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通过功能途径推断分析系统地鉴定癌细胞中的生化网络。

Systematic identification of biochemical networks in cancer cells by functional pathway inference analysis.

机构信息

Centre for Genomics and Computational Biology, Barts Cancer Institute, Queen Mary University of London, London EC1M 6BQ, UK.

出版信息

Bioinformatics. 2023 Jan 1;39(1). doi: 10.1093/bioinformatics/btac769.

Abstract

MOTIVATION

Pathway inference methods are important for annotating the genome, for providing insights into the mechanisms of biochemical processes and allow the discovery of signalling members and potential new drug targets. Here, we tested the hypothesis that genes with similar impact on cell viability across multiple cell lines belong to a common pathway, thus providing a conceptual basis for a pathway inference method based on correlated anti-proliferative gene properties.

METHODS

To test this concept, we used recently available large-scale RNAi screens to develop a method, termed functional pathway inference analysis (FPIA), to systemically identify correlated gene dependencies.

RESULTS

To assess FPIA, we initially focused on PI3K/AKT/MTOR signalling, a prototypic oncogenic pathway for which we have a good sense of ground truth. Dependencies for AKT1, MTOR and PDPK1 were among the most correlated with those for PIK3CA (encoding PI3Kα), as returned by FPIA, whereas negative regulators of PI3K/AKT/MTOR signalling, such as PTEN were anti-correlated. Following FPIA, MTOR, PIK3CA and PIK3CB produced significantly greater correlations for genes in the PI3K-Akt pathway versus other pathways. Application of FPIA to two additional pathways (p53 and MAPK) returned expected associations (e.g. MDM2 and TP53BP1 for p53 and MAPK1 and BRAF for MEK1). Over-representation analysis of FPIA-returned genes enriched the respective pathway, and FPIA restricted to specific tumour lineages uncovered cell type-specific networks. Overall, our study demonstrates the ability of FPIA to identify members of pro-survival biochemical pathways in cancer cells.

AVAILABILITY AND IMPLEMENTATION

FPIA is implemented in a new R package named 'cordial' freely available from https://github.com/CutillasLab/cordial.

SUPPLEMENTARY INFORMATION

Supplementary data are available at Bioinformatics online.

摘要

动机

途径推断方法对于注释基因组、深入了解生化过程的机制以及发现信号成员和潜在的新药物靶点都很重要。在这里,我们检验了这样一个假设,即在多个细胞系中对细胞活力具有相似影响的基因属于共同途径,从而为基于相关抗增殖基因特性的途径推断方法提供了概念基础。

方法

为了验证这一概念,我们使用最近获得的大规模 RNAi 筛选来开发一种方法,称为功能途径推断分析(FPIA),以系统地识别相关的基因依赖性。

结果

为了评估 FPIA,我们最初专注于 PI3K/AKT/MTOR 信号通路,这是一个典型的致癌通路,我们对其有很好的了解。AKT1、MTOR 和 PDPK1 的依赖性与 FPIA 返回的 PI3Kα(编码 PI3Kα)的依赖性高度相关,而 PI3K/AKT/MTOR 信号通路的负调节剂,如 PTEN 则呈负相关。在 FPIA 之后,MTOR、PIK3CA 和 PIK3CB 与 PI3K-Akt 通路中的基因产生了显著更高的相关性,而与其他通路相比则更低。将 FPIA 应用于另外两条通路(p53 和 MAPK),得到了预期的关联(例如,p53 通路中的 MDM2 和 TP53BP1 以及 MEK1 通路中的 MAPK1 和 BRAF)。FPIA 返回基因的过表达分析丰富了相应的通路,而特定于特定肿瘤谱系的 FPIA 则揭示了细胞类型特异性网络。总体而言,我们的研究证明了 FPIA 能够识别癌细胞中促生存生化途径的成员。

可用性和实现

FPIA 实现于一个名为“cordial”的新的 R 包中,可从 https://github.com/CutillasLab/cordial 免费获得。

补充信息

补充数据可在 Bioinformatics 在线获取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b335/9805595/d458780d7151/btac769f1.jpg

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