SubOmiEmbed:用于癌症类型分类的多组学数据自监督表示学习

S. Hashim, Muhammad Ali, K. Nandakumar, Mohammad Yaqub
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引用次数: 2

摘要

对于个体化药物,非常关键的内在信息存在于高维组学数据中,由于大量的分子特征和少量的可用样本而难以捕获。不同类型的组学数据显示了样本的不同方面。多组学数据的整合和分析为我们提供了肿瘤的广阔视野,这可以改善临床决策。以DNA甲基化和基因表达谱为主的组学数据通常是具有大量分子特征的高维数据。近年来,变分自编码器(VAE)[1]被广泛用于将图像和文本数据嵌入到低维潜在空间中。在我们的工作中,我们使用特征子集的自监督学习技术扩展了使用VAE模型进行低维潜在空间提取的思想。对于VAEs,关键思想是使模型从不同类型的组学数据中学习有意义的表示,然后可以用于下游任务,如癌症类型分类。主要目标是克服维度的诅咒,整合甲基化和表达数据,以结合相同组织样本的不同方面的信息,并有望提取生物学相关特征。我们的扩展包括训练编码器和解码器,从它的一个子集重建数据。通过这样做,我们迫使模型在潜在表示中编码最重要的信息。我们还向子集添加了标识,以便模型知道在训练和测试期间哪个子集被输入到它。我们对我们的方法进行了实验,发现SubOmiEmbed在一个小得多的网络上产生的结果与基线OmiEmbed[2]相当,并且只使用数据的一个子集。这项工作也可以改进为整合基于突变的基因组数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SubOmiEmbed: Self-supervised Representation Learning of Multi-omics Data for Cancer Type Classification
For personalized medicines, very crucial intrinsic information is present in high dimensional omics data which is difficult to capture due to the large number of molecular features and small number of available samples. Different types of omics data show various aspects of samples. Integration and analysis of multi-omics data give us a broad view of tumours, which can improve clinical decision making. Omics data, mainly DNA methylation and gene expression profiles are usually high dimensional data with a lot of molecular features. In recent years, variational autoencoders (VAE) [1] have been extensively used in embedding image and text data into lower dimensional latent spaces. In our work, we extend the idea of using a VAE model for low dimensional latent space extraction with the self-supervised learning technique of feature subsetting. With VAEs, the key idea is to make the model learn meaningful representations from different types of omics data, which could then be used for downstream tasks such as cancer type classification. The main goals are to overcome the curse of dimensionality and integrate methylation and expression data to combine information about different aspects of same tissue samples, and hopefully extract biologically relevant features. Our extension involves training encoder and decoder to reconstruct the data from just a subset of it. By doing this, we force the model to encode most important information in the latent representation. We also added an identity to the subsets so that the model knows which subset is being fed into it during training and testing. We experimented with our approach and found that SubOmiEmbed produces comparable results to the baseline OmiEmbed [2] with a much smaller network and by using just a subset of the data. This work can be improved to integrate mutation-based genomic data as well.
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