Zheng Si, Gu Yaowen, Gu Yuzhen, Zhao Yelin, Li Liang, Wang Min, Jiang Rui, Yu Xia, Chen Ting, Li Jiao
Institute for Artificial Intelligence & Department of Computer Science and Technology, Tsinghua University, Haidian District, Beijing 100084, China.
Institute of Medical Information, Chinese Academy of Medical Sciences and Peking Union Medical College, Chaoyang District, Beijing 100020, China.
Brief Bioinform. 2024 Nov 22;26(1). doi: 10.1093/bib/bbae696.
Drug resistance in Mycobacterium tuberculosis (Mtb) is a significant challenge in the control and treatment of tuberculosis, making efforts to combat the spread of this global health burden more difficult. To accelerate anti-tuberculosis drug discovery, repurposing clinically approved or investigational drugs for the treatment of tuberculosis by computational methods has become an attractive strategy. In this study, we developed a virtual screening workflow that combines multiple machine learning and deep learning models, and 11 576 compounds extracted from the DrugBank database were screened against Mtb. Our screening method produced satisfactory predictions on three data-splitting settings, with the top predicted bioactive compounds all known antibacterial or anti-TB drugs. To further identify and evaluate drugs with repurposing potential in TB therapy, 15 screened potential compounds were selected for subsequent computational and experimental evaluations, out of which aldoxorubicin and quarfloxin showed potent inhibition of Mtb strain H37Rv, with minimal inhibitory concentrations of 4.16 and 20.67 μM/mL, respectively. More inspiringly, these two compounds also showed antibacterial activity against multidrug-resistant TB isolates and exhibited strong antimicrobial activity against Mtb. Furthermore, molecular docking, molecular dynamics simulation, and the surface plasmon resonance experiments validated the direct binding of the two compounds to Mtb DNA gyrase. In summary, our effective comprehensive virtual screening workflow successfully repurposed two novel drugs (aldoxorubicin and quarfloxin) as promising anti-Mtb candidates. The verification results provide useful information for the further development and clinical verification of anti-TB drugs.
结核分枝杆菌(Mtb)的耐药性是结核病控制和治疗中的一项重大挑战,使得应对这一全球健康负担传播的努力变得更加困难。为了加速抗结核药物的发现,通过计算方法将临床批准或正在研究的药物重新用于治疗结核病已成为一种有吸引力的策略。在本研究中,我们开发了一种结合多种机器学习和深度学习模型的虚拟筛选工作流程,并针对Mtb对从DrugBank数据库中提取的11576种化合物进行了筛选。我们的筛选方法在三种数据拆分设置上产生了令人满意的预测结果,预测的顶级生物活性化合物均为已知的抗菌或抗结核药物。为了进一步识别和评估在结核病治疗中具有重新利用潜力的药物,我们选择了15种筛选出的潜在化合物进行后续的计算和实验评估,其中阿霉素和喹氟嗪对Mtb菌株H37Rv表现出强效抑制作用,最低抑菌浓度分别为4.16和20.67μM/mL。更令人鼓舞的是,这两种化合物对耐多药结核分枝杆菌分离株也表现出抗菌活性,并对Mtb表现出强大的抗菌活性。此外,分子对接、分子动力学模拟和表面等离子体共振实验验证了这两种化合物与Mtb DNA促旋酶的直接结合。总之,我们有效的综合虚拟筛选工作流程成功地将两种新型药物(阿霉素和喹氟嗪)重新用作有前景的抗Mtb候选药物。验证结果为抗结核药物的进一步开发和临床验证提供了有用信息。