Journal article
Profiling Somatosensory Impairment after Stroke: Characterizing Common “Fingerprints” of Impairment Using Unsupervised Machine Learning-Based Cluster Analysis of Quantitative Measures of the Upper Limb
I Senadheera, BC Larssen, YYK Mak-Yuen, S Steinfort, LM Carey, D Alahakoon
Brain Sciences | Published : 2023
Abstract
Altered somatosensory function is common among stroke survivors, yet is often poorly characterized. Methods of profiling somatosensation that illustrate the variability in impairment within and across different modalities remain limited. We aimed to characterize post-stroke somatosensation profiles (“fingerprints”) of the upper limb using an unsupervised machine learning cluster analysis to capture hidden relationships between measures of touch, proprioception, and haptic object recognition. Raw data were pooled from six studies where multiple quantitative measures of upper limb somatosensation were collected from stroke survivors (n = 207) using the Tactile Discrimination Test (TDT), Wrist ..
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Grants
Awarded by University of British Columbia
Funding Acknowledgements
We would like to thank the stroke survivors who participated in the original studies and members of the Neurorehabilitation and Recovery research team who contributed to data collection.