MDS Abstracts

Abstracts from the International Congress of Parkinson’s and Movement Disorders.

MENU 
  • Home
  • Meetings Archive
    • 2024 International Congress
    • 2023 International Congress
    • 2022 International Congress
    • MDS Virtual Congress 2021
    • MDS Virtual Congress 2020
    • 2019 International Congress
    • 2018 International Congress
    • 2017 International Congress
    • 2016 International Congress
  • Keyword Index
  • Resources
  • Advanced Search

Modifiable factors associated with Huntington’s disease progression in presymptomatic participants: explained longitudinal machine learning modelling

A. Gil-Salcedo, R. Massart, L. Cleret-de-Langavant, A. Bachoud-Levi (Paris, France)

Meeting: 2024 International Congress

Abstract Number: 1460

Keywords: Chorea (also see specific diagnoses, Huntingtons disease, etc): Clinical features

Category: Huntington's Disease

Objective: We aimed to identify, as early as the presymptomatic phase, the modifiable factors likely to influence the progression of Huntington’s disease (HD), while identifying the interactions between these factors using an explained machine learning approach.

Background: HD is a neurodegenerative disorder characterized by progressive motor, cognitive, and psychiatric symptoms. Despite the absence of a cure, improved care management has significantly extended life expectancy of patients. Thanks to the data collected by the global Enroll study, it is now possible to identify modifiable environmental and behavioral factors to slow the rate of disease progression even before symptoms appear.

Method: We included 2,636 presymptomatic individuals (comparison with family controls) drawn from the prospective observational cohort Enroll-HD, with more than 35 CAG repeats and at least two assessments of disease progression measured with the composite Huntington’s disease rating Scale (cUHDRS). The association between sociodemographic factors, health behaviors, health history, and cUHDRS trajectory was assessed with a mixed-effects random forest using partial dependence plots and the contribution to disease evolution and interactions were evaluated with Shapley additive explanation method.

Results: Participants were followed by an average of 3.4 (SD = 1.97) years. The study confirmed the negative impact of age and a high number of CAG repeats on disease progression, as well as their interaction (Fig 1). We found that a high educational level was from age 35 onwards, a body mass index (BMI) less than 23 kg/m2 before the age of 40 and greater than 23 kg/m2 thereafter (Fig 2), alcohol consumption of less than 15 units per week, current coffee consumption and no smoking were associated to slow disease progression, as did no previous exposure to antidepressants, no psychiatric history, or comorbidities, and being female (Fig 3). Other comorbidities or marital status showed no major association with HD evolution.

Conclusion: Reducing modifiable risk factors for HD is one way to support the presymptomatic population. A high level of education, low-to-moderate alcohol consumption, current coffee consumption, no smoking, and BMI control are likely to slow disease progression in this population.

SHAP values for predictions by level of relevance

SHAP values for predictions by level of relevance

cUHDRS predictions for most relevant interactions

cUHDRS predictions for most relevant interactions

cUHDRS prediction for the most relevant variables

cUHDRS prediction for the most relevant variables

To cite this abstract in AMA style:

A. Gil-Salcedo, R. Massart, L. Cleret-de-Langavant, A. Bachoud-Levi. Modifiable factors associated with Huntington’s disease progression in presymptomatic participants: explained longitudinal machine learning modelling [abstract]. Mov Disord. 2024; 39 (suppl 1). https://www.mdsabstracts.org/abstract/modifiable-factors-associated-with-huntingtons-disease-progression-in-presymptomatic-participants-explained-longitudinal-machine-learning-modelling/. Accessed June 14, 2025.
  • Tweet
  • Click to email a link to a friend (Opens in new window) Email
  • Click to print (Opens in new window) Print

« Back to 2024 International Congress

MDS Abstracts - https://www.mdsabstracts.org/abstract/modifiable-factors-associated-with-huntingtons-disease-progression-in-presymptomatic-participants-explained-longitudinal-machine-learning-modelling/

Most Viewed Abstracts

  • This Week
  • This Month
  • All Time
  • Humor processing is affected by Parkinson’s disease and levodopa
      • Help & Support
      • About Us
      • Cookies & Privacy
      • Wiley Job Network
      • Terms & Conditions
      • Advertisers & Agents
      Copyright © 2025 International Parkinson and Movement Disorder Society. All Rights Reserved.
      Wiley