Zhao Zhibin, Fang Hui, Williams Stefan, Relton Samuel D, Alty Jane, Casson Alex J, Wong David C
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:780-783. doi: 10.1109/EMBC44109.2020.9175638.
Parkinson's disease is diagnosed based on expert clinical observation of movements. One important clinical feature is decrement, whereby the range of finger motion decreases over the course of the observation. This decrement has been assumed to be linear but has not been examined closely.We previously developed a method to extract a time series representation of a finger-tapping clinical test from 137 smart- phone video recordings. Here, we show how the signal can be processed to visualize archetypal progression of decrement. We use k-means with features derived from dynamic time warping to compare similarity of time series. To generate the archetypal time series corresponding to each cluster, we apply both a simple arithmetic mean, and dynamic time warping barycenter averaging to the time series belonging to each cluster.Visual inspection of the cluster-average time series showed two main trends. These corresponded well with participants with no bradykinesia and participants with severe bradykinesia. The visualizations support the concept that decrement tends to present as a linear decrease in range of motion over time.Clinical relevance- Our work visually presents the archetypal types of bradykinesia amplitude decrement, as seen in the Parkinson's finger-tapping test. We found two main patterns, one corresponding to no bradykinesia, and the other showing linear decrement over time.
帕金森病是基于对运动的专家临床观察来诊断的。一个重要的临床特征是递减,即手指运动范围在观察过程中会减小。这种递减一直被认为是线性的,但尚未得到仔细研究。我们之前开发了一种方法,可从137个智能手机视频记录中提取手指敲击临床测试的时间序列表示。在此,我们展示了如何处理该信号以可视化递减的典型进展。我们使用基于动态时间规整导出的特征的k均值算法来比较时间序列的相似性。为了生成与每个聚类相对应的典型时间序列,我们对属于每个聚类的时间序列应用简单算术平均值和动态时间规整重心平均法。对聚类平均时间序列的目视检查显示出两种主要趋势。这些趋势与无运动迟缓的参与者和严重运动迟缓的参与者非常吻合。这些可视化结果支持了这样一种概念,即递减倾向于表现为随着时间推移运动范围呈线性下降。临床相关性——我们的工作直观地呈现了帕金森病手指敲击测试中运动迟缓幅度递减的典型类型。我们发现了两种主要模式,一种对应无运动迟缓,另一种显示随时间呈线性递减。