BACKGROUND: White matter hyperintensities are the commonest manifestation of cerebral small vessel disease, associated with stroke, functional impairment, and cognitive decline. They are commonly preceded by hypertension, but the magnitude and clinical importance of this association is unclear. AIMS: Quantify the relationship between blood pressure and white matter hyperintensities across studies. METHODS: PubMed and EMBASE were searched for studies reporting associations between concurrent or historic blood pressure and white matter hyperintensities. Beta coefficients from linear models were extracted, whether standardized, unstandardized, unadjusted or adjusted for age, sex, and cardiovascular risk factors. Beta-coefficients were combined by fixed and random effects meta-analysis, combining standardized beta-coefficients or unstandardized coefficients measured by consistent methods. RESULTS: Twenty-five of 3230 papers were eligible, including 53,392 participants. Systolic blood pressure was significantly associated with white matter hyperintensity volume (WMHV) after maximal adjustment (standardized beta 0.096, 95%CI 0.06-0.133, p < 0.001, I2 = 65%), including for concurrent readings (b = 0.106, p < 0.001) or readings five years previously (b = 0.077, p < 0.001), and for younger or older populations (mean age < 65: b = 0.114; >65 b = 0.069). Unstandardized, adjusted associations were similar for raw WMHV, log-transformed WMHV, or WMHV as percentage of intracranial volume. Unadjusted associations with systolic blood pressure (SBP) were greater (standardized beta = 0.273, 0.262-0.284, p < 0.0001). However, while associations with DBP were weaker than SBP (standardized beta = 0.065, p < 0.001), they were minimally affected by adjustment for age. CONCLUSIONS: A standard deviation increase in SBP is associated with 10% of a standard deviation increase in WMHV, providing the current best estimate of the potential reduction in progression of white matter hyperintensities expected with good control of blood pressure.
BACKGROUND: White matter hyperintensities are the commonest manifestation of cerebral small vessel disease, associated with stroke, functional impairment, and cognitive decline. They are commonly preceded by hypertension, but the magnitude and clinical importance of this association is unclear. AIMS: Quantify the relationship between blood pressure and white matter hyperintensities across studies. METHODS: PubMed and EMBASE were searched for studies reporting associations between concurrent or historic blood pressure and white matter hyperintensities. Beta coefficients from linear models were extracted, whether standardized, unstandardized, unadjusted or adjusted for age, sex, and cardiovascular risk factors. Beta-coefficients were combined by fixed and random effects meta-analysis, combining standardized beta-coefficients or unstandardized coefficients measured by consistent methods. RESULTS: Twenty-five of 3230 papers were eligible, including 53,392 participants. Systolic blood pressure was significantly associated with white matter hyperintensity volume (WMHV) after maximal adjustment (standardized beta 0.096, 95%CI 0.06-0.133, p < 0.001, I2 = 65%), including for concurrent readings (b = 0.106, p < 0.001) or readings five years previously (b = 0.077, p < 0.001), and for younger or older populations (mean age < 65: b = 0.114; >65 b = 0.069). Unstandardized, adjusted associations were similar for raw WMHV, log-transformed WMHV, or WMHV as percentage of intracranial volume. Unadjusted associations with systolic blood pressure (SBP) were greater (standardized beta = 0.273, 0.262-0.284, p < 0.0001). However, while associations with DBP were weaker than SBP (standardized beta = 0.065, p < 0.001), they were minimally affected by adjustment for age. CONCLUSIONS: A standard deviation increase in SBP is associated with 10% of a standard deviation increase in WMHV, providing the current best estimate of the potential reduction in progression of white matter hyperintensities expected with good control of blood pressure.
Entities:
Keywords:
Hypertension; blood pressure; meta-analysis; white matter hyperintensities
White matter hyperintensities (WMH) of presumed vascular origin are the commonest
manifestation of cerebral small vessel disease,
occurring in the majority of patients over 65 years of age and nearly all people by
90 years.
They are associated with up to 30% of strokes and 40% of dementia,
as well as later life refractory depression
and functional impairment.
They are most strongly associated with hypertension,
both systolic blood pressure, particularly in later life and diastolic blood
pressure, particularly in mid-life,
reflecting increased arterial pulsatility and increased arterial stiffness.
Intensive treatment of hypertension reduces progression of these markers of vascular
aging, and in post hoc analyses of clinical trials, it reduces rates of progression of WMH.
However, the magnitude of the potential benefit in preventing WMH by control of
hypertension is unclear, as well as the optimal time of intervention and blood pressure target.The relationship between SBP or DBP and WMH appears to interact with age. Systolic blood
pressure (SBP) increases linearly with age, while DBP initially rises before declining after
approximately 55 years of age for men and 58 years of age for women.
