| Literature DB >> 31728712 |
Johan Birnefeld1, Anders Wåhlin2,3, Anders Eklund2,4, Jan Malm5.
Abstract
Cerebral small vessel disease (SVD) is a major cause of stroke and cognitive impairment. However, the underlying mechanisms behind SVD are still poorly understood. High cerebral arterial pulsatility has been suggested as a possible cause of SVD. In population studies, arterial pulsatility has been linked to white matter hyperintensities (WMH), cerebral atrophy, and cognitive impairment, all features of SVD. In stroke, pulsatility data are scarce and contradictory. The aim of this study was to investigate the relationship between arterial pulsatility and SVD in stroke patients. With a cross-sectional design, 89 patients with acute ischemic stroke or TIA were examined with MRI. A neuropsychological assessment was performed 1 year later. Using 4D flow MRI, pulsatile indices (PI) were calculated for the internal carotid artery (ICA) and middle cerebral artery (M1, M3). Flow volume pulsatility (FVP), a measure corresponding to the cyclic expansion of the arterial tree, was calculated for the same locations. These parameters were assessed for associations with WMH volume, brain volume and cognitive function. ICA-FVP was associated with WMH volume (β = 1.67, 95% CI: [0.1, 3.24], p = 0.037). M1-PI and M1-FVP were associated with decreasing cognitive function (β = - 4.4, 95% CI: [- 7.7, - 1.1], p = 0.009 and β = - 13.15, 95% CI: [- 24.26, - 2.04], p = 0.02 respectively). In summary, this supports an association between arterial pulsatility and SVD in stroke patients, and provides a potential target for further research and preventative treatment. FVP may become a useful biomarker for assessing pulsatile stress with PCMRI and 4D flow MRI.Entities:
Keywords: 4D flow MRI; Pulsatile index; Pulsatility; Small vessel disease; White matter hyperintensities
Mesh:
Year: 2019 PMID: 31728712 PMCID: PMC7035303 DOI: 10.1007/s00415-019-09620-6
Source DB: PubMed Journal: J Neurol ISSN: 0340-5354 Impact factor: 4.849
Fig. 1Angiogram generated from PC-VIPR complex difference image. Cerebral arterial pulsatility was measured in the cavernous segment of the internal carotid arteries (1, 2) and in the M1- (3, 4) and M3 (5, 6) segments of the middle cerebral arteries
Fig. 2Example waveforms from internal carotid artery. a Pulsatility index was calculated as the difference between systolic maximum and diastolic minimum flow rates divided by the mean flow rate. b Flow volume pulsatility (FVP) was calculated as the cumulative integral of the blood flow rate waveform after subtraction of the mean flow rate. FVP was defined as the difference between the systolic maximum and the diastolic minimum volumes. The curve has been shifted vertically, so that minimum volume corresponds to zero. Both measures were further standardized by R–R interval
Demographic data
| Small vessel disease* | Non-small vessel disease | |
|---|---|---|
| 41 (46.1) | 48 (53.9) | |
| Age, years (SD) | 72.1 (9.2) | 68.5 (8.3) |
| Women, | 15 (36.6) | 12 (25.0) |
| Stroke, | 31 (75.6) | 33 (68.8) |
| NIHSS, median (IQR) | 1 (0–2) | 0 (0–1) |
| Etiology, | ||
| Large artery atherosclerosis | 11 (26.8) | 15 (31.3) |
| Lacunar | 12 (29.6) | – |
| Cardio-aortic embolus | 7 (17.1) | 5 (10.4) |
| Other | 1 (2.4) | 2 (4.2) |
| Cryptogenic | 10 (24.4)† | 26 (54.2)† |
| Location, | ||
| Cortical | 5 (12.2) | 10 (20.8) |
| Subcortical | 12 (29.3)† | 3 (6.3)† |
| Mixed cortical/subcortical | 7 (17.1) | 11 (22.9) |
| Infratentorial | 6 (14.6) | 4 (8.3) |
