A systematic review of biologically-informed deep learning models for cancer: fundamental trends for encoding and interpreting oncology data
Magdalena Wysocka, Oskar Wysocki, Marie Zufferey, D\'onal Landers,, Andr\'e Freitas

TL;DR
This systematic review examines deep learning models in cancer research, emphasizing how they incorporate biological prior knowledge and interpretability, highlighting recent advances and proposing a bio-centric interpretability framework.
Contribution
It provides a comprehensive analysis of recent DL models in oncology focusing on biological knowledge integration and introduces the concept of bio-centric interpretability.
Findings
Models increasingly incorporate biological networks for better generalization.
Explainability methods are evolving to enhance interpretability in cancer DL models.
Bio-centric interpretability offers a new framework for biological understanding of models.
Abstract
There is an increasing interest in the use of Deep Learning (DL) based methods as a supporting analytical framework in oncology. However, most direct applications of DL will deliver models with limited transparency and explainability, which constrain their deployment in biomedical settings. This systematic review discusses DL models used to support inference in cancer biology with a particular emphasis on multi-omics analysis. It focuses on how existing models address the need for better dialogue with prior knowledge, biological plausibility and interpretability, fundamental properties in the biomedical domain. For this, we retrieved and analyzed 42 studies focusing on emerging architectural and methodological advances, the encoding of biological domain knowledge and the integration of explainability methods. We discuss the recent evolutionary arch of DL models in the direction of…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Computational Drug Discovery Methods · Biomedical Text Mining and Ontologies
