| Literature DB >> 30621086 |
Miloš Gejdoš1, Mária Vlčková2, Zuzana Allmanová3, Žaneta Balážová4.
Abstract
The aim of the paper is to analyse the effect of key factors affecting the risk of workplace injuries and to identify the most common workplace accidents regarding injured body parts with respect to anthropometric data measurements of the population. Data associated with workplace accidents over the years 2000⁻2016 were drawn from the records of the state enterprise Forests of the Slovak Republic, situated in Banská Bystrica. Gathered data were processed and entered into the database complemented by the data on accidents of the self-employed working in the forestry industry. A total of 1874 workplace accidents in the state enterprise were recorded and statistically evaluated during the analysis period. A method for contingency table was used to analyse correlation between qualitative (categorical) variables in the dataset. A Poisson regression model was used to determine the injury rate. Forest harvesting is considered the most risky phase of the process of harvesting, processing, and transport. The highest number of workplace accidents (31.8% of all recorded workplace accidents) occurred during the forest harvesting phase during the analysis period. Timber skidding, with 16% of recorded accidents, was the second highest-risk phase. The workplace injury rate in the forest industry in Slovakia decreased over the course of the years 2000⁻2016. Head and facial injuries were those with the highest rate (67.1% injuries of these body parts) during the phase of harvesting and skidding.Entities:
Keywords: health and safety; injury rate; work errors forestry; work safety; workplace injuries
Mesh:
Year: 2019 PMID: 30621086 PMCID: PMC6338936 DOI: 10.3390/ijerph16010141
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Template of contingency table.
| Variable B | Classes of Variable B | Total | ||||||
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| Variable A | B1 | B2 | … | B | … | B | ||
| Classes of Variable A | A1 |
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Source: Authors’ compilation.
Figure 1Workplace injuries in Slovak forestry over the years 2000–2016.
Contingency table for the occurrence of fatal injuries (A-injuries) and serious injuries (B-injuries) in forest harvesting and timber skidding operations.
| Phase | Injuries/Abundance | A-Injuries | B-Injuries | Σ |
|---|---|---|---|---|
| Forest harvesting + timber skidding | Real injuries | 96 | 126 | 222 |
| Expected abundance | 63 | 159 | ||
| Other | Real injuries | 32 | 199 | 231 |
| Expected abundance | 65 | 166 | ||
| Σ | 128 | 325 | 453 |
Source: Authors’ compilation.
Figure 2Trend in the injury rate on 1000 m3 in the Slovak forestry sector over the years 2000–2016.
Figure 3Trend in the injury rate in the Slovak forestry sector over the years 2000–2016 after calculation with Model (8).
Simple regression results with dependence variable (injury rate in forestry).
| Simple Regression Results with Dependence Variable: C (Injury Rate) | ||||||
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| Absolute term | 327.0145 | 35.7358 | 9.1509 | 0.0000 | ||
| Year | −0.9199 | 0.1012 | −0.1617 | 0.0178 | −9.0865 | 0.0000 |
Source: Authors’ compilation.
Figure 4Injured body parts due to forestry operations in Slovak forestry over the years 2000–2016.