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首页> 外文期刊>EURASIP journal on bioinformatics and systems biology >Determination of minimal transcriptional signatures of compounds for target prediction
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Determination of minimal transcriptional signatures of compounds for target prediction

机译:确定用于目标预测的化合物的最小转录特征

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摘要

The identification of molecular target and mechanism of action of compounds is a key hurdle in drug discovery. Multiplexed techniques for bead-based expression profiling allow the measurement of transcriptional signatures of compound-treated cells in high-throughput mode. Such profiles can be used to gain insight into compounds' mode of action and the protein targets they are modulating. Through the proxy of target prediction from such gene signatures we explored important aspects of the use of transcriptional profiles to capture biological variability of perturbed cellular assays. We found that signatures derived from expression data and signatures derived from biological interaction networks performed equally well, and we showed that gene signatures can be optimised using a genetic algorithm. Gene signatures of approximately 128 genes seemed to be most generic, capturing a maximum of the perturbation inflicted on cells through compound treatment. Moreover, we found evidence for oxidative phosphorylation to be one of the most general ways to capture compound perturbation.
机译:化合物的分子靶标和作用机理的鉴定是药物发现中的关键障碍。用于基于珠子的表达谱分析的多路技术可以在高通量模式下测量经化合物处理的细胞的转录特征。这样的概况可用于深入了解化合物的作用方式以及它们正在调节的蛋白质靶标。通过从此类基因特征中预测靶标,我们探索了转录概况在捕获扰动细胞测定法生物学变异中的重要应用。我们发现,从表达数据获得的签名和从生物相互作用网络获得的签名表现同样出色,并且我们证明可以使用遗传算法优化基因签名。大约128个基因的基因签名似乎是最通用的,捕获了通过复合处理对细胞造成的最大扰动。此外,我们发现氧化磷酸化的证据是捕获化合物扰动的最通用方法之一。

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