Clinical Trials Logo

Clinical Trial Summary

Although Balance Evaluation Systems Test(BESTest) is an important balance assessment tool to differentiate balance deficits, it is time consuming and tiring for hemiparetic patients. Using artificial neural networks(ANNs) to estimate balance status can be a practical and useful tool for clinicians. The aim of this study was to compare manual BESTest results and ANNs predictive results and to determine the highest contributions of BESTest sections by using ANNs predictive results of BESTest sections. 66 hemiparetic individuals were included in the study. Balance status was evaluated using the BESTest. 70%(n=46), of the dataset was used for learning, 15%(n=10) for evaluation, and 15%(n=10) for testing purposes in order to model ANNs. Multiple linear regression model(MLR) was used to compare with ANNs.


Clinical Trial Description

The demographics and clinical information of the participants' were recorded. Clinical information consists of some basic medical data for the patients. Hodkinson Mental Test was used to assess the cognitive status of the participants if they met inclusion criteria. Balance Evaluation Systems Test was used to assess balance status of the participants.

Feed-forward back-propagation ANNs was used in this study by employing Levenberg-Marquardt training algorithm. Tangent hyperbolic transfer functions were used in the hidden layer. Matlab (Version R2017b, Mathworks Inc, USA) was used in ANNs modeling. 70% (n=46), 15% (n=10) and 15% (n=10) of the data obtained from the participants were used for training, validation and test in the study, respectively. Multiple linear regression (MLR) models also were used to compare with ANNs.

Firstly, the ANNs were modeled for the first aim of the study. We used the data of the five traditional balance tests in the BESTest that did not use the real values (the timing or distance), but just the classified values (0-3 points in the BESTest) to train ANNs. Five balance tests were functional reach test (cm), one leg standing test for right and left side (sec), 6-metre timed walk test (sec) and timed up and go test (sec). Then, we compare the manual total BESTest scores with the predicted scores by the ANNs.

Secondly, we removed 6 sections of the BESTest one by one and modeled with the remaining 5 sections of the test to estimate the total BESTest score. After this modeling, we removed each item one by one in the first section and estimated the first section total score. We repeated the process for all the sections of the BESTest.

Statistical Analysis ;


Study Design


Related Conditions & MeSH terms


NCT number NCT04423497
Study type Observational
Source Pamukkale University
Contact
Status Completed
Phase
Start date July 31, 2016
Completion date May 31, 2018

See also
  Status Clinical Trial Phase
Completed NCT01662960 - Visual Feedback Therapy for Treating Individuals With Hemiparesis Following Stroke N/A
Completed NCT03780296 - Implementing Technology Enhanced Real Time Action Observation Therapy in Persons With Chronic Stroke N/A
Recruiting NCT03605381 - MORbidity PRevalence Estimate In StrokE
Recruiting NCT05163210 - Effectiveness of AOT Based on Virtual Reality in Stroke Rehabilitation. N/A
Terminated NCT04113525 - Transcutaneous Spinal and Peripheral Stimulation and Wrist Robotic Therapy for Patients With Spastic Stroke N/A
Completed NCT01948739 - Brain Machine Interface Control of an Robotic Exoskeleton in Training Upper Extremity Functions in Stroke N/A
Not yet recruiting NCT03237520 - Comparing Virtual Reality Therapy With Modified-CIMT Versus Modified-CIMT Alone in Hemiparetic Children N/A
Completed NCT03080454 - The Role of Trans-spinal Direct Current Stimulation (tsDCS) in Treating Patients With Hand Spasticity After Stroke Phase 1/Phase 2
Suspended NCT01519843 - Post Stroke Motor Learning N/A
Completed NCT01651533 - Mental Practice in Chronic, Stroke Induced Hemiparesis N/A
Completed NCT01106755 - Effects of Ground Level Gait Training With Body Weight Support (BWS) and Functional Electrical Stimulation (FES) N/A
Active, not recruiting NCT00170716 - Safety and Effectiveness of Cortical Stimulation in the Treatment of Stroke Patients With Upper Extremity Hemiparesis Phase 3
Completed NCT04286997 - VARA (Virtual and Augmented Reality Applications in Rehabilitation): Motor Rehabilitation Protocol With GRAIL for Patients Affected by Hemiparesis N/A
Completed NCT05856669 - The Effects of Mirror-Based Virtual Reality Systems and Recalibration Software on Upper Extremity Function in Individuals Experiencing Hemiparesis Post-Stroke N/A
Recruiting NCT05801874 - Gait and Posture Analysis in Hemiparetic Patients Through Optoelectronic Systems, "Smart" Tools and Clinical Evaluation
Recruiting NCT05590988 - Sensorimotor Arm Rehabilitation After Stroke N/A
Completed NCT04536987 - Robot Therapy for Rehabilitation of Hand Movement After Stroke Phase 2
Recruiting NCT04694833 - Telerehabilitation Through Serious Games in Virtual Reality in a Stroke Population (AutoRReVi) N/A
Completed NCT03965403 - Upper Extremity Rehabilitation With the BURT Robotic Arm N/A
Not yet recruiting NCT03638570 - Altered Connections in the Spinal Cord to Reduce Hand Impairment After Stroke N/A