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Gene - and Pathway-Based Deep Neural Network for Multi-omics Data Integration to Predict Cancer Survival Outcomes

机译:基于基因和通路的深度神经网络,用于多组学数据集成,可预测癌症的生存结果

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Data integration of multi-platform based omics data from biospecimen holds promise of improving survival prediction and personalized therapies in cancer. Multi-omics data provide comprehensive descriptions of human genomes regulated by complex interactions of multiple biological processes such as genetic, epigenetic, and transcriptional regulation. Therefore, the integration of multi-omics data is essential to decipher complex mechanisms of human diseases and to enhance treatments based on genetic understanding of each patient in precision medicine. In this paper, we propose a gene- and pathway-based deep neural network for multi-omics data integration (MiNet) to predict cancer survival outcomes. MiNet introduces a multi-omics layer that represents multi-layered biological processes of genetic, epigenetic, and transcriptional regulation, in the gene- and pathway-based neural network. MiNet captures nonlinear effects of multi-omics data to survival outcomes via a neural network framework, while allowing one to biologically interpret the model. In the extensive experiments with multi-omics data of Gliblastoma multiforme (GBM) patients, MiNet outperformed the current cutting-edge methods including SurvivalNet and Cox-nnet. Moreover, MiNet's model showed the capability to interpret a multi-layered biological system. A number of biological literature in GBM supported the biological interpretation of MiNet. The open-source software of MiNet in PyTorch is publicly available at https://github.com/DataX-JieHao/MiNet.
机译:来自生物样本的基于多平台的组学数据的数据集成有望改善癌症的生存预测和个性化疗法。多组学数据提供了由多种生物过程(如遗传,表观遗传和转录调控)的复杂相互作用调控的人类基因组的全面描述。因此,多组学数据的集成对于破译人类疾病的复杂机制并基于对精密医学中每个患者的遗传理解来增强治疗至关重要。在本文中,我们提出了一种基于基因和途径的深度神经网络,用于多组学数据集成(MiNet),以预测癌症的生存结果。 MiNet引入了多组学层,该层代表了基于基因和途径的神经网络中遗传,表观遗传和转录调控的多层生物过程。 MiNet通过神经网络框架捕获多组学数据对生存结果的非线性影响,同时允许人们对模型进行生物学解释。在针对多形性胶质母细胞瘤(GBM)患者的多组学数据进行的广泛实验中,MiNet的表现优于当前最先进的方法,包括SurvivalNet和Cox-nnet。而且,MiNet的模型显示了解释多层生物系统的能力。 GBM中的许多生物学文献都支持MiNet的生物学解释。 PyTorch中的MiNet的开源软件可从https://github.com/DataX-JieHao/MiNet公开获得。

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