Pixel-by-pixel analysis of DCE MRI curve patterns and an illustration of its application to the imaging of the musculoskeletal system |
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Authors: | Lavini Cristina de Jonge Milko C van de Sande Marleen G H Tak Paul P Nederveen Aart J Maas Mario |
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Affiliation: | Department of Radiology, Academic Medical Center, 1105 AZ Amsterdam, The Netherlands. c.lavin@amc.uva.nl |
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Abstract: | Dynamic contrast enhanced (DCE) MRI is a widespread method that has found broad application in the imaging of the musculoskeletal (MSK) system. A common way of analyzing DCE MRI images is to look at the shape of the time-intensity curve (TIC) in pixels selected after drawing an ROI in a highly enhanced area. Although often applied to a number of MSK affections, shape analysis has so far not led to a unanimous correlation between these TIC patterns and pathology. We hypothesize that this might be a result of the subjective ROI approach. To overcome the shortcomings of the ROI approach (sampling error and interuser variability, among others), we created a method for a fast and simple classification of DCE MRI where time-curve enhancement shapes are classified pixel by pixel according to their shape. The result of the analysis is rendered in multislice, 2D color-coded images. With this approach, we show not only that differences on a short distance range of the TIC patterns are significant and cannot be appreciated with a conventional ROI analysis but also that the information that shape maps and conventional standard DCE MRI parameter maps convey are substantially different. |
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Keywords: | DCE-MRI Pattern Shape Muskuloskeletal Dynamic Contrast agent Classification Curve shape analysis TIC |
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