Efficacy of End-Effector Robot-Assisted Gait Training in Subacute Stroke Patients

Overview

To date, no studies seems to compare conventional gait rehabilitation program with end-effector RAGT in subacute stroke patients by analysing the variations of gait kinematics beyond clinical multi prospective outcomes. The aim of this pilot study is to evaluate the efficacy of end-effector RAGT in subacute stroke patients in terms of clinical outcomes and gait kinematics, comparing them with conventional gait rehabilitation program.

Full Title of Study: “Efficacy of End-Effector Robot-Assisted Gait Training in Subacute Stroke Patients: Clinical and Gait Outcomes”

Study Type

  • Study Type: Interventional
  • Study Design
    • Allocation: Non-Randomized
    • Intervention Model: Parallel Assignment
    • Primary Purpose: Treatment
    • Masking: Single (Outcomes Assessor)
  • Study Primary Completion Date: December 31, 2017

Detailed Description

To evaluate the efficacy of end-effector RAGT in subacute stroke patients in terms of clinical outcomes and gait kinematics, comparing them with conventional gait rehabilitation program, patients following first ever stroke in sub-acute phase will be recruited and assessed both clinically and instrumentally (Gait Analysis) at baseline (T0) and at the end of training program (T1). The patients will be divided into 2 groups and will conduct two different types of gait training: one group will be recruited by IRCCS San Raffaele Pisana of Rome and will perform, in addition to conventional therapy, gait training using an end-effector robotic device for RAGT(Robotic Group, RG); and another group will be recruited by the Don Carlo Gnocchi Foundation Onlus of Rome, and will perform conventional gait rehabilitation program(Conventional Group, CG).

Interventions

  • Device: Robot-Assisted Gait Training (RAGT)
    • The Robotic Group (RG) performs a Robot-Assisted Gait Training (RAGT) using an end-effector robotic device (G-EO system-Reha Technology-Olten, Switzerland).

Arms, Groups and Cohorts

  • Experimental: Robotic Group (RG)
    • Robotic Group (RG) will perform, in addition to conventional therapy, gait training using an end-effector robotic device for Robot-Assisted Gait Training (RAGT), 3 times/week for 20 sessions. During the training, patients will be asked to walk, at a varying speed, for 45 minutes and a partial Body Weight Support (BWS). Participants will start with 30-40% of BWS and an initial speed of 1.5 km/h; increasing to a maximum of between 2.2 and 2.5 km/h and reducing the initial BWS to 15%. The therapist will provide any help during sessions if required. Over 45 minutes, the patient simulates a minimum of 300 steps; patients could rest during the session, though they will be asked to walk continuously for a minimum of 5 minutes during each session.
  • No Intervention: Conventional Group (CG)
    • Conventional Group (CG) will perform conventional gait rehabilitation program. The treatment will include: muscle strengthening exercises and stretching of the lower limb, and static and dynamic exercises for the recovery of balance in the supine and standing positions using assistive devices; training gait exercises with parallel bars or in open spaces performed both with and without assistive devices; training to climb up and down stairs; exercises to improve proprioception in the supine, sitting and standing positions, using a proprioceptive footboard; exercises to improve trunk control.

Clinical Trial Outcome Measures

Primary Measures

  • Change in Six-Minute Walking Test (6MWT)
    • Time Frame: Session 1 (baseline), and Session 20 (week 7)
    • The 6MWT measures the distance a subject covers during an indoor gait on a flat, hard surface in 6 minutes, using assistive devices, as necessary. The test is a reliable and valid evaluation of functional exercise capacity and is used as a sub-maximal test of aerobic capacity and endurance. The minimal detectable change in distance for people with sub-acute stroke is 60.98 meters. The 6MWT is a patient self-paced walk test and assesses the level of functional capacity. Patients are allowed to stop and rest during the test. However, the timer does not stop. If the patient is unable to complete the test, the time is stopped at that moment. The missing time and the reason of the stop are recorded. This test will be administered while wearing a pulse oximeter to monitor heart rate and oxygen saturation, also integrated with Borg scale to assess dyspnea.

