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通过整合方法与蒙特卡罗交叉验证分析鉴定多发性骨髓瘤的新靶点。

Identification of novel targets for multiple myeloma through integrative approach with Monte Carlo cross-validation analysis.

作者信息

Liu Congjian, Gu Xiang, Jiang Zhenxian

机构信息

Department of Orthopaedics, People's Hospital of Ri Zhao, No. 126 Tai-An Road, Ri Zhao 276826, Shandong, China.

出版信息

J Bone Oncol. 2017 Aug 12;8:8-12. doi: 10.1016/j.jbo.2017.08.001. eCollection 2017 Sep.

Abstract

More than one pathway is involved in disease development and progression, and two or more pathways may be interconnected to further affect the disease onset, as functional proteins participate in multiple pathways. Thus, identifying cross-talk among pathways is necessary to understand the molecular mechanisms of multiple myeloma (MM). Based on this, this paper looked at extracting potential pathway cross-talk in MM through an integrative approach using Monte Carlo cross-validation analysis. The gene expression library of MM (accession number: GSE6477) was downloaded from the Gene Expression Omnibus (GEO) database. The integrative approach was then used to identify potential pathway cross-talk, and included four steps: Firstly, differential expression analysis was conducted to identify differentially expressed genes (DEGs). Secondly, the DEGs obtained were mapped to the pathways downloaded from an ingenuity pathways analysis (IPA), to reveal the underlying relationship between the DEGs and pathways enriched by these DEGs. A subset of pathways enriched by the DEGs was then obtained. Thirdly, a discriminating score (DS) value for each paired pathway was computed. Lastly, random forest (RF) classification was used to identify the paired pathways based on area under the curve (AUC) and Monte Carlo cross-validation, which was repeated 50 times to explore the best paired pathways. These paired pathways were tested with another independently published MM microarray data (GSE85837), using in silico validation. Overall, 60 DEGs and 19 differential pathways enriched by DEGs were extracted. Each pathway was sorted based on their AUC values. The paired pathways, inhibition of matrix metalloproteases and EIF2 signaling pathway, indicated the best AUC value of 1.000. Paired pathways consisting of IL-8 and EIF2 signaling pathways with higher AUC of 0.975, were involved in 7 runs. Furthermore, it was validated consistently in separate microarray data sets (GSE85837). Paired pathways (inhibition of matrix metalloproteases and EIF2 signaling, IL-8 signaling and EIF2 signaling) exhibited the best AUC values and higher frequency of validation. Two paired pathways (inhibition of matrix metalloproteases and EIF2 signaling, IL-8 signaling and EIF2 signaling) were used to accurately classify MM and control samples. These paired pathways may be potential bio-signatures for diagnosis and management of MM.

摘要

疾病的发生和发展涉及多条途径,而且由于功能蛋白参与多种途径,两条或更多途径可能相互关联,进而影响疾病的发病。因此,识别途径间的相互作用对于理解多发性骨髓瘤(MM)的分子机制至关重要。基于此,本文旨在通过使用蒙特卡洛交叉验证分析的综合方法,提取MM中潜在的途径相互作用。从基因表达综合数据库(GEO)下载了MM的基因表达文库(登录号:GSE6477)。然后使用该综合方法识别潜在的途径相互作用,包括四个步骤:首先,进行差异表达分析以识别差异表达基因(DEG)。其次,将获得的DEG映射到从 Ingenuity 途径分析(IPA)下载的途径,以揭示DEG与这些DEG富集的途径之间的潜在关系。然后获得由DEG富集的一部分途径。第三,计算每个配对途径的鉴别分数(DS)值。最后,使用随机森林(RF)分类基于曲线下面积(AUC)和蒙特卡洛交叉验证来识别配对途径,该过程重复50次以探索最佳配对途径。使用计算机模拟验证,用另一个独立发表的MM微阵列数据(GSE85837)对这些配对途径进行测试。总体而言,提取了60个DEG和19条由DEG富集的差异途径。根据它们的AUC值对每个途径进行排序。配对途径,即基质金属蛋白酶抑制和EIF2信号通路,显示出最佳AUC值为1.000。由IL-8和EIF2信号通路组成的配对途径,AUC较高,为0.975,在7次运行中出现。此外,在单独的微阵列数据集(GSE85837)中得到了一致验证。配对途径(基质金属蛋白酶抑制和EIF2信号传导,IL-8信号传导和EIF2信号传导)表现出最佳AUC值和更高的验证频率。两条配对途径(基质金属蛋白酶抑制和EIF2信号传导,IL-8信号传导和EIF2信号传导)被用于准确分类MM和对照样本。这些配对途径可能是MM诊断和管理的潜在生物标志物。

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