| Literature DB >> 24040166 |
Angela Rizk-Jackson1, Philip Insel, Ronald Petersen, Paul Aisen, Clifford Jack, Michael Weiner.
Abstract
This study aimed to identify baseline features of normal subjects that are associated with subsequent cognitive decline. Publicly available data from the Alzheimer's Disease Neuroimaging Initiative was used to find differences in baseline clinical assessments (ADAScog, AVLT, FAQ) between cognitively healthy individuals who will suffer cognitive decline within 48 months and those who will remain stable for that period. Linear regression models indicated an individual's conversion status was significantly associated with certain baseline neuroimaging measures, including posterior cingulate glucose metabolism. Linear Discriminant Analysis models built with baseline features derived from MRI and FDG-PET measures were capable of successfully predicting whether an individual will convert to MCI within 48 months or remain cognitively stable. The findings from this study support the idea that there exist informative differences between normal people who will later develop cognitive impairments and those who will remain cognitively stable for up to four years. Further, the feasibility of developing predictive models that can detect early states of cognitive decline in seemingly normal individuals was demonstrated.Entities:
Mesh:
Year: 2013 PMID: 24040166 PMCID: PMC3767625 DOI: 10.1371/journal.pone.0074062
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Subject population demographics.
| NC (n = 41) | CNV (n = 16) | p-value | |
| Age (years, mean±SD) | 75.93±4.59 | 76.58±5.27 | 0.32 |
| Gender (%M) | 48.8 | 56.2 | 0.77 |
| Education (years, mean±SD) | 16.49±2.71 | 16.06±2.91 | 0.55 |
| Family history of AD (%Yes) | 44.8 | 57.1 | 0.53 |
| APOE4 carrier(%Yes, # Homozygote) | 26.8, 0 | 43.8, 1 | 0.34 |
Demographic information describing the population of individuals who remained stable over 4 years (NC) and those who converted to MCI within that same period (CNV). Mann-Whitney tests were used to compare continuous variables and Fisher’s Exact test were used to compare categorical variables.
Figure 1Distribution of scores on clinical assessments for converters and non-converters at baseline visit.
A) Boxplot and mean with 95% CIs showing scores on the ADAS-cognitive test. B) Boxplot and mean with 95% CIs showing scores on the AVLT test. C) Bar graph showing scores on the FAQ assessment.
Linear regression model results (a-priori measures).
| Type of measure | Region | p-value |
| MRI-derived Volume | Hippocampus | 0.019 (0.096) |
| ERC | 0.040 (0.100) | |
| PHC | 0.752 (0.840) | |
| Precuneus | 0.840 (0.840) | |
| PCC | 0.220 (0.367) | |
| MRI-derived Thickness | ERC | 0.033 (0.132) |
| PHC | 0.296 (0.395) | |
| Precuneus | 0.784 (0.784) | |
| PCC | 0.173 (0.346) | |
| FDG-PET regional mean | Posterior Cingulate | 0.007 (0.020) |
| L/R Angular | 0.109 (0.152) | |
| L/R Temporal | 0.152 (0.152) |
P-values describing the significant associations of a-priori measures of interest with the conversion status variable from linear regression analyses. P-values in parentheses are corrected for multiple comparisons across all similar a-priori measures.
Linear regression model results (exploratory analyses).
| Type of measure | Region | p-value |
| Volume | Amygdala | 0.009 (0.470) |
| Thalamus | 0.058 (0.633) | |
| Cortical Thickness | Pericalcarine | 0.014 (0.397) |
| Insula | 0.036 (0.397) | |
| Transverse Temporal | 0.062 (0.437) |
Selected p-values describing significant measures associated with conversion status from secondary linear regression analyses of all available measures. P-values in parentheses are corrected for multiple comparisons across all similar exploratory measures.
Figure 2ROC curve displaying performance of predictive models built using subsets of data including clinical measures, MRI-derived features, PET-derived features, and MRI-PET combined feature sets.