| Literature DB >> 26189091 |
Julie Staals1, Tom Booth2, Zoe Morris3, Mark E Bastin4, Alan J Gow5, Janie Corley6, Paul Redmond6, John M Starr6, Ian J Deary2, Joanna M Wardlaw7.
Abstract
Cerebral small vessel disease (SVD) may cause cognitive dysfunction. We tested the association between the combined presence of magnetic resonance imaging (MRI) features of SVD and cognitive ability in older age. Cognitive testing and brain MRI were performed in 680 older participants. MRI presence of lacunes, white matter hyperintensities, microbleeds, and perivascular spaces were summed in a score of 0-4 representing all SVD features combined. We also applied latent variable modeling to test whether the 4 MRI features form a unitary SVD construct. The SVD score showed significant associations with general cognitive ability. Latent variable modeling indicated that the 4 MRI markers formed a unitary construct, which showed consistent associations with cognitive ability compared with the SVD score. Total MRI load of SVD is associated with lower general cognitive ability in older age. The total SVD score performed consistently with the more complex latent variable model, suggesting validity and potential utility in future research for determining total SVD load.Entities:
Keywords: Cerebral microbleeds; Cerebral small vessel disease; Cerebrovascular disease; Cognitive aging; Lacunes; MRI; Perivascular spaces; White matter hyperintensities
Mesh:
Year: 2015 PMID: 26189091 PMCID: PMC4706154 DOI: 10.1016/j.neurobiolaging.2015.06.024
Source DB: PubMed Journal: Neurobiol Aging ISSN: 0197-4580 Impact factor: 4.673
Participant characteristics
| Clinical and radiological variables | All participants, N= 680 |
|---|---|
| Age, mean (SD), years at MRI scanning | 72.7 (0.7) |
| Male sex, No. (%) | 359 (52.8) |
| History of TIA or stroke, No. (%) | 47 (6.9) |
| Cardiovascular disease, No. (%) | 183 (26.9) |
| Diabetes, No. (%) | 70 (10.3) |
| High blood pressure, No. (%) | 334 (49.1) |
| SBP, mean (SD), mmHg | 148.9 (19.0) |
| DBP, mean (SD), mmHg | 78.1 (9.6) |
| BMI, mean (SD) | 27.9 (4.5) |
| Total cholesterol, mean (SD), mmol/L | 5.1 (1.1) |
| Smoking, ever, No. (%) | 364 (53.5) |
| Alcohol use, mean (SD), units/week | 10.5 (14.3) |
| MRI markers | |
| WMH, No. (%) | 154 (22.6) |
| Perivascular spaces, No. (%) | 276 (40.6) |
| Microbleeds, No. (%) | 79 (11.6) |
| Lacunes, No. (%) | 33 (4.9) |
| WMH Fazekas score, median (range) | |
| Periventricular | 1 (0–3) |
| Deep | 1 (0–3) |
| Cerebral atrophy score, median (range) | 7 (2–12) |
Key: BMI, body mass index; DBP, diastolic blood pressure; MRI, magnetic resonance imaging; SBP, systolic blood pressure; SD, standard deviation; TIA, transient ischemic attack; WMH, white matter hyperintensities.
Mean of 3 sitting blood pressure measurements.
24 (3.5%) missing.
Defined as in the simple SVD scale.
Cerebral small vessel disease score
| SVD score, no. (%) | All participants, N = 680 |
|---|---|
| 0 | 302 (44.4) |
| 1 | 249 (36.6) |
| 2 | 98 (14.4) |
| 3 | 27 (4.0) |
| 4 | 4 (0.6) |
Key: SVD, small vessel disease.
Linear regression models of associations between cognitive abilities and SVD
| N | Processing speed | Memory | |||||
|---|---|---|---|---|---|---|---|
| SVD scale | 680 | −0.131 (0.041) | 0.001 | −0.062 (0.036) | 0.084 | −0.063 (0.037) | 0.089 |
| + age, sex, IQ11, vasc. health, cerebral atrophy | 622 | −0.082 (0.034) | 0.017 | −0.039 (0.038) | 0.306 | −0.084 (0.039) | 0.032 |
| Latent SVD | 680 | −0.165 (0.048) | 0.001 | −0.117 (0.041) | 0.004 | −0.034 (0.041) | 0.412 |
| + age, sex, IQ11, vasc. health, cerebral atrophy | 622 | −0.085 (0.045) | 0.061 | −0.083 (0.041) | 0.054 | −0.049 (0.042) | 0.243 |
| SVD scale without WMH | 680 | −0.143 (0.054) | 0.008 | −0.045 (0.047) | 0.339 | −0.077 (0.049) | 0.116 |
| + age, sex, IQ11, vasc. health, cerebral atrophy | 622 | −0.101 (0.045) | 0.025 | −0.022 (0.049) | 0.654 | −0.070 (0.051) | 0.170 |
Bonferroni adjusted p-value for statistical significance of 0.0014.
Key: IQ11, IQ at age 11 (prior cognitive ability); SE, standard error; SVD, small vessel disease; total, cholesterol; vasc. health, vascular health status (history of TIA/stroke, cardiovascular disease, diabetes, hypertension, ever smoking, body mass index, total cholesterol, alcohol use).
Fig. 1Structural equation modeling diagram for the SVD latent variable construct. All factor loadings are unstandardized and significant (p < 0.001). Unstandardized loadings are interpreted as the raw unit increase in the indicator per standard deviation (SD) increase in the latent construct, e.g. an 1 SD increase in SVD latent variable leads to an increase of approximately 1.7 visible microbleeds. P-WMH, periventricular WMH Fazekas rating; D-WMH, deep WMH Fazekas rating; Perivasc.Sp. perivascular spaces.