Predicting the outcome of occupational accidents by CART and CHAID methods at a steel factory in Iran

Background: A large number of occupational accidents happen at steel industries in Iran. The information about these accidents is recorded by safety offices. Data mining methods are one of the suitable ways for using these databases to create useful information. Classification and regression trees...

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Main Authors: Gholam Abbas Shirali, Moloud Valipour Noroozi, Amal Saki Malehi
Format: Article
Language:English
Published: PAGEPress Publications 2018-11-01
Series:Journal of Public Health Research
Subjects:
Online Access:https://www.jphres.org/index.php/jphres/article/view/1361
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spelling doaj-9f8cc87d01d541f0a9f7fb81b32feabe2020-11-25T00:40:32ZengPAGEPress PublicationsJournal of Public Health Research2279-90282279-90362018-11-017210.4081/jphr.2018.1361Predicting the outcome of occupational accidents by CART and CHAID methods at a steel factory in IranGholam Abbas Shirali0Moloud Valipour Noroozi1Amal Saki Malehi2Department of Occupational Health Engineering, Faculty of Public Health, Ahvaz Jundishapur University of Medical Sciences, AhvazDepartment of Occupational Health Engineering, Faculty of Public Health, Ahvaz Jundishapur University of Medical Sciences, AhvazDepartment of Biostatistics and Epidemiology, Faculty of Public Health, Ahvaz Jundishapur University of Medical Sciences, Ahvaz Background: A large number of occupational accidents happen at steel industries in Iran. The information about these accidents is recorded by safety offices. Data mining methods are one of the suitable ways for using these databases to create useful information. Classification and regression trees (CART) and chisquare automatic interaction detection (CHAID) are two types of a decision tree which are used in data mining for creating predictions. These predictions could show characteristics of susceptible people exposed to occupational accidents. This study was aimed to predict the outcome of occupational accidents by CART and CHAID methods at a steel factory in Iran. Design and methods: In this study, the data of 12 variables for 2127 cases of occupational injuries (including three categories of minor, severe and fatal) from 2001 to 2014 were collected. CART and CHAID algorithms in IBM SPSS Modeler version 18 were used to create decision trees and predictions. Results: Five predictions for the outcome of occupational accidents were created for each method. The most important predictor variables for CART method included age, the cause of accident and level of education respectively. For CHAID method, age, place of accident and level of education were the most important predictor variables respectively. Furthermore the accuracy of CART and CHAID methods were 81.78% and 80.73%, respectively for predictions. Conclusions: CART and CHAID methods can be used to predict the outcome of occupational accidents in the steel industry. Thus the rate of injuries can be reduced by using the predictions for employing preventive measures and training in the steel industry. https://www.jphres.org/index.php/jphres/article/view/1361Decision treesOccupational injuriesSteel
collection DOAJ
language English
format Article
sources DOAJ
author Gholam Abbas Shirali
Moloud Valipour Noroozi
Amal Saki Malehi
spellingShingle Gholam Abbas Shirali
Moloud Valipour Noroozi
Amal Saki Malehi
Predicting the outcome of occupational accidents by CART and CHAID methods at a steel factory in Iran
Journal of Public Health Research
Decision trees
Occupational injuries
Steel
author_facet Gholam Abbas Shirali
Moloud Valipour Noroozi
Amal Saki Malehi
author_sort Gholam Abbas Shirali
title Predicting the outcome of occupational accidents by CART and CHAID methods at a steel factory in Iran
title_short Predicting the outcome of occupational accidents by CART and CHAID methods at a steel factory in Iran
title_full Predicting the outcome of occupational accidents by CART and CHAID methods at a steel factory in Iran
title_fullStr Predicting the outcome of occupational accidents by CART and CHAID methods at a steel factory in Iran
title_full_unstemmed Predicting the outcome of occupational accidents by CART and CHAID methods at a steel factory in Iran
title_sort predicting the outcome of occupational accidents by cart and chaid methods at a steel factory in iran
publisher PAGEPress Publications
series Journal of Public Health Research
issn 2279-9028
2279-9036
publishDate 2018-11-01
description Background: A large number of occupational accidents happen at steel industries in Iran. The information about these accidents is recorded by safety offices. Data mining methods are one of the suitable ways for using these databases to create useful information. Classification and regression trees (CART) and chisquare automatic interaction detection (CHAID) are two types of a decision tree which are used in data mining for creating predictions. These predictions could show characteristics of susceptible people exposed to occupational accidents. This study was aimed to predict the outcome of occupational accidents by CART and CHAID methods at a steel factory in Iran. Design and methods: In this study, the data of 12 variables for 2127 cases of occupational injuries (including three categories of minor, severe and fatal) from 2001 to 2014 were collected. CART and CHAID algorithms in IBM SPSS Modeler version 18 were used to create decision trees and predictions. Results: Five predictions for the outcome of occupational accidents were created for each method. The most important predictor variables for CART method included age, the cause of accident and level of education respectively. For CHAID method, age, place of accident and level of education were the most important predictor variables respectively. Furthermore the accuracy of CART and CHAID methods were 81.78% and 80.73%, respectively for predictions. Conclusions: CART and CHAID methods can be used to predict the outcome of occupational accidents in the steel industry. Thus the rate of injuries can be reduced by using the predictions for employing preventive measures and training in the steel industry.
topic Decision trees
Occupational injuries
Steel
url https://www.jphres.org/index.php/jphres/article/view/1361
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