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基于模块化设计的图神经网络的苦味预测

Prediction of bitterness based on modular designed graph neural network.

作者信息

He Yi, Liu Kaifeng, Liu Yuyang, Han Weiwei

机构信息

Key Laboratory for Molecular Enzymology and Engineering of Ministry of Education, School of Life Science, Jilin University, Changchun 130012, China.

出版信息

Bioinform Adv. 2024 Mar 13;4(1):vbae041. doi: 10.1093/bioadv/vbae041. eCollection 2024.

Abstract

MOTIVATION

Bitterness plays a pivotal role in our ability to identify and evade harmful substances in food. As one of the five tastes, it constitutes a critical component of our sensory experiences. However, the reliance on human tasting for discerning flavors presents cost challenges, rendering in silico prediction of bitterness a more practical alternative.

RESULTS

In this study, we introduce the use of Graph Neural Networks (GNNs) in bitterness prediction, superseding traditional machine learning techniques. We developed an advanced model, a Hybrid Graph Neural Network (HGNN), surpassing conventional GNNs according to tests on public datasets. Using HGNN and three other GNNs, we designed BitterGNNs, a bitterness predictor that achieved an AUC value of 0.87 in both external bitter/non-bitter and bitter/sweet evaluations, outperforming the acclaimed RDKFP-MLP predictor with AUC values of 0.86 and 0.85. We further created a bitterness prediction website and database, TastePD (https://www.tastepd.com/). The BitterGNNs predictor, built on GNNs, offers accurate bitterness predictions, enhancing the efficacy of bitterness prediction, aiding advanced food testing methodology development, and deepening our understanding of bitterness origins.

AVAILABILITY AND IMPLEMENTATION

TastePD can be available at https://www.tastepd.com, all codes are at https://github.com/heyigacu/BitterGNN.

摘要

动机

苦味在我们识别和规避食物中有害物质的能力方面起着关键作用。作为五种基本味觉之一,它是我们感官体验的重要组成部分。然而,依靠人类品尝来辨别味道存在成本挑战,使得通过计算机模拟预测苦味成为一种更实际的选择。

结果

在本研究中,我们引入了图神经网络(GNN)用于苦味预测,取代了传统的机器学习技术。我们开发了一种先进的模型,即混合图神经网络(HGNN),根据在公共数据集上的测试,该模型超越了传统的GNN。使用HGNN和其他三种GNN,我们设计了BitterGNNs,这是一种苦味预测器,在外部苦味/非苦味和苦味/甜味评估中,其AUC值均达到0.87,优于广受赞誉的RDKFP-MLP预测器,后者的AUC值分别为0.86和0.85。我们进一步创建了一个苦味预测网站和数据库TastePD(https://www.tastepd.com/)。基于GNN构建的BitterGNNs预测器能够提供准确的苦味预测,提高了苦味预测的效率,有助于先进食品检测方法的开发,并加深了我们对苦味来源的理解。

可用性和实现方式

TastePD可在https://www.tastepd.com获取,所有代码位于https://github.com/heyigacu/BitterGNN。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ccae/10987211/4bb303493b3f/vbae041f1.jpg

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