This reflects transition from mid-life hypertensive phenotypes characterized by
sympathetic overactivity, transitioning to late-life phenotypes characterized by increased
arterial stiffness, small vessel rarefraction, and greater arterial pulsatility in aging
blood vessels.
This interaction may therefore be reflected in the long-term relationship between SBP
or DBP with WMH.Therefore, we performed a systematic review and meta-analysis to estimate the magnitude of
the association between different blood pressure parameters and WMH, stratified by age and
time of exposure.
Methods
Search strategy
PubMed and EMBASE (via Health Database Advanced Search) were searched from database
inception to 1 December 2020, restricted to human studies in English (Supplementary Figure
1; Supplementary data – Search Strategy). Secondary searches were performed in the largest
studies in which the primary report did not provide adequate data to enable meta-analysis.
Included studies reported a quantitative association between blood pressure level (SBP,
DBP, mean blood pressure (MBP), or pulse pressure (PP) and WMH on magnetic resonance
imaging (MRI), assessed on either T2 or FLAIR imaging, using validated software for
calculation of WMH. Study titles, abstracts, and appropriate full texts were searched
sequentially (IW), with all potentially included full text articles independently reviewed
by two reviewers (AJSW, IW) in accordance with pre-specified criteria defined in the
protocol. Reference lists of relevant studies were also searched. Assessment of study
quality for included papers was carried out using the NIH study quality assessment tool.
Publication bias was assessed by funnel plots. The protocol for this search was
registered and published, via PROSPERO. The data that support the findings of this study
are available from the corresponding author upon reasonable request, and are all available
in published journals.
Data extraction
The primary extracted outcome was the beta coefficient between blood pressure index and
volume of WMH reported in linear models, where WMH volume was reported quantitatively,
whether raw, log-transformed, logged, or normalized to the intracranial volume.
Standardized and unstandardized beta-coefficients were included, adjusted and unadjusted
for covariates. Other variables extracted included demographics of the included population
(age, gender, blood pressure, arterial stiffness, comorbidities), study characteristics
(prospective vs. retrospective, cohort vs. case control vs. trial), inclusion/exclusion
criteria, interval between BP measurement and MRI imaging, method of quantification of
WMH, and details of analytical models (model type, univariate vs. multivariate analysis,
covariates included). Measures of uncertainty of variables were extracted where available,
including standard deviation (SD), standard error or interquartile range. Where possible,
unstandardized beta coefficients were converted to standardized via multiplication of the
coefficient by the ratio of SD of BP to SD of white matter hyperintensity volume (WMHV)
and vice versa. Where necessary, SD of WMHV was estimated from the interquartile range,
including for logged WMHV, by interquartile range/1.35, as recommended by the Cochrane Handbook.
Where the standard error of the beta-coefficient was not reported, it was estimated
from reported beta, p-value, and degrees of freedom of the model (n−1-number of
covariates), or else it was imputed by the ratio of the study size of the study in
question to the size of studies where an inverse variance could be determined.
Meta-analysis
Beta coefficients were combined by fixed and random effects meta-analysis, weighted by
the inverse variance.
Heterogeneity was assessed via I2 statistics and Χ2 test. The
primary analysis was a meta-analysis of standardized beta-coefficients adjusted for age,
gender, and cardiovascular risk factors, including results with at least adjustment for
age and gender. Further meta-analyses were performed including unadjusted, standardized
beta-coefficients and non-standardized beta-coefficients, unadjusted and adjusted,
stratified by whether WMH were logged or calculated as proportion of intracranial
volume.
Results
A total of 3230 papers were identified in the primary search, and 578 in secondary
searches. Following screening of titles, 1198 papers were reviewed as abstracts and 786
papers were reviewed in full, with 25 papers eligible for inclusion. Standardized beta
coefficients were reported or could be calculated in 12 papers (13 populations) for SBP,
nine papers for DBP, three papers for MBP, and two papers for PP. In total, there were
53,392 participants, with participant numbers ranging from 56 individuals to 37,026
individuals (Supplementary Table 1). The mean age ranged from 31.7 to 85.8, while the mean
WMHV ranged from 0.012 cm3 to 13.9 cm3.Of the 25 included papers, quality varied from poor to high, with the majority of papers of
moderate quality (Supplementary Table 2). There was limited evidence of publication bias
(Supplementary Figure 2), with evidence for reduced reporting of small studies with null or
negative associations, but not sufficient to have a significant impact on the summary
estimates.In 12 populations including 44,570 people, across all studies, increased systolic blood
pressure was significantly associated with increased severity of WMH (p < 0.001, Figure 1).[6,13-20] In univariate comparisons, without
adjustment for age, the standardized beta-coefficient was 0.273 (Supplementary Figure 3)
reducing to a mean 0.096 standardized beta-coefficient after adjustment for cardiovascular
risk factors, partially reflecting the strong association between age and SBP. This
represents an approximately 10% SD increase in WMH per SD increase in SBP. This was similar
even when excluding the largest study (Supplementary Figure 4).
