variables, and evaluate the predictive performance of the proposed markers in larger cohorts.