PolitoBIOMed Lab, Department of Mechanical and Aerospace Engineering, Politecnico di Torino, Turin, Italy.
Biotechnol Bioeng. 2024 Jun;121(6):1755-1758. doi: 10.1002/bit.28709. Epub 2024 Apr 8.
Bitter taste involves the detection of diverse chemical compounds by a family of G protein-coupled receptors, known as taste receptor type 2 (TAS2R). It is often linked to toxins and harmful compounds and in particular bitter taste receptors participate in the regulation of glucose homeostasis, modulation of immune and inflammatory responses, and may have implications for various diseases. Human TAS2Rs are characterized by their polymorphism and differ in localization and function. Different receptors can activate various signaling pathways depending on the tissue and the ligand. However, in vitro screening of possible TAS2R ligands is costly and time-consuming. For this reason, in silico methods to predict bitterant-TAS2R interactions could be powerful tools to help in the selection of ligands and targets for experimental studies and improve our knowledge of bitter receptor roles. Machine learning (ML) is a branch of artificial intelligence that applies algorithms to large datasets to learn from patterns and make predictions. In recent years, there has been a record of numerous taste classifiers in literature, especially on bitter/non-bitter or bitter/sweet classification. However, only a few of them exploit ML to predict which TAS2R receptors could be targeted by bitter molecules. Indeed, the shortage and incompleteness of data on receptor-ligand associations in literature make this task non-trivial. In this work, we provide an overview of the state of the art dealing with this specific investigation, focusing on three ML-based models, namely BitterX (2016), BitterSweet (2019) and BitterMatch (2022). This review aims to establish the foundation for future research endeavours focused on addressing the limitations and drawbacks of existing models.
苦味涉及到一系列化学化合物的检测,这些化合物由一组 G 蛋白偶联受体(称为味觉受体 2 型,TAS2R)检测。苦味通常与毒素和有害化合物有关,特别是苦味受体参与葡萄糖内稳态的调节、免疫和炎症反应的调节,并且可能与各种疾病有关。人类 TAS2R 以其多态性为特征,在定位和功能上有所不同。不同的受体可以根据组织和配体激活不同的信号通路。然而,潜在 TAS2R 配体的体外筛选既昂贵又耗时。因此,预测苦味剂-TAS2R 相互作用的计算方法可能是帮助选择实验研究的配体和靶点并提高我们对苦味受体作用的认识的有力工具。机器学习(ML)是人工智能的一个分支,它应用算法对大数据集进行学习,从模式中提取信息并进行预测。近年来,文献中记录了大量的味觉分类器,特别是苦味/非苦味或苦味/甜味的分类。然而,只有少数几个利用 ML 来预测哪些 TAS2R 受体可能成为苦味分子的靶点。事实上,由于文献中受体-配体关联的数据不足和不完整,使得这项任务变得复杂。在这项工作中,我们概述了处理这一特定研究的最新进展,重点介绍了三种基于 ML 的模型,即 BitterX(2016)、BitterSweet(2019)和 BitterMatch(2022)。本综述旨在为未来的研究工作奠定基础,重点是解决现有模型的局限性和缺点。