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Automated Measurement of Scanner Stability for Functional Brain Imaging James J. Pekar, Joseph S. Gillen, Terri L. Brawner, and Peter C.M. van Zijl F.M. Kirby Research Center for Functional Brain Imaging, Kennedy Krieger Institute, Baltimore, Maryland & Department of Radiology, Johns Hopkins University School of Medicine, Baltimore, Maryland Purpose The purpose of this study was to develop an automated version of Weisskoff's method [R.M. Weisskoff, "Simple measurement of scanner stability for functional NMR imaging of activation in the brain," Magn. Reson. Med. 1996; 33:643-645] for assessing the temporal stability of an MRI scanner for functional brain imaging. Methods Data were acquired from a CuSO4-doped standard phantom in a Philips Gyroscan NT PT-6000 scanner using the standard receive-only quadrature headcoil combined with body-coil excitation. Single-shot gradient-echo Echo Planar Imaging was used with TE/TR = 50/3000 msec. Slice thickness was 5 mm; matrix size was 64x64; nominal resolution was 3.75 mm. After five "dummy scans," allowing equilibrium to be reached, 300 images were acquired over 15 minutes. Results Typical performance of the erosion-based method for automated generation of regions-of-interest is shown in figure 1. The corresponding stability data are shown in figure 2, which plots relative deviation vs. region of interest diameter. Relative deviation of less than 0.05 percent over fifteen minutes is shown for the largest region-of-interest. Figure 1. Demonstration of automatic generation of regions of interest. Top left corner: Image. Next item to right: Starting region of interest, produced from thresholding and erosion of original image. Remaining items, from left to right, top to bottom, show regions of interest resulting from sequential erosion Relative Deviation, % Introduction Functional MR imaging of brain activation using BOLD contrast requires a stable scanner. Weisskoff introduced a robust measure of scanner stability which relies upon the computed relative deviation over time of MR signal averaged over different-sized regions of interest (1). A log-log plot is made of this deviation vs. the "diameter" (square root of number of pixels) of the region of interest. In the ideal case, all deviation over time would be due to Johnson noise, and the plot would be a downwards sloping straight line reflecting the √N sensitivity advantage of averaging over voxels. As no scanner is perfectly stable, the computed data points will lie above this line, and their asymptote will reveal the limit of scanner stability. Weisskoff’s method is extended here by use of the erosion operator, from mathematical morphology, to produce automatically the required regions of interest, allowing the stability measurement process to be fully automated. The erosion operator was used both to create the starting, largest, region of interest, and in producing the smaller regions: First, a 10% threshold, followed by erosion (by a seven-by-seven pseudodircle) were used to generate a large starting region-of-interest. Then, sequential erosion by a three-by-three square (also known, in morphology, as the 8-connected set, or N8) was used to progressively "shrink" the region of interest until it vanished, at which point a "remembered" single pixel from the last non-vanishing region was used as the single-pixel region of interest. 1.00 0.10 0.01 1 10 ROI Diameter, pixels 100 Figure 2. Stability plot. Relative deviation, over a period of 15 minutes, versus region of interest "diameter" (square root of the number of pixels); produced using automatic generation of regions of interest. Discussion Use of the erosion operator (2) allows for automatic generation of the different-sized regions of interest needed for assessment of scanner stability using the method of Weiskoff (1). We have found this automatic calculation of scanner stability to be a convenient daily check of scanner performance. References 1. Weisskoff RM. Magn. Reson. Med. 1996; 33:643-645. 2. Serra, J. Image Analysis and Mathematical Morphology. Academic Press, 1984. Acknowledgments Work performed at the F.M. Kirby Research Center for Functional Brain Imaging at Kennedy Krieger Institute.