Frontiers in Computer Science (Jul 2020)

Innovative Parkinson's Disease Patients' Motor Skills Assessment: The i-PROGNOSIS Paradigm

  • Sofia Balula Dias,
  • Athina Grammatikopoulou,
  • José Alves Diniz,
  • Kosmas Dimitropoulos,
  • Nikos Grammalidis,
  • Vicky Zilidou,
  • Theodore Savvidis,
  • Evdokimos Konstantinidis,
  • Panagiotis D. Bamidis,
  • Hagen Jaeger,
  • Michael Stadtschnitzer,
  • Hugo Silva,
  • Gonçalo Telo,
  • Ioannis Ioakeimidis,
  • George Ntakakis,
  • Fotis Karayiannis,
  • Estelle Huchet,
  • Vera Hoermann,
  • Konstantinos Filis,
  • Elina Theodoropoulou,
  • George Lyberopoulos,
  • Konstantinos Kyritsis,
  • Alexandros Papadopoulos,
  • Anastasios Delopoulos,
  • Dhaval Trivedi,
  • K. Ray Chaudhuri,
  • Lisa Klingelhoefer,
  • Heinz Reichmann,
  • Sevasti Bostantzopoulou,
  • Zoe Katsarou,
  • Dimitrios Iakovakis,
  • Stelios Hadjidimitriou,
  • Vasileios Charisis,
  • George Apostolidis,
  • Leontios J. Hadjileontiadis,
  • Leontios J. Hadjileontiadis

DOI
https://doi.org/10.3389/fcomp.2020.00020
Journal volume & issue
Vol. 2

Abstract

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Being the second most common neurodegenerative disease, Parkinson's disease (PD) can be symptomatically treated, although, unfortunately, it cannot be cured yet. Moreover, diagnosing and assessing PD patients is a complex process, requiring continuous monitoring. In this vein, the design, development, and validation of innovative assessment tools may be helpful in the management of patients with PD, in particular. Based on intelligent ICT interventions, the i-PROGNOSIS project intends to mitigate PD's specific symptoms, such as neurological movement disorders of gait, balance, coordination, and posture, already characterized in the early phase of the disease. From this perspective, an innovative iPrognosis motor assessment tool is presented here, taking into consideration the Unified Parkinson Disease Rating Scale (UPDRS) Part III motor skills testing items, for evaluating the motor skills status. The efficiency of the proposed Assessment Tests to reflect the motor skills status, similarly to the UPDRS Part III items, was validated via 27 participants (18 males; mean age = 62 years, SD = 10.36 years; range, 43–79 years) with early (n = 10) and moderate (n = 17) PD who performed the Assessment Tests. Features from the latter were then correlated with the corresponding clinically assessed UPDRS Part III items, and statistically significant negative correlations (range, −0.364 to −0.802) were identified between the median values of the Assessment Tests and the UPDRS Part III items. In this vein, the iPrognosis Assessment Tests were integrated within the personalized interventions of the i-PROGNOSIS project, providing alternative means of assessing their effect on the PD patient's motor skills enhancement. The promising results presented here elaborate on the concept of using ICT-based assessment means to achieve comparable outcomes with the clinical standards in motor skills assessment.

Keywords