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首页> 外文期刊>BMC Systems Biology >Improvement of experimental testing and network training conditions with genome-wide microarrays for more accurate predictions of drug gene targets
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Improvement of experimental testing and network training conditions with genome-wide microarrays for more accurate predictions of drug gene targets

机译:利用全基因组微阵列改善实验测试和网络训练条件,以更准确地预测药物基因靶标

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Background Genome-wide microarrays have been useful for predicting chemical-genetic interactions at the gene level. However, interpreting genome-wide microarray results can be overwhelming due to the vast output of gene expression data combined with off-target transcriptional responses many times induced by a drug treatment. This study demonstrates how experimental and computational methods can interact with each other, to arrive at more accurate predictions of drug-induced perturbations. We present a two-stage strategy that links microarray experimental testing and network training conditions to predict gene perturbations for a drug with a known mechanism of action in a well-studied organism. Results S. cerevisiae cells were treated with the antifungal, fluconazole, and expression profiling was conducted under different biological conditions using Affymetrix genome-wide microarrays. Transcripts were filtered with a formal network-based method, sparse simultaneous equation models and Lasso regression (SSEM-Lasso), under different network training conditions. Gene expression results were evaluated using both gene set and single gene target analyses, and the drug’s transcriptional effects were narrowed first by pathway and then by individual genes. Variables included: (i) Testing conditions – exposure time and concentration and (ii) Network training conditions – training compendium modifications. Two analyses of SSEM-Lasso output – gene set and single gene – were conducted to gain a better understanding of how SSEM-Lasso predicts perturbation targets. Conclusions This study demonstrates that genome-wide microarrays can be optimized using a two-stage strategy for a more in-depth understanding of how a cell manifests biological reactions to a drug treatment at the transcription level. Additionally, a more detailed understanding of how the statistical model, SSEM-Lasso, propagates perturbations through a network of gene regulatory interactions is achieved.
机译:背景技术全基因组微阵列可用于预测基因水平的化学-遗传相互作用。但是,由于基因表达数据的大量输出以及药物治疗多次诱导的脱靶转录反应,对全基因组微阵列结果的解释可能会令人不知所措。这项研究演示了实验方法和计算方法如何相互影响,以更准确地预测药物引起的扰动。我们提出了一种将微阵列实验测试和网络训练条件联系起来的两阶段策略,以预测一种药物的基因扰动,该药物在经过充分研究的生物体内具有已知的作用机理。结果用抗真菌药,氟康唑处理酿酒酵母细胞,并使用Affymetrix全基因组微阵列在不同的生物学条件下进行表达谱分析。在不同的网络训练条件下,使用基于网络的正式方法,稀疏联立方程模型和Lasso回归(SSEM-Lasso)筛选成绩单。使用基因组和单基因靶标分析对基因表达结果进行评估,首先通过途径,然后通过单个基因来缩小药物的转录作用。变量包括:(i)测试条件–暴露时间和浓度,以及(ii)网络培训条件–培训纲要修改。进行了SSEM-Lasso输出的两个分析-基因集和单个基因-以更好地了解SSEM-Lasso如何预测扰动目标。结论这项研究表明,可以使用两阶段策略优化全基因组微阵列,以更深入地了解细胞在转录水平上如何表现出对药物治疗的生物反应。此外,可以更详细地了解统计模型SSEM-Lasso如何通过基因调控相互作用网络传播扰动。

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