Abstract
Background: Current telemedicine approaches lack standardised procedures for the remote assessment of axial impairment in Parkinson’s disease (PD). Unobtrusive wearable sensors may be a feasible tool to provide clinicians with practical medical indices reflecting axial dysfunction in PD. This study aims to predict the postural instability/gait difficulty (PIGD) score in PD patients by monitoring gait through a single inertial measurement unit (IMU) and machine-learning algorithms. Methods: Thirty-one PD patients underwent a 7-m timed-up-and-go test while monitored through an IMU placed on the thigh, both under (ON) and not under (OFF) dopaminergic therapy. After pre-processing procedures and feature selection, a support vector regression model was implemented to predict PIGD scores and to investigate the impact of L-Dopa and freezing of gait (FOG) on regression models. Results: Specific time- and frequency-domain features correlated with PIGD scores. After optimizing the dimensionality reduction methods and the model parameters, regression algorithms demonstrated different performance in the PIGD prediction in patients OFF and ON therapy (r = 0.79 and 0.75 and RMSE = 0.19 and 0.20, respectively). Similarly, regression models showed different performances in the PIGD prediction, in patients with FOG, ON and OFF therapy (r = 0.71 and RMSE = 0.27; r = 0.83 and RMSE = 0.22, respectively) and in those without FOG, ON and OFF therapy (r = 0.85 and RMSE = 0.19; r = 0.79 and RMSE = 0.21, respectively). Conclusions: Optimized support vector regression models have high feasibility in predicting PIGD scores in PD. L-Dopa and FOG affect regression model performances. Overall, a single inertial sensor may help to remotely assess axial motor impairment in PD patients.
Highlights
The clinical assessment of axial impairment in Parkinson’s disease (PD) implies the measurement of the postural stability/gait difficulty (PIGD)
Pearson correlation analysis showed that most time- and frequency-domain features significantly correlated with postural instability/gait difficulty (PIGD) scores
Concerning the effect of freezing of gait (FOG), if the model is trained on FOG+ and FOG− separately, the performance significantly improves in patients without FOG while ON state of therapy and in patients with FOG while OFF therapy
Summary
Parkinson’s disease (PD) is a neurodegenerative disorder clinically characterized by bradykinesia, tremor, and rigidity [1]. Besides these cardinal signs, axial impairment, including gait and postural disorders, is among the most disabling symptoms responsible for progressive motor impairment and frequent falls in PD [2,3]. The clinical assessment of axial impairment in PD implies the measurement of the postural stability/gait difficulty (PIGD). Current telemedicine approaches lack standardised procedures for the remote assessment of axial impairment in Parkinson’s disease (PD). This study aims to predict the postural instability/gait difficulty (PIGD) score in PD patients by monitoring gait through a single inertial measurement unit (IMU) and machine-learning algorithms
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