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Exploring and Exploiting Disease Interactions from Multi-Relational Gene and Phenotype Networks

机译:通过多关系基因和表型网络探索和利用疾病的相互作用

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摘要

The availability of electronic health care records is unlocking the potential for novel studies on understanding and modeling disease co-morbidities based on both phenotypic and genetic data. Moreover, the insurgence of increasingly reliable phenotypic data can aid further studies on investigating the potential genetic links among diseases. The goal is to create a feedback loop where computational tools guide and facilitate research, leading to improved biological knowledge and clinical standards, which in turn should generate better data. We build and analyze disease interaction networks based on data collected from previous genetic association studies and patient medical histories, spanning over 12 years, acquired from a regional hospital. By exploring both individual and combined interactions among these two levels of disease data, we provide novel insight into the interplay between genetics and clinical realities. Our results show a marked difference between the well defined structure of genetic relationships and the chaotic co-morbidity network, but also highlight clear interdependencies. We demonstrate the power of these dependencies by proposing a novel multi-relational link prediction method, showing that disease co-morbidity can enhance our currently limited knowledge of genetic association. Furthermore, our methods for integrated networks of diverse data are widely applicable and can provide novel advances for many problems in systems biology and personalized medicine.
机译:电子医疗记录的可用性为基于表型和遗传数据的理解和建模疾病合并症的新研究释放了潜力。此外,越来越可靠的表型数据的涌现可以帮助进一步研究疾病之间潜在的遗传联系。目标是创建一个反馈环,在其中计算工具可以指导并促进研究,从而改善生物学知识和临床标准,进而产生更好的数据。我们基于从区域医院获得的过去12年来的遗传关联研究和患者病史收集的数据,构建和分析疾病相互作用网络。通过探索这两个水平的疾病数据之间的个体和联合相互作用,我们为遗传学和临床现实之间的相互作用提供了新颖的见解。我们的研究结果表明,明确定义的遗传关系结构和混沌共病网络之间存在显着差异,但也突出了明确的相互依赖性。我们通过提出一种新颖的多关系链接预测方法来证明这些依赖性的力量,表明疾病合并症可以增强我们目前有限的遗传关联知识。此外,我们用于各种数据的集成网络的方法被广泛应用,并且可以为系统生物学和个性化医学中的许多问题提供新颖的进展。

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