(Stroke. 1997;28:1693-1701.)
© 1997 American Heart Association, Inc.
Articles |
From the Departments of Public Health Sciences (G.H., G.L.B.) and Neurology (G.H.), Bowman Gray School of Medicine of Wake Forest University, Winston Salem, NC; Division of Epidemiology and Clinical Applications, National Heart, Lung, and Blood Institute, Bethesda, Md (T.A.M.); and the Departments of Surgery and Neurosurgery, University of Pittsburgh School of Medicine, Pittsburgh, Pa (S.K.W.); Boston (D.H.O'L.).
Correspondence to George Howard, DrPH, Department of Public Health Sciences, Bowman Gray School of Medicine of Wake Forest University, Medical Center Blvd, Winston-Salem, NC 27157-1063. E-mail GHOWARD{at}PHS.BGSM.EDU
| Abstract |
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Methods Subclinical atherosclerosis as measured by carotid ultrasonography and risk factor prevalence were assessed using similar methods among participants aged 45 to 64 years in the Atherosclerosis Risk in Communities (ARIC) study and among participants 65 years and older in the Cardiovascular Health Study (CHS). Pooling these two cohorts provided data on the relationship of risk factors and atherosclerosis on nearly 19 000 participants over a broad age range. Regression analyses were used to assess the consistency of the magnitude of the association of risk factors with atherosclerosis across the age spectrum separately for black and white participants in cross-sectional analyses.
Results As expected, each of the risk factors was globally (across all ages) associated with increased atherosclerosis. However, the magnitude of the association did not differ across the age spectrum for hypertension, low density lipoprotein cholesterol (LDL-c), fibrinogen, or body mass index (BMI). For whites, there was a significantly greater impact of smoking and HDL-C among older age strata but a smaller impact of diabetes. For black women, the impact of HDL-C decreased among the older age strata.
Conclusions These data suggest that most risk factors continue to be associated with increased atherosclerosis at older ages, possibly suggesting a continued value in investigation of strategies to reduce atherosclerosis by controlling risk factors at older ages.
Key Words: atherosclerosis aging cigarette smoking carotid arteries ultrasonics risk factors
| Introduction |
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The baseline data from the ARIC study and CHS offer a unique opportunity to assess the potential for a differential impact of risk factors on atherosclerosis with increasing age. This opportunity is presented because (1) the age range spanned by ARIC (45 to 64 years) is contiguous with that of CHS (65 years and older), and together these studies span the age spectrum in which clinical events associated with the development of atherosclerosis become pronounced; (2) both of these large epidemiological studies assessed the thickness of the intima-media layer of the common carotid artery, which is a frequently used index of atherosclerosis in both epidemiological studies6 7 8 9 10 and clinical trials11 12 13 ; and (3) both studies used similar methods to assess major cardiovascular risk factors. The goal of this report is to examine potential age-related differences in the magnitude of the association of major CCVD risk factors with atherosclerosis in the free-living population over the age of 45 years.
| Methods |
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The CHS cohort consisted of 5843 men and women, aged 65 years and older, and was drawn from four US communities: Forsyth County, North Carolina; Sacramento County, California; Washington County, Maryland; and Pittsburgh (Allegheny County), Pennsylvania.15 The cohort was identified using Medicare eligibility lists of the Health Care Finance Administration from these four communities. Eligible participants were 65 years and older at the time of examination, community dwelling, and did not require a proxy respondent at baseline. Individuals who were wheelchair-bound in the home or receiving hospice treatment, radiation therapy, or chemotherapy for cancer were excluded from the study. This report used data from the baseline assessment in CHS.
Risk factors were considered for this analysis if (1) they were
generally accepted "major" risk factors for the development of
atherosclerosis and (2) they were measured in a similar
manner in both ARIC and CHS.14 15 Hypertension was defined
in both studies as a systolic blood pressure greater than
160 mm Hg, or a diastolic blood pressure greater than
95 mm Hg, or use of antihypertensive medications. Both studies
defined smoking history by self-report: in ARIC a current smoker was
defined by a positive response to the question, "Do you now smoke
cigarettes?" whereas CHS used the question, "Have you smoked
cigarettes during the last 30 days?" Past smoking was defined as
noncurrent smokers who had smoked more than 400 cigarettes in their
lifetime for ARIC study and more than 100 in their lifetime for the
CHS. In ARIC, a participant was considered to be diabetic if the
fasting (8 hours or more) blood glucose was
140 mg/dL (or if a
fasting sample was not available, if the nonfasting blood glucose was
200 mg/dL), there was a self-report of a physician diagnosis
of diabetes, or if the participant was currently on medication. CHS,
but not ARIC, performed an oral glucose tolerance test, but these data
were not used to ensure comparability between the studies. Hence, in
CHS a diagnosis of diabetes was a fasting glucose
140 mg/dL, a
self-report of a physician diagnosis of diabetes, or if the participant
was currently on medication. BMI was measured as weight (in kilograms)
divided by height (in meters) squared. HDL-C, LDL-c, and fibrinogen
were measured in a standard and similar manner in the two studies.