Secondary Measures

  • Change in Fugl-Meyer Assessment (FMA) scale
    • Time Frame: Session 1 (baseline), and Session 20 (week 7)
    • The Fugl-Meyer Assessment (FMA) is a stroke-specific, performance-based impairment index. It is designed to assess motor functioning, balance, sensation and joint functioning in patients with post-stroke hemiplegia. It is applied clinically and in research to determine disease severity, describe motor recovery, and to plan and assess treatment. The scale is comprised of five domains and there are 155 items in total: Motor functioning (the score ranges from 0 (hemiplegia) to 100 points (normal motor performance). Divided into 66 points for upper extremity and 34 points for the lower extremity. Sensory functioning (from 0 to 24 points) Balance (from 0 to 14) Joint range of motion (from 0 to 44) Joint pain (from 0 to 44 ) Scale items are scored on the basis of ability to complete the item using a 3-point ordinal scale where 0=cannot perform, 1=performs partially and 2=performs fully. The total possible scale score is 226.
  • Change in Motricity Index (MI)
    • Time Frame: Session 1 (baseline), and Session 20 (week 7)
    • The MI aims to evaluate lower limb motor impairment after stroke, administrated on both sides. Items to assess the lower limbs are 3, scoring from 0 to 33 each: (1) ankle dorsiflexion with foot in a plantar flexed position (2) knee extension with the foot unsupported and the knee at 90° (3) hip flexion with the hip at 90° moving the knee as close as possible to the chin. (no movement: 0, palpable flicker but no movement: 9, movement but not against gravity :14, movement against gravity movement against gravity: 19, movement against resistance: 25, normal:33)
  • Change in Modified Ashworth Scale (MAS)
    • Time Frame: Session 1 (baseline), and Session 20 (week 7)
    • The MAS is a 6 point ordinal scale used for grading hypertonia in individuals with neurological diagnoses. A score of 0 on the scale indicates no increase in tone while a score of 4 indicates rigidity. Tone is scored by passively moving the individual’s limb and assessing the amount of resistance to movement felt by the examiner.
  • Change in Tinetti Scale Balance (TIN-B)
    • Time Frame: Session 1 (baseline), and Session 20 (week 7)
    • Scales to measure activity ICF domain.
  • Change in Tinetti Walking (TIN-W)
    • Time Frame: Session 1 (baseline), and Session 20 (week 7)
    • Scales to measure activity ICF domain.
  • Change in Functional Ambulation Classification (FAC)
    • Time Frame: Session 1 (baseline), and Session 20 (week 7)
    • Functional Ambulation Classification is a functional walking test that evaluates ambulation ability. This 6-point scale assesses ambulation status by determining how much human support the patient requires when walking, regardless of whether or not they use a personal assistive device.
  • Change in Trunk Control Test (TCT)
    • Time Frame: Session 1 (baseline), and Session 20 (week 7)
    • The TCT assesses the motor impairment in stroke patients and it’s correlated with eventual walking ability. Testing is done with the patient lying on a bed: (1) roll to weak side. (2) roll to strong side. (3) balance in sitting position on the edge of the bed with the feet off the ground for at least 30. (4) sit up from lying down. Total score: 0-100
  • Change in 10 Meter Walk Test (10MWT)
    • Time Frame: Session 1 (baseline), and Session 20 (week 7)
    • This test will assess the patient’s speed during gait. Patients will be asked to walk at their preferred maximum and safe speed. Patients will be positioned 1 meter before the start line and instructed to walk 10 meters, and pass the end line approximately 1 meter after. The distance before and after the course are meant to minimize the effect of acceleration and deceleration. Time will be measured using a stopwatch and recorded to the one hundredth of a second (ex: 2.15 s). The test will be recorded 3 times, with adequate rests between them. The average of the 3 times should be recorded.
  • Change in Time Up And Go (TUG)
    • Time Frame: Session 1 (baseline), and Session 20 (week 7)
    • The Time Up And Go is a test used to assess mobility, balance, and walking in people with balance impairments. The subject must stand up from a chair (which should not be leant against a wall), walk a distance of 3 meters, turn around, walk back to the chair and sit down – all performed as quickly and as safely as possible. Time will be measured using a chronometer.
  • Change in Walking Handicap Scale (WHS)
    • Time Frame: Session 1 (baseline), and Session 20 (week 7)
    • The Walking Handicap Scale is a classification of 6 functional walking categories, considered as a participation category of the ICF because of its 3 items referred to community ambulation. The score ranges from 1 to 6, and do higher values represent a better outcome.

Participating in This Clinical Trial

Inclusion Criteria

  • first cerebral stroke – 2 weeks up to 6 months post the acute event (subacute patients) – age between 18-80 years – ability to fit into the end-effector footplates – no significant limitation of joint range of motion – ability to tolerate upright standing for 60 seconds – ability to walk unassisted or with little assistance – ability to give written consent – compliance with the study procedures Exclusion Criteria:

  • contractures of the hip, knee, or ankle joints that might limit the range of motion during gait – medical issue that precludes full weight bearing and ambulation (e.g. orthopaedic injuries, pain, severe osteoporosis, or severe spasticity) – cognitive and/or communicative disability (e.g. due to brain injury): inability to understand the instructions required for the study – cardiac pathologies, anxiety or psychosis that might interfere with the use of the equipment or testing Written informed consent was obtained from each subject.

Gender Eligibility: All

Minimum Age: 18 Years

Maximum Age: 80 Years

Are Healthy Volunteers Accepted: No

Investigator Details

  • Lead Sponsor
    • IRCCS San Raffaele Roma
  • Collaborator
    • Fondazione Don Carlo Gnocchi Onlus
  • Provider of Information About this Clinical Study
    • Principal Investigator: Marco Franceschini, MD, Head of Neuro-Rehabilitation Research Area – IRCCS San Raffaele Roma
  • Overall Official(s)
    • Marco Franceschini, MD, Study Chair, IRCCS San Raffaele Pisana
    • Sanaz Pournajaf, Dr, Principal Investigator, IRCCS San Raffaele Pisana
    • Michela Goffredo, Ing, Principal Investigator, IRCCS San Raffaele Pisana

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