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  • TMO-Net: an explainable pre...
    Wang, Feng-ao; Zhuang, Zhenfeng; Gao, Feng; He, Ruikun; Zhang, Shaoting; Wang, Liansheng; Liu, Junwei; Li, Yixue

    Genome Biology, 06/2024, Letnik: 25, Številka: 1
    Journal Article

    Abstract Cancer is a complex disease composing systemic alterations in multiple scales. In this study, we develop the Tumor Multi-Omics pre-trained Network (TMO-Net) that integrates multi-omics pan-cancer datasets for model pre-training, facilitating cross-omics interactions and enabling joint representation learning and incomplete omics inference. This model enhances multi-omics sample representation and empowers various downstream oncology tasks with incomplete multi-omics datasets. By employing interpretable learning, we characterize the contributions of distinct omics features to clinical outcomes. The TMO-Net model serves as a versatile framework for cross-modal multi-omics learning in oncology, paving the way for tumor omics-specific foundation models.