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首页> 外文期刊>BMC Bioinformatics >Comprehensive data-driven analysis of the impact of chemoinformatic structure on the genome-wide biological response profiles of cancer cells to 1159 drugs
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Comprehensive data-driven analysis of the impact of chemoinformatic structure on the genome-wide biological response profiles of cancer cells to 1159 drugs

机译:化学信息结构对癌细胞对1159种药物的全基因组生物学反应谱的影响的综合数据驱动分析

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Background Detailed and systematic understanding of the biological effects of millions of available compounds on living cells is a significant challenge. As most compounds impact multiple targets and pathways, traditional methods for analyzing structure-function relationships are not comprehensive enough. Therefore more advanced integrative models are needed for predicting biological effects elicited by specific chemical features. As a step towards creating such computational links we developed a data-driven chemical systems biology approach to comprehensively study the relationship of 76 structural 3D-descriptors (VolSurf, chemical space) of 1159 drugs with the microarray gene expression responses (biological space) they elicited in three cancer cell lines. The analysis covering 11350 genes was based on data from the Connectivity Map. We decomposed the biological response profiles into components, each linked to a characteristic chemical descriptor profile. Results Integrated analysis of both the chemical and biological space was more informative than either dataset alone in predicting drug similarity as measured by shared protein targets. We identified ten major components that link distinct VolSurf chemical features across multiple compounds to specific cellular responses. For example, component 2 (hydrophobic properties) strongly linked to DNA damage response, while component 3 (hydrogen bonding) was associated with metabolic stress. Individual structural and biological features were often linked to one cell line only, such as leukemia cells (HL-60) specifically responding to cardiac glycosides. Conclusions In summary, our approach identified several novel links between specific chemical structure properties and distinct biological responses in cells incubated with these drugs. Importantly, the analysis focused on chemical-biological properties that emerge across multiple drugs. The decoding of such systematic relationships is necessary to build better models of drug effects, including unanticipated types of molecular properties having strong biological effects.
机译:背景技术对数百万种可用化合物对活细胞的生物学作用的详细而系统的理解是一项重大挑战。由于大多数化合物会影响多个目标和途径,因此分析结构-功能关系的传统方法不够全面。因此,需要更高级的整合模型来预测特定化学特征引起的生物学效应。为了建立这种计算联系,我们开发了一种数据驱动的化学系统生物学方法,以全面研究1159种药物的76个结构3D描述符(VolSurf,化学空间)与它们引起的微阵列基因表达反应(生物空间)之间的关系。在三种癌细胞系中涵盖11350个基因的分析基于连接图谱中的数据。我们将生物反应谱分解为各个组分,每个组分都与一个特征性的化学描述符谱联系在一起。结果化学和生物空间的综合分析比单独使用任一数据集提供的信息更丰富,可预测通过共享蛋白质靶标测量的药物相似性。我们确定了十个主要成分,这些成分将跨多种化合物的独特VolSurf化学特征与特定细胞反应联系在一起。例如,组分2(疏水特性)与DNA损伤反应密切相关,而组分3(氢键)与代谢应激相关。单个结构和生物学特征通常仅与一种细胞系相关,例如对心脏糖苷有特异性反应的白血病细胞(HL-60)。结论总而言之,我们的方法在与这些药物孵育的细胞中鉴定了特定化学结构特性与不同生物学反应之间的几种新颖联系。重要的是,分析着重于多种药物之间出现的化学生物学特性。对这种系统关系的解码对于建立更好的药物作用模型是必要的,其中包括具有强生物学作用的未预期类型的​​分子特性。

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