Tang Ning
Beijing Key Laboratory of Functional Food from Plant Resources, College of Food Science and Nutritional Engineering, China Agricultural University, Beijing 100083, China.
Foods. 2023 Jun 30;12(13):2563. doi: 10.3390/foods12132563.
The search for novel, natural, high-sweetness, low-calorie sweeteners remains open and challenging. In the present study, the structure-based machine learning modeling and sweetness recognition mechanism were investigated to assist this process. It was found that whether or not a compound was sweet was closely related to molecular connectivity and composition (the number of hydrogen bond acceptors and donors), tpsaEfficiency, structural complexity, and shape (nAtomP and Fsp3). While the relative sweetness of sweet compounds was more determined by the molecular properties (tpsaEfficiency and Log P), structural complexity and composition (nAtomP and ATSm 1). The built machine learning models exhibited very good performance for classifying the sweet/non-sweet compounds and predicting the relative sweetness of the compounds. Moreover, a specific binding pocket was found for sweet compounds, and the sweet compounds mainly interacted with the VFT domain of the T1R2-T1R3 through hydrogen bonds. In addition, the results indicated that among the sweet compounds, those that were sweeter bound to the VFT domain stronger than those that had low sweetness. This study provides very useful information for developing new sweeteners.
寻找新型、天然、高甜度、低热量甜味剂的工作仍在继续,且颇具挑战性。在本研究中,对基于结构的机器学习建模和甜味识别机制进行了研究,以助力这一进程。研究发现,一种化合物是否具有甜味与分子连接性和组成(氢键受体和供体的数量)、tpsa效率、结构复杂性以及形状(nAtomP和Fsp3)密切相关。而甜味化合物的相对甜度则更多地由分子性质(tpsa效率和Log P)、结构复杂性和组成(nAtomP和ATSm 1)决定。所构建的机器学习模型在对甜味/非甜味化合物进行分类以及预测化合物的相对甜度方面表现出非常良好的性能。此外,还发现了甜味化合物的一个特定结合口袋,甜味化合物主要通过氢键与T1R2 - T1R3的VFT结构域相互作用。此外,结果表明,在甜味化合物中,甜度较高的化合物与VFT结构域的结合比甜度较低的化合物更强。本研究为开发新型甜味剂提供了非常有用的信息。