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通过一致性评分虚拟筛选鉴定新型共价JAK3抑制剂:通用特征药效团与共价对接的整合

Identification of novel covalent JAK3 inhibitors through consensus scoring virtual screening: integration of common feature pharmacophore and covalent docking.

作者信息

Qiu Genhong, Yu Li, Jia Lei, Cai Yanfei, Chen Yun, Jin Jian, Xu Lei, Zhu Jingyu

机构信息

School of Life Sciences and Health Engineering, Jiangnan University, Wuxi, Jiangsu, 214122, China.

School of Inspection and Testing Certification, Changzhou Vocational Institute of Engineering, Changzhou, 213164, Jiangsu, China.

出版信息

Mol Divers. 2025 Apr;29(2):1353-1373. doi: 10.1007/s11030-024-10918-5. Epub 2024 Jul 15.

DOI:10.1007/s11030-024-10918-5
PMID:39009908
Abstract

Accumulated research strongly indicates that Janus kinase 3 (JAK3) is intricately involved in the initiation and advancement of a diverse range of human diseases, underscoring JAK3 as a promising target for therapeutic intervention. However, JAK3 shows significant homology with other JAK family isoforms, posing substantial challenges in the development of JAK3 inhibitors. To address these limitations, one strategy is to design selective covalent JAK3 inhibitors. Therefore, this study introduces a virtual screening approach that combines common feature pharmacophore modeling, covalent docking, and consensus scoring to identify novel inhibitors for JAK3. First, common feature pharmacophore models were constructed based on a selection of representative covalent JAK3 inhibitors. The optimal qualitative pharmacophore model proved highly effective in distinguishing active and inactive compounds. Second, 14 crystal structures of the JAK3-covalent inhibitor complex were chosen for the covalent docking studies. Following validation of the screening performance, 5TTU was identified as the most suitable candidate for screening potential JAK3 inhibitors due to its higher predictive accuracy. Finally, a virtual screening protocol based on consensus scoring was conducted, integrating pharmacophore mapping and covalent docking. This approach resulted in the discovery of multiple compounds with notable potential as effective JAK3 inhibitors. We hope that the developed virtual screening strategy will provide valuable guidance in the discovery of novel covalent JAK3 inhibitors.

摘要

累积的研究强烈表明,Janus激酶3(JAK3)与多种人类疾病的发生和发展密切相关,这突出了JAK3作为治疗干预的一个有前景的靶点。然而,JAK3与其他JAK家族异构体具有显著的同源性,这给JAK3抑制剂的开发带来了巨大挑战。为了解决这些限制,一种策略是设计选择性共价JAK3抑制剂。因此,本研究引入了一种虚拟筛选方法,该方法结合了共同特征药效团建模、共价对接和一致性评分,以识别JAK3的新型抑制剂。首先,基于一系列有代表性的共价JAK3抑制剂构建了共同特征药效团模型。最佳定性药效团模型在区分活性和非活性化合物方面被证明非常有效。其次,选择了14个JAK3-共价抑制剂复合物的晶体结构用于共价对接研究。在验证筛选性能后,5TTU因其较高的预测准确性被确定为筛选潜在JAK3抑制剂的最合适候选物。最后,进行了基于一致性评分的虚拟筛选方案,整合了药效团映射和共价对接。这种方法导致发现了多种具有显著潜力作为有效JAK3抑制剂的化合物。我们希望所开发的虚拟筛选策略将为新型共价JAK3抑制剂的发现提供有价值的指导。

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