Predictive Indices of Independent Activity of Daily-living in Neurorehabilitation
- Conditions
- Brain InjuriesParkinson DiseaseMultiple SclerosisStrokeMild Cognitive Impairment
- Registration Number
- NCT04691102
- Lead Sponsor
- I.R.C.C.S. Fondazione Santa Lucia
- Brief Summary
Postural and balance disorders are common in neurological disorders. They are often associated with reduced mobility and fear of falling, which strongly limit independent activities of daily living (ADL), compromise the quality of life and reduce social participation. Here the investigators apply an existing software solution to: 1) obtain biomarkers of gait deficits in 5 neurological conditions, 2) develop an automatic procedure supporting clinicians in the early identification of patients at high risk of falling as to tailor rehabilitation treatment; 3) longitudinally assess these patients to test the efficacy of rehabilitation. High-density electroencephalography (EEG), and inertial sensors located at lower limbs and at upper body levels will be used to extract the most appropriate indexes during motor tasks. The ultimate goal is to develop cost-effective treatment procedures to prevent recurrent falls and fall-related injuries and favour the reintegration of the patient into everyday activities. The first hypothesis of this study is that clinical professionals (e.g., medical doctors and rehabilitative staff) would strongly benefit from the possibility to rely on quantitative, reliable and reproducible information about patients motor deficits. This piece of information can be nowadays readily available through miniaturized wearable technology and its information content can be effectively conveyed thanks to ad hoc software solution, like the A.r.i.s.e. software. The second hypothesis of the present study is that early identification of patients at high risk of dependence and the subsequent application of personalized treatment would allow for cost-effective treatment procedures to favor the autonomy into everyday activities. The results of this project could represent a valuable support in the clinical reasoning and decision-making process.
- Detailed Description
Not available
Recruitment & Eligibility
- Status
- RECRUITING
- Sex
- All
- Target Recruitment
- 120
Not provided
Not provided
Study & Design
- Study Type
- OBSERVATIONAL
- Study Design
- Not specified
- Primary Outcome Measures
Name Time Method Inertial sensors-based assessment Baseline Set of seven magneto-inertial sensors (Opal, APDM Inc., Portland, Oregon, USA). Gait quality indices related to dynamic stability, symmetry and smoothness will be extracted from the sensors' signals after the execution of a 10-Meter-Walk (10MWT), Figure-of-8-Walk (F8WT), and Fukuda-Stepping test (FST)
- Secondary Outcome Measures
Name Time Method Dynamic Gait Index (DGI) Baseline The Dynamic Gait Index (DGI) allows to assess the dynamic stability during march. The DGI values ranging from 0 to 24, where 0 means the worse outcome and 24 the best one.
Berg Balance Scale (BBS) Baseline The Berg Balance Scale (BBS) is a 14-item objective measure that assess static balance and fall risk. The BBS values ranging from 0 to 56, where 0 means the worse outcome and the 56 the best one.
Balance Evaluation System Test (Mini-BESTest) Baseline The Balance Evaluation System Test (Mini-BESTest) allows to assess the dynamic balance. It is a 14-item test scored on 3-level ordinal scale. The Mini-BESTest values ranging from 0 to 28, where 0 means the worse outcome and 28 the best one
Electroencephalography (EEG) Baseline A portable and low-weight 128-EEG channels system will be use in order to obtain neural predictors of gain stability during walking in the real-world and to distinguish types of walking. Briefly, source-space EEG signals (based on the individual anatomical image) will be reconstruct to estimate activity (e.g., power spectrum density-PSD) and connectivity (via FC correlation) at rest and during motor tasks
Trial Locations
- Locations (1)
Santa Lucia Foundation I.R.C.C.S.
🇮🇹Roma, Rm, Italy