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Length of sick leave – Why not ask the sick-listed? Sick-listed individuals predict their length of sick leave more accurately than professionals

机译:请病假的时间长短-为什么不问病假名单?病假名单上的人比专业人士更准确地预测病假的长度

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摘要

BackgroundThe knowledge of factors accurately predicting the long lasting sick leaves is sparse, but information on medical condition is believed to be necessary to identify persons at risk. Based on the current practice, with identifying sick-listed individuals at risk of long-lasting sick leaves, the objectives of this study were to inquire the diagnostic accuracy of length of sick leaves predicted in the Norwegian National Insurance Offices, and to compare their predictions with the self-predictions of the sick-listed.
机译:背景技术准确预测长生病叶子的因素的知识很少,但是据信对病情的信息对于确定有风险的人是必要的。根据目前的做法,通过识别有长期病假风险的被列入病历的个人,本研究的目的是询问挪威国家保险局预测的病假长度的诊断准确性,并比较他们的预测与病假者的自我预测有关。

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