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Patterns and predictors of sick leave after Covid-19 and long Covid in a national Swedish cohort

机译:在国家瑞典队列中的Covid-19和长Covid后病假的模式和预测因素

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The impact of Covid-19 and its long-term consequences is not yet fully understood. Sick leave can be seen as an indicator of health in a working age population, and the present study aimed to investigate sick-leave patterns after Covid-19, and potential factors predicting longer sick leave in hospitalised and non-hospitalised people with Covid-19. The present study is a comprehensive national registry-based study in Sweden with a 4-month follow-up. All people who started to receive sickness benefits for Covid-19 during March 1 to August 31, 2020, were included. Predictors of sick leave ≥1?month and long Covid (≥12?weeks) were analysed with logistic regression in the total population and in separate models depending on inpatient care due to Covid-19. A total of 11,955 people started sick leave for Covid-19 within the inclusion period. The median sick leave was 35?days, 13.3% were on sick leave for long Covid, and 9.0% remained on sick leave for the whole follow-up period. There were 2960 people who received inpatient care due to Covid-19, which was the strongest predictor of longer sick leave. Sick leave the year prior to Covid-19 and older age also predicted longer sick leave. No clear pattern of socioeconomic factors was noted. A substantial number of people are on sick leave due to Covid-19. Sick leave may be protracted, and sick leave for long Covid is quite common. The severity of Covid-19 (needing inpatient care), prior sick leave, and age all seem to predict the likelihood of longer sick leave. However, no socioeconomic factor could clearly predict longer sick leave, indicating the complexity of this condition. The group needing long sick leave after Covid-19 seems to be heterogeneous, indicating a knowledge gap.
机译:Covid-19的影响及其长期后果尚未完全理解。病假可以被视为工作年龄群体的健康指标,目前的研究旨在调查Covid-19后的病假模式,以及预测住院和非住院人员的潜在因素较长的病假与Covid-19 。本研究是瑞典全面基于国家登记处的研究,其中包括4个月的随访。包括在3月1日至2020年3月31日至8月31日开始接受Covid-19的疾病福利的所有人。病假的预测因素≥1个月和长的Covid(≥12?周)在总人口中的逻辑回归和单独的模型中分析,具体取决于住院护理,根据Covid-19。共有11,955人在包容期内开始为Covid-19生病。生病假期为35个?天,13.3%在龙Covid的病假时,9.0%的病假在整个后续期间仍然存在。由于Covid-19,有2960人接受住院护理,这是较长病假的最强烈预测因素。 Covid-19和旧年龄之前的一年病假也预测了较长的病假。没有注意到社会经济因素的明确模式。由于Covid-19,大量的人对病假进行了病假。病假可能是旷日持久的,而且长的Covid病假非常常见。 Covid-19(需要住院护理),病假和年龄的严重程度似乎都预测了较长病假的可能性。然而,没有社会经济因素可以明确预测较长的病假,表明这种情况的复杂性。 Covid-19似乎是异质的,需要长病假,表明知识差距。

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