| Literature DB >> 29930505 |
Fermín Segovia1, Raquel Sánchez-Vañó2,3, Juan M Górriz1,4, Javier Ramírez1,4, Pablo Sopena-Novales2, Nathalie Testart Dardel5,6, Antonio Rodríguez-Fernández4,5, Manuel Gómez-Río4,5.
Abstract
18F-FBB PET is a neuroimaging modality that is been increasingly used to assess brain amyloid deposits in potential patients with Alzheimer's disease (AD). In this work, we analyze the usefulness of these data to distinguish between AD and non-AD patients. A dataset with 18F-FBB PET brain images from 94 subjects diagnosed with AD and other disorders was evaluated by means of multiple analyses based on t-test, ANOVA, Fisher Discriminant Analysis and Support Vector Machine (SVM) classification. In addition, we propose to calculate amyloid standardized uptake values (SUVs) using only gray-matter voxels, which can be estimated using Computed Tomography (CT) images. This approach allows assessing potential brain amyloid deposits along with the gray matter loss and takes advantage of the structural information provided by most of the scanners used for PET examination, which allow simultaneous PET and CT data acquisition. The results obtained in this work suggest that SUVs calculated according to the proposed method allow AD and non-AD subjects to be more accurately differentiated than using SUVs calculated with standard approaches.Entities:
Keywords: Alzheimer's disease; florbetaben; multivariate analysis; positron emission tomography; quantitative analysis; support vector machine
Year: 2018 PMID: 29930505 PMCID: PMC6001114 DOI: 10.3389/fnagi.2018.00158
Source DB: PubMed Journal: Front Aging Neurosci ISSN: 1663-4365 Impact factor: 5.750
Protocol details to acquire neuroimaging data.
| Camera | GE Discovery STE | Siemens Biograph 16 |
| Patient position | Resting, with closed eyes | Resting, with closed eyes |
| Operation | 3D mode | 3D mode |
| Filtering | Z-Axis standard | Z-Axis standard |
| Dose | 300 MBq | 300 MBq |
| Acq. start | 90 min post injection | 90 min post injection |
| Acq. duration | 20 min | 20 min |
| Matrix size (FBB) | 168 × 168 | 168 × 168 |
| Slice thichness (FBB) | 4.01 mm | 4.06 mm |
| Number of slices | 70 | 70 |
| Voxel size | 16.08 (mm3) | 16.48 (mm3) |
| Reconstruction | VUE Point (5 it, 35 sub) | Gaussian + OS-OM (6 it, 21 sub) |
| CT Parameters | Low-dose, 80 mAs, 120 kV | Low-dose, 50 mAs, 120 kV |
| Matrix size (CT) | 512 × 512 | 512 × 512 |
| Slice thichness (CT) | 1 mm | 1 mm |
| Corrections | Scatter; CT attenuation; well counter sensitivity and activity; delayed event subtraction and normalization | Scatter; CT attenuation; slice coincidence location with CT |
Demographic details of the patients considered in this work (μ and σ stand for the average and the standard deviation respectively).
| AD | 51 | 23 | 28 | 63.43 | 6.32 | 49–74 |
| Non-AD | 43 | 28 | 15 | 62.91 | 8.27 | 42–79 |
Figure 1Brain map encoding with colors the regions of interest used in this work. They are known to be particularly useful for AD diagnosis and are widely used in literature (Rodriguez-Vieitez et al., 2016). Axial slices at −36, −30, −24, …, 66 mm from the anterior commissure are shown.
Figure 2Areas with significant differences (p < 0.05, FWE) between groups in 18F-FBB PET data. The color scale codifies the t-statistic values (values below 4.81 are not significant).
AD target regions and areas with significant differences between AD and non-AD patients in 18F-FBB PET data.
| Medial temporal | 47171 mm | 432 mm (0.92 %) |
| Lateral temporal | 94907 mm | 36732 mm (38.70 %) |
| Precuneus | 24338 mm | 9693 mm (39.83 %) |
| Posterior cingulate | 2813 mm | 551 mm (19.57 %) |
| Anterior cingulate | 9603 mm | 5346 mm (55.67 %) |
| Frontal | 193730 mm | 10424 mm (5.38 %) |
| Occipital | 50117 mm | 6248 mm (12.47 %) |
| Striatum | 16326 mm | 0 mm (0.00 %) |
| Thalami | 7422 mm | 0 mm (0.00 %) |
| Parietal | 50763 mm | 4715 mm (9.29 %) |
The differences were determined by means of a t-test analysis.
Figure 3SUVR of the 10 target regions described in section 2.3. The values are grouped into 4 groups according to: (i) the class they belong to (AD or non-AD) and (ii) how they were calculated (using all voxels (classical approach) or using only gray-matter voxels (proposed approach)). On each blue box, the central mark indicates the median, and the bottom and top edges of the box indicate the 25th and 75th percentiles, respectively.
F-statistics and corresponding p-values to determine whether AD and non-AD patients have different mean on target regions.
| Medial temporal | 7.9922 | 0.0058 | 6.6137 | 0.0117 |
| Lateral temporal | 50.3387 | 0.0000 | 53.6227 | 0.0000 |
| Precuneus | 27.7957 | 0.0000 | 34.3257 | 0.0000 |
| Posterior cingulate | 4.5438 | 0.0357 | 13.6022 | 0.0004 |
| Anterior cingulate | 37.1421 | 0.0000 | 41.8245 | 0.0000 |
| Frontal | 15.2235 | 0.0002 | 18.1024 | 0.0001 |
| Occipital | 17.4945 | 0.0001 | 17.9269 | 0.0001 |
| Striatum | 6.2384 | 0.0143 | 12.1945 | 0.0007 |
| Thalami | 0.0437 | 0.8349 | 0.7259 | 0.3964 |
| Parietal | 19.0551 | 0.0000 | 22.6125 | 0.0000 |
Figure 4Fisher's discriminant ratio for SUVRs of target regions. Blue: Rates for SUVRs computed using all the voxels in the region. Red: Rates for SUVRs calculated using only gray-matter voxels. Larger values mean larger distances between groups.
Classification measures obtained by a SVM classifier when separating AD and non-AD subjects using 18F-FBB PET data.
| SUVR (all voxels) | 81.91 | 78.43 | 86.05 |
| SUVR (gray-matter voxels) | 82.98 | 76.47 | 90.70 |
| Voxel intensity (all voxels) | 81.91 | 80.39 | 83.72 |
| Voxel intensity (gray-matter voxels) | 86.17 | 84.31 | 88.37 |
Figure 5Intermediate accuracies obtained in the cross-validation procedure. Blue boxes and circled dots represent accuracies' range and median respectively.
Figure 6ROC curves for the 4 SVM procedures implemented in this work.
Weight assigned to each target region by a SVM classifier that used the SUVRs of those regions as feature.
| Medial temporal | 0.09 | 0.17 |
| Lateral temporal | −1.90 | −2.28 |
| Precuneus | −0.68 | −0.88 |
| Posterior cingulate | 0.37 | 0.50 |
| Anterior cingulate | −0.81 | −0.90 |
| Frontal | 1.10 | 1.45 |
| Occipital | 0.54 | 0.55 |
| Striatum | 0.31 | 0.48 |
| Thalami | 0.29 | −0.16 |
| Parietal | 0.12 | 0.16 |
Two approaches to calculate SUVRs were assessed: using all the voxels in the region (center column) and using only gray-matter voxels in the region (right column).
Figure 7Weight assigned to each voxel by a SVM classifier trained using the intensity of all voxels as feature (left) and using the intensity of gray-matter voxels as feature (right).