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EvoAug: improving generalization and interpretability of genomic deep neural networks with evolution-inspired data augmentations

Nicholas Keone Lee, Ziqi Tang, Shushan Toneyan, Peter K. Koo

2023Genome biology38 citationsDOIOpen Access PDF

Abstract

Deep neural networks (DNNs) hold promise for functional genomics prediction, but their generalization capability may be limited by the amount of available data. To address this, we propose EvoAug, a suite of evolution-inspired augmentations that enhance the training of genomic DNNs by increasing genetic variation. Random transformation of DNA sequences can potentially alter their function in unknown ways, so we employ a fine-tuning procedure using the original non-transformed data to preserve functional integrity. Our results demonstrate that EvoAug substantially improves the generalization and interpretability of established DNNs across prominent regulatory genomics prediction tasks, offering a robust solution for genomic DNNs.

Topics & Concepts

InterpretabilityGeneralizationBiologyGenomicsArtificial intelligenceDeep neural networksTransformation (genetics)Computational biologyMachine learningArtificial neural networkComputer scienceFunctional genomicsGenomeGeneticsGeneMathematicsMathematical analysisGenomics and Chromatin DynamicsRNA and protein synthesis mechanismsGenomics and Phylogenetic Studies
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