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左旋多巴和脑深部电刺激治疗下帕金森病患者个体间差异的特征可视化与分类

Feature visualization and classification for the discrimination between individuals with Parkinson's disease under levodopa and DBS treatments.

作者信息

Machado Alessandro R P, Zaidan Hudson Capanema, Paixão Ana Paula Souza, Cavalheiro Guilherme Lopes, Oliveira Fábio Henrique Monteiro, Júnior João Areis Ferreira Barbosa, Naves Kheline, Pereira Adriano Alves, Pereira Janser Moura, Pouratian Nader, Zhuo Xiaoyi, O'Keeffe Andrew, Sharim Justin, Bordelon Yvette, Yang Laurice, Vieira Marcus Fraga, Andrade Adriano O

机构信息

Postgraduate Program in Electrical and Biomedical Engineering, Faculty of Electrical Engineering, Centre for Innovation and Technology Assessment in Health (NIATS), Federal University of Uberlândia, Uberlândia, Brazil.

Faculty of Mathematics, Federal University of Uberlândia, Uberlândia, Brazil.

出版信息

Biomed Eng Online. 2016 Dec 30;15(1):169. doi: 10.1186/s12938-016-0290-y.

Abstract

BACKGROUND

Over the years, a number of distinct treatments have been adopted for the management of the motor symptoms of Parkinson's disease (PD), including pharmacologic therapies and deep brain stimulation (DBS). Efficacy is most often evaluated by subjective assessments, which are prone to error and dependent on the experience of the examiner. Our goal was to identify an objective means of assessing response to therapy.

METHODS

In this study, we employed objective analyses in order to visualize and identify differences between three groups: healthy control (N = 10), subjects with PD treated with DBS (N = 12), and subjects with PD treated with levodopa (N = 16). Subjects were assessed during execution of three dynamic tasks (finger taps, finger to nose, supination and pronation) and a static task (extended arm with no active movement). Measurements were acquired with two pairs of inertial and electromyographic sensors. Feature extraction was applied to estimate the relevant information from the data after which the high-dimensional feature space was reduced to a two-dimensional space using the nonlinear Sammon's map. Non-parametric analysis of variance was employed for the verification of relevant statistical differences among the groups (p < 0.05). In addition, K-fold cross-validation for discriminant analysis based on Gaussian Finite Mixture Modeling was employed for data classification.

RESULTS

The results showed visual and statistical differences for all groups and conditions (i.e., static and dynamic tasks). The employed methods were successful for the discrimination of the groups. Classification accuracy was 81 ± 6% (mean ± standard deviation) and 71 ± 8%, for training and test groups respectively.

CONCLUSIONS

This research showed the discrimination between healthy and diseased groups conditions. The methods were also able to discriminate individuals with PD treated with DBS and levodopa. These methods enable objective characterization and visualization of features extracted from inertial and electromyographic sensors for different groups.

摘要

背景

多年来,帕金森病(PD)运动症状的管理采用了多种不同的治疗方法,包括药物治疗和深部脑刺激(DBS)。疗效最常通过主观评估来评价,主观评估容易出错且依赖于检查者的经验。我们的目标是确定一种评估治疗反应的客观方法。

方法

在本研究中,我们采用客观分析方法,以可视化并识别三组之间的差异:健康对照组(N = 10)、接受DBS治疗的PD患者(N = 12)和接受左旋多巴治疗的PD患者(N = 16)。在执行三项动态任务(手指敲击、指鼻试验、旋前和旋后)和一项静态任务(伸展手臂且无主动运动)期间对受试者进行评估。使用两对惯性和肌电图传感器进行测量。应用特征提取从数据中估计相关信息,之后使用非线性 Sammon 映射将高维特征空间降至二维空间。采用非参数方差分析来验证各组之间的相关统计学差异(p < 0.05)。此外,基于高斯有限混合模型的判别分析的 K 折交叉验证用于数据分类。

结果

结果显示所有组和所有条件(即静态和动态任务)均存在视觉和统计学差异。所采用的方法成功地对各组进行了区分。训练组和测试组的分类准确率分别为81±6%(平均值±标准差)和71±8%。

结论

本研究表明了健康组与患病组情况之间的差异。这些方法还能够区分接受DBS和左旋多巴治疗的PD患者。这些方法能够对从不同组的惯性和肌电图传感器提取的特征进行客观表征和可视化。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8a03/5203727/bc3b3acaa668/12938_2016_290_Fig1_HTML.jpg

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