- ICH GCP
- US Clinical Trials Registry
- Clinical Trial NCT06738290
Predicting Motor Learning of an Upper Limb Task Based on Behavioral and Disease-specific Characteristics in Patients with Parkinson's Disease
Study Overview
Status
Conditions
Intervention / Treatment
Detailed Description
In order to achieve personalised rehabilitation in PD, it is imperative to understand which factors predict whether a patient will benefit from targeted training. To date, only few studies have looked into the predictors of gait and balance training and identified cognitive function at baseline and initial motor performance as the most important determinants. However, these studies focused on global cognitive function, while cognitive subdomains, such as executive function and memory, which are most affected in PD, likely impact more seriously on learning. In addition, patients with cognitive impairments were excluded in these studies. Hence, little is known about how non-motor symptoms, which may also include apathy and depression, interact with the capacity to retain learning in PD.
So far, the determinants of motor learning retention have only been examined as secondary analyses of effect studies in PD. Hence, this study aims to identify predictive factors, including motor and non-motor symptoms, for sustained motor learning in a wide and large PD cohort. The primary dependent outcome is to identify which patients are able to retain the learning gains after 4 weeks without training.
Given the impaired touchscreen skills and the espoused difficulties with retention, training of touchscreen sliding motions will be delivered on a tablet enabling practice in the home setting. Both single (ST) and dual task (DT) conditions will be offered in a random order and feedback will be provided to enhance motivation and retention. This project aims to identify the predictive factors for effect maintenance after receiving this two-week training program. The investigators will recruit a broad cohort of PD patients. Sample size was estimated, using a squared multiple correlation coefficient of 0.17 based on a prediction model from earlier work, which included DT-motor performance and cognitive function as determinants. Using an α = 0.05 and β = 0.20, sample size was calculated for a linear multiple regression: fixed model, R² deviation from 0. Although the number of predictors is dependent on possible multicollinearity, sample size was computed on the assumption of 10 predictors. Sample size was estimated to be 89 and after accounting for a dropout of 20%, 107 patients will have to be included. Importantly, this sample size is also supported by the rule of thumb to include 10 participants per predictor, suggested by Harrell et al. (1996). As the investigators expect to include 10 predictors in our multiple linear regression model (see below), a total number of 100 PD patients will be recruited. The investigators will enroll a wide range of cognitive profiles. However, all patients need to be able to follow instructions and engage in the motor learning. During the instructions of how to perform the touchscreen task, the investigators will assess eligibility pragmatically. The investigators will exclude PD-dementia using level I MDS-diagnostic criteria. All patients will train the SSP-task for a duration of two weeks. On day 1 (T0), all participants will undergo an extensive screening session, including motor and non-motor tests performed at the subject's home or in a quiet room in our laboratory at KU Leuven, according to patients' preference.
The global cognitive screening will consist of the Montreal Cognitive Assessment. Moreover, 2 specific tests will assess each cognitive subdomain. Attention and working memory are captured by the digit and visual span forward and backward test. The trail making and alternating names tests will be used for executive function. Visuospatial function will be examined using the short form of the Benton's judgement of line orientation and the Rey Osterrieth Complex figure. The 30-min recall of the latter test will also be used to assess memory, together with the Rey Auditory Verbal Learning test. The Boston naming test and the Animal fluency test of the Controlled Oral Word Association test will be used to assess language. Other non-motor features, such as anxiety, depression, and sleep quality, will be tested using validated questionnaires for PD. Touchscreen skills will be assessed using the SSP-test in ST and DT condition, the mobile phone task (MPT, typing a predefined telephone number on a smartphone) and specific questionnaires. Following the baseline session, all patients will receive 10 training sessions of the SSP-task randomly in ST and DT condition (2 weeks, 5 days/week, 10 min/session) over a period of two weeks. The training is home-based and unsupervised. Both immediately after training (T1) and after a four-week retention period (T2), touchscreen skills will be assessed at home. To account for performance bias due to other training, other rehabilitation content will be recorded.
For model selection, the investigators will follow the recommendation of the PROBAST tool and reduce the number of cognitive tests accordingly. Other independent variables may include age, gender, disease duration, the New Freezing of Gait Questionnaire, and LEDD. The investigators will also calculate a measure of early acquisition. After exploratory univariate analysis, the investigators expect to include 10 independent variables, taking multicollinearity into account.
Additionally, the investigators will study the determinants of compliance and its association with retention, as compliance with unsupervised home-based training is likely to be associated with specific non-motor characteristics. Apathy and the anticipation of reward have been shown to determine the level of effort generated for exercise in PD unlike in HC. Also, one previous study investigated the relationship between the success of a balance training program and compliance in PD, establishing compliance to be one of the two most important determinants. Other work revealed that disease duration was found to be related to the degree of motor learning of the SSP-task and to exercise adherence altogether. Hence, compliance is likely associated with training outcomes in PD (long- and short-term) and may be modulated by (multiple) clinical characteristics. Compliance will be automatically logged by the digitized system and stored in a secured data cloud. Training compliance will be expressed as a percentage of the desired number of sessions and personalized time, with a maximum of 100%. The investigators will analyze the relation between compliance and clinical characteristics first with a multiple linear regression model. Next, a multiple mediation model will be constructed to examine the expected mediating influence of the clinical profiles on this association. Different models will be applied for retention of learning and immediate training effects, as well as for the different outcome measures.
