Advances in the application of machine learning technology in the field of environmental health

As the data sharing and availability in environmental and health research continue to improve, the number of large datasets for environmental and human health has increased dramatically. However, these large environmental health datasets are diverse and complex, and traditional epidemiological and e...

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Main Authors: ZHENG Yu, LI Cheng, HU Guiping, JIA Guang
Format: Article
Language:zho
Published: Editorial Office of Journal of Guangxi Medical University 2024-11-01
Series:Guangxi Yike Daxue xuebao
Subjects:
Online Access:https://journal.gxmu.edu.cn/article/doi/10.16190/j.cnki.45-1211/r.2024.11.018
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author ZHENG Yu
LI Cheng
HU Guiping
JIA Guang
author_facet ZHENG Yu
LI Cheng
HU Guiping
JIA Guang
author_sort ZHENG Yu
collection DOAJ
description As the data sharing and availability in environmental and health research continue to improve, the number of large datasets for environmental and human health has increased dramatically. However, these large environmental health datasets are diverse and complex, and traditional epidemiological and environmental health models are difficult to effectively analyze, leading to the development of a new approach to environmental health research. The application of artificial intelligence (AI) technology in environmental health is rapidly developing, providing novel and powerful tools for new pollutant screening and toxicity prediction, biomonitoring, risk assessment, and health protection. Among them, advanced machine learning (ML) algorithms can reveal laws that are difficult for humans to detect, showing important potential in biomarker identification, disease prevention, and environmental engineering optimization. This can provide new ideas and breakthroughs for environmental health research and technological innovation. However, the application of ML technology in the field of environmental health still faces challenges such as data quality, model interpretability, and interdisciplinary cooperation. This paper will review the latest progress in the application of ML technology in the field of environmental health, discuss its advantages, challenges, and future development directions, with the aim of providing valuable references for research and practice in the fields of environmental protection and public health.
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spelling doaj-art-4d6eebd047774ac8a21eb58831aedd2a2025-08-20T01:50:22ZzhoEditorial Office of Journal of Guangxi Medical UniversityGuangxi Yike Daxue xuebao1005-930X2024-11-0141111558156410.16190/j.cnki.45-1211/r.2024.11.018gxykdxxb-41-11-1558Advances in the application of machine learning technology in the field of environmental healthZHENG Yu0LI Cheng1HU Guiping2JIA Guang3School of Engineering Medicine, Beihang University, Beijing 100191, ChinaSchool of Engineering Medicine, Beihang University, Beijing 100191, ChinaSchool of Engineering Medicine, Beihang University, Beijing 100191, ChinaDepartment of Occupational and Environmental Health Science, School of Public Health, Peking University, Beijing 100191, ChinaAs the data sharing and availability in environmental and health research continue to improve, the number of large datasets for environmental and human health has increased dramatically. However, these large environmental health datasets are diverse and complex, and traditional epidemiological and environmental health models are difficult to effectively analyze, leading to the development of a new approach to environmental health research. The application of artificial intelligence (AI) technology in environmental health is rapidly developing, providing novel and powerful tools for new pollutant screening and toxicity prediction, biomonitoring, risk assessment, and health protection. Among them, advanced machine learning (ML) algorithms can reveal laws that are difficult for humans to detect, showing important potential in biomarker identification, disease prevention, and environmental engineering optimization. This can provide new ideas and breakthroughs for environmental health research and technological innovation. However, the application of ML technology in the field of environmental health still faces challenges such as data quality, model interpretability, and interdisciplinary cooperation. This paper will review the latest progress in the application of ML technology in the field of environmental health, discuss its advantages, challenges, and future development directions, with the aim of providing valuable references for research and practice in the fields of environmental protection and public health.https://journal.gxmu.edu.cn/article/doi/10.16190/j.cnki.45-1211/r.2024.11.018environmental and human healthmachine learningbiological monitoringrisk prediction
spellingShingle ZHENG Yu
LI Cheng
HU Guiping
JIA Guang
Advances in the application of machine learning technology in the field of environmental health
Guangxi Yike Daxue xuebao
environmental and human health
machine learning
biological monitoring
risk prediction
title Advances in the application of machine learning technology in the field of environmental health
title_full Advances in the application of machine learning technology in the field of environmental health
title_fullStr Advances in the application of machine learning technology in the field of environmental health
title_full_unstemmed Advances in the application of machine learning technology in the field of environmental health
title_short Advances in the application of machine learning technology in the field of environmental health
title_sort advances in the application of machine learning technology in the field of environmental health
topic environmental and human health
machine learning
biological monitoring
risk prediction
url https://journal.gxmu.edu.cn/article/doi/10.16190/j.cnki.45-1211/r.2024.11.018
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AT huguiping advancesintheapplicationofmachinelearningtechnologyinthefieldofenvironmentalhealth
AT jiaguang advancesintheapplicationofmachinelearningtechnologyinthefieldofenvironmentalhealth