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首页> 外文期刊>BMC Genomics >An integrated bioinformatics analysis to dissect kinase dependency in triple negative breast cancer
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An integrated bioinformatics analysis to dissect kinase dependency in triple negative breast cancer

机译:一种综合的生物信息学分析,用于对三重阴性乳腺癌进行关染术依赖性

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Background Triple-Negative Breast Cancer (TNBC) is an aggressive disease with a poor prognosis. Clinically, TNBC patients have limited treatment options besides chemotherapy. The goal of this study was to determine the kinase dependency in TNBC cell lines and to predict compounds that could inhibit these kinases using integrative bioinformatics analysis. Results We integrated publicly available gene expression data, high-throughput pharmacological profiling data, and quantitative in vitro kinase binding data to determine the kinase dependency in 12 TNBC cell lines. We employed Kinase Addiction Ranker (KAR), a novel bioinformatics approach, which integrated these data sources to dissect kinase dependency in TNBC cell lines. We then used the kinase dependency predicted by KAR for each TNBC cell line to query K-Map for compounds targeting these kinases. Wevalidated our predictions using published and new experimental data. Conclusions In summary, we implemented an integrative bioinformatics analysis that determines kinase dependency in TNBC. Our analysis revealed candidate kinases as potential targets in TNBC for further pharmacological and biological studies.
机译:背景,三阴性乳腺癌(TNBC)是一种侵略性的疾病,预后差。临床上,除了化疗外,TNBC患者还有有限的治疗选择。本研究的目的是确定TNBC细胞系中的激酶依赖性,并使用整合生物信息学分析预测可以抑制这些激酶的化合物。结果我们集成了公开可用的基因表达数据,高通量药理学分析数据,以及定量的体外激酶结合数据,以确定12 TNBC细胞系中的激酶依赖性。我们使用Kinase成瘾ranker(Kar),一种新型生物信息学方法,其集成了这些数据源,以疏忽TNBC细胞系中的激酶依赖性。然后,我们使用Kar的激酶依赖性为每个TNBC细胞系预测到靶向这些激酶的化合物的Q-MAP。使用已发布和新的实验数据进行我们的预测。总结结论,我们实施了一种综合生物信息学分析,确定了TNBC的激酶依赖性。我们的分析揭示了候选激酶作为TNBC的潜在目标,用于进一步药理学和生物学研究。

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