Frontiers in Genetics (Aug 2024)

MSFN: a multi-omics stacked fusion network for breast cancer survival prediction

  • Ge Zhang,
  • Ge Zhang,
  • Ge Zhang,
  • Chenwei Ma,
  • Chaokun Yan,
  • Chaokun Yan,
  • Chaokun Yan,
  • Huimin Luo,
  • Huimin Luo,
  • Huimin Luo,
  • Jianlin Wang,
  • Jianlin Wang,
  • Jianlin Wang,
  • Wenjuan Liang,
  • Wenjuan Liang,
  • Wenjuan Liang,
  • Junwei Luo

DOI
https://doi.org/10.3389/fgene.2024.1378809
Journal volume & issue
Vol. 15

Abstract

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Introduction: Developing effective breast cancer survival prediction models is critical to breast cancer prognosis. With the widespread use of next-generation sequencing technologies, numerous studies have focused on survival prediction. However, previous methods predominantly relied on single-omics data, and survival prediction using multi-omics data remains a significant challenge.Methods: In this study, considering the similarity of patients and the relevance of multi-omics data, we propose a novel multi-omics stacked fusion network (MSFN) based on a stacking strategy to predict the survival of breast cancer patients. MSFN first constructs a patient similarity network (PSN) and employs a residual graph neural network (ResGCN) to obtain correlative prognostic information from PSN. Simultaneously, it employs convolutional neural networks (CNNs) to obtain specificity prognostic information from multi-omics data. Finally, MSFN stacks the prognostic information from these networks and feeds into AdaboostRF for survival prediction.Results: Experiments results demonstrated that our method outperformed several state-of-the-art methods, and biologically validated by Kaplan-Meier and t-SNE.

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