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BoMI for Muscle Control

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ClinicalTrials.gov Identifier: NCT04641793
Recruitment Status : Recruiting
First Posted : November 24, 2020
Last Update Posted : November 24, 2020
Sponsor:
Collaborator:
National Institute on Disability, Independent Living, and Rehabilitation Research
Information provided by (Responsible Party):
Ferdinando Mussa-Ivaldi, Shirley Ryan AbilityLab

Brief Summary:
People with spinal cord injury (SCI), stroke and other neurodegenerative disorders can follow two pathways for regaining independence and quality of life. One is through clinical interventions, including therapeutic exercises. The other is provided by assistive technologies, such as wheelchairs or robotic systems. In this study, we combine these two paths within a single framework by developing a new generation of body-machine interfaces (BoMI) supporting both assistive and rehabilitative goals. In particular, we focus on the recovery of muscle control by including a combination of motion and muscle activity signals in the operation of the BoMI.

Condition or disease Intervention/treatment Phase
Spinal Cord Injury Cervical Stroke Device: Motion and Emg Control Not Applicable

Detailed Description:

When suffering from conditions affecting the central nervous system, such as spinal cord injury (SCI), stroke or neurodegenerative disorders, two pathways are available for regaining independence and quality of life. One way is through clinical interventions, including therapeutic exercises, often in combination with pharmacological agents. The other is provided by assistive technologies, such as wheelchairs or robotic systems. These two approaches have conflicting characteristics. While rehabilitation exercises challenge patients to use the most affected parts of their musculoskeletal apparatus, assistive technologies are typically designed to bypass the disability. This has led to divergent research domains. In both fields there are three major gaps that we plan to address in the investigator's research:

  1. High cost of technology and the limited amount of available hospital-based rehabilitation;
  2. Lack of adaptability of currently available assistive technologies, such as head switches and sip-and puff devices, that require users to overcome a hard learning barrier;
  3. Inadequate criteria for assessment of effectiveness of therapy, with common techniques still relying on subjective approaches that are inadequate considering the current state of biomedical science and technology.

We will address all of these issues by developing a new generation of body-machine interfaces (BoMI) supporting both assistive and rehabilitative goals. BMIs will translate movement signals and muscle activities of the user into control signals for assistive devices and computer systems. State-of-the-art systems for surface electromyography (EMG) and movement recording (IMU) will be integrated through machine learning techniques to facilitate sensorimotor learning while providing the means to promote or reduce the use of targeted muscles. New comprehensive assessment techniques will be developed by integrating standard measure of function - as the manual muscle test - with EMG analysis and non-invasive magnetic brain stimulation (TMS) (Magstim 200 Bistim, Whitland, UK). The development will be organized in three specific aims.

AIM 1: To develop a BMI integrating muscle activities and motion signals for operating external devices and performing rehabilitation exercises. EMG signals derived from multiple muscles in the upper body (e.g. deltoid, pectoralis, trapezius, triceps, etc.) will be integrated with motion signals to generate control signals for external devices (e.g. the coordinates of a cursor on a computer monitor or the speed and direction commands to a powered wheelchair). Both linear (PCA) and nonlinear maps (auto encoder networks) will be explored, although current preliminary evidence suggests that non-linear auto encoders (AE) are likely to better facilitate user learning1.

AIM 2: To enable targeting and modulating recruitment of specific muscles and muscle synergies during the practice of games and functional tasks. To enhance or reduce the role of a muscle or synergy, the output of the BoMI will be modulated in proportion to the deviation of the measured muscle activity from the desired level. The effectiveness of the approach will be tested at different times following training, both by tracking of motions and EMG activities during the performance of selected activities of daily living (ADL) and trough the assessment of muscle responses evoked by non-invasive brain stimulation.

AIM 3: To promote the adoption of the BoMI by facilitating access to its functions by patients and therapists and by performing an observational study on uptake in the DayRehabTM environment. The Shirley Ryan Ability Lab has established a unique environment in which spinal cord injured and stroke outpatients engage in daily rehabilitation exercises in close physical proximity with researchers. We will seize this opportunity to introduce the BoMI in the context of clinical therapy thus allowing a direct assessment of acceptance by therapists and clients.

