Optimized statistical parametric mapping for partial-volume-corrected amyloid positron emission tomography in patients with Alzheimer’s disease and Lewy body dementia

We present an optimized voxelwise statistical parametric mapping (SPM) of partial-volume (PV)-corrected positron emission tomography (PET) of 11 C Pittsburgh Compound B (PiB), incorporating the anatomical precision of magnetic resonance image (MRI) and amyloid β (A β ) burden-specificity of PiB PET....

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Published inJournal of the Korean Physical Society Vol. 70; no. 5; pp. 454 - 459
Main Authors Oh, Jungsu S., Kim, Jae Seung, Chae, Sun Young, Oh, Minyoung, Oh, Seung Jun, Cha, Seung Nam, Chang, Ho-Jong, Lee, Chong Sik, Lee, Jae Hong
Format Journal Article
LanguageEnglish
Published Seoul The Korean Physical Society 01.03.2017
Springer Nature B.V
한국물리학회
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Summary:We present an optimized voxelwise statistical parametric mapping (SPM) of partial-volume (PV)-corrected positron emission tomography (PET) of 11 C Pittsburgh Compound B (PiB), incorporating the anatomical precision of magnetic resonance image (MRI) and amyloid β (A β ) burden-specificity of PiB PET. First, we applied region-based partial-volume correction (PVC), termed the geometric transfer matrix (GTM) method, to PiB PET, creating MRI-based lobar parcels filled with mean PiB uptakes. Then, we conducted a voxelwise PVC by multiplying the original PET by the ratio of a GTM-based PV-corrected PET to a 6-mm-smoothed PV-corrected PET. Finally, we conducted spatial normalizations of the PV-corrected PETs onto the study-specific template. As such, we increased the accuracy of the SPM normalization and the tissue specificity of SPM results. Moreover, lobar smoothing (instead of whole-brain smoothing) was applied to increase the signal-to-noise ratio in the image without degrading the tissue specificity. Thereby, we could optimize a voxelwise group comparison between subjects with high and normal A β burdens (from 10 patients with Alzheimer’s disease, 30 patients with Lewy body dementia, and 9 normal controls). Our SPM framework outperformed than the conventional one in terms of the accuracy of the spatial normalization (85% of maximum likelihood tissue classification volume) and the tissue specificity (larger gray matter, and smaller cerebrospinal fluid volume fraction from the SPM results). Our SPM framework optimized the SPM of a PV-corrected A β PET in terms of anatomical precision, normalization accuracy, and tissue specificity, resulting in better detection and localization of A β burdens in patients with Alzheimer’s disease and Lewy body dementia.
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G704-000411.2017.70.5.007
ISSN:0374-4884
1976-8524
DOI:10.3938/jkps.70.454