| Literature DB >> 30475770 |
Christopher G Schwarz1, Jeffrey L Gunter1,2, Val J Lowe1, Stephen Weigand3, Prashanthi Vemuri1, Matthew L Senjem1,2, Ronald C Petersen4, David S Knopman4, Clifford R Jack1.
Abstract
Longitudinal PET studies in aging and Alzheimer's disease populations rely on accurate and precise measurements of change over time from serial PET scans. Various methods for partial volume correction (PVC) are commonly applied to such studies, but existing comparisons and validations of these PVC methods have focused on cross-sectional measurements. Rate of change measurements inherently have smaller magnitudes than cross-sectional measurements, so levels of noise amplification due to PVC must be smaller, and it is necessary to re-evaluate methods in this context. Here we compare the relative precision in longitudinal measurements from serial amyloid PET scans when using geometric transfer matrix (GTM) PVC versus the traditional two-compartment (Meltzer-style), three-compartment (Müller-Gärtner-style), and no-PVC approaches. We used two independent implementations of standardized uptake value ratio (SUVR) measurement and PVC (one in-house pipeline based on SPM12 and ANTs, and one using FreeSurfer 6.0). For each approach, we also tested longitudinal-specific variants. Overall, we found that measurements using GTM PVC had significantly worse relative precision (unexplained within-subject variability ≈4-8%) than those using two-compartment, three-compartment, or no PVC (≈2-4%). Longitudinally-stabilized approaches did not improve these properties. This data suggests that GTM PVC methods may be less suitable than traditional approaches when measuring within-person change over time in longitudinal amyloid PET.Entities:
Keywords: Amyloid PET; Pittsburgh Compound B; SUVR; change over time; geometric transfer matrix; partial volume zzm321990correction; precision
Mesh:
Substances:
Year: 2019 PMID: 30475770 PMCID: PMC6398556 DOI: 10.3233/JAD-180749
Source DB: PubMed Journal: J Alzheimers Dis ISSN: 1387-2877 Impact factor: 4.472
Subject Demographics
| Characteristic | Summary |
| Number of subjects | 278 |
| Sex, | |
| Female | 108 (39%) |
| Male | 170 (61%) |
| Age at baseline PET, y | 75 (70, 79) [51, 93] |
| Education, years | 15 (12, 17) [0, 24] |
| Global cortical PIB, SUVR | 1.39 (1.31, 2.02) [1.13, 3.20] |
| Diagnosis at baseline, | |
| CU | 179 (64%) |
| MCI | 62 (22%) |
| Dementia | 37 (13%) |
| APOE | |
| Carrier | 102 (37%) |
| Non-carrier | 176 (63%) |
| MMSE score | 28 (27, 29) [ |
| Time between first and | 3.7 (2.5, 4.1) [ |
| third scan, y | |
| Time between corresponding | 7 (1, 20) [0, 148] |
| MRI and PET scans, daysa |
Values are given as: median (1st quartile, 3rd quartile) [min to max] or number (percent) n, number of subjects; CU, clinically unimpaired; MCI, mild cognitive impairment; APOE, apolipoprotein E; MMSE, Mini-Mental State Examination. aBased on all scans for all individuals.
Fig.1Relationship between PiB PET SUVR values as computed by the FreeSurfer versus Mayo pipelines. The black line indicates the identity line (y = x) and the blue line a fit from a linear regression model. Each plot gives the coefficient of determination (R2) from the regression model.
Fig.2Coefficient of variation (CV) in PiB PET SUVR when using each combination of measurement pipeline, PVC, and reference region. CV was estimated from a linear mixed-effects model of log-transformed SUVR values using 3 timepoints of PiB PET scans (n = 278 subjects) with corresponding MRI. CVs with GTM PVC were consistently significantly larger (worse) than when using 2-compartment PVC or no PVC.
Fig.3Difference between the annual rate of increase in PiB PET SUVR in clinically impaired versus that in clinically unimpaired subjects, when using each combination of measurement pipeline, PVC type, and reference region. Slopes for each group were assessed using a linear mixed-effects model of log-transformed SUVR values with separate fixed effect slopes and intercepts by impairment status. All methods showing differences > zero were considered equally plausible (we assume that amyloid should increase faster in impaired subjects, but the exact ground-truth difference is unknown). We plot difference in annualized SUVR change (y axis) as a percentage, rather than unscaled, to allow for comparison across methods and reference regions that have differing SUVR unit scales. Methods using GTM PVC produced group-wise differences that were larger but with much wider confidence intervals.