ClinicalTrials.Veeva

Menu

Logistic Regression and Elastic Net Regularization for the Diagnosis of Fibromyalgia (LEDF)

T

Toronto Rehabilitation Institute

Status

Completed

Conditions

Fibromyalgia

Treatments

Diagnostic Test: Ultrasound Imaging

Study type

Observational

Funder types

Other

Identifiers

NCT04088747
FibromyalgiaDiagnosis

Details and patient eligibility

About

This study will utilize ultrasound image texture variables to construct an elastic net regularized, logistic regression model to differentiate between healthy and Fibromyalgia patients. The collected ultrasound data will be from participants who are healthy, and from participants who have Fibromyalgia. The predicted performance accuracy of the diagnostic model will be validated and this will confirm or deny the hypothesis that differentiation between the two cohorts is possible.

Full description

Fibromyalgia (FM) diagnosis remains a challenge for clinicians due to a lack of objective diagnostic tools. One proposed solution is the use of quantitative ultrasound (US) techniques, such as image texture analysis, which has demonstrated discriminatory capabilities with other chronic pain conditions. The investigators propose the use of US image texture variables to construct an elastic net regularized, logistic regression model, for differentiating between the trapezius muscle in the healthy and FM patients. 162 Ultrasound videos of the right and left trapezius muscle were acquired from healthy participants and participants with FM. The videos will then be put through a mutli-step processing pipe including converting them into skeletal muscle regions of interest (ROI). The ROI's will be then filtered by an algorithm utilizing the complex wavelet structural similarity index (CW-SSIM), which removes ROI's that are too similar to one another. Eighty-eight texture variables will be extracted from the ROI's, which will be used in nested cross-validation to construct a logistic regression model with and without elastic net regularization. The generalized performance accuracy of both models will be estimated and confirmed with a final validation on a holdout test set. Depending on the predicted, generalized performance accuracy it will be validated or not by the final, holdout test set (confirming the model construction is accurate). These models should then confirm or deny the hypothesis that a regularized logistic regression model built on ultrasound texture features can accurately differentiate between healthy trapezius muscle and that of patients with FM.

Enrollment

81 patients

Sex

All

Ages

20 to 65 years old

Volunteers

Accepts Healthy Volunteers

Inclusion criteria

  • gender independent; chronic widespread pain, fitting the 2016 FM criteria, absence of myofascial pain syndrome trigger points and between the ages of 20 and 65 years (44.3 ± 13.9 years).
  • Healthy asymptomatic volunteers who were age matched (n = 17) with no physical complaints or abnormality on physical examination also participated.

Exclusion criteria

  • Participants were excluded if they demonstrated clinical evidence of another cause for widespread pain, such as polymyositis, dermatomyositis, endocrine disorders, etc. None of the participants had performed any physical exercise during the two to three days prior to entry into the study.

Trial design

81 participants in 2 patient groups

Fibromyalgia
Description:
Patients who display symptoms and have a history of Fibromyalgia, between 20-65 years of age.
Treatment:
Diagnostic Test: Ultrasound Imaging
Healthy Controls
Description:
Age-matched, healthy controls, between 20-65 years of age who present no signs of chronic pain.
Treatment:
Diagnostic Test: Ultrasound Imaging

Trial documents
1

Trial contacts and locations

1

Loading...

Data sourced from clinicaltrials.gov

Clinical trials

Find clinical trialsTrials by location
© Copyright 2026 Veeva Systems