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Study Type : Interventional  (Clinical Trial)
Estimated Enrollment : 60 participants
Allocation: Randomized
Intervention Model: Parallel Assignment
Masking: Single (Participant)
Primary Purpose: Other
Official Title: Body-Machine Interface for Recovering Muscle Control
Actual Study Start Date : January 20, 2020
Estimated Primary Completion Date : August 2024
Estimated Study Completion Date : August 2024

Resource links provided by the National Library of Medicine


Arm Intervention/treatment
Experimental: SCI Device: Motion and Emg Control

We will consider two methods for integrating motions and EMG signals:

  1. Direct methods. Signals extracted from the latent EMG space will directly contribute to the control of the external device. We will integrate EMG and IMU in two ways. In a first scenario, EMG and IMU will be given variable weight in the control. In a second scenario (perturbative method) the distance of ongoing muscle patterns from a desired set of strategies will modulate the mapping from body to cursor motions in the form of assistive (i.e. the cursor moves faster towards the target) or resistive (i.e. the cursor slows down) influences on cursor movement.
  2. Indirect Methods. Signals extracted by EMG will modulate the feedback offered to the learner to penalize deviations from desired muscle patterns. When multiple ways to perform a movement are offered by redundancy, (i.e., by the multiplicity of muscles compared to task demands), the brain chooses solutions that minimize noise and uncertainty.

Experimental: STROKE Device: Motion and Emg Control

We will consider two methods for integrating motions and EMG signals:

  1. Direct methods. Signals extracted from the latent EMG space will directly contribute to the control of the external device. We will integrate EMG and IMU in two ways. In a first scenario, EMG and IMU will be given variable weight in the control. In a second scenario (perturbative method) the distance of ongoing muscle patterns from a desired set of strategies will modulate the mapping from body to cursor motions in the form of assistive (i.e. the cursor moves faster towards the target) or resistive (i.e. the cursor slows down) influences on cursor movement.
  2. Indirect Methods. Signals extracted by EMG will modulate the feedback offered to the learner to penalize deviations from desired muscle patterns. When multiple ways to perform a movement are offered by redundancy, (i.e., by the multiplicity of muscles compared to task demands), the brain chooses solutions that minimize noise and uncertainty.

Experimental: UNIMPAIRED Device: Motion and Emg Control

We will consider two methods for integrating motions and EMG signals:

  1. Direct methods. Signals extracted from the latent EMG space will directly contribute to the control of the external device. We will integrate EMG and IMU in two ways. In a first scenario, EMG and IMU will be given variable weight in the control. In a second scenario (perturbative method) the distance of ongoing muscle patterns from a desired set of strategies will modulate the mapping from body to cursor motions in the form of assistive (i.e. the cursor moves faster towards the target) or resistive (i.e. the cursor slows down) influences on cursor movement.
  2. Indirect Methods. Signals extracted by EMG will modulate the feedback offered to the learner to penalize deviations from desired muscle patterns. When multiple ways to perform a movement are offered by redundancy, (i.e., by the multiplicity of muscles compared to task demands), the brain chooses solutions that minimize noise and uncertainty.




Primary Outcome Measures :
  1. Time [ Time Frame: during the intervention ]
    Changing time to task completion


Secondary Outcome Measures :
  1. Muscle activity [ Time Frame: baseline, during the procedure, at 1 week follow-up ]
    EMG activity in targeted muscles

  2. Cortico spinal connectivity [ Time Frame: baseline, immediately after the intervention, at 1 week follow-up ]
    Motor evoked potentials in selected muscles following TMS stimulation of M1



Information from the National Library of Medicine

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Ages Eligible for Study:   16 Years to 65 Years   (Child, Adult, Older Adult)
Sexes Eligible for Study:   All
Accepts Healthy Volunteers:   Yes
Criteria
  1. Uninjured individuals

    Inclusion criteria:

    • Ages 18 and up.
    • Ability to follow simple commands, and to respond to questions.

    Exclusion criteria for SCI participants:

    • Does not meet the inclusion criteria.

