Abstract
With the advent of biomarkers such as 11C-PIB and the increase in use of PET, automated methods are required for processing and analyzing dataseis from research studies and in clinical settings. A common preprocessing step is the calculation of standardized uptake value ratio (SUVR) for inter-subject normalization. This requires segmented grey matter (GM) for VOI refinement. However 11C-PIB uptake is proportional to amyloid build up leading to inhomogeneities in intensities, especially within GM. Inhomogeneities present a challenge for clustering and pattern classification based approaches to PET segmentation as proposed in current literature. In this paper we modify a MR image segmentation technique based on expectation maximization for 11C-PIB PET segmentation. A priori probability maps of the tissue types are used to initialize and enforce anatomical constraints. We developed a Bézier spline based inhomogeneity correction techniques that is embedded in the segmentation algorithm and minimizes inhomogeneity resulting in better segmentations of 11C-PIB PET images. We compare our inhomogeneity with a global polynomial correction technique and validate our approach using co-registered MRI segmentations. © Springer-Verlag Berlin Heidelberg 2007.
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CITATION STYLE
Raniga, P., Bourgeat, P., Villemagne, V., O’Keefe, G., Rowe, C., & Ourselin, S. (2007). Spline based inhomogeneity correction for11C-PIB PET segmentation using expectation maximization. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 4791 LNCS, pp. 228–235). Springer Verlag. https://doi.org/10.1007/978-3-540-75757-3_28
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