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一种通过连接映射识别具有改变乳腺癌风险潜力的药物的综合荟萃分析方法。

An integrated meta-analysis approach to identifying medications with potential to alter breast cancer risk through connectivity mapping.

机构信息

Centre for Cancer Research and Cell Biology (CCRCB), Queen's University Belfast, Belfast, UK.

Centre for Public Health, Queen's University Belfast, Belfast, UK.

出版信息

BMC Bioinformatics. 2017 Dec 21;18(1):581. doi: 10.1186/s12859-017-1989-x.

Abstract

BACKGROUND

Gene expression connectivity mapping has gained much popularity in recent years with a number of successful applications in biomedical research testifying its utility and promise. A major application of connectivity mapping is the identification of small molecule compounds capable of inhibiting a disease state. In this study, we are additionally interested in small molecule compounds that may enhance a disease state or increase the risk of developing that disease. Using breast cancer as a case study, we aim to develop and test a methodology for identifying commonly prescribed drugs that may have a suppressing or inducing effect on the target disease (breast cancer).

RESULTS

We obtained from public data repositories a collection of breast cancer gene expression datasets with over 7000 patients. An integrated meta-analysis approach to gene expression connectivity mapping was developed, which involved unified processing and normalization of raw gene expression data, systematic removal of batch effects, and multiple runs of balanced sampling for differential expression analysis. Differentially expressed genes stringently selected were used to construct multiple non-joint gene signatures representing the same biological state. Remarkably these non-joint gene signatures retrieved from connectivity mapping separate lists of candidate drugs with significant overlaps, providing high confidence in their predicted effects on breast cancers. Of particular note, among the top 26 compounds identified as inversely connected to the breast cancer gene signatures, 14 of them are known anti-cancer drugs.

CONCLUSIONS

A few candidate drugs with potential to enhance breast cancer or increase the risk of the disease were also identified; further investigation on a large population is required to firmly establish their effects on breast cancer risks. This work thus provides a novel approach and an applicable example for identifying medications with potential to alter cancer risks through gene expression connectivity mapping.

摘要

背景

近年来,基因表达连接性映射在生物医学研究中取得了许多成功的应用,证明了其效用和前景,因此备受关注。连接性映射的一个主要应用是识别能够抑制疾病状态的小分子化合物。在这项研究中,我们还对可能增强疾病状态或增加患病风险的小分子化合物感兴趣。我们选择乳腺癌作为案例研究,旨在开发和测试一种识别常见处方药物的方法,这些药物可能对目标疾病(乳腺癌)具有抑制或诱导作用。

结果

我们从公共数据库中获得了包含超过 7000 名患者的乳腺癌基因表达数据集。我们开发了一种综合的基因表达连接性映射元分析方法,该方法涉及原始基因表达数据的统一处理和归一化、系统去除批次效应,以及多次平衡采样进行差异表达分析。严格选择的差异表达基因被用于构建多个非联合基因特征,代表相同的生物状态。值得注意的是,从连接性映射中检索到的非联合基因特征分离出候选药物列表存在显著重叠,这为其对乳腺癌的预测效果提供了高度置信度。特别是,在与乳腺癌基因特征呈反向连接的前 26 种化合物中,有 14 种是已知的抗癌药物。

结论

还确定了一些具有增强乳腺癌或增加患病风险潜力的候选药物;需要在更大的人群中进行进一步调查,以确定它们对乳腺癌风险的影响。因此,这项工作为通过基因表达连接性映射识别具有改变癌症风险潜力的药物提供了一种新的方法和应用实例。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cc4a/5740937/c5e74af6d929/12859_2017_1989_Fig1_HTML.jpg

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