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A model-driven methodology for exploring complex disease comorbidities applied to autism spectrum disorder and inflammatory bowel disease

机译:用于研究自闭症谱系障碍和炎性肠病的复杂疾病合并症的模型驱动方法

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摘要

We propose a model-driven methodology aimed to shed light on complex disorders. Our approach enables exploring shared etiologies of comorbid diseases at the molecular pathway level. The method, Comparative Comorbidities Simulation (CCS), uses stochastic Petri net simulation for examining the phenotypic effects of perturbation of a network known to be involved in comorbidities to predict new roles for mutations in comorbid conditions. To demonstrate the utility of our novel methodology, we investigated the molecular convergence of autism spectrum disorder (ASD) and inflammatory bowel disease (IBD) on the autophagy pathway. In addition to validation by domain experts, we used formal analyses to demonstrate the model’s self-consistency. We then used CCS to compare the effects of loss of function (LoF) mutations previously implicated in either ASD or IBD on the autophagy pathway. CCS identified similar dynamic consequences of these mutations in the autophagy pathway. Our method suggests that two LoF mutations previously implicated in IBD may contribute to ASD, and one ASD-implicated LoF mutation may play a role in IBD. Future targeted genomic or functional studies could be designed to directly test these predictions.
机译:我们提出了一种模型驱动的方法,旨在阐明复杂的疾病。我们的方法能够在分子途径水平上探索共病的共有病因。比较共病模拟(CCS)方法使用随机Petri网模拟来检查已知与共病有关的网络扰动的表型效应,以预测共病条件下突变的新作用。为了证明我们新方法的实用性,我们研究了自噬途径中自闭症谱系障碍(ASD)和炎症性肠病(IBD)的分子趋同性。除了经过领域专家的验证外,我们还使用形式分析来证明模型的自洽性。然后,我们使用CCS来比较以前与ASD或IBD有关的功能丧失(LoF)突变对自噬途径的影响。 CCS在自噬途径中发现了这些突变的类似动态后果。我们的方法表明,以前与IBD有关的两个LoF突变可能与ASD有关,而一个与ASD有关的LoF突变可能在IBD中起作用。未来的靶向基因组或功能研究可以设计为直接测试这些预测。

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