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STOYANOVA, R.S.; OCHS, M.F.; BROWN, T.R.; ROONEY, W.D.; LI, X.; LEE, J.H.; SPRINGER, C.S.
Brookhaven National Lab., Upton, NY (United States). Funding organisation: USDOE Office of Energy Research (ER) (United States)1999
Brookhaven National Lab., Upton, NY (United States). Funding organisation: USDOE Office of Energy Research (ER) (United States)1999
AbstractAbstract
[en] Standard analysis methods for processing inversion recovery MR images traditionally have used single pixel techniques. In these techniques each pixel is independently fit to an exponential recovery, and spatial correlations in the data set are ignored. By analyzing the image as a complete dataset, improved error analysis and automatic segmentation can be achieved. Here, the authors apply principal component analysis (PCA) to a series of relaxographic images. This procedure decomposes the 3-dimensional data set into three separate images and corresponding recovery times. They attribute the 3 images to be spatial representations of gray matter (GM), white matter (WM) and cerebrospinal fluid (CSF) content
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22 May 1999; 1 p; International Society of Magnetic Resonance Medicine meeting; Philadelphia, PA (United States); 22-28 May 1999; KP--140103; AC02-98CH10886; Also available from OSTI as DE00760985; PURL: https://www.osti.gov/servlets/purl/760985-iiyTmB/native/
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