Frontiers in Genetics (Sep 2024)

ML-GAP: machine learning-enhanced genomic analysis pipeline using autoencoders and data augmentation

  • Melih Agraz,
  • Melih Agraz,
  • Dincer Goksuluk,
  • Peng Zhang,
  • Peng Zhang,
  • Bum-Rak Choi,
  • Bum-Rak Choi,
  • Richard T. Clements,
  • Richard T. Clements,
  • Gaurav Choudhary,
  • Gaurav Choudhary,
  • Gaurav Choudhary,
  • George Em Karniadakis,
  • George Em Karniadakis

DOI
https://doi.org/10.3389/fgene.2024.1442759
Journal volume & issue
Vol. 15

Abstract

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IntroductionThe advent of RNA sequencing (RNA-Seq) has significantly advanced our understanding of the transcriptomic landscape, revealing intricate gene expression patterns across biological states and conditions. However, the complexity and volume of RNA-Seq data pose challenges in identifying differentially expressed genes (DEGs), critical for understanding the molecular basis of diseases like cancer.MethodsWe introduce a novel Machine Learning-Enhanced Genomic Data Analysis Pipeline (ML-GAP) that incorporates autoencoders and innovative data augmentation strategies, notably the MixUp method, to overcome these challenges. By creating synthetic training examples through a linear combination of input pairs and their labels, MixUp significantly enhances the model’s ability to generalize from the training data to unseen examples.ResultsOur results demonstrate the ML-GAP’s superiority in accuracy, efficiency, and insights, particularly crediting the MixUp method for its substantial contribution to the pipeline’s effectiveness, advancing greatly genomic data analysis and setting a new standard in the field.DiscussionThis, in turn, suggests that ML-GAP has the potential to perform more accurate detection of DEGs but also offers new avenues for therapeutic intervention and research. By integrating explainable artificial intelligence (XAI) techniques, ML-GAP ensures a transparent and interpretable analysis, highlighting the significance of identified genetic markers.

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