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79. Amyloid-PET analysis based on tissue probability maps

Authors :
Massimo Midiri
Giorgio Ivan Russo
Luigi M.E. Grimaldi
Rosalba Giugno
Pierpaolo Alongi
Rosalia Coppola
V. Puglisi
Alessandro Stefano
Maria Carla Gilardi
Salvatore Scalisi
Davide Stefano Sardina
Source :
Physica Medica. 56:111-112
Publication Year :
2018
Publisher :
Elsevier BV, 2018.

Abstract

Purpose The regional quantification of amyloid burden is crucial for the clinical diagnosis of Alzheimer’s disease [1]. The best method to evaluate regional amyloid deposition in PET is through the use MR imaging for brain space normalization. However, since MR imaging is not always available in the clinical practice, a MR-less methodology is needed in order to compute semi-quantitative and analyze regional amyloid burden. Methods Forty-four patients with clinical evidence of dementia, underwent 18F-Florbetaben PET (FBB-PET), FDG-PET, neuropsychological assessment and cerebrospinal fluid analysis. We implemented a methodology that uses SPM12 to import and normalize the FBB-PET images in Montreal Neurological Institute (MNI) space without MRI, and the Automated Anatomical Labeling (AAL) atlas [2] in order to extract regional uptake from normalized FBB-PET. SUVR has been computed by using cerebellum as control region (‘ Cerebelum _ 4 _ 5 ’ of AAL atlas). We then computed Receiver Operating Characteristic (ROC) curve in order to find best thresholds for identifying clinical subgroups in our patients. Results Semi-quantitative evaluation of FBB-PET images and ROC analysis stated that SUVR value of 1,006 in the bilateral inferior frontal cortex and a SUVR of 1.03 in the precuneus region were the best cutoff (AUC 0.883 and 0.826, respectively). Box-Plot analysis showed a trend distribution of elevated SUVR levels in bilateral frontal cortex, angular girus, occipital, parietal, precuneus and paracentral lobule, among AD patients. Conclusion MR-less methodology based on Tissue Probability Map and AAL atlas provide regional quantification of amyloid burden. The ROC analysis is able to retrieve useful thresholds for the classification of AD versus non-AD thus providing a tool in clinical practice. We will perform the study on a larger sample in order to confirm the results.

Details

ISSN :
11201797
Volume :
56
Database :
OpenAIRE
Journal :
Physica Medica
Accession number :
edsair.doi...........05661fce4651bc70621efa3e1127de1e
Full Text :
https://doi.org/10.1016/j.ejmp.2018.04.089