机器学习识别与偏头痛就医最相关的因素:OVERCOME(美国)研究结果。

IF 5.4 2区 医学 Q1 CLINICAL NEUROLOGY
Headache Pub Date : 2024-09-01 Epub Date: 2024-05-24 DOI:10.1111/head.14729
Sait Ashina, E Jolanda Muenzel, Robert A Nicholson, Anthony J Zagar, Dawn C Buse, Michael L Reed, Robert E Shapiro, Susan Hutchinson, Eric M Pearlman, Richard B Lipton
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引用次数: 0

摘要

目标:利用机器学习模型识别与偏头痛就医相关的因素:利用机器学习模型识别与偏头痛就医相关的因素:偏头痛是全球致残的主要原因之一,但许多偏头痛患者并不就医:基于网络的调查 "偏头痛流行病学、治疗和护理观察调查(美国)"每年招募具有人口统计学代表性的美国成年人样本(2018-2020 年)。通过有效的诊断问卷和/或自我报告的偏头痛医疗诊断确定活动性偏头痛受访者,然后询问他们在过去 12 个月中是否因头痛咨询过医疗保健专业人士(即 "寻求护理")。这包括在初级医疗机构、专科医疗机构或急诊/紧急医疗机构的亲自就诊、电话就诊和/或电子就诊。监督机器学习(随机森林)和最小绝对收缩和选择操作器(LASSO)算法确定了与偏头痛就医最相关的 13/54 个社会人口和临床因素。随机森林对预测变量和反应之间的复杂关系(包括相互作用)进行建模。LASSO 也是一种高效的特征选择算法。线性模型用于确定这些因素与就医的多变量关联:在61,826名偏头痛患者中,平均年龄为41.7岁(±14.8),31,529人/61,826人(51.0%)在过去12个月内曾因偏头痛就医。在因偏头痛就医的患者中,23106/31529(73.3%)人为女性,21320/31529(67.6%)人为白人,28030/31529(88.9%)人拥有医疗保险。在寻求治疗的患者中,52.8%(16657/31529)出现严重发作间期负担(通过偏头痛发作间期负担量表-4,MIBS-4评估),在未寻求治疗的患者中,23.1%(6991/30297)出现严重发作间期负担(通过偏头痛残疾评估量表,MIDAS评估)。7%[11,561/31,529]vs.14.6%[4434/30,297])和严重发作期皮肤异感(通过异感症状核对表ASC-12评估)(21.0%[6614/31,529]vs.7.4%[2230/30,297])。严重发作间期负担(与无发作间期负担相比,OR2.64,95% CI [2.5,2.8])、严重偏头痛相关残疾(与很少/无偏头痛相关残疾相比,OR2.2,95% CI [2.0,2.3])和严重发作期异痛症(与无发作期异痛症相比,OR1.7,95% CI [1.6,1.8])与偏头痛就医密切相关:结论:偏头痛就医与发作间期负担、残疾和异感症的增加有关。这些发现有助于采取干预措施,促进偏头痛患者寻求治疗,鼓励在就诊过程中评估这些因素,并在选择治疗方法和衡量治疗效果时优先考虑这些方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning identifies factors most associated with seeking medical care for migraine: Results of the OVERCOME (US) study.

Objective: Utilize machine learning models to identify factors associated with seeking medical care for migraine.

Background: Migraine is a leading cause of disability worldwide, yet many people with migraine do not seek medical care.

Methods: The web-based survey, ObserVational survey of the Epidemiology, tReatment and Care Of MigrainE (US), annually recruited demographically representative samples of the US adult population (2018-2020). Respondents with active migraine were identified via a validated diagnostic questionnaire and/or a self-reported medical diagnosis of migraine, and were then asked if they had consulted a healthcare professional for their headaches in the previous 12 months (i.e., "seeking care"). This included in-person/telephone/or e-visit at Primary Care, Specialty Care, or Emergency/Urgent Care locations. Supervised machine learning (Random Forest) and Least Absolute Shrinkage and Selection Operator (LASSO) algorithms identified 13/54 sociodemographic and clinical factors most associated with seeking medical care for migraine. Random Forest models complex relationships (including interactions) between predictor variables and a response. LASSO is also an efficient feature selection algorithm. Linear models were used to determine the multivariable association of those factors with seeking care.

Results: Among 61,826 persons with migraine, the mean age was 41.7 years (±14.8) and 31,529/61,826 (51.0%) sought medical care for migraine in the previous 12 months. Of those seeking care for migraine, 23,106/31,529 (73.3%) were female, 21,320/31,529 (67.6%) were White, and 28,030/31,529 (88.9%) had health insurance. Severe interictal burden (assessed via the Migraine Interictal Burden Scale-4, MIBS-4) occurred in 52.8% (16,657/31,529) of those seeking care and in 23.1% (6991/30,297) of those not seeking care; similar patterns were observed for severe migraine-related disability (assessed via the Migraine Disability Assessment Scale, MIDAS) (36.7% [11,561/31,529] vs. 14.6% [4434/30,297]) and severe ictal cutaneous allodynia (assessed via the Allodynia Symptom Checklist, ASC-12) (21.0% [6614/31,529] vs. 7.4% [2230/30,297]). Severe interictal burden (vs. none, OR 2.64, 95% CI [2.5, 2.8]); severe migraine-related disability (vs. little/none, OR 2.2, 95% CI [2.0, 2.3]); and severe ictal allodynia (vs. none, OR 1.7, 95% CI [1.6, 1.8]) were strongly associated with seeking care for migraine.

Conclusions: Seeking medical care for migraine is associated with higher interictal burden, disability, and allodynia. These findings could support interventions to promote care-seeking among people with migraine, encourage assessment of these factors during consultation, and prioritize these domains in selecting treatments and measuring their benefits.

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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.
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