Osteoporosis Clinical Trial
Official title:
Changes in Bone Density, Radiographic Texture Analysis and Bone Turnover During Two Years of Antiresorptive Therapy for Postmenopausal Osteoporosis
Verified date | August 2018 |
Source | University of Chicago |
Contact | n/a |
Is FDA regulated | No |
Health authority | |
Study type | Interventional |
The purpose of this study is to determine if a new test for osteoporosis can be useful in monitoring treatment. We are studying a new method for examining the quality of bone by an experimental method of computerized analysis of radiographic images (x-ray pictures) of the heel.
Status | Completed |
Enrollment | 36 |
Est. completion date | December 2009 |
Est. primary completion date | December 2009 |
Accepts healthy volunteers | No |
Gender | Female |
Age group | 59 Years and older |
Eligibility |
Inclusion Criteria: - The study will enroll 40 postmenopausal women with a T score < -2 either at the lumbar spine or the femoral neck: 20 who decide to begin anti-resorptive therapy (treated group), and 20 women who decline such therapy (control group). We will attempt to match the patients and the controls for T score (within 0.3) and age (within 5 years). - All study participants will be: - at least 3 years past the last menstrual period, - not on HRT, Raloxifene or calcitonin for at least 6 months. Exclusion Criteria: - All study participants will not be on bisphosphonates during the previous 12 months. - Women with secondary causes of osteoporosis will be excluded. |
Country | Name | City | State |
---|---|---|---|
United States | The University of Chicago | Chicago | Illinois |
Lead Sponsor | Collaborator |
---|---|
University of Chicago | National Institute of Arthritis and Musculoskeletal and Skin Diseases (NIAMS), National Institutes of Health (NIH) |
United States,
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* Note: There are 28 references in all — Click here to view all references
Type | Measure | Description | Time frame | Safety issue |
---|---|---|---|---|
Primary | Changes in Lumbar Spine BMD +/- Treatment With Alendronate | Percent Change in lumbar spine BMD from Baseline to Month 24 | Baseline to Month 24 | |
Secondary | Changes in Peripheral Heel BMD +/- Treatment With Alendronate | Percent Change in peripheral heel BMD from Baseline to Month 24 | Baseline to Month 24 | |
Secondary | Changes in Femoral Neck BMD +/- Treatment With Alendronate | Percent Change in femoral neck BMD from Baseline to Month 24 | Baseline to Month 24 | |
Secondary | Changes in Total Hip BMD +/- Treatment With Alendronate | Percent Change in total hip BMD from Baseline to Month 24 | Baseline to Month 24 | |
Secondary | Changes in Radiographic Texture Analysis (RTA) Integrated Root Mean Square (iRMS) From Baseline to Month 24 | Root Mean Square (RMS) is a measure of the variability in the radiographic texture pattern, the relative difference in the contrast between light and dark areas is expressed in a grayscale level. In practical terms, a bone image with a washed-out appearance due to loss of trabecular structure such as that seen in osteoporosis, will have a low value for RMS because there will be relatively little contrast between lighter and darker areas of the image. An image of a bone with strong trabecular structure will have a high RMS value because the contrast between the lighter and darker areas of the image will be greater. To derive a measure of variability in the RMS in the region of interest in the bone image, the power spectrum is divided into 24 angular sectors at 15 degree intervals, and RMS is calculated for each segment. The iRMS (integrated RMS) roughly corresponds to RMS averaged across all 24 angular sectors |
Baseline to Month 24 | |
Secondary | Changes in Radiographic Texture Analysis (RTA) Feature Standard Deviation of Root Mean Square (sdRMS) From Baseline to Month 24 | Root Mean Square (RMS) is a measure of the variability in the radiographic texture pattern, the relative difference in the contrast between light and dark areas is expressed in a grayscale level. In practical terms, a bone image with a washed-out appearance due to loss of trabecular structure such as that seen in osteoporosis, will have a low value for RMS because there will be relatively little contrast between lighter and darker areas of the image. An image of a bone with strong trabecular structure will have a high RMS value because the contrast between the lighter and darker areas of the image will be greater. To derive a measure of variability in the RMS in the region of interest of the bone image, the power spectrum is divided into 24 angular sectors at 15 degree intervals, and RMS is calculated for each segment. We use sdRMS (standard deviation of the RMS across the segments) as a measure of the direction dependence (anisotropy) of the trabeculae in the bone image. |
Baseline to Month 24 | |
Secondary | Changes in Radiographic Texture Analysis (RTA) Feature Integrated First Moment of the Power Spectrum (iFMP) From Baseline to Month 24 | To derive a measure of variability and directionality in the first moment of the power spectrum (FMP) in the region of interest of the bone image, the power spectrum is divided into 24 angular sectors at 15 degree intervals, and FMP is calculated for each segment. We use iFMP (integrated FMP) as a measure of overall special frequency of the radiographic pattern. FMP characterizes spatial frequency in the radiographic pattern and the underlying trabecular structure. This corresponds to the coarseness or fineness of the radiographic texture pattern. A high level of FMP indicates thin and closely spaced trabecular structure. Low FMP indicates widely spaced dark areas usually corresponding to a strong, thick trabecular structure. | Baseline to Month 24 | |
Secondary | Changes in Radiographic Texture Analysis (RTA) Minimum First Moment of the Power Spectrum (minFMP) From Baseline to Month 24 | To derive a measure of variability and directionality in the first moment of the power spectrum (FMP) in the region of interest of the bone image, the power spectrum is divided into 24 angular sectors at 15 degree intervals and FMP is calculated for each segment. We use minFMP (minimum FMP) to represent the lowest value of FMP across the 24 angular sectors corresponding to the special frequency in the most washed-out direction. FMP characterizes spatial frequency in the radiographic pattern and the underlying trabecular structure. This corresponds to the coarseness or fineness of the radiographic texture pattern. A high level of FMP indicates thin and closely spaced trabecular structure. Low FMP indicates widely spaced dark areas usually corresponding to a strong, thick trabecular structure. | Baseline to Month 24 | |
Secondary | Changes in Radiographic Texture Analysis (RTA) Minkowski Fractal Dimension (MINK) From Baseline to Month 24 | The Percent Change in Radiographic Texture Analysis (RTA) Minkowski Fractal Dimension (MINK) from Baseline to Month 24 is a description of the similarity of texture of the images at different magnifications. The Minkowski fractal dimension is calculated from the slope of the least -square fitted line relating log volume and log magnification. | Baseline to Month 24 | |
Secondary | Changes in Radiographic Texture Analysis (RTA) Spectral Density Coefficient Beta (BETA) From Baseline to Month 24 | The Percent Change in Radiographic Texture Analysis (RTA) spectral density coefficient beta (BETA) from Baseline to Month 24 is an analysis of spectral density vs. the spacial frequency on a log-log plot. BETA is the coefficient (slope) of this plot. Higher values of beta correspond to rougher (strong bone) and lower values to smoother, higher-frequency texture pattern (washed out bone). | Baseline to Month 24 |
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