Flexible modeling of headache frequency fluctuations in migraine with hidden Markov models.

IF 5.4 2区 医学 Q1 CLINICAL NEUROLOGY Headache Pub Date : 2024-07-30 DOI:10.1111/head.14782
Gina M Dumkrieger, Ryotaro Ishii, Peter J Goadsby
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Abstract

Objective: To explore hidden Markov models (HMMs) as an approach for defining clinically meaningful headache-frequency-based groups in migraine.

Background: Monthly headache frequency in patients with migraine is known to vary over time. This variation has not been completely characterized and is not well accounted for in the classification of individuals as having chronic or episodic migraine, a diagnosis with potentially significant impacts on the individual. This study investigated variation in reported headache frequency in a migraine population and proposed a model for classifying individuals by frequency while accounting for natural variation.

Methods: The American Registry for Migraine Research (ARMR) was a longitudinal multisite study of United States adults with migraine. Study participants completed quarterly questionnaires and daily headache diaries. A series of HMMs were fit to monthly headache frequency data calculated from the diary data of ARMR.

Results: Changes in monthly headache frequency tended to be small, with 47% of transitions resulting in a change of 0 or 1 day. A substantial portion (24%) of months reflected daily headache with individuals ever reporting daily headache likely to consistently report daily headache. An HMM with four states with mean monthly headache frequency emissions of 3.52 (95% Prediction Interval [PI] 0-8), 10.10 (95% PI 4-17), 20.29 (95% PI 12-28), and constant 28 days/month had the best fit of the models tested. Of sequential month-to-month headache frequency transitions, 12% were across the 15-headache days chronic migraine cutoff. Under the HMM, 38.7% of those transitions involved a change in the HMM state, and the remaining 61.3% of the time, a change in chronic migraine classification was not accompanied by a change in the HMM state.

Conclusion: A divide between the second and third states of this model aligns most strongly with the current episodic/chronic distinction, although there is a meaningful overlap between the states that supports the need for flexibility. An HMM has appealing properties for classifying individuals according to their headache frequency while accounting for natural variation in frequency. This empirically derived model may provide an informative classification approach that is more stable than the use of a single cutoff value.

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利用隐马尔可夫模型对偏头痛的头痛频率波动进行灵活建模。
目的:探索隐马尔可夫模型(HMMs)作为定义偏头痛临床意义的头痛频率组的方法:探索隐马尔可夫模型(HMMs)作为一种方法,用于定义具有临床意义的偏头痛头痛频率组:背景:众所周知,偏头痛患者的每月头痛频率随时间而变化。这种变化尚未完全定性,在将患者划分为慢性或发作性偏头痛时也没有很好地考虑到这一点,而这种诊断可能会对患者产生重大影响。本研究调查了偏头痛人群中头痛报告频率的变化,并提出了一个根据频率对患者进行分类的模型,同时考虑了自然变化:美国偏头痛研究注册中心(ARMR)是一项针对美国成人偏头痛患者的多站点纵向研究。研究参与者填写了季度问卷和每日头痛日记。根据 ARMR 日记数据计算出的每月头痛频率数据拟合了一系列 HMMs:结果:每月头痛频率的变化往往较小,47%的转变导致0天或1天的变化。有很大一部分月份(24%)反映了每日头痛的情况,曾经报告过每日头痛的人可能会持续报告每日头痛。在所测试的模型中,平均每月头痛频率排放为 3.52(95% 预测区间 [PI]:0-8)、10.10(95% 预测区间 [PI]:4-17)、20.29(95% 预测区间 [PI]:12-28)和恒定每月 28 天的四种状态的 HMM 拟合效果最好。在从月到月的连续头痛频率转换中,12%跨越了15个头痛日的慢性偏头痛分界线。在HMM下,38.7%的转变涉及HMM状态的改变,其余61.3%的情况下,慢性偏头痛分类的改变并不伴随HMM状态的改变:结论:该模型的第二和第三状态之间的分界与当前的发作性/慢性区别最为吻合,尽管状态之间存在有意义的重叠,这支持了灵活性的需要。根据头痛频率对个体进行分类,同时考虑频率的自然变化,HMM 具有很强的吸引力。这种根据经验得出的模型可以提供一种比使用单一临界值更稳定的信息分类方法。
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来源期刊
Headache
Headache 医学-临床神经学
CiteScore
9.40
自引率
10.00%
发文量
172
审稿时长
3-8 weeks
期刊介绍: Headache publishes original articles on all aspects of head and face pain including communications on clinical and basic research, diagnosis and management, epidemiology, genetics, and pathophysiology of primary and secondary headaches, cranial neuralgias, and pains referred to the head and face. Monthly issues feature case reports, short communications, review articles, letters to the editor, and news items regarding AHS plus medicolegal and socioeconomic aspects of head pain. This is the official journal of the American Headache Society.
期刊最新文献
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