首页> 外文期刊>Journal of biological systems >NMDB: NETWORK MOTIF DATABASE ENVISAGED AND EXPLICATED FROM HUMAN DISEASE SPECIFIC PATHWAYS
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NMDB: NETWORK MOTIF DATABASE ENVISAGED AND EXPLICATED FROM HUMAN DISEASE SPECIFIC PATHWAYS

机译:NMDB:通过人类疾病特定途径设想和利用网络MOTIF数据库

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摘要

The study of network motifs for large number of networks can aid us to resolve the functions of complex biological networks. In biology, network motifs that reappear within a network more often than expected in random networks include negative autoregu- lation, positive autoregulation, single-input modules, feedforward loops, dense overlapping regulons and feedback loops. These network motifs have their different dynamical functions. In this study, our main objective is to examine the enrichment of network motifs in different biological networks of human disease specific pathways. We characterize biological network motifs as biologically significant sub-graphs. We used computational and statistical criteria for efficient detection of biological network motifs, and introduced several estimation measures. Pathways of cardiovascular, cancer, infectious, repair, endocrine and metabolic diseases, were used for identifying and interlinking the relation between nodes. 3-8 sub-graph size network motifs were generated. Network Motif Database was then developed using PHP and MySQL. Results showed that there is an abundance of autoregulation, feedforward loops, single-input modules, dense overlapping regulons and other putative regulatory motifs in all the diseases included in this study. It is believed that the database will assist molecular and system biologists, biotechnologists, and other scientific community to encounter biologically meaningful information. Network Motif Database is freely available for academic and research purpose at: http://www.bioinfoindia.orgmdb.
机译:对大量网络的网络主题的研究可以帮助我们解决复杂的生物网络的功能。在生物学中,出现在网络中的网络图案比随机网络中出现的频率要多得多,包括负自调节,正自调节,单输入模块,前馈环路,密集重叠的规则和反馈环路。这些网络主题具有不同的动力学功能。在这项研究中,我们的主要目的是研究人类疾病特异性途径的不同生物网络中网络基序的富集。我们将生物学网络主题定性为生物学重要的子图。我们使用了计算和统计标准来有效检测生物网络主题,并介绍了几种估算方法。心血管,癌症,传染性,修复,内分泌和代谢性疾病的途径,被用于识别和联系节点之间的关系。生成了3-8个子图大小的网络图案。然后使用PHP和MySQL开发了网络主题数据库。结果表明,在这项研究中包括的所有疾病中,都有大量的自动调节,前馈环,单输入模块,密集的重叠调节子和其他假定的调节基序。相信该数据库将帮助分子和系统生物学家,生物技术专家和其他科学界遇到生物学上有意义的信息。 Network Motif数据库可免费用于学术和研究目的,网址为:http://www.bioinfoindia.orgmdb。

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