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使用深度学习框架进行具有增强靶点亲和力和类药性的CDK1抑制剂的计算设计。

Computational design of CDK1 inhibitors with enhanced target affinity and drug-likeness using deep-learning framework.

作者信息

Lu Zuokun, Han Jiayuan, Ji Yibo, Li Bingrui, Zhang Aili

机构信息

Food and Pharmacy College, Xuchang University, Xuchang, 461000, Henan, China.

Key Laboratory of Biomarker-Based Rapid Detection Technology for Food Safety of Henan Province, Xuchang University, Xuchang, 461000, Henan, China.

出版信息

Heliyon. 2024 Nov 14;10(22):e40345. doi: 10.1016/j.heliyon.2024.e40345. eCollection 2024 Nov 30.

Abstract

Cyclin Dependent Kinase 1 (CDK1) plays a crucial role in cell cycle regulation, and dysregulation of its activity has been implicated in various cancers. Although several CDK1 inhibitors are currently in clinical trials, none have yet been approved for therapeutic use. This research utilized deep learning techniques, specifically Recurrent Neural Networks with Long Short-Term Memory (LSTM), to generate potential CDK1 inhibitors. Molecular docking, evaluation of molecular properties, and molecular dynamics simulations were conducted to identify the most promising candidates. The results showed that the generated ligands exhibited substantial improvements in target affinity and drug-likeness. Molecular docking results showed that the generated ligands had an average binding affinity of -10.65 ± 0.877 kcal/mol towards CDK1. The Quantitative Estimate of Drug-likeness (QED) values for the generated ligands averaged 0.733 ± 0.10, significantly higher than the 0.547 ± 0.15 observed for known CDK1 inhibitors (p < 0.001). Molecular dynamics simulations further confirmed the stability and favorable interactions of the selected ligands with the CDK1 complex. The identification of novel CDK1 inhibitors with improved binding affinities and drug-likeness properties could potentially fill the gap in the ongoing development of CDK inhibitors. However, it is imperative to note that extensive experimental validation is required prior to advancing these generated ligands to subsequent stages of drug development.

摘要

细胞周期蛋白依赖性激酶1(CDK1)在细胞周期调控中起着关键作用,其活性失调与多种癌症有关。尽管目前有几种CDK1抑制剂正在进行临床试验,但尚无一种被批准用于治疗。本研究利用深度学习技术,特别是具有长短期记忆(LSTM)的递归神经网络,来生成潜在的CDK1抑制剂。进行了分子对接、分子性质评估和分子动力学模拟,以确定最有前景的候选物。结果表明,生成的配体在靶标亲和力和类药性方面有显著改善。分子对接结果显示,生成的配体对CDK1的平均结合亲和力为-10.65±0.877千卡/摩尔。生成配体的类药性定量估计(QED)值平均为0.733±0.10,显著高于已知CDK1抑制剂的0.547±0.15(p<0.001)。分子动力学模拟进一步证实了所选配体与CDK1复合物的稳定性和良好相互作用。鉴定出具有改善结合亲和力和类药性的新型CDK1抑制剂可能填补CDK抑制剂正在进行的开发中的空白。然而,必须指出的是,在将这些生成的配体推进到药物开发的后续阶段之前,需要进行广泛的实验验证。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/248d/11693894/672e80b90d1a/gr1.jpg

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