Pedersen Jacob, Gerds Thomas Alexander, Bjorner Jakob Bue, Christensen Karl Bang
National Research Centre for the Working Environment (NRCWE), Lersø Parkallé 105, DK-2100, Copenhagen Ø, Denmark.
BMC Public Health. 2014 May 23;14:494. doi: 10.1186/1471-2458-14-494.
Targeted interventions for the long-term sick-listed may prevent permanent exclusion from the labour force. We aimed to develop a prediction method for identifying high risk groups for continued or recurrent long-term sickness absence, unemployment, or disability among persons on long-term sick leave.
We obtained individual characteristics and follow-up data from the Danish Register of Sickness Absence Compensation Benefits and Social Transfer Payments (RSS) during 2004 to 2010 for 189,279 Danes who experienced a period of long-term sickness absence (4+ weeks). In a learning data set, statistical prediction methods were built using logistic regression and a discrete event simulation approach for a one year prediction horizon. Personalized risk profiles were obtained for five outcomes: employment, unemployment, recurrent sickness absence, continuous long-term sickness absence, and early retirement from the labour market. Predictor variables included gender, age, socio-economic position, job type, chronic disease status, history of sickness absence, and prior history of unemployment. Separate models were built for times of economic growth (2005-2007) and times of recession (2008-2010). The accuracy of the prediction models was assessed with analyses of Receiver Operating Characteristic (ROC) curves and the Brier score in an independent validation data set.
In comparison with a null model which ignored the predictor variables, logistic regression achieved only moderate prediction accuracy for the five outcome states. Results obtained with discrete event simulation were comparable with logistic regression.
Only moderate prediction accuracy could be achieved using the selected information from the Danish register RSS. Other variables need to be included in order to establish a prediction method which provides more accurate risk profiles for long-term sick-listed persons.
针对长期病休人员的定向干预措施可能会防止其被永久排除在劳动力市场之外。我们旨在开发一种预测方法,以识别长期病假人员中持续或反复出现长期病假、失业或残疾的高风险群体。
我们从丹麦病假补偿福利和社会转移支付登记册(RSS)中获取了2004年至2010年期间189,279名经历过长期病假(4周以上)的丹麦人的个人特征和随访数据。在一个学习数据集中,使用逻辑回归和离散事件模拟方法建立了针对一年预测期的统计预测模型。获得了五个结果的个性化风险概况:就业、失业、反复病假、持续长期病假以及从劳动力市场提前退休。预测变量包括性别、年龄、社会经济地位、工作类型、慢性病状况、病假史和先前的失业史。针对经济增长时期(2005 - 2007年)和衰退时期(2008 - 2010年)分别建立了模型。在一个独立的验证数据集中,通过分析受试者工作特征(ROC)曲线和布里尔评分来评估预测模型的准确性。
与忽略预测变量的空模型相比,逻辑回归对五个结果状态的预测准确性仅为中等。离散事件模拟得到的结果与逻辑回归相当。
使用丹麦登记册RSS中的选定信息只能达到中等的预测准确性。需要纳入其他变量,以建立一种能为长期病休人员提供更准确风险概况的预测方法。