Machine learning in occupational safety and health: protocol for a systematic review

Industry 4.0 has shaped the way people look at the world and interact with it, especially concerning the work environment with respect to occupational safety and health (OSH). Machine learning (ML), as a branch of Artificial Intelligence (AI), can be effectively used to create expert systems to exhi...

Full description

Bibliographic Details
Main Authors: Sara Maheronnaghsh, H. Zolfagharnasab, M. Gorgich, J. Duarte
Format: Article
Language:English
Published: Faculty of Engineering of University of Porto 2021-04-01
Series:International Journal of Occupational and Environment Safety
Subjects:
Online Access:https://ijooes.fe.up.pt/index.php/ijooes/article/view/604
id doaj-f980760d111d450899966511d3290cc7
record_format Article
spelling doaj-f980760d111d450899966511d3290cc72021-04-30T10:31:27ZengFaculty of Engineering of University of PortoInternational Journal of Occupational and Environment Safety2184-09542021-04-0151323810.24840/2184-0954_005.001_0004480Machine learning in occupational safety and health: protocol for a systematic reviewSara Maheronnaghsh0H. Zolfagharnasabhttps://orcid.org/0000-0001-8635-9169M. Gorgich1https://orcid.org/0000-0002-1454-5752J. Duarte2https://orcid.org/0000-0002-5856-5317PhD studentFaculty of Engineering, University of Porto, PTAssociated Laboratory for Energy, Transports and Aeronautics - LAETA (PROA), Faculty of Engineering, University of Porto, PT Industry 4.0 has shaped the way people look at the world and interact with it, especially concerning the work environment with respect to occupational safety and health (OSH). Machine learning (ML), as a branch of Artificial Intelligence (AI), can be effectively used to create expert systems to exhibit intelligent behavior to provide solutions to complicated problems and finally process massive data. Therefore, a study is proposed to provide the best methodological practice in the light of ML. Alongside the review of previous investigations, the following research aims to determine the ML approaches appropriate to OSH issues. In other words, highlighting specific ML methodologies, which have been employed successfully in others areas. Bearing this objective in mind, one can identify an appropriate ML technique to solve a problem in the OSH domain. Accordingly, several questions were designed to conduct the research. The Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) extension for Protocols and Systematic Reviews were used to draw the research outline. The chosen databases were SCOPUS, PubMed, Science Direct, Inspect, and Web of Science. A set of keywords related to the topic were defined, and both exclusion and inclusion criteria were determined. All of the eligible papers will be analyzed, and the extracted information will be included in an Excel form sheet. The results will be presented in a narrative-based form. Additionally, all tables summarizing the most important findings will be offered.https://ijooes.fe.up.pt/index.php/ijooes/article/view/604artificial intelligencesensorpredictionintelligent decision support systems protocolsystematic review
collection DOAJ
language English
format Article
sources DOAJ
author Sara Maheronnaghsh
H. Zolfagharnasab
M. Gorgich
J. Duarte
spellingShingle Sara Maheronnaghsh
H. Zolfagharnasab
M. Gorgich
J. Duarte
Machine learning in occupational safety and health: protocol for a systematic review
International Journal of Occupational and Environment Safety
artificial intelligence
sensor
prediction
intelligent decision support systems
protocol
systematic review
author_facet Sara Maheronnaghsh
H. Zolfagharnasab
M. Gorgich
J. Duarte
author_sort Sara Maheronnaghsh
title Machine learning in occupational safety and health: protocol for a systematic review
title_short Machine learning in occupational safety and health: protocol for a systematic review
title_full Machine learning in occupational safety and health: protocol for a systematic review
title_fullStr Machine learning in occupational safety and health: protocol for a systematic review
title_full_unstemmed Machine learning in occupational safety and health: protocol for a systematic review
title_sort machine learning in occupational safety and health: protocol for a systematic review
publisher Faculty of Engineering of University of Porto
series International Journal of Occupational and Environment Safety
issn 2184-0954
publishDate 2021-04-01
description Industry 4.0 has shaped the way people look at the world and interact with it, especially concerning the work environment with respect to occupational safety and health (OSH). Machine learning (ML), as a branch of Artificial Intelligence (AI), can be effectively used to create expert systems to exhibit intelligent behavior to provide solutions to complicated problems and finally process massive data. Therefore, a study is proposed to provide the best methodological practice in the light of ML. Alongside the review of previous investigations, the following research aims to determine the ML approaches appropriate to OSH issues. In other words, highlighting specific ML methodologies, which have been employed successfully in others areas. Bearing this objective in mind, one can identify an appropriate ML technique to solve a problem in the OSH domain. Accordingly, several questions were designed to conduct the research. The Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) extension for Protocols and Systematic Reviews were used to draw the research outline. The chosen databases were SCOPUS, PubMed, Science Direct, Inspect, and Web of Science. A set of keywords related to the topic were defined, and both exclusion and inclusion criteria were determined. All of the eligible papers will be analyzed, and the extracted information will be included in an Excel form sheet. The results will be presented in a narrative-based form. Additionally, all tables summarizing the most important findings will be offered.
topic artificial intelligence
sensor
prediction
intelligent decision support systems
protocol
systematic review
url https://ijooes.fe.up.pt/index.php/ijooes/article/view/604
work_keys_str_mv AT saramaheronnaghsh machinelearninginoccupationalsafetyandhealthprotocolforasystematicreview
AT hzolfagharnasab machinelearninginoccupationalsafetyandhealthprotocolforasystematicreview
AT mgorgich machinelearninginoccupationalsafetyandhealthprotocolforasystematicreview
AT jduarte machinelearninginoccupationalsafetyandhealthprotocolforasystematicreview
_version_ 1721498072255561728