Figure 1.
Standardized association between SBP and white matter hyperintensity volume (WMHV).
Results are shown for individual studies reporting standardized beta-coefficients,
with the maximally adjusted value from each study shown, with all reports adjusted for
at least age and sex. Results are combined by fixed and random effects meta-analysis,
weighted by the inverse variance, with heterogeneity presented as I2
statistics (I-sq), and the p-value for heterogeneity (p-het) determined by chi-squared
test. StdBeta: standardized beta; N: number.
Standardized association between SBP and white matter hyperintensity volume (WMHV).
Results are shown for individual studies reporting standardized beta-coefficients,
with the maximally adjusted value from each study shown, with all reports adjusted for
at least age and sex. Results are combined by fixed and random effects meta-analysis,
weighted by the inverse variance, with heterogeneity presented as I2
statistics (I-sq), and the p-value for heterogeneity (p-het) determined by chi-squared
test. StdBeta: standardized beta; N: number.Standardized beta-coefficients for the association between DBP and WMH were weaker
(β = 0.065, p < 0.001), although this difference was not significant (Figure 2). However, the standardized
beta-coefficient between DBP and WMHV was similar before and after adjustment for age and
other risk factors, reflecting the weaker relationship between DBP and age (Supplementary
Figure 3). In the limited studies reporting standardized beta-coefficients for MBP and PP,
there was no clear association between blood pressure and WMHV (Supplementary Figure 5).
Figure 2.
Standardized association between diastolic blood pressure and white matter
hyperintensity volume (WMHV). Results are shown for individual studies reporting
standardized beta-coefficients, with the maximally adjusted value from each study
shown, with all reports adjusted for at least age and sex. Results are combined by
fixed and random effects meta-analysis, weighted by the inverse variance, with
heterogeneity presented as I2 statistics(I-sq), and the p-value for
heterogeneity (p-het) determined by chi-squared test. StdBeta: standardized beta; N:
number.
Standardized association between diastolic blood pressure and white matter
hyperintensity volume (WMHV). Results are shown for individual studies reporting
standardized beta-coefficients, with the maximally adjusted value from each study
shown, with all reports adjusted for at least age and sex. Results are combined by
fixed and random effects meta-analysis, weighted by the inverse variance, with
heterogeneity presented as I2 statistics(I-sq), and the p-value for
heterogeneity (p-het) determined by chi-squared test. StdBeta: standardized beta; N:
number.In papers reporting unstandardized beta-coefficients, or where this could be estimated from
standardized beta-coefficients, SBP was consistently associated with WMHV, whether WMH were
log-transformed, divided by the intracranial volume or both (Figure 3). This corresponded to a 0.01 cm3
greater WMH per 1 mmHg increase in SBP in non-transformed associations, or a 0.011% increase
in the proportion of intracranial volume occupied by WMH. However, there was significant
heterogeneity in the five studies reporting results by log of WMH, limiting conclusions
about the magnitude of the effect.
Figure 3.
Unstandardized, adjusted associations between systolic blood pressure and white
matter hyperintensity volume (WMHV), stratified by whether WMHV were log-transformed
or expressed as a percentage of intracranial volume. Results are shown for studies
reporting standardized beta-coefficients, with the maximally adjusted value from each
study shown, with all reports adjusted for at least age and sex. Results are combined
by fixed and random effects meta-analysis, weighted by the inverse variance, with
heterogeneity presented as I2 statistics(I-sq), and the p-value for
heterogeneity (p-het) determined by chi-squared test. StdBeta: standardized beta; N:
number; ICV: intracranial volume. (a) WMHV not logged and not as proportion of ICV.
(b) WMHV logged but not as proportion of ICV. (c) WMHV not logged, expressed as a
percentage of ICV. (d) WMHV logged and expressed as a percentage of ICV.
