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首页> 外文期刊>Scientific reports. >Selecting Clinically Relevant Gait Characteristics for Classification of Early Parkinson’s Disease: A Comprehensive Machine Learning Approach
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Selecting Clinically Relevant Gait Characteristics for Classification of Early Parkinson’s Disease: A Comprehensive Machine Learning Approach

机译:选择早期帕金森病分类的临床相关步态特征:全面的机器学习方法

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Parkinson's disease (PD) is the second most common neurodegenerative disease; gait impairments are typical and are associated with increased fall risk and poor quality of life. Gait is potentially a useful biomarker to help discriminate PD at an early stage, however the optimal characteristics and combination are unclear. In this study, we used machine learning (ML) techniques to determine the optimal combination of gait characteristics to discriminate people with PD and healthy controls (HC). 303 participants (119 PD, 184 HC) walked continuously around a circuit for 2-minutes at a self-paced walk. Gait was quantified using an instrumented mat (GAITRite) from which 16 gait characteristics were derived and assessed. Gait characteristics were selected using different?ML approaches to determine the optimal method (random forest with information gain and recursive features elimination (RFE) technique with support vector machine (SVM) and logistic regression). Five clinical gait characteristics were identified with RFE-SVM (mean step velocity, mean step length, step length variability, mean step width, and step width variability) that accurately classified PD. Model accuracy for classification of early PD ranged between 73-97% with 63-100% sensitivity and 79-94% specificity. In conclusion, we identified a subset of gait characteristics for accurate early classification of PD. These findings pave the way for a better understanding of the utility of ML techniques to support informed clinical decision-making.
机译:帕金森病(PD)是第二种最常见的神经退行性疾病;步态障碍是典型的,与跌倒风险增加和生活质量差有关。步态可能是有用的生物标志物,以帮助在早期阶段鉴别PD,但是最佳特性和组合尚不清楚。在这项研究中,我们使用了机器学习(ML)技术来确定步态特征的最佳组合,以区分PD和健康对照(HC)。 303参与者(119 PD,184 HC)在自定步步行时连续绕过电路2分钟。使用仪表垫(Gaitrite)来定量步态,从中衍生和评估16个步态特征。使用不同的ΔMl方法选择步态特征来确定最佳方法(随机林,具有信息增益和递归特征的消除(RFE)技术,带有支持向量机(SVM)和逻辑回归)。用RFE-SVM(平均阶跃速度,平均步长,平均步长,平均步长和步长可变性,平均步长和阶梯宽度变化)鉴定了五种临床步态特性。早期PD分类的模型精度范围为73-97%,灵敏度为63-100%,特异性79-94%。总之,我们确定了用于PD的准确早期分类的步态特征的子集。这些发现可以更好地了解ML技术的效用,以便能够支持知情的临床决策。

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