Predicting Freezing of Gait in Parkinson's Disease: A Machine-Learning-Based Approach in ON and OFF Medication States.

IF 2.9 3区 医学 Q1 MEDICINE, GENERAL & INTERNAL Journal of Clinical Medicine Pub Date : 2025-03-20 DOI:10.3390/jcm14062120
Georgios Bouchouras, Georgios Sofianidis, Konstantinos Kotis
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Abstract

Background: Freezing of gait (FoG) is a debilitating motor symptom of Parkinson's disease (PD), characterized by sudden episodes where patients struggle to initiate or sustain movement, often describing a sensation of their feet being "glued to the ground." This study investigates the potential of machine-learning (ML) models to predict FoG severity in PD patients, focusing on the influence of dopaminergic medication by comparing gait parameters in ON and OFF medication states. Methods: Specifically, this study employed spatiotemporal gait features to develop a predictive model for FoG severity, leveraging a random forest regressor to identify the most influential gait parameters associated with this in each medication state. The results indicate that the model achieved higher predictive performance in the OFF-medication condition (R² = 0.82, MAE = 2.25, MSE = 15.23) compared to the ON-medication condition (R² = 0.52, MAE = 4.16, MSE = 42.00). Results: These findings suggest that dopaminergic treatment alters gait dynamics, potentially reducing the reliability of FoG predictions when patients are medicated. Feature importance analysis revealed distinct gait characteristics associated with FoG severity across medication states. In the OFF condition, step length parameters, particularly left step length mean, were the most dominant predictors, alongside swing time and stride width, indicating the role of spatial and temporal gait control in FoG severity without medication. In contrast, under the ON medication condition, stride width and gait speed emerged as the most influential predictors, followed by stepping frequency, reflecting how medication influences stability and movement rhythm. Conclusions: These findings highlight the need for predictive models that account for medication-induced gait variability, ensuring more reliable FoG detection. By integrating spatiotemporal gait analysis and ML-based prediction, this study contributes to the development of personalized intervention strategies for PD patients experiencing FoG episodes.

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预测帕金森病的步态冻结:在开和关药物状态下基于机器学习的方法。
背景:步态冻结(FoG)是帕金森病(PD)的一种使人衰弱的运动症状,其特征是患者突然发作,难以开始或维持运动,通常描述他们的脚“粘在地上”的感觉。本研究探讨了机器学习(ML)模型预测PD患者FoG严重程度的潜力,通过比较开、关药状态下的步态参数,重点研究了多巴胺能药物的影响。方法:具体来说,本研究利用时空步态特征来建立FoG严重程度的预测模型,利用随机森林回归来确定每种药物状态下与之相关的最具影响力的步态参数。结果表明,该模型在OFF-medication条件下(R²= 0.82,MAE = 2.25, MSE = 15.23)的预测效果优于ON-medication条件下(R²= 0.52,MAE = 4.16, MSE = 42.00)。结果:这些发现表明,多巴胺能治疗改变了步态动力学,可能降低了患者用药时FoG预测的可靠性。特征重要性分析揭示了不同用药状态下与FoG严重程度相关的不同步态特征。在OFF条件下,步长参数,特别是左步长平均值,与摇摆时间和步幅宽度一起,是最主要的预测因素,表明空间和时间步态控制在无药物治疗的FoG严重程度中的作用。相比之下,在不给药的情况下,步幅宽度和步态速度是影响最大的预测因子,其次是步进频率,反映了药物对稳定性和运动节奏的影响。结论:这些发现强调了对药物引起的步态变异性的预测模型的需求,以确保更可靠的FoG检测。通过整合时空步态分析和基于ml的预测,本研究有助于PD患者FoG发作的个性化干预策略的发展。
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来源期刊
Journal of Clinical Medicine
Journal of Clinical Medicine MEDICINE, GENERAL & INTERNAL-
CiteScore
5.70
自引率
7.70%
发文量
6468
审稿时长
16.32 days
期刊介绍: Journal of Clinical Medicine (ISSN 2077-0383), is an international scientific open access journal, providing a platform for advances in health care/clinical practices, the study of direct observation of patients and general medical research. This multi-disciplinary journal is aimed at a wide audience of medical researchers and healthcare professionals. Unique features of this journal: manuscripts regarding original research and ideas will be particularly welcomed.JCM also accepts reviews, communications, and short notes. There is no limit to publication length: our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible.
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