| Literature DB >> 31736739 |
Derrick L Cheng1, Louisa Thompson2, Peter J Snyder2,3.
Abstract
INTRODUCTION: The utility of subjective memory impairment (SMI) as a risk marker for preclinical Alzheimer's disease (AD) remains unclear; however, recent studies have identified a correlation between retinal biomarkers and onset of preclinical disease. This study examines the relationship between retinal biomarkers that have been associated with cerebral amyloid, an early hallmark of AD, and SMI scores in patients at risk for developing AD.Entities:
Keywords: Alzheimer’s disease; preclinical Alzheimer’s disease; retinal biomarkers; retinal nerve fiber layer; subjective cognitive decline; subjective memory impairment
Year: 2019 PMID: 31736739 PMCID: PMC6830450 DOI: 10.3389/fnagi.2019.00288
Source DB: PubMed Journal: Front Aging Neurosci ISSN: 1663-4365 Impact factor: 5.750
Participant demographic information and baseline, 27-month, and change scores values for self-report variables and RNFL volumes.
| Age (years) | 63.06 | 5.42 | 53, 75 |
| Education (years) | 17.21 | 2.77 | 12, 24 |
| Sex | |||
| Female | 57.14% | ||
| Male | 42.86% | ||
| ApoE genotype | |||
| ε2/ε3 | 12.22% | ||
| ε3/ε3 | 42.86% | ||
| ε3/ε4 | 38.78% | ||
| ε4/ε4 | 6.122% | ||
| ApoE4 gene dose | 0.51 | 0.62 | 0, 2 |
| MMSE (baseline) | 29.00 | 1.02 | 27, 30 |
| MMSE (27 months) | 29.18 | 1.34 | 26, 30 |
| Baseline values | |||
| MAC-Q | 26.12 | 3.27 | 19, 33 |
| DASS-D | 2.73 | 4.63 | 0, 22 |
| DASS-A | 2.16 | 3.08 | 0, 12 |
| DASS-S | 5.92 | 4.70 | 0, 18 |
| RNFL | 0.23 | 0.02 | 0.19, 0.28 |
| 27-month values | |||
| MAC-Q | 21.61 | 2.64 | 16, 28 |
| DASS-D | 2.65 | 4.53 | 0, 26 |
| DASS-A | 2.02 | 3.14 | 0, 18 |
| DASS-S | 4.73 | 4.18 | 0, 14 |
| RNFL | 0.21 | 0.02 | 0.17, 0.30 |
| Change values | |||
| MAC-Q | –4.51 | 2.93 | −10, 3 |
| DASS-D | –0.08 | 4.51 | −17, 17 |
| DASS-A | –0.14 | 2.87 | −8, 11 |
| DASS-S | –1.18 | 3.92 | −10, 9 |
| RNFL | –0.02 | 0.02 | −0.05, 0.04 |
FIGURE 1Individual regression models for MACQ_27 using baseline RNFL volumes (RNFL) as the dependent variable.
FIGURE 6Individual regression models for dDASSA using change in RNFL volume (dRNFL) as the dependent variable.
Statistical results from multivariate model with RNFL_27 as a dependent variable.
| MACQ_27 | 0.15 | 0.02 | 5.93 | 4E−07 | 0.10 | 0.20 |
| DASSA_27 | 1.02E−3 | 1.08E−3 | 0.95 | 0.35 | −1.14E−3 | 3.19E−3 |
| dDASSA | 2.70E−3 | 1.16E−3 | 2.32 | 0.02 | 0.36E−3 | 5.04E−3 |
Statistical results from multivariate model with dRNFL as a dependent variable.
| MACQ_27 | −0.04 | 0.02 | –2.41 | 0.02 | −0.08 | −0.01 |
| DASSA_27 | 1.33E−3 | 0.80E−3 | 1.65 | 0.11 | −0.29E−3 | 2.94E−3 |
| dDASSA | 1.00E−3 | 0.87E−3 | 1.16 | 0.25 | −0.74E−3 | 2.75E−3 |