IVCVLGNov 27, 2022

Deep Learning-Based Prediction of Molecular Tumor Biomarkers from H&E: A Practical Review

arXiv:2211.14847v135 citationsh-index: 6
Originality Synthesis-oriented
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It addresses the problem of expensive and time-consuming molecular testing in cancer treatment by proposing a practical screening alternative, but it is incremental as it reviews existing methods rather than introducing new ones.

This review examines the use of deep learning on H&E images to predict molecular tumor biomarkers, highlighting that dozens of studies have shown promising results for cost-effective screening, though challenges like small training sets persist.

Molecular and genomic properties are critical in selecting cancer treatments to target individual tumors, particularly for immunotherapy. However, the methods to assess such properties are expensive, time-consuming, and often not routinely performed. Applying machine learning to H&E images can provide a more cost-effective screening method. Dozens of studies over the last few years have demonstrated that a variety of molecular biomarkers can be predicted from H&E alone using the advancements of deep learning: molecular alterations, genomic subtypes, protein biomarkers, and even the presence of viruses. This article reviews the diverse applications across cancer types and the methodology to train and validate these models on whole slide images. From bottom-up to pathologist-driven to hybrid approaches, the leading trends include a variety of weakly supervised deep learning-based approaches, as well as mechanisms for training strongly supervised models in select situations. While results of these algorithms look promising, some challenges still persist, including small training sets, rigorous validation, and model explainability. Biomarker prediction models may yield a screening method to determine when to run molecular tests or an alternative when molecular tests are not possible. They also create new opportunities in quantifying intratumoral heterogeneity and predicting patient outcomes.

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