| Literature DB >> 23457645 |
Marion Mortamais1, Christelle Reynes, Adam M Brickman, Frank A Provenzano, Jordan Muraskin, Florence Portet, Claudine Berr, Jacques Touchon, Alain Bonafé, Emmanuelle le Bars, Jerome J Maller, Chantal Meslin, Robert Sabatier, Karen Ritchie, Sylvaine Artero.
Abstract
CONTEXT: White matter lesions (WML) increase the risk of dementia. The relevance of WML location is less clear. We sought to determine whether a particular WML profile, based on the density and location of lesions, could be associated with an increased risk of mild cognitive impairment (MCI) or dementia over the following 7 years.Entities:
Mesh:
Year: 2013 PMID: 23457645 PMCID: PMC3572965 DOI: 10.1371/journal.pone.0056972
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Characteristics of the study participants (n = 426).
| Mean (SD) | |
| Age at baseline (years) | 71.1 (4.0) |
| MMSE at baseline | 27.5 (1.8) |
| Duration of follow-up (years) | 5.4 (2.7) |
| Total brain volume (ml) | 1017 (101) |
| Brain atrophy (%) | 15.2 (2.4) |
| Hippocampal volume (ml) | 5.8(0.8) |
| WML (ml) | |
| Total | 1.78 (3.56) |
| Frontal region | 1.15 (2.31) |
| Parietal region | 0.56 (1.37) |
| Temporal region | 0.05 (0.13) |
| Occipital region | 0.03 (0.10) |
n = 424.
n = 418.
Figure 1Flow Chart.
Study design and flow of participants through the study.
Figure 2Decision tree (built using the data on total WML volume and on relative WML volume in the frontal, parietal, temporal and occipital regions as potential descriptors).
The three distribution patterns could be used to discriminate between subjects who developed MCI/dementia and subjects who remained cognitively stable. Sensitivity: 29%, specificity: 88%, positive predictive value: 46%, negative predictive value: 78%. Temporal WMLr: (temporal WML volume/total WML volume) ×100.
Characteristics of the different WML distribution patterns.
| Pattern 1 n = 318 | Pattern 2 n = 38 | Pattern 3 n = 70 | |
| Mean (SD) | |||
| Age (years) | 70.7(3.9) | 71.6(4.0) | 72.4(4.0) |
| Duration of follow-up (years) | 5.7(2.5) | 5.0(2.8) | 4.5(2.9) |
| Total brain volume (ml) | 1008(94) | 1056(134) | 1037(103) |
| Brain atrophy (%) | 14.9(2.2) | 16.6(3.3) | 15.8(2.6) |
| Hippocampal volume (ml) | 5.8(0.7) | 5.7(0.9) | 5.8(0.8) |
| Total WML volume (ml) | 0.45(0.40) | 5.4(5.2) | 5.9(5.6) |
| MMSE at baseline | 27.5(1.7) | 27.2(1.5) | 27.3(2.1) |
The characteristics of the three WML patterns were compared using ad hoc statistical tests (polytomous regressions for categorical variables, and ANOVA with Tukey's HSD comparison for continuous variables).
p value <0.05 versus Pattern 1.
p value <0.05 versus Pattern2.
n pattern 1 = 317, n pattern 2 = 37, n pattern 3 = 70.
n pattern 1 = 316, n pattern 2 = 36, n pattern 3 = 66.
Cox proportional-hazard regression models for transition to MCI/dementia during the 7-year follow-up (n = 426, n. of events = 111).
| Groups | ||||||
| Pattern 2 versus pattern 1 | Pattern 3 versus pattern 1 | Pattern 3 versus pattern 2 | ||||
| Models | HR (95% CI) |
| HR (95% CI) |
| HR (95% CI) |
|
| Model 1: Age | 1.04(0.50–2.18) | 0.91 | 2.60(1.69–3.99) | <0.01 | 2.49(1.13–5.47) | 0.02 |
| Model 2: model 1+History of vascular pathology, Hypertension | 1.04(0.49–2.17) | 0.93 | 2.58(1.66–4.00) | <0.01 | 2.49(1.13–5.46) | 0.02 |
| Model 3: model 2+APOE 4 genotype, Depressive symptomatology | 0.83(0.38–1.78) | 0.62 | 2.65(1.70–4.13) | <0.01 | 3.20(1.42–7.24) | <0.01 |
| Model 4: model 3+Total brain volume | 0.79(0.36–1.70) | 0.54 | 2.55(1.63–3.99) | <0.01 | 3.24(1.44–7.33) | <0.01 |
| Model 5 | 0.63(0.28–1.42) | 0.26 | 2.28(1.41–3.67) | <0.01 | 3.63(1.54–8.54) | <0.01 |
Cox proportional hazard regression models with delayed entry were performed with age as the basic timescale and birth as the time origin.
In model 5, n = 416 and n. of events = 108.