| No lesion | 11 (26.8) | 20 (41.7) |
| Risk factors, | ||
| Hypertension | 34 (82.9) | 43 (89.6) |
| Hyperlipidemia | 35 (87.5) | 44 (91.7) |
| Diabetes mellitus | 6 (14.6) | 7 (14.6) |
| Previous cerebrovascular disease | 5 (12.2) | 5 (10.4) |
| Ischemic heart disease | 8 (19.5) | 10 (20.8) |
| Peripheral artery disease | 2 (4.9) | 1 (2.2) |
| Smoking | 22 (53.7) | 28 (62.2) |
| Antihypertensive treatment, | ||
| Beta blockers | 18 (37.5) | 17 (41.5) |
| RAAS inhibitors | 31 (64.6) | 26 (63.4) |
| Calcium channel blockers | 20 (41.7) | 12 (29.3) |
| Diuretics | 14 (29.2) | 15 (36.6) |
| Blood pressure, mean (SD) | ||
| Systolic | 148.0 (21.6) | 146.8 (18.2) |
| Diastolic | 78.5 (9.5) | 78.4 (10.9) |
| Mean arterial pressure | 101.7 (12.4) | 101.2 (11.8) |
| WMH, mean (SD) | ||
| Fazekas score, PVWM | 1.88 (0.87)† | 0.79 (0.71)† |
| Fazekas score, DWM | 1.63 (0.86)† | 0.71 (0.54)† |
| Fazekas score, total | 3.51 (1.60)† | 1.50 (1.11)† |
| Volume, % ICV, median (IQR) | 0.64 (0.17–1.35)† | 0.11 (0.05–0.24)† |
| TBV, mean (SD) | ||
| Volume, % ICV | 64.6 (6.7)† | 68.1 (5.1)† |
NIHSS National Institutes of Health Stroke Scale, WMH white matter hyperintensities, PVWM periventricular white matter, DWM deep white matter, ICV intracranial volume, TBV total brain volume
*Defined as presence of either total Fazekas score ≥ 4, small recent cortical infarct, lacune, or >2 microbleeds
†p < 0.05
Regression analysis
| Outcome | Significant predictors | 95% CI | ||
|---|---|---|---|---|
| WMH, % ICV* | ||||
| Age | 0.06 | [0.03, 0.09] | < 0.001 | |
| Hypertension | 0.83 | [0.26, 1.4] | 0.005 | |
| TCBF | − 0.006 | [− 0.009, − 0.004] | < 0.001 | |
| TBV, % ICV‡ | Age | − 0.34 | [− 0.47, − 0.22] | < 0.001 |
| Female sex | 4.17 | [2.17, 6.18] | < 0.001 | |
| MAP | 0.09 | [0.01, 0.17] | 0.025 | |
| TCBF | 0.02 | [0.006, 0.03] | 0.003 | |
| Cognitive function‡ ( | − | |||
| Age | − 0.33 | [− 0.47, − 0.2] | < 0.001 | |
| Female sex | 3.84 | [1.02, 6.67] | 0.008 | |
| MAP | − 0.13 | [− 0.22, − 0.04] | 0.006 |
Independent predictors of outcomes from generalized linear models using all patients. Values represent beta coefficients (95% CI) from the overall best-fitting model for each outcome. Model adjusted for age, sex, MAP, hypertension, and tCBF. Measures of cerebral arterial pulsatility in bold
WMH white matter hyperintensities, TBV total brain volume, ICV Intracranial volume, TCBF total cerebral blood flow, FVP flow volume pulsatility, MAP mean arterial pressure
*Gamma distribution, log link
‡Linear distribution, identity link
Regression analysis in patients with small vessel disease
| Outcome | Significant predictors | 95% CI | ||
|---|---|---|---|---|
| WMH, % ICV* | ||||
| Age | 0.04 | [0.008, 0.08] | 0.016 | |
| Hypertension | 0.81 | [0.13, 1.49] | 0.019 | |
| TCBF | − 0.007 | [− 0.01, − 0.003] | < 0.001 | |
| TBV, % ICV‡ | − | |||
| Age | − 0.3 | [− 0.48, − 0.12] | 0.001 | |
| MAP | 0.16 | [0.04, 0.27] | 0.009 | |
| TCBF | 0.03 | [0.006, 0.05] | 0.009 |
Independent predictors of outcomes from generalized linear models in patients with small vessel disease. Values represent beta coefficients (95% CI) from the overall best-fitting model for each outcome. Model adjusted for age, sex, MAP, hypertension, and tCBF. Measures of cerebral arterial pulsatility in bold
WMH white matter hyperintensities, TBV total brain volume, ICV intracranial volume, TCBF total cerebral blood flow, FVP flow volume pulsatility, MAP mean arterial pressure
*Gamma distribution, log link
‡Linear distribution, identity link