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A new method based on quiet stance baseline is more effective in identifying freezing in Parkinsons disease

机译:一种基于安静姿态基线的新方法可以更有效地识别帕金森氏病的冰冻

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摘要

Freezing, an episodic movement breakdown that goes from disrupted gait patterns to complete arrest, is a disabling symptom in Parkinson’s disease. Several efforts have been made to objectively identify freezing episodes (FEs), although a standardized methodology to discriminate freezing from normal movement is lacking. Novel mathematical approaches that provide information in the temporal and frequency domains, such as the continuous wavelet transform, have demonstrated promising results detecting freezing, although still with limited effectiveness. We aimed to determine whether a computerized algorithm using the continuous wavelet transform based on baseline (i.e. no movement) rather than on amplitude decrease is more effective detecting freezing. Twenty-six individuals with Parkinson’s disease performed two trials of a repetitive stepping-in-place task while they were filmed by a video camera and tracked by a motion capture system. The number of FEs and their total duration were determined from a visual inspection of the videos and from three different computed algorithms. Differences in the number and total duration of the FEs between the video inspection and each of the three methods were obtained. The accuracy to identify the time of occurrence of a FE by each method was also calculated. A significant effect of Method was found for the number (p = 0.016) and total duration (p = 0.013) of the FEs, with the method based on baseline being the closest one to the values reported from the videos. Moreover, the same method was the most accurate in detecting the time of occurrence, and the one reaching the highest sensitivity (88.2%). Findings suggest that threshold detection methods based on baseline and movement amplitude decreases capture different characteristics of Parkinsonian gait, with the first one being more effective at detecting FEs. Moreover, robust approaches that consider both time and frequency characteristics are more sensitive in identifying freezing.
机译:冻结是一种从步态中断到完全停止的发作性运动分解,是帕金森氏病的致残症状。尽管缺乏一种将冻结与正常运动区分开的标准化方法,但已经进行了几项努力来客观地识别冻结事件(FE)。在时域和频域中提供信息的新型数学方法,例如连续小波变换,已经证明了检测冻结的有希望的结果,尽管效果仍然有限。我们旨在确定使用基于连续基线(即无运动)而不是基于幅度减小的连续小波变换的计算机算法是否更有效地检测冻结。 26名帕金森氏病患者进行了两项重复就地执行任务的试验,这些试验由摄像机拍摄并由运动捕捉系统跟踪。 FE的数量及其总持续时间是根据视频的视觉检查以及三种不同的计算算法确定的。获得了视频检查与三种方法中每种方法之间的有限元数量和总持续时间的差异。还计算了通过每种方法识别FE发生时间的准确性。发现方法对FE的数量(p = 0.016)和总持续时间(p = 0.013)有显着影响,其中基于基线的方法是最接近于视频报告值的方法。此外,相同的方法在检测发生时间方面最准确,并且灵敏度最高(88.2%)。研究结果表明,基于基线和运动幅度降低的阈值检测方法可捕获帕金森步态的不同特征,第一种方法在检测FE方面更为有效。此外,同时考虑时间和频率特征的鲁棒方法在识别冻结方面更为敏感。

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