Study Type
Enrollment (Actual)
Contacts and Locations
Study Locations
-
-
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Leuven, Belgium, 3001
- Department of Rehabilitation Sciences KU Leuven
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Participation Criteria
Eligibility Criteria
Ages Eligible for Study
- Child
- Adult
- Older Adult
Accepts Healthy Volunteers
Sampling Method
Study Population
Description
Inclusion Criteria:
- Diagnosis of idiopathic Parkinson's disease based on the criteria of the Movement Disorders Society
- Right-handed, or right-handed use of touchscreen devices.
Exclusion Criteria:
- Parkinson's disease dementia (PD-D), determined by the level I diagnostics according to Dubois et al. (2007)
- Comorbidities of the upper limb that could interfere with the study and are not caused by Parkinson's disease
- Other neurological disorders besides Parkinson's disease
- Color blindness as determined by the Ishihara test for color deficiency
Study Plan
How is the study designed?
Design Details
Cohorts and Interventions
Group / Cohort |
Intervention / Treatment |
|---|---|
|
Parkinson's disease
Only one cohort will be observed.
All participants have been diagnosed with Parkinson's disease, according to the criteria of the Movement Disorders Society by a movement disorders specialist.
Other eligibility criteria are described below.
|
Participants will practice the Swipe-Slide Pattern (SSP) task independently at home in both ST and DT condition, offered in a random order.
During this task, participants perform different pre-defined patterns by moving their finger over a touchscreen, resembling a touchscreen unlock trace.
The DT condition includes the SSP-task while counting either red or green lights illuminated on the screen.
They will receive 10 training sessions of the SSP-task over a period of two weeks.
Each week will consist of 5 consecutive days of training for approximately 10 min.
per session.
Participants will perform 9 trials of 12 patterns each, alternated with rest periods of 14s.
Instruction and answers are also included.
Feedback will be provided during the rest periods.
|
What is the study measuring?
Primary Outcome Measures
Outcome Measure |
Measure Description |
Time Frame |
|---|---|---|
|
Overall learning effects of training on the average slide duration in ST condition
Time Frame: Baseline and retention (4 weeks)
|
Using the behavioral data gathered at the different time points (described in Time frame), the changes in average slide duration in ST condition will be determined and used in a multiple linear regression model as dependent variable.
|
Baseline and retention (4 weeks)
|
Secondary Outcome Measures
Outcome Measure |
Measure Description |
Time Frame |
|---|---|---|
|
Immediate training effects and retention of training on performance accuracy in ST condition
Time Frame: Baseline, post (2 weeks) and retention (4 weeks)
|
Using the behavioral data gathered at the different time points (described in Time frame), the immediate changes and overall changes in performance accuracy (in %) will be determined and used in a multiple linear regression model as dependent variable.
|
Baseline, post (2 weeks) and retention (4 weeks)
|
|
Immediate training effects and retention of training of the average slide duration in ST condition
Time Frame: Baseline, post (2 weeks) and retention (4 weeks)
|
Using the behavioral data gathered at the different time points (described in Time frame), the changes in average slide duration in ST condition will be determined and used in a multiple linear regression model as dependent variable.
|
Baseline, post (2 weeks) and retention (4 weeks)
|
|
Immediate and retained training effects and overall learning of the average slide duration in DT condition
Time Frame: Baseline, post (2 weeks) and retention (4 weeks)
|
Using the behavioral data gathered at the different time points (described in Time frame), the immediate changes and overall changes in average slide duration in DT condition will be determined and used in a multiple linear regression model as dependent variable.
|
Baseline, post (2 weeks) and retention (4 weeks)
|
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Immediate and retained training effects and overall learning on performance accuracy in DT condition
Time Frame: Baseline, post (2 weeks) and retention (4 weeks)
|
Using the behavioral data gathered at the different time points (described in Time frame), the immediate changes and overall changes in performance accuracy (in %) will be determined and used in a multiple linear regression model as dependent variable.
|
Baseline, post (2 weeks) and retention (4 weeks)
|
|
Transfer of learning towards an untrained Mobile Phone Task
Time Frame: Baseline, post (2 weeks) and retention (4 weeks)
|
Using the behavioral data gathered at the different time points (described in Time frame), changes in the performance on an untrained mobile phone task will be determined, based on the time necessary to type in telephone numbers (in sec) and used in a multiple linear regression model as dependent variable.
|
Baseline, post (2 weeks) and retention (4 weeks)
|
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Compliance rate to training (in %)
Time Frame: Baseline, post (2 weeks) and retention (4 weeks)
|
The automatically logged compliance rate will be expressed as the percentage of the desired number of sessions and personalized time (max.
100%).
Compliance rate will be used as dependent variable in a multiple linear regression model and in a secondary mediation model.
|
Baseline, post (2 weeks) and retention (4 weeks)
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Collaborators and Investigators
Sponsor
Investigators
- Principal Investigator: Alice Nieuwboer, PhD, KU Leuven
Study record dates
Study Major Dates
Study Start (Actual)
Primary Completion (Actual)
Study Completion (Actual)
Study Registration Dates
First Submitted
First Submitted That Met QC Criteria
First Posted (Actual)
Study Record Updates
Last Update Posted (Actual)
Last Update Submitted That Met QC Criteria
Last Verified
More Information
Terms related to this study
Additional Relevant MeSH Terms
Other Study ID Numbers
- B3222020000322
Plan for Individual participant data (IPD)
Plan to Share Individual Participant Data (IPD)?
Drug and device information, study documents
Studies a U.S. FDA-regulated drug product
Studies a U.S. FDA-regulated device product
product manufactured in and exported from the U.S.
This information was retrieved directly from the website clinicaltrials.gov without any changes. If you have any requests to change, remove or update your study details, please contact register@clinicaltrials.gov. As soon as a change is implemented on clinicaltrials.gov, this will be updated automatically on our website as well.
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