Clinical Trials Directory

Trials / Unknown

UnknownNCT04462913

Biometric Recognition and Rehabilitation Assessment of Lower Extremity Sports Injury Based on Gait Touch Information

Status
Unknown
Phase
Study type
Observational
Enrollment
550 (estimated)
Sponsor
Peking University Third Hospital · Academic / Other
Sex
All
Age
Healthy volunteers
Accepted

Summary

The current common clinical methods cannot truly reflect the biomechanical status of the knee joint. Based on the foot-knee coupling mechanism, the simple and practical dynamic gait touch information provided by the 3D force platform are closely related to the knee biomechanics. The purpose of this study is to investigate the disease feature recognition, computer-aided diagnosis and rehabilitation assessment based on the gait touch information related to lower limb injuries.

Detailed description

Background: The current common clinical methods cannot truly reflect the biomechanical status of the knee joint. The three-dimensional gait analysis is the gold standard, but it is difficult to apply clinically. There is an urgent need for a clinically practical method to quantitatively evaluate the biomechanics of the knee joint under dynamic weight bearing. Methods: 50 healthy volunteers, 450 sports injuries patients (including hip, knee, and ankle joint diseases) and 50 patients with degenerative osteoarthritis were recruited. 55 passive reflective markers were placed bilaterally on the body. Lower extremity kinematics and dynamic plantar pressure during walking, jogging were collected. Outcome evaluation indicators and statistical methods: The following indicators use repeated measurement two-factor analysis of variance: the left and right sides, different rehabilitation times are used as repeated measurement variables, to analyze the biomechanical changes of the lower limb joint biomechanics and gait touch information. A variety of machine learning methods (such as PCA, SVM, CNN, etc.) are used to analyze, and select the appropriate algorithm and parameters according to the learning effect. Finally, this study will establish a machine learning models for computer-aided diagnosis, treatment, and rehabilitation assessment.

Conditions

Interventions

TypeNameDescription
OTHERno interventionThis is an observation study, with no intervention

Timeline

Start date
2017-07-28
Primary completion
2022-12-01
Completion
2022-12-30
First posted
2020-07-08
Last updated
2020-07-08

Locations

1 site across 1 country: China

Source: ClinicalTrials.gov record NCT04462913. Inclusion in this directory is not an endorsement.