MOE Key Laboratory of Geriatric Diseases and Immunology, Suzhou Key Laboratory of Pathogen Bioscience and Anti-Infective Medicine, Department of Bioinformatics, Center for Systems Biology, School of Life Sciences, Suzhou Medical College of Soochow University, Suzhou 215213, China.
Experimental Center of Suzhou Medical College of Soochow University, Suzhou 215123, China.
Int J Mol Sci. 2024 Aug 16;25(16):8917. doi: 10.3390/ijms25168917.
In the post-COVID-19 era, treatment options for potential SARS-CoV-2 outbreaks remain limited. An increased incidence of central nervous system (CNS) disorders has been observed in long-term COVID-19 patients. Understanding the shared molecular mechanisms between these conditions may provide new insights for developing effective therapies. This study developed an integrative drug-repurposing framework for COVID-19, leveraging comorbidity data with CNS disorders, network-based modular analysis, and dynamic perturbation analysis to identify potential drug targets and candidates against SARS-CoV-2. We constructed a comorbidity network based on the literature and data collection, including COVID-19-related proteins and genes associated with Alzheimer's disease, Parkinson's disease, multiple sclerosis, and autism spectrum disorder. Functional module detection and annotation identified a module primarily involved in protein synthesis as a key target module, utilizing connectivity map drug perturbation data. Through the construction of a weighted drug-target network and dynamic network-based drug-repurposing analysis, ubiquitin-carboxy-terminal hydrolase L1 emerged as a potential drug target. Molecular dynamics simulations suggested pregnenolone and BRD-K87426499 as two drug candidates for COVID-19. This study introduces a dynamic-perturbation-network-based drug-repurposing approach to identify COVID-19 drug targets and candidates by incorporating the comorbidity conditions of CNS disorders.
在后 COVID-19 时代,针对潜在 SARS-CoV-2 爆发的治疗选择仍然有限。在长期 COVID-19 患者中观察到中枢神经系统 (CNS) 疾病的发病率增加。了解这些病症之间的共同分子机制可能为开发有效的治疗方法提供新的见解。本研究开发了一种针对 COVID-19 的综合药物再利用框架,利用与 CNS 疾病相关的合并症数据、基于网络的模块分析和动态扰动分析,来识别针对 SARS-CoV-2 的潜在药物靶点和候选药物。我们根据文献和数据收集构建了一个合并症网络,包括 COVID-19 相关蛋白和与阿尔茨海默病、帕金森病、多发性硬化症和自闭症谱系障碍相关的基因。功能模块检测和注释确定了一个主要涉及蛋白质合成的模块作为关键目标模块,利用连接图谱药物扰动数据。通过构建加权药物-靶点网络和动态基于网络的药物再利用分析,泛素羧基末端水解酶 L1 作为一个潜在的 COVID-19 药物靶点出现。分子动力学模拟表明孕烯醇酮和 BRD-K87426499 是两种 COVID-19 的候选药物。本研究通过纳入 CNS 疾病的合并症条件,引入了一种基于动态扰动网络的药物再利用方法来识别 COVID-19 的药物靶点和候选药物。