Unstandardized, adjusted associations between systolic blood pressure and white
matter hyperintensity volume (WMHV), stratified by whether WMHV were log-transformed
or expressed as a percentage of intracranial volume. Results are shown for studies
reporting standardized beta-coefficients, with the maximally adjusted value from each
study shown, with all reports adjusted for at least age and sex. Results are combined
by fixed and random effects meta-analysis, weighted by the inverse variance, with
heterogeneity presented as I2 statistics(I-sq), and the p-value for
heterogeneity (p-het) determined by chi-squared test. StdBeta: standardized beta; N:
number; ICV: intracranial volume. (a) WMHV not logged and not as proportion of ICV.
(b) WMHV logged but not as proportion of ICV. (c) WMHV not logged, expressed as a
percentage of ICV. (d) WMHV logged and expressed as a percentage of ICV.Associations between SBP and WMH were not significantly different in populations with a
mean age below 65 (Figure 4)
compared to populations with a mean age greater than 65 but with greater heterogeneity
between studies (Supplementary Figure 6), while associations with DBP were similar in
younger and older populations, although only significant in the older age group.
Associations were also similar in studies reporting concurrent associations compared to
associations with blood pressure measured >2 or >5 years previously, for both SBP
(Figure 5) and DBP (Supplementary
Figure 7).
Figure 4.
Standardized, adjusted associations between systolic blood pressure and white matter
hyperintensity volume (WMHV), stratified by a mean age of greater than or less than
65. Results are shown for individual studies reporting standardized beta-coefficients,
with the maximally adjusted value from each study shown, with all reports adjusted for
at least age and sex. Results are combined by fixed and random effects meta-analysis,
weighted by the inverse variance, with heterogeneity presented as I2
statistics(I-sq), and the p-value for heterogeneity (p-het) determined by chi-squared
test. StdBeta: standardized beta; N: number. (a) Systolic blood pressure, mean age
less than 65. (b) Systolic blood pressure, mean age greater than 65.
Figure 5.
Standardized, adjusted associations between systolic blood pressure and white matter
hyperintensity volume (WMHV), stratified by time interval between blood pressure
measurement and MRI imaging. Results are shown for individual studies reporting
standardized beta-coefficients, with the maximally adjusted value from each study
shown, with all reports adjusted for at least age and sex. Results are combined by
fixed and random effects meta-analysis, weighted by the inverse variance, with
heterogeneity presented as I2 statistics(I-sq), and the p-value for
heterogeneity (p-het) determined by chi-squared test. StdBeta: standardized beta; N:
number. (a) Concurrent systolic blood pressure. (b) Systolic blood pressure measured
two or more years. (c) Systolic blood pressure measured five or more years
previously.
Standardized, adjusted associations between systolic blood pressure and white matter
hyperintensity volume (WMHV), stratified by a mean age of greater than or less than
65. Results are shown for individual studies reporting standardized beta-coefficients,
with the maximally adjusted value from each study shown, with all reports adjusted for
at least age and sex. Results are combined by fixed and random effects meta-analysis,
weighted by the inverse variance, with heterogeneity presented as I2
statistics(I-sq), and the p-value for heterogeneity (p-het) determined by chi-squared
test. StdBeta: standardized beta; N: number. (a) Systolic blood pressure, mean age
less than 65. (b) Systolic blood pressure, mean age greater than 65.Standardized, adjusted associations between systolic blood pressure and white matter
hyperintensity volume (WMHV), stratified by time interval between blood pressure
measurement and MRI imaging. Results are shown for individual studies reporting
standardized beta-coefficients, with the maximally adjusted value from each study
shown, with all reports adjusted for at least age and sex. Results are combined by
fixed and random effects meta-analysis, weighted by the inverse variance, with
heterogeneity presented as I2 statistics(I-sq), and the p-value for
heterogeneity (p-het) determined by chi-squared test. StdBeta: standardized beta; N:
number. (a) Concurrent systolic blood pressure. (b) Systolic blood pressure measured
two or more years. (c) Systolic blood pressure measured five or more years
previously.
Discussion
In a moderate number of studies, including more than 50,000 participants, there was a
strong and largely consistent association between systolic blood pressure or diastolic blood
pressure with severity of WMH. Overall, an SD increase in SBP was associated with
approximately a 10% of an SD increase in WMH, after adjustment for age, sex, and other major
cardiovascular risk factors. This effect was consistent with associations reporting
unstandardized associations between SBP or DBP and WMHV. There was no significant difference
in associations with concurrent or historic blood pressure, and only non-significant trends
to a stronger association in younger populations or a stronger association with SBP than
DBP.In the SPRINT-MIND study,
a 14.2 mmHg difference in blood pressure for intensive vs. standard treatment was
associated with a reduction in progression of WMH by 0.54cm
over four years, equating to approximately a 10–15% reduction in the population SD of
WMH volume at follow-up, although with no change in cognitive decline.
