posted on 2020-05-01, 12:54authored byZhibin Zhao, Hui FangHui Fang, Stefan Williams, Samuel Relton, Jane Alty, David Wong
— 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 smartphone 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.
History
School
Science
Department
Computer Science
Published in
2020 42nd Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC)
Pages
780 - 783
Source
42nd Annual International Conferences of the IEEE Engineering in Medicine and Biology Society