Key Laboratory of Livestock Infectious Diseases, Ministry of Education, Shenyang Agricultural University, Shenyang, China.
State Key Laboratory of Resource Insects, Institute of Apicultural Research, Chinese Academy of Agricultural Sciences, Beijing, China.
J Biomol Struct Dyn. 2024 Aug;42(13):6645-6659. doi: 10.1080/07391102.2023.2237594. Epub 2023 Jul 24.
Flavonoids, especially their inhibitory effect on DPP-IV activity, have been widely recognized for their antidiabetic effects. However, the variety of natural flavonoid derivatives is very rich, and even subtle structural differences can lead to several orders of magnitude differences in their inhibitory activities against DPP-IV, which makes it challenging to find novel and potent anti-DPP-IV flavonoid derivatives experimentally. Therefore, there is an urgent need to develop an efficient screening pipeline that targets active natural products. Here, we propose a fusion strategy based on a QSAR model, and to simplify this process, it was applied to the discovery of flavonoid derivatives with potent anti-DPP-IV activity. First, the high-quality QSAR model ( = 0.816, MAE = 0.14, MSE = 0.026) was composed of seven key molecular property parameters, which were constructed with the genetic algorithm (GA) and passed the leave-one-out cross-validation evaluation. A total of 1,668 flavonoid derivatives were obtained from the natural product enriched by NPCD based on molecular fingerprint similarity (> 0.8). Further, the enriched flavonoid derivatives were further predicted and screened using the QED score combined with the QSAR model, and a total of 33 flavonoid derivatives (IC50 < 6.5 μM) were found. Subsequently, three flavonoid derivatives (5,7,3',5'-tetrahydroxyflavone, 3,7-dihydroxy-5,3',4'-trimethoxyflavone, and 5,7,2',5'-tetrahydroxyflavone) with highly effective anti-DPP-IV activity were obtained by ADMET analysis. Finally, the DPP-IV inhibitory potential of these three flavonoid derivatives was verified by 100 ns MD simulation and MM/PB(GB)SA.Communicated by Ramaswamy H. Sarma.
类黄酮,尤其是其对 DPP-IV 活性的抑制作用,因其抗糖尿病作用而得到广泛认可。然而,天然类黄酮衍生物的种类非常丰富,即使细微的结构差异也可能导致其对 DPP-IV 的抑制活性相差几个数量级,这使得通过实验寻找新型强效的抗 DPP-IV 类黄酮衍生物变得极具挑战性。因此,迫切需要开发一种针对有效天然产物的高效筛选管道。在这里,我们提出了一种基于 QSAR 模型的融合策略,为了简化这个过程,我们将其应用于发现具有强效抗 DPP-IV 活性的类黄酮衍生物。首先,构建了一个高质量的 QSAR 模型( = 0.816,MAE = 0.14,MSE = 0.026),该模型由七个关键分子特性参数组成,通过遗传算法(GA)构建,并通过留一法交叉验证评估。从基于分子指纹相似度(> 0.8)的 NPCD 富集的天然产物中获得了总共 1668 种黄酮类衍生物。进一步,利用 QED 评分结合 QSAR 模型对富集的黄酮类衍生物进行进一步预测和筛选,共发现 33 种黄酮类衍生物(IC50 < 6.5 μM)。随后,通过 ADMET 分析获得了三种具有高效抗 DPP-IV 活性的黄酮类衍生物(5,7,3',5'-四羟基黄酮、3,7-二羟基-5,3',4'-三甲氧基黄酮和 5,7,2',5'-四羟基黄酮)。最后,通过 100 ns MD 模拟和 MM/PB(GB)SA 对这三种黄酮类衍生物的 DPP-IV 抑制潜力进行了验证。由 Ramaswamy H. Sarma 通讯。