Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/115849
Title: Predictors of migraine prevalence among different age groups in Hong Kong Chinese women : machine learning analyses on the MECH-HK cohort
Authors: Wu, Y 
Qin, H 
Wang, S 
Yang, Q 
Zhang, Y 
Wang, HH
Xie, YJ 
Issue Date: Oct-2025
Source: Annals of epidemiology, Oct. 2025, v. 110, p. 34-42
Abstract: Purpose: To identify age-specific predictors of migraine prevalence among Chinese women. Methods: In this cross-sectional analysis, 54 predictors were collected from the MECH-HK cohort. Migraine was assessed by the ICHD 3rd edition. Machine learning was employed to select a streamlined subset of predictors. Participants were categorised as young and middle age group (<60 years) and old age group (≥60 years) for analysis. Results: The mean age of participants was 54.3 years. Migraine prevalence was higher in women under 60 than in older women (10.7 % vs. 6.0 %, P < 0.001). Lasso selected seven (<60 years) and twelve (≥60 years) predictors, respectively. The top three predictors among women under 60 were fatigue, migraine family history, and PSQI, explaining 6.6 %, 5.0 %, and 4.9 % of variation, respectively. Their ORs (95 % CIs) were 1.61 (1.37–1.89), 3.93 (2.77–5.57), and 1.29 (1.12–1.48), respectively. For older women, the top three predictors were experience of hunger, smartphone usage time, and migraine family history, explaining 2.0 %, 1.8 %, and 1.6 % of variation, respectively, with ORs (95 % CIs) of 2.16 (1.21–3.84), 1.24 (1.03–1.48), and 2.26 (1.16–4.40), respectively. Conclusion: Migraine family history and experience of hunger were shared predictors for migraine prevalence in both ages. Other predictors differentially influence migraine prevalence across ages.
Keywords: Age differences
Cross-sectional study
Epidemiology
Machine learning
Migraine
Predictive modelling
Predictors
Women's health
Publisher: Elsevier Inc.
Journal: Annals of epidemiology 
ISSN: 1047-2797
EISSN: 1873-2585
DOI: 10.1016/j.annepidem.2025.07.017
Appears in Collections:Journal/Magazine Article

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