  2. Individuals with SCI

    Inclusion criteria:

    • Age 16-65
    • Injuries at the C3-6 level, complete (ASIA A), or incomplete (ASIA B and C).
    • Able to follow simple commands
    • Able to speak or respond to questions

    Exclusion criteria:

    • Presence of tremors, spasm and other significant involuntary movements
    • Cognitive impairment
    • Deficit of visuo-spatial orientation
    • Concurrent pressure sores or urinary tract infection
    • Other uncontrolled infection, concurrent cardiovascular disease
    • Sitting tolerance less than one hour
    • Severe hearing or visual deficiency
    • Miss more than six appointments without notification
    • Unable to comply with any of the procedures in the protocol
    • Unable to provide informed consent
  3. Stroke survivors:

Inclusion criteria:

  • Recent stroke (Sub acute to early chronic, between 3 and 12 months from CVA)
  • Age less than 75 (To avoid age-related confounds)
  • Inability to operate a manual wheelchair
  • Available medical records and radiographic information about lesion locations
  • Significant level of hemiparesis (UE Fugl Meyer score between 10 and 30)
  • Presence of pathological muscle synergies in the UE (flexor and/or extensor synergy)

Exclusion criteria:

  • Aphasia, apraxia, cognitive impairment or affective dysfunction that would influence the ability to perform the experiment
  • Inability to provide informed consent
  • Severe spasticity, contracture, shoulder subluxation, or UE pain
  • Severe current medical problems, including rheumatoid arthritis or other orthopaedic impairments restricting finger or wrist movement

Additional exclusion criteria for participants enrolled in TMS procedures

  • Any metal in head with the exception of dental work or any ferromagnetic metal elsewhere in the body. This applies to all metallic hardware such as cochlear implants, or an Internal Pulse Generator or medication pumps, implanted brain electrodes, and peacemaker.
  • Personal history of epilepsy (untreated with one or a few past episodes), or treated patients
  • Vascular, traumatic, tumoral, infectious, or metabolic lesion of the brain, even without history of seizure, and without anticonvulsant medication
  • Administration of drugs that potentially lower seizure threshold [REF], without concomitant administration of anticonvulsant drugs which potentially protect against seizures occurrence
  • Change in dosage for neuro-active medications (Baclophen, Lyrica, Celebrex, Cymbalta, Gabapentin, Naprosyn, Diclofenac, Diazepam, Tramadol, etc) within 2 weeks of any study visit.
  • Skull fractures, skull deficits or concussion within the last 6 months
  • unexplained recurring headaches
  • Sleep deprivation, alcoholism
  • Claustrophobia precluding MRI
  • Pregnancy

Information from the National Library of Medicine

To learn more about this study, you or your doctor may contact the study research staff using the contact information provided by the sponsor.

Please refer to this study by its ClinicalTrials.gov identifier (NCT number): NCT04641793


Contacts
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Contact: Ferdinando Mussa-Ivaldi, PhD 312 238 1230 sandro@northwestern.edu
Contact: Dalia De Santis, PhD 312 238 1650 ddesantis@sralab.org

Locations
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United States, Illinois
Shirley Ryan Ability Lab Recruiting
Chicago, Illinois, United States, 60611
Contact: Ferdinando Mussa-Ivaldi, PhD    312-238-1230    sandro@northwestern.edu   
Sponsors and Collaborators
Shirley Ryan AbilityLab
National Institute on Disability, Independent Living, and Rehabilitation Research
Investigators
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Principal Investigator: Ferdinando Mussa-Ivaldi, PhD Northwestern University
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Responsible Party: Ferdinando Mussa-Ivaldi, Principal Investigator, Shirley Ryan AbilityLab
ClinicalTrials.gov Identifier: NCT04641793    
Other Study ID Numbers: STU00210086
First Posted: November 24, 2020    Key Record Dates
Last Update Posted: November 24, 2020
Last Verified: November 2020

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Studies a U.S. FDA-regulated Drug Product: No
Studies a U.S. FDA-regulated Device Product: No
Keywords provided by Ferdinando Mussa-Ivaldi, Shirley Ryan AbilityLab:
Motor Learning
Human Machine Interface
Neurorehabilitation
TMS
Cortico-spinal
Upper-body movements
Additional relevant MeSH terms:
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Spinal Cord Injuries
Spinal Cord Diseases
Central Nervous System Diseases
Nervous System Diseases
Trauma, Nervous System
Wounds and Injuries