Spatial-And-Context aware (SpACe) "virtual biopsy" radiogenomic maps to target tumor mutational status on structural MRI
Marwa Ismail, Ramon Correa, Kaustav Bera, Ruchika Verma, Anas Saeed, Bamashmos, Niha Beig, Jacob Antunes, Prateek Prasanna, Volodymyr Statsevych,, Manmeet Ahluwalia, Pallavi Tiwari

TL;DR
This paper introduces SpACe, a novel radiogenomic mapping method combining spatial priors and context features to accurately predict tumor mutational status on MRI, outperforming existing deep learning and radiomics approaches.
Contribution
The study presents a new spatial-and-context aware model for tumor mutation prediction that integrates biopsy site information and population atlases, improving accuracy over prior methods.
Findings
SpACe achieved 90% accuracy in EGFR mutation prediction.
SpACe outperformed deep learning and radiomics models.
Validated on glioblastoma MRI data with co-localized ground truth.
Abstract
With growing emphasis on personalized cancer-therapies,radiogenomics has shown promise in identifying target tumor mutational status on routine imaging (i.e. MRI) scans. These approaches fall into 2 categories: (1) deep-learning/radiomics (context-based), using image features from the entire tumor to identify the gene mutation status, or (2) atlas (spatial)-based to obtain likelihood of gene mutation status based on population statistics. While many genes (i.e. EGFR, MGMT) are spatially variant, a significant challenge in reliable assessment of gene mutation status on imaging has been the lack of available co-localized ground truth for training the models. We present Spatial-And-Context aware (SpACe) "virtual biopsy" maps that incorporate context-features from co-localized biopsy site along with spatial-priors from population atlases, within a Least Absolute Shrinkage and Selection…
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