This is a marginally greater magnitude of effect to the association demonstrated in
this meta-analysis, whether standardized or unstandardized, but the populations are
different and this analysis is cross-sectional rather than assessing the association with
progression of WMH. Nonetheless, this confirms that reducing blood pressure results in the
expected reduction in WMH, supporting a likely causative relationship between BP and WMH
severity.In this meta-analysis, there was no significant difference between associations of SBP and
DBP with WMHV, or between concurrent and historic measures. This is in contrast to limited
reports from individual studies suggesting a stronger concurrent association between SBP and
WMHV, particularly in the elderly, but a stronger association between historic, mid-life DBP
with late life WMHV.[6,16] This likely reflects the
heterogeneity between studies in this meta-analysis. In particular, all studies included a
range of patient ages, and the mean age in any specific population is a poor surrogate for
estimating the effect in younger vs. older participants. The meta-analysis did demonstrate a
non-significantly stronger association between concurrent SBP and WMHV than concurrent DBP
and WMHV, which is consistent with the difference in effect size in older participants in
other studies.In unadjusted analyses, there was a much stronger association between SBP and WMHV, as
would be expected from the strong linear association between SBP and age,
which is significantly reduced after adjustment for age. This may result in
underestimation of the potential effect of controlling SBP in reducing WMHV, as the
age-related increase in SBP may still be preventable. In contrast, there was little
difference in the association between DBP and WMHV before and after adjustment for age. This
is also consistent with the non-linear association between age and DBP, with a rise in DBP
until the age of 55, followed by a fall in DBP resulting in no significant impact of
adjusting for age.
However, given that the association with DBP is largely independent of age, this may
also demonstrate that a greater proportion of preventable WMH may reflect elevated DBP, and
may still be of greater significance in younger patients. Unfortunately, the limited number
of studies focused only on younger or older patients and reporting DBP, means that this
meta-analysis is not powered to test this hypothesis as suggested in large individual
studies.[6,16]This meta-analysis has several limitations. Firstly, there were a relatively limited number
of papers that reported sufficient data to be included in the meta-analysis, with many
papers reporting qualitative or semi-quantitative outcomes, including from large, seminal
cohorts (Framingham, Rotterdam Study, Cardiovascular Health Study). As a result, although
some stratification of standardized beta-coefficients for SBP was possible, this was not
feasible for other analyses. Secondly, there was a significant variation in the analysis
used in different studies, with differences in studies reporting standardized or
unstandardized beta coefficients, and whether WMHV was log-transformed or divided by the
intracranial volume. Although in some studies it was possible to convert between
standardized and unstandardized values, there was frequently insufficient data for this.
Furthermore, in many studies it was not clear whether standardized or unstandardized
coefficients were reported. However, enough studies were reported for each method of
analysis for SBP and DBP to enable a meta-analysis to be performed, although this was not
the case for MBP or PP. Ideally, reporting of this type of study should be standardized
across studies, with standard outcome measures, reporting of both standardized and
unstandardized coefficients, and should follow CONSORT guidelines. Thirdly, the time
intervals between measurement of BP and WMH varied significantly in the limited studies that
reported historic BP and current WMH, preventing a detailed assessment of any temporal
gradient of the effect. Fourthly, there remained significant unexplained heterogeneity
between studies, which may well relate to differences in methods of acquiring scans (T2 vs.
FLAIR), differences in scanner field (1.5 T vs. 3 T), and differences in methods of
quantification of WMH (BIANCA
vs. non open source, in-house methods), but there were too few studies with each
method to assess this. Finally, despite broad initial search terms and a secondary search
for specific large studies, it is likely that not all reports of the relationship between BP
and WMH were identified, as this value may often be reported in full texts of papers where
the principal focus of the paper is elsewhere. As such, key terms are not always present in
the abstract or title, and may not be identified by a targeted search strategy.Overall, this study identifies a 10% SD of WMH increase per SD increase in SBP. This
strongly covaries with age, while the relationship with DBP was largely unchanged by
adjustment for age. The relative effect size was largely consistent across different study
designs, populations, and methods of data acquisition, as well as between methods of
measurement, and was consistent with effect sizes from control of blood pressure in
randomized controlled trials.Click here for additional data file.Supplemental material, sj-pdf-1-wso-10.1177_17474930211043364 for Consistency of
associations of systolic and diastolic blood pressure with white matter hyperintensities:
A meta-analysis by Imogen Wilkinson and Alastair John Stewart Webb in International
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