BMC Bioinformatics (Nov 2024)

MoAGL-SA: a multi-omics adaptive integration method with graph learning and self attention for cancer subtype classification

  • Lei Cheng,
  • Qian Huang,
  • Zhengqun Zhu,
  • Yanan Li,
  • Shuguang Ge,
  • Longzhen Zhang,
  • Ping Gong

DOI
https://doi.org/10.1186/s12859-024-05989-y
Journal volume & issue
Vol. 25, no. 1
pp. 1 – 19

Abstract

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Abstract Background The integration of multi-omics data through deep learning has greatly improved cancer subtype classification, particularly in feature learning and multi-omics data integration. However, key challenges remain in embedding sample structure information into the feature space and designing flexible integration strategies. Results We propose MoAGL-SA, an adaptive multi-omics integration method based on graph learning and self-attention, to address these challenges. First, patient relationship graphs are generated from each omics dataset using graph learning. Next, three-layer graph convolutional networks are employed to extract omic-specific graph embeddings. Self-attention is then used to focus on the most relevant omics, adaptively assigning weights to different graph embeddings for multi-omics integration. Finally, cancer subtypes are classified using a softmax classifier. Conclusions Experimental results show that MoAGL-SA outperforms several popular algorithms on datasets for breast invasive carcinoma, kidney renal papillary cell carcinoma, and kidney renal clear cell carcinoma. Additionally, MoAGL-SA successfully identifies key biomarkers for breast invasive carcinoma.

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