Frontiers in Neurology (Nov 2017)

Correlations between Motor Symptoms across Different Motor Tasks, Quantified via Random Forest Feature Classification in Parkinson’s Disease

  • Andreas Kuhner,
  • Andreas Kuhner,
  • Tobias Schubert,
  • Tobias Schubert,
  • Massimo Cenciarini,
  • Massimo Cenciarini,
  • Massimo Cenciarini,
  • Isabella Katharina Wiesmeier,
  • Isabella Katharina Wiesmeier,
  • Isabella Katharina Wiesmeier,
  • Volker Arnd Coenen,
  • Volker Arnd Coenen,
  • Volker Arnd Coenen,
  • Wolfram Burgard,
  • Wolfram Burgard,
  • Cornelius Weiller,
  • Cornelius Weiller,
  • Cornelius Weiller,
  • Christoph Maurer,
  • Christoph Maurer,
  • Christoph Maurer

DOI
https://doi.org/10.3389/fneur.2017.00607
Journal volume & issue
Vol. 8

Abstract

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BackgroundObjective assessments of Parkinson’s disease (PD) patients’ motor state using motion capture techniques are still rarely used in clinical practice, even though they may improve clinical management. One major obstacle relates to the large dimensionality of motor abnormalities in PD. We aimed to extract global motor performance measures covering different everyday motor tasks, as a function of a clinical intervention, i.e., deep brain stimulation (DBS) of the subthalamic nucleus.MethodsWe followed a data-driven, machine-learning approach and propose performance measures that employ Random Forests with probability distributions. We applied this method to 14 PD patients with DBS switched-off or -on, and 26 healthy control subjects performing the Timed Up and Go Test (TUG), the Functional Reach Test (FRT), a hand coordination task, walking 10-m straight, and a 90° curve.ResultsFor each motor task, a Random Forest identified a specific set of metrics that optimally separated PD off DBS from healthy subjects. We noted the highest accuracy (94.6%) for standing up. This corresponded to a sensitivity of 91.5% to detect a PD patient off DBS, and a specificity of 97.2% representing the rate of correctly identified healthy subjects. We then calculated performance measures based on these sets of metrics and applied those results to characterize symptom severity in different motor tasks. Task-specific symptom severity measures correlated significantly with each other and with the Unified Parkinson’s Disease Rating Scale (UPDRS, part III, correlation of r2 = 0.79). Agreement rates between different measures ranged from 79.8 to 89.3%.ConclusionThe close correlation of PD patients’ various motor abnormalities quantified by different, task-specific severity measures suggests that these abnormalities are only facets of the underlying one-dimensional severity of motor deficits. The identification and characterization of this underlying motor deficit may help to optimize therapeutic interventions, e.g., to “automatically” adapt DBS settings in PD patients.

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