Centre for Computational Biology and Bioinformatics, Central University of Himahcal Pradesh, Dharamshala, Himahcal Pradesh, 176206, India.
Sci Rep. 2023 Aug 11;13(1):13108. doi: 10.1038/s41598-023-40212-7.
Across the three domains of life, circadian clock is known to regulate vital physiological processes, like, growth, development, defence etc. by anticipating environmental cues. In this work, we report an integrated network theoretic methodology comprising of random walk with restart and graphlet degree vectors to characterize genome wide core circadian clock and clock associated raw candidate proteins in a plant for which protein interaction information is available. As a case study, we have implemented this framework in Ocimum tenuiflorum (Tulsi); one of the most valuable medicinal plants that has been utilized since ancient times in the management of a large number of diseases. For that, 24 core clock (CC) proteins were mined in 56 template plant genomes to build their hidden Markov models (HMMs). These HMMs were then used to identify 24 core clock proteins in O. tenuiflorum. The local topology of the interologous Tulsi protein interaction network was explored to predict the CC associated raw candidate proteins. Statistical and biological significance of the raw candidates was determined using permutation and enrichment tests. A total of 66 putative CC associated proteins were identified and their functional annotation was performed.
在生命的三个领域中,生物钟被认为通过预测环境线索来调节重要的生理过程,如生长、发育、防御等。在这项工作中,我们报告了一种集成的网络理论方法,包括随机游走和图元度向量,以描述在一个具有蛋白质相互作用信息的植物中,全基因组核心生物钟和与生物钟相关的原始候选蛋白质。作为一个案例研究,我们在Ocimum tenuiflorum(Tulsi)中实现了这个框架;Tulsi 是最有价值的药用植物之一,自古以来就被用于治疗大量疾病。为此,我们从 56 个模板植物基因组中挖掘了 24 个核心时钟(CC)蛋白,以构建它们的隐马尔可夫模型(HMMs)。然后,这些 HMM 被用于鉴定 O. tenuiflorum 中的 24 个核心时钟蛋白。还探索了同源 Tulsi 蛋白质相互作用网络的局部拓扑结构,以预测与 CC 相关的原始候选蛋白质。使用置换和富集测试确定了原始候选物的统计和生物学意义。总共鉴定了 66 个假定的与 CC 相关的蛋白质,并对其进行了功能注释。