Cargando…

CSGNN: Contamination Warning and Control of Food Quality via Contrastive Self-Supervised Learning-Based Graph Neural Network

Effective contamination warning and control of food quality can significantly reduce the likelihood of food quality safety incidents. Existing food contamination warning models for food quality rely on supervised learning, do not model the complex feature associations between detection samples, and...

Descripción completa

Detalles Bibliográficos
Autores principales: Yan, Junyi, Li, Hongyi, Zuo, Enguang, Li, Tianle, Chen, Chen, Chen, Cheng, Lv, Xiaoyi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10001316/
https://www.ncbi.nlm.nih.gov/pubmed/36900566
http://dx.doi.org/10.3390/foods12051048
_version_ 1784904106010214400
author Yan, Junyi
Li, Hongyi
Zuo, Enguang
Li, Tianle
Chen, Chen
Chen, Cheng
Lv, Xiaoyi
author_facet Yan, Junyi
Li, Hongyi
Zuo, Enguang
Li, Tianle
Chen, Chen
Chen, Cheng
Lv, Xiaoyi
author_sort Yan, Junyi
collection PubMed
description Effective contamination warning and control of food quality can significantly reduce the likelihood of food quality safety incidents. Existing food contamination warning models for food quality rely on supervised learning, do not model the complex feature associations between detection samples, and do not consider the unevenness of detection data categories. In this paper, To overcome these limitations, we propose a Contrastive Self-supervised learning-based Graph Neural Network framework (CSGNN) for contamination warning of food quality. Specifically, we structure the graph for detecting correlations between samples and then define the positive and negative instance pairs for contrastive learning based on attribute networks. Further, we use a self-supervised approach to capture the complex relationships between detection samples. Finally, we assessed each sample’s contamination level based on the absolute value of the subtraction of the prediction scores from multiple rounds of positive and negative instances obtained by the CSGNN. Moreover, we conducted a sample study on a batch of dairy product detection data in a Chinese province. The experimental results show that CSGNN outperforms other baseline models in contamination assessment of food quality, with AUC and recall of unqualified samples reaching 0.9188 and 1.0000, respectively. Meanwhile, our framework provides interpretable contamination classification for food detection. This study provides an efficient early warning method with precise and hierarchical contamination classification for contamination warning of food quality work.
format Online
Article
Text
id pubmed-10001316
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-100013162023-03-11 CSGNN: Contamination Warning and Control of Food Quality via Contrastive Self-Supervised Learning-Based Graph Neural Network Yan, Junyi Li, Hongyi Zuo, Enguang Li, Tianle Chen, Chen Chen, Cheng Lv, Xiaoyi Foods Article Effective contamination warning and control of food quality can significantly reduce the likelihood of food quality safety incidents. Existing food contamination warning models for food quality rely on supervised learning, do not model the complex feature associations between detection samples, and do not consider the unevenness of detection data categories. In this paper, To overcome these limitations, we propose a Contrastive Self-supervised learning-based Graph Neural Network framework (CSGNN) for contamination warning of food quality. Specifically, we structure the graph for detecting correlations between samples and then define the positive and negative instance pairs for contrastive learning based on attribute networks. Further, we use a self-supervised approach to capture the complex relationships between detection samples. Finally, we assessed each sample’s contamination level based on the absolute value of the subtraction of the prediction scores from multiple rounds of positive and negative instances obtained by the CSGNN. Moreover, we conducted a sample study on a batch of dairy product detection data in a Chinese province. The experimental results show that CSGNN outperforms other baseline models in contamination assessment of food quality, with AUC and recall of unqualified samples reaching 0.9188 and 1.0000, respectively. Meanwhile, our framework provides interpretable contamination classification for food detection. This study provides an efficient early warning method with precise and hierarchical contamination classification for contamination warning of food quality work. MDPI 2023-03-01 /pmc/articles/PMC10001316/ /pubmed/36900566 http://dx.doi.org/10.3390/foods12051048 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Yan, Junyi
Li, Hongyi
Zuo, Enguang
Li, Tianle
Chen, Chen
Chen, Cheng
Lv, Xiaoyi
CSGNN: Contamination Warning and Control of Food Quality via Contrastive Self-Supervised Learning-Based Graph Neural Network
title CSGNN: Contamination Warning and Control of Food Quality via Contrastive Self-Supervised Learning-Based Graph Neural Network
title_full CSGNN: Contamination Warning and Control of Food Quality via Contrastive Self-Supervised Learning-Based Graph Neural Network
title_fullStr CSGNN: Contamination Warning and Control of Food Quality via Contrastive Self-Supervised Learning-Based Graph Neural Network
title_full_unstemmed CSGNN: Contamination Warning and Control of Food Quality via Contrastive Self-Supervised Learning-Based Graph Neural Network
title_short CSGNN: Contamination Warning and Control of Food Quality via Contrastive Self-Supervised Learning-Based Graph Neural Network
title_sort csgnn: contamination warning and control of food quality via contrastive self-supervised learning-based graph neural network
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10001316/
https://www.ncbi.nlm.nih.gov/pubmed/36900566
http://dx.doi.org/10.3390/foods12051048
work_keys_str_mv AT yanjunyi csgnncontaminationwarningandcontroloffoodqualityviacontrastiveselfsupervisedlearningbasedgraphneuralnetwork
AT lihongyi csgnncontaminationwarningandcontroloffoodqualityviacontrastiveselfsupervisedlearningbasedgraphneuralnetwork
AT zuoenguang csgnncontaminationwarningandcontroloffoodqualityviacontrastiveselfsupervisedlearningbasedgraphneuralnetwork
AT litianle csgnncontaminationwarningandcontroloffoodqualityviacontrastiveselfsupervisedlearningbasedgraphneuralnetwork
AT chenchen csgnncontaminationwarningandcontroloffoodqualityviacontrastiveselfsupervisedlearningbasedgraphneuralnetwork
AT chencheng csgnncontaminationwarningandcontroloffoodqualityviacontrastiveselfsupervisedlearningbasedgraphneuralnetwork
AT lvxiaoyi csgnncontaminationwarningandcontroloffoodqualityviacontrastiveselfsupervisedlearningbasedgraphneuralnetwork