Clinical Trials Directory

Trials / Completed

CompletedNCT05026346

Construction of an AI System for the Automatic Supervision of Shoulder's Rehabilitation Exercises (Rehab-SPIA)

Construction of an Artificial Intelligence System for the Remote Automatic Supervision of Shoulder's Rehabilitation Exercises

Status
Completed
Phase
Study type
Observational
Enrollment
100 (actual)
Sponsor
Istituto Ortopedico Rizzoli · Academic / Other
Sex
All
Age
18 Years – 65 Years
Healthy volunteers
Accepted

Summary

The current historical phase and the growing need for rehabilitation in the world make tele-rehabilitation systems, and e-Health in general, fundamental tools for increasing patient engagement and compliance with care, crucial elements for the preservation of the NHS from a perspective expenditure review and resource optimization. In particular, the rehabilitation patient has on average an adherence to the Home Exercise Program (HEP) between 30-50%, to which is frequently added a reduced effectiveness of motor learning due to the lack of feedback on the accuracy of the gesture, as is the case. it happens in the hospital or outpatient setting under the supervision of a therapist. The new computational approaches for the analysis of data on human movement, aimed at the development of algorithms to automatically supervise the accuracy of the patient's gesture during home self-treatment exercise such as those based on Artificial Intelligence (AI) and Machine Learning (ML), especially those of the latest generation, called sub-symbolics (or connectionists) can help. Among the most promising approaches are. Given the importance of the Home Exercise Program in shoulder disease, it was decided to select a population of patients affected by the main pathologies affecting this joint. The main objective of the study is to create and validate a software tool for the automatic and expert analysis of the correct execution of the main rehabilitation exercises for the functional recovery of the shoulder following orthopedic pathologies.

Detailed description

The current historical phase and the growing need for rehabilitation in the world make tele-rehabilitation systems, and e-Health in general, fundamental tools for increasing patient engagement and compliance with care, crucial elements for the preservation of the NHS from a perspective expenditure review and resource optimization . In particular, the rehabilitation patient has on average an adherence to the Home Exercise Program (HEP) between 30-50%, to which is frequently added a reduced effectiveness of motor learning due to the lack of feedback on the accuracy of the gesture, as it happens in the hospital or outpatient setting under the supervision of a therapist. The new computational approaches for the analysis of data on human movement, aimed at the development of algorithms to automatically supervise the accuracy of the patient's gesture during the exercise of home self-treatment, attempt to solve this last critical issue. Among the most promising approaches are those based on Artificial Intelligence (AI) and Machine Learning (ML), in particular those of the latest generation, called sub-symbolic (or connectionist). These algorithms arouse a lot of interest for their ability to automatically extract the salient properties of the movement, reducing the intervention of experts to the collection of all the data, and to the possible labeling of the examples (5) In any case, the literature shows a lack of models developed with the direct involvement of clinicians and a scarcity of data sets created with patient populations. Furthermore, most of the models present in the literature have been created using numerous input devices, often with a high technological rate with considerable costs for implementing a possible service at the patient's home. For these reasons we want to create a specialist clinical dataset, starting only from the videos of the exercises, involving specific populations by pathology and built on the basis of clinical judgment. With these characteristics, this project aims to automate the motion analysis process as much as possible, enormously reducing the costs deriving from the use of technologies and minimizing human error, all by exploiting the most recent computational approaches in order to create a useful and low-cost tool for home functional re-education. Given the importance of the Home Exercise Program in shoulder disease, it was decided to select a population of patients affected by the main pathologies affecting this joint. The main objective of the study is to create and validate a software tool for the automatic and expert analysis of the correct execution of the main rehabilitation exercises for the functional recovery of the shoulder following orthopedic pathologies.

Conditions

Interventions

TypeNameDescription
DIAGNOSTIC_TESTPathologic Exercise1. In the first phase of the project, a series of 5 active shoulder mobilization exercises characterized by an adequate range of motion will be tested to verify the set up for the video recording. 2. In the second phase shoulder movements will be recorder by a smartphone. 3. A questionnaire will be used and adapted on the basis of which to evaluate the correctness of the exercises performed by each healthy subject / patient. This questionnaire will provide a Clinical Score (CS) which assigns a numerical value to the patient's overall performance for each repetition. 4. The videos of each repetition of exercises performed by the healthy subjects / patients will then be evaluated by two different clinicians, blinded, using the questionnaire. 5. The Artificial Intelligence learning algorithm will be able to output an evaluation score that will be compared with that produced by clinicians.

Timeline

Start date
2020-04-01
Primary completion
2024-09-30
Completion
2025-01-30
First posted
2021-08-30
Last updated
2025-03-19

Locations

1 site across 1 country: Italy

Source: ClinicalTrials.gov record NCT05026346. Inclusion in this directory is not an endorsement.