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Interspecies Translation of Disease Networks Increases Robustness and Predictive Accuracy

机译:疾病网络的种间翻译提高了鲁棒性和预测准确性

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Gene regulatory networks give important insights into the mechanisms underlying physiology and pathophysiology. The derivation of gene regulatory networks from high-throughput expression data via machine learning strategies is problematic as the reliability of these models is often compromised by limited and highly variable samples, heterogeneity in transcript isoforms, noise, and other artifacts. Here, we develop a novel algorithm, dubbed Dandelion, in which we construct and train intraspecies Bayesian networks that are translated and assessed on independent test sets from other species in a reiterative procedure. The interspecies disease networks are subjected to multi-layers of analysis and evaluation, leading to the identification of the most consistent relationships within the network structure. In this study, we demonstrate the performance of our algorithms on datasets from animal models of oculopharyngeal muscular dystrophy (OPMD) and patient materials. We show that the interspecies network of genes coding for the proteasome provide highly accurate predictions on gene expression levels and disease phenotype. Moreover, the cross-species translation increases the stability and robustness of these networks. Unlike existing modeling approaches, our algorithms do not require assumptions on notoriously difficult one-to-one mapping of protein orthologues or alternative transcripts and can deal with missing data. We show that the identified key components of the OPMD disease network can be confirmed in an unseen and independent disease model. This study presents a state-of-the-art strategy in constructing interspecies disease networks that provide crucial information on regulatory relationships among genes, leading to better understanding of the disease molecular mechanisms.
机译:基因调节网络对生理学和病理生理学的机制提供了重要的见识。通过机器学习策略从高通量表达数据推导基因调控网络是有问题的,因为这些模型的可靠性通常受到有限且高度可变的样本,转录异构体的异质性,噪声和其他伪影的影响。在这里,我们开发了一种称为“蒲公英”的新颖算法,其中我们构建并训练了种内贝叶斯网络,该贝叶斯网络在迭代过程中对来自其他物种的独立测试集进行了翻译和评估。种间疾病网络经过多层次的分析和评估,从而确定了网络结构内最一致的关系。在这项研究中,我们证明了算法在眼咽肌营养不良症(OPMD)和患者材料的动物模型数据集上的性能。我们表明编码蛋白酶体的种间网络的基因提供了基因表达水平和疾病表型的高度准确的预测。而且,跨物种转换增加了这些网络的稳定性和鲁棒性。与现有的建模方法不同,我们的算法不需要假设蛋白质直向同源物或替代转录本的一对一映射非常困难,并且可以处理丢失的数据。我们表明,在未知且独立的疾病模型中可以确认OPMD疾病网络中已确定的关键组件。这项研究提出了构建种间疾病网络的最新策略,这些网络提供了有关基因间调节关系的关键信息,从而使人们对疾病的分子机制有了更好的了解。

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