Imaging-based histological features are predictive of MET alterations in Non-Small Cell Lung Cancer
Rohan P. Joshi, Boles{\l}aw L. Osinski, Niha Beig, Lingdao Sha,, Kshitij Ingale, Martin C. Stumpe

TL;DR
This study shows that morphological features in H&E-stained images can predict MET gene alterations in non-small cell lung cancer, potentially enabling cost-effective screening methods.
Contribution
It introduces a novel morphology-based predictive model for MET alterations using histological features, reducing reliance on molecular assays.
Findings
Cell features distinguish MET wild-type from altered cases
Predictive model achieved ROC-AUC of 0.77
A sparse set of 43 features was identified
Abstract
MET is a proto-oncogene whose somatic activation in non-small cell lung cancer leads to increased cell growth and tumor progression. The two major classes of MET alterations are gene amplification and exon 14 deletion, both of which are therapeutic targets and detectable using existing molecular assays. However, existing tests are limited by their consumption of valuable tissue, cost and complexity that prevent widespread use. MET alterations could have an effect on cell morphology, and quantifying these associations could open new avenues for research and development of morphology-based screening tools. Using H&E-stained whole slide images (WSIs), we investigated the association of distinct cell-morphological features with MET amplifications and MET exon 14 deletions. We found that cell shape, color, grayscale intensity and texture-based features from both tumor infiltrating…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Digital Imaging for Blood Diseases
MethodsLogistic Regression
