| Literature DB >> 34581847 |
Alexis Moscoso1,2, Jesús Silva-Rodríguez1, Jose Manuel Aldrey3, Julia Cortés1, Juan Manuel Pías-Peleteiro3, Álvaro Ruibal1,4, Pablo Aguiar5,6.
Abstract
PURPOSE: Recent evidence suggests that PET imaging with amyloid-β (Aβ) tracers can be used to assess myelin integrity in cerebral white matter (WM). Alzheimer's disease (AD) is characterized by myelin changes that are believed to occur early in the disease course. Nevertheless, the extent to which demyelination, as measured with Aβ PET, contributes to AD progression remains unexplored.Entities:
Keywords: 18F-florbetapir; Alzheimer; Myelin; Progression; White matter
Mesh:
Substances:
Year: 2021 PMID: 34581847 PMCID: PMC8921113 DOI: 10.1007/s00259-021-05493-y
Source DB: PubMed Journal: Eur J Nucl Med Mol Imaging ISSN: 1619-7070 Impact factor: 9.236
Demographic and biomarker characteristics of the study participants
| A- CN | A + CN | A + MCI | A + AD | |
|---|---|---|---|---|
| Age, y | 72.2 (6.0) | 75.4 (5.9) | 73.1 (6.8) | 74.1 (8.4) |
| Women, n, % | 79, 47% | 52, 70% | 103, 43% | 49, 45% |
| APOE ε4 carriers, n, % | 34, 20% | 35, 47% | 159, 67% | 84, 76% |
| Education, y | 17 (12–20) | 16 (12–20) | 16 (9–20) | 16 (9–20) |
| ADAS-Cog 13 | 8.5 (4.3) | 9.5 (4.3) | 17.1 (6.9) | 31.6 (8.5) |
| CSF Aβ-42, pg/ml | 1596 (351–3462) | 781 (203–2717) | 711 (267–2345) | 583 (256–1694) |
| CSF p-tau181, pg/ml | 17.8 (8.0–50.8) | 24.2 (10.3–60.0) | 29.5 (10.2–92.1) | 34.4 (14.8–83.3) |
| Plasma NfL, pg/ml | 29.2 (8.0–282.2) | 36.0 (14.1–74.5) | 38.6 (12.0–124.4) | 42.4 (19.8–138.9) |
| WMH volume, cm3 | 0.2 (0–26.0) | 1.3 (0–44.7) | 0.9 (0–27.6) | 1.7 (0–25.6) |
Age and cognitive data (ADAS-Cog 13) were reported as mean (standard deviation). Education years, fluid biomarker levels, and white matter hyperintensity volume were reported as median (range)
Fig. 1Reduced FBP retention in WMH compared to NAWM. (A) SUVR difference between NAWM and WMH, across the different AD stages. All the groups showed higher NAWM SUVR (p < 0.001). (B) Examples of two study participants showing reduced FBP retention in WMH
Fig. 2Association between baseline adjusted FBP SUVR in NAWM and longitudinal WMH volume change. Red solid line depicts the regression line. Dashed lines represent 95% confidence intervals. We reported the (unadjusted for covariates) Pearson correlation coefficient describing the correlation between these two variables
Fig. 3FBP retention in the WM across the AD spectrum. (A) Voxel-wise analyses, adjusted for age, sex, and cortical FBP SUVR, contrasting SUVR levels in the WM of the different AD stages (the A- CN cohort was used as the reference). Statistical maps were thresholded using a pFDR < 0.001. (B) Boxplots describing group-level adjusted SUVR in NAWM and WMH
Fig. 4Associations of adjusted SUVR in NAWM and WMH with CSF and plasma biomarkers. Analyses were performed stratified by Aβ status. We reported the (unadjusted for covariates) Pearson correlation coefficient describing the correlation between the two represented variables
Linear model coefficients accounting for the effects of demographic factors, cortical FBP SUVR, and adjusted NAWM and WMH FBP SUVR on CSF and plasma biomarkers among A + individuals
| A + | |||
|---|---|---|---|
| CSF Aβ-42 | CSF p-tau181 | Plasma NfL | |
| Model 1 coefficients | |||
| Age | -0.02 | 0.00 | |
| Female sex | |||
| MCI | 0.20 | 0.21 | |
| AD | 0.00 | ||
| Cortical SUVR | |||
| Adjusted NAWM SUVR | |||
| Model 2 coefficients | |||
| Age | -0.01 | 0.03 | |
| Female sex | |||
| MCI | 0.06 | ||
| AD | -0.24 | ||
| Cortical SUVR | 0.05 | 0.04 | |
| Adjusted WMH SUVR | - | -0.07 | |
Linear models including age, sex, clinical diagnosis, cortical FBP SUVR, and NAWM (Model 1) or WMH (Model 2) FBP SUVR as covariates were fitted to describe fluid biomarker levels (dependent variables). Model coefficients of continuous variables were reported as standardized βs. Categorical variable coefficients describe the change in z-score units of fluid biomarkers (references were CN and male sex)
*p < 0.05, **p < 0.01, ***p < 0.001
Linear mixed model time-interaction coefficients accounting for the effects of demographics, WMH volume, cortical FBP SUVR, and adjusted NAWM FBP SUVR on longitudinal change in ADAS-Cog 13
| A- CN | A + CN | A + MCI | |
|---|---|---|---|
| Coefficients | |||
| Age × time | 0.02 | 0.00 | |
| Female sex × time | 0.03 | 0.02 | |
| Education × time | 0.02 | 0.02 | |
| WMH × time | 0.01 | 0.00 | 0.01 |
| Cortical SUVR × time | 0.02 | ||
| Adjusted NAWM SUVR × time | 0.00 | ||
Linear mixed models included fixed effects of age, sex, education years, WMH volume, cortical FBP SUVR, and adjusted NAWM FBP SUVR, as well as their interactions with time. Coefficients represent the annual change in ADAS-Cog 13 (in baseline standard deviation units) with 1 standard deviation change of the baseline covariate.
*p < 0.05, **p < 0.01, ***p < 0.001
Fig. 5Associations between dichotomous adjusted FBP SUVR in NAWM and longitudinal clinical decline. (A) Estimated average trajectories of ADAS-Cog 13 for subjects with non-pathological NAWM uptake (NAWM-) (blue line) or pathological NAWM uptake (NAWM+) (red line), stratified in A- CN, preclinical AD, and prodromal AD groups. Group trajectories were estimated using covariate-unadjusted linear mixed models with subject-specific intercepts. Model coefficients (B) indicate the increase in annual rate of change of ADAS-Cog 13 in the NAWM+ uptake group compared to the NAWM- group. B) Kaplan–Meier survival curves describing the risk of progression to MCI (A- CN and A+ CN) or AD dementia (A+ MCI) for the NAWM- and NAWM+ uptake groups. HR represent covariate-unadjusted Cox-based hazard ratios