Litcius/Paper detail

Biological interpretation of deep neural network for phenotype prediction based on gene expression

Blaise Hanczar, Farida Zehraoui, Tina Issa, Mathieu Arles

2020BMC Bioinformatics43 citationsDOIOpen Access PDF

Abstract

BACKGROUND: The use of predictive gene signatures to assist clinical decision is becoming more and more important. Deep learning has a huge potential in the prediction of phenotype from gene expression profiles. However, neural networks are viewed as black boxes, where accurate predictions are provided without any explanation. The requirements for these models to become interpretable are increasing, especially in the medical field. RESULTS: We focus on explaining the predictions of a deep neural network model built from gene expression data. The most important neurons and genes influencing the predictions are identified and linked to biological knowledge. Our experiments on cancer prediction show that: (1) deep learning approach outperforms classical machine learning methods on large training sets; (2) our approach produces interpretations more coherent with biology than the state-of-the-art based approaches; (3) we can provide a comprehensive explanation of the predictions for biologists and physicians. CONCLUSION: We propose an original approach for biological interpretation of deep learning models for phenotype prediction from gene expression data. Since the model can find relationships between the phenotype and gene expression, we may assume that there is a link between the identified genes and the phenotype. The interpretation can, therefore, lead to new biological hypotheses to be investigated by biologists.

Topics & Concepts

Artificial intelligenceDeep learningMachine learningPhenotypeArtificial neural networkComputational biologyComputer scienceDNA microarrayInterpretation (philosophy)Expression (computer science)Gene regulatory networkGeneGene expressionBiologyBioinformaticsGeneticsProgramming languageExplainable Artificial Intelligence (XAI)Gene expression and cancer classificationBioinformatics and Genomic Networks