Queiroz Luana P, Rebello Carine M, Costa Erbet A, Santana Vinícius V, Rodrigues Bruno C L, Rodrigues Alírio E, Ribeiro Ana M, Nogueira Idelfonso B R
LSRE-LCM-Laboratory of Separation and Reaction Engineering-Laboratory of Catalysis and Materials, Faculty of Engineering, University of Porto, Rua Dr. Roberto Frias, 4200-465 Porto, Portugal.
ALiCE-Associate Laboratory in Chemical Engineering, Faculty of Engineering, University of Porto, Rua Dr. Roberto Frias, 4200-465 Porto, Portugal.
ACS Omega. 2023 Mar 15;8(12):10875-10887. doi: 10.1021/acsomega.2c07176. eCollection 2023 Mar 28.
Flavor is an essential component in the development of numerous products in the market. The increasing consumption of processed and fast food and healthy packaged food has upraised the investment in new flavoring agents and consequently in molecules with flavoring properties. In this context, this work brings up a scientific machine learning (SciML) approach to address this product engineering need. SciML in computational chemistry has opened paths in the compound's property prediction without requiring synthesis. This work proposes a novel framework of deep generative models within this context to design new flavor molecules. Through the analysis and study of the molecules obtained from the generative model training, it was possible to conclude that even though the generative model designs the molecules through random sampling of actions, it can find molecules that are already used in the food industry, not necessarily as a flavoring agent, or in other industrial sectors. Hence, this corroborates the potential of the proposed methodology for the prospecting of molecules to be applied in the flavor industry.
风味是市场上众多产品开发中的一个重要组成部分。加工食品、快餐和健康包装食品消费的增加,提高了对新型调味剂的投资,进而增加了对具有调味特性分子的投资。在此背景下,这项工作提出了一种科学机器学习(SciML)方法来满足这一产品工程需求。计算化学中的SciML在无需合成的情况下为化合物性质预测开辟了道路。这项工作在此背景下提出了一个新的深度生成模型框架来设计新的风味分子。通过对从生成模型训练中获得的分子进行分析和研究,可以得出结论:尽管生成模型通过对动作的随机采样来设计分子,但它能够找到已在食品工业中使用的分子,不一定是作为调味剂,也可能在其他工业领域。因此,这证实了所提出的方法在寻找可应用于香料行业的分子方面的潜力。