Computer-guided design of novel nitrogen-based heterocyclic sphingosine-1-phosphate (S1P) activators as osteoanabolic agents.

IF 3.8 3区 生物学 Q1 BIOLOGY EXCLI Journal Pub Date : 2024-05-27 eCollection Date: 2024-01-01 DOI:10.17179/excli2024-7214
Rattanawan Tangporncharoen, Chuleeporn Phanus-Umporn, Supaluk Prachayasittikul, Chanin Nantasenamat, Veda Prachayasittikul, Aungkura Supokawej
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Abstract

Osteoanabolic agents, or drugs that promote bone formation, have gained considerable attention for osteoporosis management due to their curative and preventive potentials. Sphingosine-1-phosphate receptor 2 (S1PR2) is an attractive drug target, in which its activation leads to osteogenesis-promoting effect. Nitrogen-containing heterocyclic scaffolds (i.e., quinoxaline and indole) are promising pharmacophores possessing diverse bioactivities and were reported as S1PR2 activators. Quantitative structure-activity relationship (QSAR) modeling is a computational approach well-known as a fundamental tool for facilitating successful drug development. This study demonstrates the discovery of new S1PR2 activators using computational-driven rational design. Herein, an original dataset of nitrogen-containing S1PR2 activators was collected from ChEMBL database. The retrieved dataset was separated into two datasets according to their core scaffolds (i.e., quinoxaline and indole). QSAR modeling was performed using multiple linear regression (MLR) algorithm to successfully obtain two models with good predictive performance. The constructed models also revealed key properties playing essential roles for potent S1PR2 activation, such as Van der Waals volume (R2v+ and E3v), mass (MATS5m and Km), electronegativity (H3e), and number of 5-membered rings (nR05). Subsequently, the constructed models were further employed to guide rational design and predict S1PR2 activating effects of an additional set of 752 structurally modified compounds. Most of the modified compounds were predicted to have higher potency than their parents, and a set of promising potent newly designed compounds was highlighted. Additionally, drug-likeness prediction was performed to reveal that most of the newly designed compounds are druggable compounds with possibility for further development.

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计算机辅助设计新型氮基杂环鞘氨醇-1-磷酸(S1P)激活剂作为骨合成代谢剂。
骨合成代谢药物或促进骨形成的药物因其治疗和预防潜力而在骨质疏松症的治疗中受到广泛关注。磷脂酰肌苷-1-磷酸受体 2(S1PR2)是一个极具吸引力的药物靶点,它的激活可产生促进骨生成的作用。据报道,含氮杂环支架(即喹喔啉和吲哚)是具有多种生物活性的有前途的药层,可作为 S1PR2 激活剂。定量结构-活性关系(QSAR)建模是一种众所周知的计算方法,是促进药物成功开发的基本工具。本研究展示了利用计算驱动的合理设计发现新的 S1PR2 激活剂的过程。本研究从 ChEMBL 数据库中收集了含氮 S1PR2 激活剂的原始数据集。检索到的数据集根据其核心支架(即喹喔啉和吲哚)分为两个数据集。利用多元线性回归(MLR)算法进行 QSAR 建模,成功地获得了两个具有良好预测性能的模型。所构建的模型还揭示了对强效激活 S1PR2 起重要作用的关键特性,如范德华体积(R2v+ 和 E3v)、质量(MATS5m 和 Km)、电负性(H3e)和五元环数(nR05)。随后,所构建的模型被进一步用于指导合理设计和预测另外一组 752 种结构修饰化合物的 S1PR2 激活效应。据预测,大多数修饰化合物的药效高于它们的母体,并突出了一组有前途的强效新设计化合物。此外,还进行了药物相似性预测,发现大多数新设计的化合物都是可药用化合物,有进一步开发的可能性。
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来源期刊
EXCLI Journal
EXCLI Journal BIOLOGY-
CiteScore
8.00
自引率
2.20%
发文量
65
审稿时长
6-12 weeks
期刊介绍: EXCLI Journal publishes original research reports, authoritative reviews and case reports of experimental and clinical sciences. The journal is particularly keen to keep a broad view of science and technology, and therefore welcomes papers which bridge disciplines and may not suit the narrow specialism of other journals. Although the general emphasis is on biological sciences, studies from the following fields are explicitly encouraged (alphabetical order): aging research, behavioral sciences, biochemistry, cell biology, chemistry including analytical chemistry, clinical and preclinical studies, drug development, environmental health, ergonomics, forensic medicine, genetics, hepatology and gastroenterology, immunology, neurosciences, occupational medicine, oncology and cancer research, pharmacology, proteomics, psychiatric research, psychology, systems biology, toxicology
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