CancerProteome: a resource to functionally decipher the proteome landscape in cancer

蛋白质组 生物 计算生物学 蛋白质组学 破译 鉴定(生物学) 癌症生物标志物 癌变 癌症 生物信息学 遗传学 基因 植物
作者
Dezhong Lv,Donghao Li,Yangyang Cai,Jiyu Guo,Shih‐I Chu,Jiaxin Yu,K. J. Ray Liu,Tiantongfei Jiang,Na Ding,Xiyun Jin,Yongsheng Li,Juan Xu
出处
期刊:Nucleic Acids Research [Oxford University Press]
卷期号:52 (D1): D1155-D1162
标识
DOI:10.1093/nar/gkad824
摘要

Abstract Advancements in mass spectrometry (MS)-based proteomics have greatly facilitated the large-scale quantification of proteins and microproteins, thereby revealing altered signalling pathways across many different cancer types. However, specialized and comprehensive resources are lacking for cancer proteomics. Here, we describe CancerProteome (http://bio-bigdata.hrbmu.edu.cn/CancerProteome), which functionally deciphers and visualizes the proteome landscape in cancer. We manually curated and re-analyzed publicly available MS-based quantification and post-translational modification (PTM) proteomes, including 7406 samples from 21 different cancer types, and also examined protein abundances and PTM levels in 31 120 proteins and 4111 microproteins. Six major analytical modules were developed with a view to describe protein contributions to carcinogenesis using proteome analysis, including conventional analyses of quantitative and the PTM proteome, functional enrichment, protein–protein associations by integrating known interactions with co-expression signatures, drug sensitivity and clinical relevance analyses. Moreover, protein abundances, which correlated with corresponding transcript or PTM levels, were evaluated. CancerProteome is convenient as it allows users to access specific proteins/microproteins of interest using quick searches or query options to generate multiple visualization results. In summary, CancerProteome is an important resource, which functionally deciphers the cancer proteome landscape and provides a novel insight for the identification of tumor protein markers in cancer.

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