Shi Yulong, Zhang Xinben, Yang Yanqing, Cai Tingting, Peng Cheng, Wu Leyun, Zhou Liping, Han Jiaxin, Ma Minfei, Zhu Weiliang, Xu Zhijian
State Key Laboratory of Drug Research; Drug Discovery and Design Center, Shanghai Institute of Materia Medica, Chinese Academy of Sciences, Shanghai 201203, China; School of Pharmacy, University of Chinese Academy of Sciences, Beijing 100049, China.
State Key Laboratory of Drug Research; Drug Discovery and Design Center, Shanghai Institute of Materia Medica, Chinese Academy of Sciences, Shanghai 201203, China.
Comput Biol Med. 2023 Sep;164:107283. doi: 10.1016/j.compbiomed.2023.107283. Epub 2023 Jul 29.
Resource- and time-consuming biological experiments are unavoidable in traditional drug discovery, which have directly driven the evolution of various computational algorithms and tools for drug-target interaction (DTI) prediction. For improving the prediction reliability, a comprehensive platform is highly expected as some previously reported webservers are small in scale, single-method, or even out of service. In this study, we integrated the multiple-conformation based docking, 2D/3D ligand similarity search and deep learning approaches to construct a comprehensive webserver, namely D3CARP, for target prediction and virtual screening. Specifically, 9352 conformations with positive control of 1970 targets were used for molecular docking, and approximately 2 million target-ligand pairs were used for 2D/3D ligand similarity search and deep learning. Besides, the positive compounds were added as references, and related diseases of therapeutic targets were annotated for further disease-based DTI study. The accuracies of the molecular docking and deep learning approaches were 0.44 and 0.89, respectively. And the average accuracy of five ligand similarity searches was 0.94. The strengths of D3CARP encompass the support for multiple computational methods, ensemble docking, utilization of positive controls as references, cross-validation of predicted outcomes, diverse disease types, and broad applicability in drug discovery. The D3CARP is freely accessible at https://www.d3pharma.com/D3CARP/index.php.
在传统的药物研发中,耗时且耗费资源的生物学实验是不可避免的,这直接推动了用于药物-靶点相互作用(DTI)预测的各种计算算法和工具的发展。为了提高预测的可靠性,人们迫切需要一个综合平台,因为之前报道的一些网络服务器规模较小、方法单一,甚至已经停止服务。在本研究中,我们整合了基于多构象的对接、二维/三维配体相似性搜索和深度学习方法,构建了一个名为D3CARP的综合网络服务器,用于靶点预测和虚拟筛选。具体而言,我们使用了9352个构象和1970个靶点的阳性对照进行分子对接,并使用了大约200万个靶点-配体对进行二维/三维配体相似性搜索和深度学习。此外,还添加了阳性化合物作为参考,并对治疗靶点的相关疾病进行了注释,以便进一步开展基于疾病的DTI研究。分子对接和深度学习方法的准确率分别为0.44和0.89。五次配体相似性搜索的平均准确率为0.94。D3CARP的优势包括支持多种计算方法、集成对接、以阳性对照作为参考、对预测结果进行交叉验证、涵盖多种疾病类型以及在药物研发中具有广泛的适用性。可通过https://www.d3pharma.com/D3CARP/index.php免费访问D3CARP。