Innovative virtual screening of PD-L1 inhibitors: the synergy of molecular similarity, neural networks and GNINA docking.

IF 3.2 4区 医学 Q3 CHEMISTRY, MEDICINAL
Van-Thinh To, Tieu-Long Phan, Bao-Vy Ngoc Doan, Phuoc-Chung Van Nguyen, Quang-Huy Nguyen Le, Hoang-Huy Nguyen, The-Chuong Trinh, Tuyen Ngoc Truong
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引用次数: 0

Abstract

Aims: Immune checkpoint inhibitors targeting PD-L1 are crucial in cancer research for preventing cancer cells from evading the immune system.Materials & methods: This study developed a screening model combining ANN, molecular similarity, and GNINA 1.0 docking to target PD-L1. A database of 2044 substances was compiled from patents.Results: For molecular similarity, the AVALON emerged as the most effective fingerprint, demonstrating an AUC-ROC of 0.963. The ANN model outperformed the Random Forest and Support Vector Classifier in cross-validation and external validation, achieving an average precision of 0.851 and an F1 score of 0.790. GNINA 1.0 was validated through redocking and retrospective control, achieving an AUC of 0.975.Conclusions: From 15235 DrugBank compounds, 22 candidates were shortlisted. Among which (3S)-1-(4-acetylphenyl)-5-oxopyrrolidine-3-carboxylic acid emerged as the most promising.

PD-L1抑制剂的创新性虚拟筛选:分子相似性、神经网络和GNINA对接的协同作用。
目的:靶向PD-L1的免疫检查点抑制剂是癌症研究中防止癌细胞逃避免疫系统的关键:本研究建立了一个结合ANN、分子相似性和GNINA 1.0对接的筛选模型,以靶向PD-L1。结果:在分子相似性方面,AVNON-PD-L1与AVNON-PD-L1的分子相似性最高:在分子相似性方面,AVALON 是最有效的指纹图谱,其 AUC-ROC 为 0.963。在交叉验证和外部验证中,ANN 模型的表现优于随机森林和支持向量分类器,平均精确度达到 0.851,F1 得分为 0.790。GNINA 1.0 通过重新对接和回顾性对照进行了验证,AUC 达到 0.975:从15235个DrugBank化合物中筛选出22个候选化合物。其中(3S)-1-(4-乙酰基苯基)-5-氧代吡咯烷-3-羧酸最有希望。
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来源期刊
Future medicinal chemistry
Future medicinal chemistry CHEMISTRY, MEDICINAL-
CiteScore
5.80
自引率
2.40%
发文量
118
审稿时长
4-8 weeks
期刊介绍: Future Medicinal Chemistry offers a forum for the rapid publication of original research and critical reviews of the latest milestones in the field. Strong emphasis is placed on ensuring that the journal stimulates awareness of issues that are anticipated to play an increasingly central role in influencing the future direction of pharmaceutical chemistry. Where relevant, contributions are also actively encouraged on areas as diverse as biotechnology, enzymology, green chemistry, genomics, immunology, materials science, neglected diseases and orphan drugs, pharmacogenomics, proteomics and toxicology.
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