Shi Yinli, Liu Jun, Guan Shuang, Wang Sicun, Yu Chengcheng, Yu Yanan, Li Bing, Zhang Yingying, Yang Weibin, Wang Zhong
Institute of Basic Research in Clinical Medicine, China Academy of Chinese Medical Sciences, Beijing 100700, China.
Institute of Chinese Materia Medica, China Academy of Chinese Medical Sciences, Beijing 100700, China.
Pharmaceuticals (Basel). 2024 Sep 18;17(9):1230. doi: 10.3390/ph17091230.
Drug prediction and treatment using bioinformatics and large-scale modeling have emerged as pivotal research areas. This study proposes a novel multi-level collaboration framework named Syn-COM for feature extraction and data integration of diseases and drugs. The framework aims to explore optimal drug combinations and interactions by integrating molecular virtuality, similarity clustering, overlap area, and network distance. It uniquely combines the characteristics of Chinese herbal medicine with clinical experience and innovatively assesses drug interaction and correlation through a synergy matrix. Gouty arthritis (GA) was used as a case study to validate the framework's reliability, leading to the identification of an effective drug combination for GA treatment, comprising (S = 0.73), (S = 0.68), (S = 0.62), (S = 0.73), (S = 0.89), (S = 0.75), and (S = 0.62). The efficacy of the identified drug combination was confirmed through animal experiments and traditional Chinese medicine (TCM) component analysis. Results demonstrated significant reductions in the blood inflammatory factors IL1A, IL6, and uric acid, as well as downregulation of TGFB1, PTGS2, and MMP3 expression ( < 0.05), along with improvements in ankle joint swelling in GA mice. This drug combination notably enhances therapeutic outcomes in GA by targeting key genes, underscoring the potential of integrating traditional medicine with modern bioinformatics for effective disease treatment.
利用生物信息学和大规模建模进行药物预测与治疗已成为关键研究领域。本研究提出了一种名为Syn-COM的新型多层次协作框架,用于疾病和药物的特征提取与数据整合。该框架旨在通过整合分子虚拟性、相似性聚类、重叠区域和网络距离来探索最佳药物组合和相互作用。它独特地将中草药的特性与临床经验相结合,并通过协同矩阵创新性地评估药物相互作用和相关性。以痛风性关节炎(GA)为例进行研究,以验证该框架的可靠性,从而确定了一种用于GA治疗的有效药物组合,包括(S = 0.73),(S = 0.68),(S = 0.62),(S = 0.73),(S = 0.89),(S = 0.75)和(S = 0.62)。通过动物实验和中药成分分析证实了所确定药物组合的疗效。结果表明,GA小鼠血液中的炎症因子IL1A、IL6和尿酸显著降低,TGFB1、PTGS2和MMP3的表达下调(<0.05),同时踝关节肿胀情况有所改善。这种药物组合通过靶向关键基因显著提高了GA的治疗效果,突出了将传统医学与现代生物信息学相结合用于有效疾病治疗的潜力。