Cancer subtype identification using deep learning approach

A. F. Syafiandini, Ito Wasito, S. Yazid, Aries Fitriawan, Mukhlis Amien
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引用次数: 5

Abstract

In this paper, a framework using deep learning approach is proposed to identify two subtypes of human colorectal carcinoma cancer. The identification process uses information from gene expression and clinical data which is obtained from data integration process. One of deep learning architecture, multimodal Deep Boltzmann Machines (DBM) is used for data integration process. The joint representation gene expression and clinical is later used as Restricted Boltzmann Machines (RBM) input for cancer subtype identification. Kaplan Meier survival analysis is employed to evaluate the identification result. The curves on survival plot obtained from Kaplan Meier analysis are tested using three statistic tests to ensure that there is a significant difference between those curves. According to Log Rank, Generalized Wilcoxon and Tarone-Ware, the two groups of patients with different cancer subtypes identified using the proposed framework are significantly different.
利用深度学习方法识别癌症亚型
本文提出了一个使用深度学习方法的框架来识别人类结直肠癌的两种亚型。识别过程使用基因表达信息和临床数据,这些信息是通过数据整合过程获得的。多模态深度玻尔兹曼机(DBM)是一种深度学习架构,用于数据集成。将基因表达与临床的联合表征作为限制性玻尔兹曼机(Restricted Boltzmann Machines, RBM)输入用于癌症亚型识别。采用Kaplan Meier生存分析对鉴定结果进行评价。Kaplan Meier分析得到的生存图曲线采用3个统计检验,确保曲线之间存在显著性差异。根据Log Rank, Generalized Wilcoxon和Tarone-Ware,使用所提出的框架确定的两组不同癌症亚型的患者显着不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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