CPEPA-UGC Centre for "Electro-Physiological and Neuro-Imaging Studies Including Mathematical Modelling", University of Calcutta, Kolkata, West Bengal, India.
Department of Physiology, University of Calcutta, Kolkata, West Bengal, India.
Sci Rep. 2022 Oct 13;12(1):17141. doi: 10.1038/s41598-022-21109-3.
'Tripartite network' (TN) and 'combined gene network' (CGN) were constructed and their hub-bottleneck and driver nodes (44 genes) were evaluated as 'target genes' (TG) to identify 21 'candidate genes' (CG) and their relationship with neurological manifestations of COVID-19. TN was developed using neurological symptoms of COVID-19 found in literature. Under query genes (TG of TN), co-expressed genes were identified using pair-wise mutual information to genes available in RNA-Seq autopsy data of frontal cortex of COVID-19 victims. CGN was constructed with genes selected from TN and co-expressed in COVID-19. TG and their connecting genes of respective networks underwent functional analyses through findings of their enrichment terms and pair-wise 'semantic similarity scores' (SSS). A new integrated 'weighted harmonic mean score' was formulated assimilating values of SSS and STRING-based 'combined score' of the selected TG-pairs, which provided CG-pairs with properties of CGs as co-expressed and 'indispensable nodes' in CGN. Finally, six pairs sharing seven 'prevalent CGs' (ADAM10, ADAM17, AKT1, CTNNB1, ESR1, PIK3CA, FGFR1) showed linkages with the phenotypes (a) directly under neurodegeneration, neurodevelopmental diseases, tumour/cancer and cellular signalling, and (b) indirectly through other CGs under behavioural/cognitive and motor dysfunctions. The pathophysiology of 'prevalent CGs' has been discussed to interpret neurological phenotypes of COVID-19.
构建了“三分网络”(TN)和“组合基因网络”(CGN),并评估了其枢纽-瓶颈和驱动节点(44 个基因)作为“靶基因”(TG),以确定 21 个“候选基因”(CG)及其与 COVID-19 神经表现的关系。TN 是使用文献中发现的 COVID-19 神经症状开发的。在查询基因(TN 的 TG)下,使用两两互信息识别共表达基因,这些基因可从 COVID-19 受害者额皮质的 RNA-Seq 尸检数据中的基因中获得。CGN 是用从 TN 中选择的基因和在 COVID-19 中共同表达的基因构建的。TG 及其各自网络的连接基因通过其富集术语和两两“语义相似性得分”(SSS)的发现进行功能分析。通过吸收 SSS 的值和基于 STRING 的所选 TG 对“组合得分”,制定了新的综合“加权调和均值得分”,为 CG 对提供了 CG 作为 CGN 中共同表达和“不可或缺节点”的特性。最后,六个对共享七个“常见 CG”(ADAM10、ADAM17、AKT1、CTNNB1、ESR1、PIK3CA、FGFR1)显示与表型(a)直接在神经退行性疾病、神经发育疾病、肿瘤/癌症和细胞信号传导下,以及(b)通过 CGN 下的其他 CG 间接相关。讨论了“常见 CG”的病理生理学,以解释 COVID-19 的神经表现。