机器学习辅助筛选PKC配体的验证:PKC结合亲和力和激活。

IF 1.4 4区 生物学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Jumpei Maki, Asami Oshimura, Yudai Shiotani, Maki Yamanaka, Sogen Okuda, Ryo C Yanagita, Shigeru Kitani, Yasuhiro Igarashi, Yutaka Saito, Yasubumi Sakakibara, Chihiro Tsukano, Kazuhiro Irie
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引用次数: 0

摘要

蛋白激酶C (PKC)是一个丝氨酸/苏氨酸激酶家族,PKC配体有潜力成为癌症、阿尔茨海默病和人类免疫缺陷病毒感染的治疗种子。然而,除了预期的治疗效果外,大多数PKC配体也表现出不良的促炎作用。PKC配体新支架的发现对于开发炎症性较低的PKC配体(如苔藓虫抑制素)具有重要意义。我们之前报道了机器学习结合我们对药效团的了解产生了15个PKC候选配体,但我们没有充分评估它们的PKC结合亲和力。在本文中,研究了四种候选PKC结合亲和力,以评估它们作为PKC配体的潜力,并验证机器学习辅助筛选。虽然化合物3′不与PKC C1结构域结合,但1a、2′和4a表现出中等PKC结合亲和力,这表明机器学习辅助筛选在鉴定新的PKC配体支架方面是有利的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Validation of machine learning-assisted screening of PKC ligands: PKC binding affinity and activation.

Protein kinase C (PKC) is a family of serine/threonine kinases, and PKC ligands have the potential to be therapeutic seeds for cancer, Alzheimer's disease, and human immunodeficiency virus infection. However, in addition to desired therapeutic effects, most PKC ligands also exhibit undesirable pro-inflammatory effects. The discovery of new scaffolds for PKC ligands is important for developing less inflammatory PKC ligands, such as bryostatins. We previously reported that machine learning combined with our knowledge of the pharmacophore yielded 15 PKC ligand candidates, but we did not evaluate their PKC binding affinities fully. In this paper, PKC binding affinities of four candidates were examined to assess their potential as PKC ligands and to validate machine learning-assisted screening. Although compound 3' did not bind to PKC C1 domains, 1a, 2', and 4a exhibited moderate PKC binding affinities, suggesting that machine learning-assisted screening is advantageous in identifying new PKC ligand scaffolds.

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来源期刊
Bioscience, Biotechnology, and Biochemistry
Bioscience, Biotechnology, and Biochemistry 生物-生化与分子生物学
CiteScore
3.50
自引率
0.00%
发文量
183
审稿时长
1 months
期刊介绍: Bioscience, Biotechnology, and Biochemistry publishes high-quality papers providing chemical and biological analyses of vital phenomena exhibited by animals, plants, and microorganisms, the chemical structures and functions of their products, and related matters. The Journal plays a major role in communicating to a global audience outstanding basic and applied research in all fields subsumed by the Japan Society for Bioscience, Biotechnology, and Agrochemistry (JSBBA).
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