QMLGNov 18, 2022

Deep learning methods for drug response prediction in cancer: predominant and emerging trends

arXiv:2211.10442v1100 citationsh-index: 63
Originality Synthesis-oriented
AI Analysis

This is an incremental review that synthesizes existing methods to help researchers understand and improve drug response prediction in cancer.

The paper conducted a review of 60 deep learning models for predicting cancer drug response, analyzing trends and challenges in the field.

Cancer claims millions of lives yearly worldwide. While many therapies have been made available in recent years, by in large cancer remains unsolved. Exploiting computational predictive models to study and treat cancer holds great promise in improving drug development and personalized design of treatment plans, ultimately suppressing tumors, alleviating suffering, and prolonging lives of patients. A wave of recent papers demonstrates promising results in predicting cancer response to drug treatments while utilizing deep learning methods. These papers investigate diverse data representations, neural network architectures, learning methodologies, and evaluations schemes. However, deciphering promising predominant and emerging trends is difficult due to the variety of explored methods and lack of standardized framework for comparing drug response prediction models. To obtain a comprehensive landscape of deep learning methods, we conducted an extensive search and analysis of deep learning models that predict the response to single drug treatments. A total of 60 deep learning-based models have been curated and summary plots were generated. Based on the analysis, observable patterns and prevalence of methods have been revealed. This review allows to better understand the current state of the field and identify major challenges and promising solution paths.

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