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基于深度学习的多组学数据整合揭示的肌肉浸润性膀胱癌的稳健预后分型

Robust Prognostic Subtyping of Muscle-Invasive Bladder Cancer Revealed by Deep Learning-Based Multi-Omics Data Integration.

作者信息

Zhang Xiaolong, Wang Jiayin, Lu Jiabin, Su Lili, Wang Changxi, Huang Yuhua, Zhang Xuanping, Zhu Xiaoyan

机构信息

School of Electronic and Information Engineering, Xi'an Jiaotong University, Xi'an, China.

Sun Yat-sen University Cancer Center, State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Guangzhou, China.

出版信息

Front Oncol. 2021 Aug 6;11:689626. doi: 10.3389/fonc.2021.689626. eCollection 2021.

Abstract

Muscle-invasive bladder cancer (MIBC) is the most common urinary system carcinoma associated with poor outcomes. It is necessary to develop a robust classification system for prognostic prediction of MIBC. Recently, increasing omics data at different levels of MIBC were produced, but few integration methods were used to classify MIBC that reflects the patient's prognosis. In this study, we constructed an autoencoder based deep learning framework to integrate multi-omics data of MIBC and clustered samples into two different subgroups with significant overall survival difference ( = 8.11 × 10). As an independent prognostic factor relative to clinical information, these two subtypes have some significant genomic differences. Remarkably, the subtype of poor prognosis had significant higher frequency of chromosome 3p deletion. Immune decomposition analysis results showed that these two MIBC subtypes had different immune components including macrophages M1, resting NK cells, regulatory T cells, plasma cells, and naïve B cells. Hallmark gene set enrichment analysis was performed to investigate the functional character difference between these two MIBC subtypes, which revealed that activated IL-6/JAK/STAT3 signaling, interferon-alpha response, reactive oxygen species pathway, and unfolded protein response were significantly enriched in upregulated genes of high-risk subtype. We constructed MIBC subtyping models based on multi-omics data and single omics data, respectively, and internal and external validation datasets showed the robustness of the prediction model as well as its ability of prognosis ( < 0.05 in all datasets). Finally, through bioinformatics analysis and immunohistochemistry experiments, we found that KRT7 can be used as a biomarker reflecting MIBC risk.

摘要

肌层浸润性膀胱癌(MIBC)是最常见且预后较差的泌尿系统癌症。有必要开发一个强大的分类系统用于MIBC的预后预测。最近,产生了不同层面的MIBC组学数据,但很少有整合方法用于对反映患者预后的MIBC进行分类。在本研究中,我们构建了一个基于自动编码器的深度学习框架来整合MIBC的多组学数据,并将样本聚类为两个总生存期有显著差异的不同亚组(P = 8.11×10)。作为相对于临床信息的独立预后因素,这两个亚型存在一些显著的基因组差异。值得注意的是,预后较差的亚型3号染色体短臂缺失频率显著更高。免疫分解分析结果表明,这两种MIBC亚型具有不同的免疫成分,包括M1巨噬细胞、静息自然杀伤细胞、调节性T细胞、浆细胞和幼稚B细胞。进行了特征基因集富集分析以研究这两种MIBC亚型之间的功能特征差异,结果显示激活的IL-6/JAK/STAT3信号通路、α干扰素反应、活性氧途径和未折叠蛋白反应在高危亚型的上调基因中显著富集。我们分别基于多组学数据和单组学数据构建了MIBC亚型模型,内部和外部验证数据集显示了预测模型的稳健性及其预后能力(所有数据集中P < 0.05)。最后,通过生物信息学分析和免疫组织化学实验,我们发现角蛋白7(KRT7)可作为反映MIBC风险的生物标志物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d0ec/8378227/f85b4c481a28/fonc-11-689626-g001.jpg

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