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Systematic mapping of global research on climate and health: a machine learning review

BACKGROUND: The global literature on the links between climate change and human health is large, increasing exponentially, and it is no longer feasible to collate and synthesise using traditional systematic evidence mapping approaches. We aimed to use machine learning methods to systematically synth...

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Autores principales: Berrang-Ford, Lea, Sietsma, Anne J, Callaghan, Max, Minx, Jan C, Scheelbeek, Pauline F D, Haddaway, Neal R, Haines, Andy, Dangour, Alan D
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier B.V 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8358978/
https://www.ncbi.nlm.nih.gov/pubmed/34270917
http://dx.doi.org/10.1016/S2542-5196(21)00179-0
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author Berrang-Ford, Lea
Sietsma, Anne J
Callaghan, Max
Minx, Jan C
Scheelbeek, Pauline F D
Haddaway, Neal R
Haines, Andy
Dangour, Alan D
author_facet Berrang-Ford, Lea
Sietsma, Anne J
Callaghan, Max
Minx, Jan C
Scheelbeek, Pauline F D
Haddaway, Neal R
Haines, Andy
Dangour, Alan D
author_sort Berrang-Ford, Lea
collection PubMed
description BACKGROUND: The global literature on the links between climate change and human health is large, increasing exponentially, and it is no longer feasible to collate and synthesise using traditional systematic evidence mapping approaches. We aimed to use machine learning methods to systematically synthesise an evidence base on climate change and human health. METHODS: We used supervised machine learning and other natural language processing methods (topic modelling and geoparsing) to systematically identify and map the scientific literature on climate change and health published between Jan 1, 2013, and April 9, 2020. Only literature indexed in English were included. We searched Web of Science Core Collection, Scopus, and PubMed using title, abstract, and keywords only. We searched for papers including both a health component and an explicit mention of either climate change, climate variability, or climate change-relevant weather phenomena. We classified relevant publications according to the fields of climate research, climate drivers, health impact, date, and geography. We used supervised and unsupervised machine learning to identify and classify relevant articles in the field of climate and health, with outputs including evidence heat maps, geographical maps, and narrative synthesis of trends in climate health-related publications. We included empirical literature of any study design that reported on health pathways associated with climate impacts, mitigation, or adaptation. FINDINGS: We predict that there are 15 963 studies in the field of climate and health published between 2013 and 2019. Climate health literature is dominated by impact studies, with mitigation and adaptation responses and their co-benefits and co-risks remaining niche topics. Air quality and heat stress are the most frequently studied exposures, with all-cause mortality and infectious disease incidence being the most frequently studied health outcomes. Seasonality, extreme weather events, heat, and weather variability are the most frequently studied climate-related hazards. We found major gaps in evidence on climate health research for mental health, undernutrition, and maternal and child health. Geographically, the evidence base is dominated by studies from high-income countries and China, with scant evidence from low-income counties, which often suffer most from the health consequences of climate change. INTERPRETATION: Our findings show the importance and feasibility of using automated machine learning to comprehensively map the science on climate change and human health in the age of big literature. These can provide key inputs into global climate and health assessments. The scant evidence on climate change response options is concerning and could significantly hamper the design of evidence-based pathways to reduce the effects on health of climate change. In the post-2015 Paris Agreement era of climate solutions, we believe much more attention should be given to climate adaptation and mitigation options and their effects on human health. FUNDING: Foreign, Commonwealth & Development Office.
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spelling pubmed-83589782021-08-12 Systematic mapping of global research on climate and health: a machine learning review Berrang-Ford, Lea Sietsma, Anne J Callaghan, Max Minx, Jan C Scheelbeek, Pauline F D Haddaway, Neal R Haines, Andy Dangour, Alan D Lancet Planet Health Articles BACKGROUND: The global literature on the links between climate change and human health is large, increasing exponentially, and it is no longer feasible to collate and synthesise using traditional systematic evidence mapping approaches. We aimed to use machine learning methods to systematically synthesise an evidence base on climate change and human health. METHODS: We used supervised machine learning and other natural language processing methods (topic modelling and geoparsing) to systematically identify and map the scientific literature on climate change and health published between Jan 1, 2013, and April 9, 2020. Only literature indexed in English were included. We searched Web of Science Core Collection, Scopus, and PubMed using title, abstract, and keywords only. We searched for papers including both a health component and an explicit mention of either climate change, climate variability, or climate change-relevant weather phenomena. We classified relevant publications according to the fields of climate research, climate drivers, health impact, date, and geography. We used supervised and unsupervised machine learning to identify and classify relevant articles in the field of climate and health, with outputs including evidence heat maps, geographical maps, and narrative synthesis of trends in climate health-related publications. We included empirical literature of any study design that reported on health pathways associated with climate impacts, mitigation, or adaptation. FINDINGS: We predict that there are 15 963 studies in the field of climate and health published between 2013 and 2019. Climate health literature is dominated by impact studies, with mitigation and adaptation responses and their co-benefits and co-risks remaining niche topics. Air quality and heat stress are the most frequently studied exposures, with all-cause mortality and infectious disease incidence being the most frequently studied health outcomes. Seasonality, extreme weather events, heat, and weather variability are the most frequently studied climate-related hazards. We found major gaps in evidence on climate health research for mental health, undernutrition, and maternal and child health. Geographically, the evidence base is dominated by studies from high-income countries and China, with scant evidence from low-income counties, which often suffer most from the health consequences of climate change. INTERPRETATION: Our findings show the importance and feasibility of using automated machine learning to comprehensively map the science on climate change and human health in the age of big literature. These can provide key inputs into global climate and health assessments. The scant evidence on climate change response options is concerning and could significantly hamper the design of evidence-based pathways to reduce the effects on health of climate change. In the post-2015 Paris Agreement era of climate solutions, we believe much more attention should be given to climate adaptation and mitigation options and their effects on human health. FUNDING: Foreign, Commonwealth & Development Office. Elsevier B.V 2021-07-14 /pmc/articles/PMC8358978/ /pubmed/34270917 http://dx.doi.org/10.1016/S2542-5196(21)00179-0 Text en © 2021 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Articles
Berrang-Ford, Lea
Sietsma, Anne J
Callaghan, Max
Minx, Jan C
Scheelbeek, Pauline F D
Haddaway, Neal R
Haines, Andy
Dangour, Alan D
Systematic mapping of global research on climate and health: a machine learning review
title Systematic mapping of global research on climate and health: a machine learning review
title_full Systematic mapping of global research on climate and health: a machine learning review
title_fullStr Systematic mapping of global research on climate and health: a machine learning review
title_full_unstemmed Systematic mapping of global research on climate and health: a machine learning review
title_short Systematic mapping of global research on climate and health: a machine learning review
title_sort systematic mapping of global research on climate and health: a machine learning review
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8358978/
https://www.ncbi.nlm.nih.gov/pubmed/34270917
http://dx.doi.org/10.1016/S2542-5196(21)00179-0
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