Andreas Gammelgaard Damsbo, Rolf Ankerlund Blauenfeldt, Grethe Andersen, Søren P Johnsen, Janne Kaergaard Mortensen
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Elastic net regression models were used to predict decrease from higher PASE quartile to the lowest and increase from lowest to higher.</p><p><strong>Results: </strong>A total of 523 first-time ischaemic stroke patients were included. Median (interquartile range, IQR) age was 69 years (IQR 59, 77), 181 (35%) were female and median National Institutes of Health Stroke Scale score was 3 (IQR 2, 5). Overall PASE score did not change, but 20% of patients decreased to the lowest PASE quartile whereas 48% from the lowest quartile increased to a higher. Prediction performance measured by area under the receiver operating curve was 0.679 for PA decrease and 0.619 for increase. SES factors were the most consistent predictors.</p><p><strong>Conclusions: </strong>Half of the least active patients increased PA level after stroke whereas a fifth decreased with SES being the most consistent predictor. Despite comprehensive data, the prediction models only performed modestly. 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引用次数: 0
摘要
背景和目的:体育锻炼(PA)与降低中风风险和改善功能预后有关。然而,中风后低水平的 PA 却很普遍。研究旨在确定首次缺血性中风后体力活动变化的预测因素,并建立预测模型来预测体力活动的变化:方法:采用老年人体力活动量表(PASE)对中风前和中风后 6 个月的体力活动进行量化。预测因素包括临床数据和人口统计学数据,包括社会经济地位(SES)数据。采用重复测量混合模型对 PASE 的变化进行分析。弹性净回归模型用于预测从较高 PASE 四分位数到最低 PASE 四分位数的下降和从最低 PASE 四分位数到较高 PASE 四分位数的上升:结果:共纳入 523 名首次缺血性脑卒中患者。中位数(四分位数间距,IQR)年龄为 69 岁(IQR 59 - 77),女性 181 人(35%),美国国立卫生研究院卒中量表中位数为 3 分(IQR 2 - 5)。总体 PASE 评分没有变化,但 20% 的患者 PASE 下降到最低四分位数,而 48% 的患者 PASE 从最低四分位数上升到较高四分位数。根据接收者操作曲线下面积测量的预测结果显示,PA 下降的预测结果为 0.679,PA 上升的预测结果为 0.619。SES因素是最一致的预测因素:结论:半数最不活跃的患者在中风后增加了 PA 水平,而五分之一的患者减少了 PA 水平,SES 是最一致的预测因素。尽管数据全面,但预测模型的效果一般。优化 PA 的工作应包括所有中风幸存者,以提高最不活跃患者的 PA 水平并防止 PA 水平下降。
Trajectories of physical activity after ischaemic stroke: Exploring prediction of change.
Background and purpose: Physical activity (PA) is associated with lower risk of stroke and better functional outcome. However, low levels of PA after stroke are prevalent. The aim was to identify predictors of PA change after first-time ischaemic stroke and to develop prediction models to predict change in PA.
Methods: Pre-stroke and 6 months post-stroke PA were quantified with the Physical Activity Scale for the Elderly (PASE). Considered predictors were clinical data and demographics including data on socioeconomic status (SES). PASE change was analysed using mixed models of repeated measures. Elastic net regression models were used to predict decrease from higher PASE quartile to the lowest and increase from lowest to higher.
Results: A total of 523 first-time ischaemic stroke patients were included. Median (interquartile range, IQR) age was 69 years (IQR 59, 77), 181 (35%) were female and median National Institutes of Health Stroke Scale score was 3 (IQR 2, 5). Overall PASE score did not change, but 20% of patients decreased to the lowest PASE quartile whereas 48% from the lowest quartile increased to a higher. Prediction performance measured by area under the receiver operating curve was 0.679 for PA decrease and 0.619 for increase. SES factors were the most consistent predictors.
Conclusions: Half of the least active patients increased PA level after stroke whereas a fifth decreased with SES being the most consistent predictor. Despite comprehensive data, the prediction models only performed modestly. Efforts to optimize PA should include all stroke survivors to increase PA for least active patients and to prevent PA decrease.
期刊介绍:
The European Journal of Neurology is the official journal of the European Academy of Neurology and covers all areas of clinical and basic research in neurology, including pre-clinical research of immediate translational value for new potential treatments. Emphasis is placed on major diseases of large clinical and socio-economic importance (dementia, stroke, epilepsy, headache, multiple sclerosis, movement disorders, and infectious diseases).