Title of article
Building a Model Using Bayesian Network for Assessment of Posterior Probabilities of Falling From Height at Workplaces
Author/Authors
Alizadeh، Seyed Shamseddin نويسنده Department of Occupational Health Engineering, , Tabriz University of Medical Sciences, Tabriz, Iran , , Mortazavi، Seyed Bagher نويسنده Department of Occupational and Environmental Health, School of Medical Sciences, Tarbiat Modares University, Tehran, Iran , , Sepehri، Mohammad Mehdi نويسنده , Associate Professor, Industrial Engineering Department ,
Issue Information
دوفصلنامه با شماره پیاپی 0 سال 2014
Pages
8
From page
187
To page
194
Abstract
Background: Falls from height are one of the main causes of fatal occupational
injuries. The objective of this study was to present a model for estimating occurrence
probability of falling from height.
Methods: In order to make a list of factors affecting falls, we used four expert
groupʹs judgment, literature review and an available database. Then the validity
and reliability of designed questionnaire were determined and Bayesian networks
were built. The built network, nodes and curves were quantified. For network
sensitivity analysis, four types of analysis carried out.
Results: A Bayesian network for assessment of posterior probabilities of falling
from height proposed. The presented Bayesian network model shows the interrelationships
among 37 causes affecting the falling from height and can calculate
its posterior probabilities. The most important factors affecting falling were
Non-compliance with safety instructions for work at height (0.127), Lack of
safety equipment for work at height (0.094) and Lack of safety instructions for
work at height (0.071) respectively.
Conclusion: The proposed Bayesian network used to determine how different
causes could affect the falling from height at work. The findings of this study
can be used to decide on the falling accident prevention programs.
Journal title
Health Promotion Perspectives (HPP)
Serial Year
2014
Journal title
Health Promotion Perspectives (HPP)
Record number
1984288
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