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An elastic network model to identify characteristic stress response genes

机译:识别特征性应激反应基因的弹性网络模型

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Exposing eukaryotic cells to a toxic compound and subsequent gene expression profiling may allow the prediction of selected toxic effects based on changes in gene expression. This objective is complicated by the observation that compounds with different modes of toxicity cause similar changes in gene expression and that a global stress response affects many genes. We developed an elastic network model of global stress response with nodes representing genes which are connected by edges of graded coexpression. The expression of only few genes have to be known to model the global stress response of all but a few atypical responder genes. Those required genes and the atypical response genes are shown to be good biomarker for tox predictions. In total, 138 experiments and 13 different compounds were used to train models for different toxicity classes. The deduced biomarkers were shown to be biologically plausible. A neural network was trained to predict the toxic effects of compounds from profiling experiments. On a validation data set of 189 experiments with 16 different compounds the accuracy of the predictions was assessed: 14 out of 16 compounds have been classified correctly. Derivation of model based biomarkers through the elastic network approach can naturally be extended to other areas beyond toxicology since subtle signals against a broad response background are common in biological studies.
机译:将真核细胞暴露于有毒化合物并随后进行基因表达谱分析,可以根据基因表达的变化预测选定的毒性作用。由于观察到具有不同毒性模式的化合物会引起基因表达的相似变化,并且整体应激反应会影响许多基因,因此使该目标变得复杂。我们开发了一个全局压力响应的弹性网络模型,其中的节点表示通过渐变共表达边缘连接的基因。只有少数基因的表达可以用来模拟除少数非典型应答基因以外的所有基因的整体应激反应。这些必需的基因和非典型反应基因被证明是预测毒物的良好生物标记。总共使用了138个实验和13种不同的化合物来训练不同毒性类别的模型。推断出的生物标志物在生物学上是合理的。训练了一个神经网络,以预测分析实验中化合物的毒性作用。在189种使用16种不同化合物的实验的验证数据集上,评估了预测的准确性:正确分类了16种化合物中的14种。通过基于弹性网络方法的基于模型的生物标志物的推导自然可以扩展到毒理学之外的其他领域,因为在生物学研究中普遍存在着针对广泛反应背景的微妙信号。

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