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Gene Prioritization by Integrated Analysis of Protein Structural and Network Topological Properties for the Protein-Protein Interaction Network of Neurological Disorders

机译:通过综合分析神经疾病的蛋白质-蛋白质相互作用网络的蛋白质结构和网络拓扑特性对基因进行优先排序。

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摘要

Neurological disorders are known to show similar phenotypic manifestations like anxiety, depression, and cognitive impairment. There is a need to identify shared genetic markers and molecular pathways in these diseases, which lead to such comorbid conditions. Our study aims to prioritize novel genetic markers that might increase the susceptibility of patients affected with one neurological disorder to other diseases with similar manifestations. Identification of pathways involving common candidate markers will help in the development of improved diagnosis and treatments strategies for patients affected with neurological disorders. This systems biology study for the first time integratively uses 3D-structural protein interface descriptors and network topological properties that characterize proteins in a neurological protein interaction network, to aid the identification of genes that are previously not known to be shared between these diseases. Results of protein prioritization by machine learning have identified known as well as new genetic markers which might have direct or indirect involvement in several neurological disorders. Important gene hubs have also been identified that provide an evidence for shared molecular pathways in the neurological disease network.
机译:已知神经系统疾病表现出类似的表型表现,例如焦虑,抑郁和认知障碍。需要在这些疾病中鉴定出共同的遗传标记和分子途径,从而导致这种合并症。我们的研究旨在优先考虑可能会增加一种神经系统疾病患者对其他具有相似表现的疾病的易感性的新型遗传标记。鉴定涉及共同候选标记物的途径将有助于开发针对患有神经系统疾病的患者的改进的诊断和治疗策略。这项系统生物学研究首次综合使用3D结构蛋白界面描述符和表征神经蛋白相互作用网络中蛋白特征的网络拓扑特性,以帮助鉴定以前未知的这些疾病之间共享的基因。通过机器学习对蛋白质进行优先排序的结果已经确定了已知的以及可能与多种神经系统疾病直接或间接相关的新遗传标记。还确定了重要的基因枢纽,为神经疾病网络中的共享分子途径提供了证据。

著录项

  • 期刊名称 Scientifica
  • 作者

    Yashna Paul; Yasha Hasija;

  • 作者单位
  • 年(卷),期 2016(2016),-1
  • 年度 2016
  • 页码 9589404
  • 总页数 10
  • 原文格式 PDF
  • 正文语种
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