The National Centre for Occupational Rehabilitation, Haddlandsvegen 20, 3864, Rauland, Norway,
J Occup Rehabil. 2014 Jun;24(2):199-212. doi: 10.1007/s10926-013-9466-5.
The aim of this study was to examine if age, gender, medical diagnosis, occupation, and previous sick leave predicted different probabilities for being at work and for registered sickness benefits, and differences in the transitions between any of these states, for individuals that had participated in an interdisciplinary work-related rehabilitation program.
584 individuals on long-term sickness benefits (mean 9.3 months, SD = 3.4) were followed with official register data over a 4-year period after a rehabilitation program. 66 % were female, and mean age was 44 years (SD = 9.3). The majority had a mental (47 %) or a musculoskeletal (46 %) diagnosis. 7 % had other diagnoses. Proportional hazards regression models were used to analyze prognostic factors for the probability of being on, and the intensity of transitions between, any of the following seven states during follow-up; working, partial sick leave, full sick leave, medical rehabilitation, vocational rehabilitation, partial disability pension (DP), and full DP.
In a fully adjusted model; women, those with diagnoses other than mental and musculoskeletal, blue-collar workers, and those with previous long-term sick leave, had a lower probability for being at work and a higher probability for full DP during follow-up. DP was also associated with high age. Mental diagnoses gave higher probability for being on full sick leave, but not for transitions to full sick leave. Regression models based on transition intensities showed that risk factors for entering a given state (work or receiving sickness benefits) were slightly different from risk factors for leaving the same state.
The probabilities for working and for receiving sickness benefits and DP were dependent on gender, diagnoses, type of work and previous history of sick leave, as expected. The use of novel statistical methods to analyze factors predicting transition intensities have improved our understanding of how the processes to and from work, and to and from sickness benefits may differ between groups. Further research is required to understand more about differences in prognosis for return to work after intensive work-related rehabilitation efforts.
本研究旨在探讨在参加跨学科工作相关康复计划后,年龄、性别、医疗诊断、职业和既往病假是否能预测工作状态和注册病假津贴的不同概率,以及这些状态之间的转移差异。
584 名长期病假患者(平均 9.3 个月,SD=3.4)在康复计划后 4 年内通过官方登记数据进行随访。其中 66%为女性,平均年龄为 44 岁(SD=9.3)。大多数人患有精神(47%)或肌肉骨骼(46%)疾病。7%的人有其他诊断。使用比例风险回归模型分析预后因素,以预测在随访期间处于以下七种状态中的任何一种的概率,以及在这些状态之间转移的强度:工作、部分病假、全病假、医疗康复、职业康复、部分残疾抚恤金(DP)和全 DP。
在完全调整的模型中,女性、非精神和肌肉骨骼疾病患者、蓝领工人和有既往长期病假的人在随访期间工作的可能性较低,而全 DP 的可能性较高。DP 也与高龄有关。精神疾病诊断使全病假的可能性增加,但不会增加全病假的转移。基于转移强度的回归模型表明,进入特定状态(工作或接受病假津贴)的风险因素与离开同一状态的风险因素略有不同。
正如预期的那样,工作和接受病假津贴和 DP 的概率取决于性别、诊断、工作类型和既往病假史。使用新颖的统计方法分析预测转移强度的因素,提高了我们对工作和病假津贴之间的转移过程在不同群体之间可能存在差异的理解。需要进一步研究以了解更多关于在进行强化工作相关康复努力后重返工作的预后差异。