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Head-to-Head Comparison among Semi-Quantification Tools of Brain FDG-PET to Aid the Diagnosis of Prodromal Alzheimer's Disease.

Authors :
Massa, Federico
Grazzini, Matteo
Brugnolo, Andrea
Arnaldi, Dario
Pardini, Matteo
Nobili, Flavio
Galluzzi, Samantha
Frisoni, Giovanni B.
Perneczky, Robert
Drzezga, Alexander
van Berckel, Bart N.M.
Ossenkoppele, Rik
Didic, Mira
Guedj, Eric
Mecocci, Patrizia
Dottorini, Massimo E.
De Carli, Fabrizio
Pagani, Marco
Morbelli, Slivia
Bauckneht, Matteo
Source :
Journal of Alzheimer's Disease; 2019, Vol. 68 Issue 1, p383-394, 12p
Publication Year :
2019

Abstract

<bold>Background: </bold>Several automatic tools have been implemented for semi-quantitative assessment of brain [18]F-FDG-PET.<bold>Objective: </bold>We aimed to head-to-head compare the diagnostic performance among three statistical parametric mapping (SPM)-based approaches, another voxel-based tool (i.e., PALZ), and a volumetric region of interest (VROI-SVM)-based approach, in distinguishing patients with prodromal Alzheimer's disease (pAD) from controls.<bold>Methods: </bold>Sixty-two pAD patients (MMSE score = 27.0±1.6) and one hundred-nine healthy subjects (CTR) (MMSE score = 29.2±1.2) were enrolled in five centers of the European Alzheimer's Disease Consortium. The three SPM-based methods, based on different rationales, included 1) a cluster identified through the correlation analysis between [18]F-FDG-PET and a verbal memory test (VROI-1), 2) a VROI derived from the comparison between pAD and CTR (VROI-2), and 3) visual analysis of individual maps obtained by the comparison between each subject and CTR (SPM-Maps). The VROI-SVM approach was based on 6 VROI plus 6 VROI asymmetry values derived from the pAD versus CTR comparison thanks to support vector machine (SVM).<bold>Results: </bold>The areas under the ROC curves between pAD and CTR were 0.84 for VROI-1, 0.83 for VROI-2, 0.79 for SPM maps, 0.87 for PALZ, and 0.95 for VROI-SVM. Pairwise comparisons of Youden index did not show statistically significant differences in diagnostic performance between VROI-1, VROI-2, SPM-Maps, and PALZ score whereas VROI-SVM performed significantly (p < 0.005) better than any of the other methods.<bold>Conclusion: </bold>The study confirms the good accuracy of [18]F-FDG-PET in discriminating healthy subjects from pAD and highlights that a non-linear, automatic VROI classifier based on SVM performs better than the voxel-based methods. [ABSTRACT FROM AUTHOR]

Subjects

Subjects :
ALZHEIMER'S disease diagnosis

Details

Language :
English
ISSN :
13872877
Volume :
68
Issue :
1
Database :
Complementary Index
Journal :
Journal of Alzheimer's Disease
Publication Type :
Academic Journal
Accession number :
135259285
Full Text :
https://doi.org/10.3233/JAD-181022