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甲状腺过氧化物酶抑制剂的计算机预测模型及其在合成香料中的应用。

In silico prediction models for thyroid peroxidase inhibitors and their application to synthetic flavors.

作者信息

Seo Mihyun, Lim Changwon, Kwon Hoonjeong

机构信息

Department of Food and Nutrition, Seoul National University, Seoul, Republic of Korea.

Department of Applied Statistics, Chung-Ang University, Seoul, Republic of Korea.

出版信息

Food Sci Biotechnol. 2022 Mar 12;31(4):483-495. doi: 10.1007/s10068-022-01041-y. eCollection 2022 Apr.

Abstract

UNLABELLED

Systematic toxicity tests are often waived for the synthetic flavors as they are added in a very small amount in foods. However, their safety for some endpoints such as endocrine disruption should be concerned as they are likely to be active in low levels. In this case, structure-activity-relationship (SAR) models are good alternatives. In this study, therefore, binary, ternary, and quaternary prediction models were designed using simple or complex machine-learning methods. Overall, hard-voting classifiers outperformed other methods. The test scores for the best binary, ternary, and quaternary models were 0.6635, 0.5083, and 0.5217, respectively. Along with model development, some substructures including primary aromatic amine, (enol)ether, phenol, heterocyclic sulfur, and heterocyclic nitrogen, dominantly occurred in the most highly active compounds. The best predicting models were applied to synthetic flavors, and 22 agents appeared to have a strong inhibitory potential towards TPO activities.

SUPPLEMENTARY INFORMATION

The online version contains supplementary material available at 10.1007/s10068-022-01041-y.

摘要

未标注

由于合成香料在食品中的添加量非常少,因此通常不进行系统毒性测试。然而,由于它们可能在低水平下具有活性,所以应关注它们对某些终点(如内分泌干扰)的安全性。在这种情况下,构效关系(SAR)模型是很好的替代方法。因此,在本研究中,使用简单或复杂的机器学习方法设计了二元、三元和四元预测模型。总体而言,硬投票分类器优于其他方法。最佳二元、三元和四元模型的测试分数分别为0.6635、0.5083和0.5217。随着模型的开发,一些子结构,包括伯芳香胺、(烯醇)醚、苯酚、杂环硫和杂环氮,主要出现在活性最高的化合物中。将最佳预测模型应用于合成香料,有22种试剂似乎对TPO活性具有很强的抑制潜力。

补充信息

在线版本包含可在10.1007/s10068-022-01041-y获取的补充材料。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9f89/8994803/4f2c6875d7a3/10068_2022_1041_Fig1_HTML.jpg

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