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Modeling gradually changing seasonal variation in count data using state space models: a cohort study of hospitalization rates of stroke in atrial fibrillation patients in Denmark from 1977 to 2011

机译:使用状态空间模型对计数数据中逐渐变化的季节性变化进行建模:一项针对1977年至2011年丹麦房颤患者中风住院率的队列研究

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Background Seasonal variation in the occurrence of cardiovascular diseases has been recognized for decades. In particular, incidence rates of hospitalization with atrial fibrillation (AF) and stroke have shown to exhibit a seasonal variation. Stroke in AF patients is common and often severe. Obtaining a description of a possible seasonal variation in the occurrence of stroke in AF patients is crucial in clarifying risk factors for developing stroke and initiating prophylaxis treatment. Methods Using a dynamic generalized linear model we were able to model gradually changing seasonal variation in hospitalization rates of stroke in AF patients from 1977 to 2011. The study population consisted of all Danes registered with a diagnosis of AF comprising 270,017 subjects. During follow-up, 39,632 subjects were hospitalized with stroke. Incidence rates of stroke in AF patients were analyzed assuming the seasonal variation being a sum of two sinusoids and a local linear trend. Results The results showed that the peak-to-trough ratio decreased from 1.25 to 1.16 during the study period, and that the times of year for peak and trough changed slightly. Conclusion The present study indicates that using dynamic generalized linear models provides a flexible modeling approach for studying changes in seasonal variation of stroke in AF patients and yields plausible results.
机译:背景技术数十年来,人们已经认识到心血管疾病发生的季节性变化。特别是,心房颤动(AF)和中风的住院率已显示出季节性变化。 AF患者中风是常见的,而且往往很严重。对房颤患者中风发生的可能季节性变化的描述,对于弄清发生中风的风险因素和开始预防治疗至关重要。方法使用动态广义线性模型,我们能够对1977年至2011年房颤患者中风住院率的逐渐变化的季节性变化进行建模。研究人群包括所有经诊断患有房颤的丹麦人,包括270,017名受试者。在随访期间,39,632名受试者因中风住院。假设季节性变化为两个正弦波之和和局部线性趋势,则对房颤患者的卒中发生率进行了分析。结果结果表明,在研究期间,峰谷比从1.25降低到1.16,并且峰谷和谷底的时间变化很小。结论本研究表明,使用动态广义线性模型可为研究AF患者卒中的季节性变化提供灵活的建模方法,并得出合理的结果。

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