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首页> 外文期刊>BMC Bioinformatics >Predicting chemosensitivity using drug perturbed gene dynamics
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Predicting chemosensitivity using drug perturbed gene dynamics

机译:使用药物扰动基因动力学预测化学敏感性

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One of the current directions of precision medicine is the use of computational methods to aid in the diagnosis, prognosis, and treatment of disease based on data driven approaches. For instance, in oncology, there has been a particular focus on development of algorithms and biomarkers that can be used for pre-clinical and clinical applications. In particular large-scale omics-based models to predict drug sensitivity in in vitro cancer cell line panels have been used to explore the utility and aid in the development of these models as clinical tools. Additionally, a number of web-based interfaces have been constructed for researchers to explore the potential of drug perturbed gene expression as biomarkers including the NCI Transcriptional Pharmacodynamic Workbench. In this paper we explore the influence of drug perturbed gene dynamics of the NCI Transcriptional Pharmacodynamics Workbench in computational models to predict in vitro drug sensitivity for 15 drugs on the NCI60 cell line panel. This work presents three main findings. First, our models show that gene expression profiles that capture changes in gene expression after 24?h of exposure to a high concentration of drug generates the most accurate predictive models compared to the expression profiles under different dosing conditions. Second, signatures of 100 genes are developed for different gene expression profiles; furthermore, when the gene signatures are applied across gene expression profiles model performance is substantially decreased when gene signatures developed using changes in gene expression are applied to non-drugged gene expression. Lastly, we show that the gene interaction networks developed on these signatures show different network topologies and can be used to inform selection of cancer relevant genes. Our models suggest that perturbed gene signatures are predictive of drug response, but cannot be applied to predict drug response using unperturbed gene expression. Furthermore, additional drug perturbed gene expression measurements in in vitro cell lines could generate more predictive models; but, more importantly be used in conjunction with computational methods to discover important drug disease relationships.
机译:精密药物的目前的一个方向是使用计算方法,帮助基于数据驱动方法诊断,预后和治疗疾病。例如,在肿瘤学中,特别关注可用于临床前和临床应用的算法和生物标志物的开发。特别是基于大规模的常规常规的模型,以预测体外癌细胞系板中的药物敏感性,已被用于探索该模型作为临床工具的效用和帮助。另外,已经为研究人员构建了许多基于网络的界面,以探讨药物扰动基因表达作为生物标志物,包括NCI转录药物动力学工作台。在本文中,我们探讨了NCI转录药效学工作室在计算模型中的药物扰动基因动力学的影响,以预测NCI60细胞系列的15种药物的体外药物敏感性。这项工作提出了三个主要研究结果。首先,我们的模型表明,与不同计量条件下的表达谱相比,在暴露于高浓度的药物后,捕获基因表达的基因表达谱的基因表达谱产生最精确的预测模型。其次,为不同基因表达谱开发了100个基因的签名;此外,当基因签名跨基因表达,当使用基因表达的变化的基因签名应用于未经用药的基因表达时,模型性能显着降低。最后,我们表明在这些签名上开发的基因交互网络显示了不同的网络拓扑,并且可用于提供癌症相关基因的选择。我们的模型表明,扰动的基因签名是预测药物反应,但不能使用不受干扰的基因表达来预测药物反应。此外,体外细胞系中的额外药物扰动基因表达测量可以产生更高的预测模型;但是,更重要的是与计算方法结合使用以发现重要的毒性疾病关系。

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