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Patterns of working hour characteristics and risk of sickness absence among shift-working hospital employees: a data-mining cohort study

机译:工作时间特征和疾病缺席的疾病风险模式:数据挖掘队列研究

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Data mining can complement traditional hypothesis-based approaches in characterizing unhealthy work exposures. We used it to derive a hypothesis-free characterization of working hour patterns in shift work and their associations with sickness absence (SA). Methods In this prospective cohort study, complete payroll-based work hours and SA dates were extracted from a shift-scheduling register from 2008 to 2019 on 6029 employees from a hospital district in Southwestern Finland. We applied permutation distribution clustering to time series of successive shift lengths, between-shift rest periods, and shift starting times to identify clusters of similar working hour patterns over time. We examined associations of clusters spanning on average 23 months with SA during the following 23 months. Results We identified eight distinct working hour patterns in shift work: (i) regular morning (M)/evening (E) work, weekends off; (ii) irregular M work; (iii) irregular M/E/night (N) work; (iv) regular M work, weekends off; (v) irregular, interrupted M/E/N work; (vi) variable M work, weekends off; (vii) quickly rotating M/E work, non-standard weeks; and (viii) slowly rotating M/E work, non-standard weeks. The associations of these eight working-hour clusters with risk of future SA varied. The cluster of irregular, interrupted M/E/N work was the strongest predictor of increased SA (days per year) with an incidence rate ratio of 1.77 (95% confidence interval 1.74–1.80) compared to regular M/E work, weekends off. Conclusions This data-mining suggests that hypothesis-free approaches can contribute to scientific understanding of healthy working hour characteristics and complement traditional hypothesis-driven approaches.
机译:数据挖掘可以补充基于传统的假设的方法,以表征不健康的工作暴露。我们使用它来派生工作小时模式的假设表征,以及与疾病缺席的关联(SA)。该潜在队列研究中的方法,从2008年到2019年从2008年到2019年,从2008年到2019年,从2008年到2019年,从2008年到2019年,从2008年到2019年,来自芬兰的医院2029名员工,从2008年到2019年从6029名员工提取。我们将置换分发聚类应用于连续换档长度,换档休息周期之间的时间序列和移动开始时间,以识别相似工作小时模式的集群随着时间的推移。我们在接下来的23个月内检查了平均23个月的群集跨越23个月的关联。结果我们确定了八个不同的工作时间模式,转换工作:(i)常意(m)/晚上(e)工作,周末休息; (ii)不规则的工作; (iii)不规则的M / E /夜(n)工作; (iv)常规M工作,周末休息; (v)不规则,中断M / E / N工作; (vi)变量m工作,周末休息; (vii)快速旋转M / E工作,非标周; (viii)慢慢旋转M / E工作,非标周。这八个工作小时集群的关联具有未来的风险。不规则,中断的M / E / N工作是最强的预测因子,其发病率比为1.77(95%置信区间1.74-1.80),与常规M / E工作相比,周末关闭。结论这种数据挖掘表明,无假设方法可以为对健康工作时间特征的科学了解和补充传统假设驱动的方法有助于科学了解。

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