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Main Authors: Cong, Shan, Sang, Zhiling, Liu, Hongwei, Luo, Haoran, Wang, Xin, Liang, Hong, Hao, Jie, Yao, Xiaohui
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.08703
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author Cong, Shan
Sang, Zhiling
Liu, Hongwei
Luo, Haoran
Wang, Xin
Liang, Hong
Hao, Jie
Yao, Xiaohui
author_facet Cong, Shan
Sang, Zhiling
Liu, Hongwei
Luo, Haoran
Wang, Xin
Liang, Hong
Hao, Jie
Yao, Xiaohui
contents The distinct characteristics of multiomics data, including complex interactions within and across biological layers and disease heterogeneity (e.g., heterogeneity in etiology and clinical symptoms), drive us to develop novel designs to address unique challenges in multiomics prediction. In this paper, we propose the multi-view knowledge transfer learning (MVKTrans) framework, which transfers intra- and inter-omics knowledge in an adaptive manner by reviewing data heterogeneity and suppressing bias transfer, thereby enhancing classification performance. Specifically, we design a graph contrastive module that is trained on unlabeled data to effectively learn and transfer the underlying intra-omics patterns to the supervised task. This unsupervised pretraining promotes learning general and unbiased representations for each modality, regardless of the downstream tasks. In light of the varying discriminative capacities of modalities across different diseases and/or samples, we introduce an adaptive and bi-directional cross-omics distillation module. This module automatically identifies richer modalities and facilitates dynamic knowledge transfer from more informative to less informative omics, thereby enabling a more robust and generalized integration. Extensive experiments on four real biomedical datasets demonstrate the superior performance and robustness of MVKTrans compared to the state-of-the-art. Code and data are available at https://github.com/Yaolab-fantastic/MVKTrans.
format Preprint
id arxiv_https___arxiv_org_abs_2411_08703
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MVKTrans: Multi-View Knowledge Transfer for Robust Multiomics Classification
Cong, Shan
Sang, Zhiling
Liu, Hongwei
Luo, Haoran
Wang, Xin
Liang, Hong
Hao, Jie
Yao, Xiaohui
Machine Learning
Artificial Intelligence
The distinct characteristics of multiomics data, including complex interactions within and across biological layers and disease heterogeneity (e.g., heterogeneity in etiology and clinical symptoms), drive us to develop novel designs to address unique challenges in multiomics prediction. In this paper, we propose the multi-view knowledge transfer learning (MVKTrans) framework, which transfers intra- and inter-omics knowledge in an adaptive manner by reviewing data heterogeneity and suppressing bias transfer, thereby enhancing classification performance. Specifically, we design a graph contrastive module that is trained on unlabeled data to effectively learn and transfer the underlying intra-omics patterns to the supervised task. This unsupervised pretraining promotes learning general and unbiased representations for each modality, regardless of the downstream tasks. In light of the varying discriminative capacities of modalities across different diseases and/or samples, we introduce an adaptive and bi-directional cross-omics distillation module. This module automatically identifies richer modalities and facilitates dynamic knowledge transfer from more informative to less informative omics, thereby enabling a more robust and generalized integration. Extensive experiments on four real biomedical datasets demonstrate the superior performance and robustness of MVKTrans compared to the state-of-the-art. Code and data are available at https://github.com/Yaolab-fantastic/MVKTrans.
title MVKTrans: Multi-View Knowledge Transfer for Robust Multiomics Classification
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2411.08703