Both ARIC and CHS evaluated the IMT as an index of systemic atherosclerosis. In this role, IMT has proved to be closely related to incident coronary ischemic events,16 17 and has been accepted as the primary end point in major clinical trials.11 12 13 ARIC and CHS used similar ultrasound protocols, where the IMT of the far and near walls of the common carotid artery over a 1-cm site directly distal to the dilation of the bifurcation. ARIC evaluated the thickness in up to 11 segments 1 mm apart, allowing estimation of mean and maximum wall thicknesses. CHS drew a continuous line along visualized interfaces over this same 1-cm length of vessel, and a computer program then evaluated the distances between adjacent lines (thereby eliminating the need for operator intervention in estimating point-by-point pairs). In previous reports, CHS generally used maximum wall thickness to describe the IMT of a wall at a site, whereas ARIC generally used mean wall thickness. The choice of mean versus maximum wall thickness does not significantly affect results because the correlation between mean and maximum wall thicknesses is far above 0.9. For this report the maximum wall thickness was used to describe IMT.The mean value of the four maximum IMTs (far and near walls of the left and right common carotid arteries) was used as the outcome variable in all analyses.
The impact of select risk factors was estimated within 5-year age
strata over the combined age range of the ARIC and CHS studies. In
order to prevent confounding of this study from the estimation of
effect within any of these strata, 103 ARIC participants aged 65 years
and older at baseline were deleted from analyses (allowing the
65- to 69-year age strata to contain CHS participants only). In
addition, the 35 ARIC participants aged 44 years at baseline were also
deleted. To maintain a sample size sufficient to produce reliable
estimates, CHS participants aged 75 years and older were considered as
a single stratum. This resulted in seven contiguous age strata, four
from the ARIC study (45 to 49, 50 to 54, 55 to 59, and 60 to 64) and
three from CHS (65 to 69, 70 to 74, and 75 and older). The sample size
in each of these strata is provided in Table 1
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In this "strata" approach, a general linear model was fit separately to the data from blacks and whites. For continuous risk factors, a single regression model was fit to all strata with parameters to estimate the regression relationship between the risk factor and IMT within each age-sex stratum. This model required 28 parameters, a slope and intercept for each of the 14 (7 agesx2 sexes) strata. A similar model was fit for the dichotomous variables, with parameters to estimate the mean IMT in the absence of the interaction and the difference in IMT attributed to the risk factor present for each of the strata. The slope parameter corresponds to the difference in IMT associated with a unit difference in the risk factor, and the parameter associated with the dichotomous factor corresponds to the difference in IMT between those with and those without the risk factor.
Differences in the estimated slope parameter between the age strata for the continuous risk factors, and the difference parameter for dichotomous risk factors, are the focus of this report. A number of statistical tests were applied to the estimated strata-specific risk factor associations. First, an age-by-sex interaction test was applied, addressing the question of whether the pattern in the IMT difference associated with the risk factor across age was different in men and women (a 6 degree of freedom test). In cases in which this test was clearly nonsignificant (P>.1), further tests focused on differences seen when men and women were pooled. Second, a test was applied to assess whether there were any differences between the seven age strata, in which the age strata were considered as categories (no trend information used, simply testing whether there are any differences between any pair of strata). This test considering strata in categorical (rather than ordinal) analysis was then applied separately for men and then for women. Next, the ordinal nature of the age strata was incorporated into the tests, and a trend test was applied in which a linear relationship between age strata and the magnitude of the estimated impact of the risk factor was assumed. Since this trend test assumed a linear relationship, it required estimating a single parameter (ie, 1 degree of freedom). This test was then applied within the ARIC and CHS cohorts separately (pooling men and women) and for men and women separately (pooling ARIC and CHS).
| Results |
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The estimated overall effect of the risk factors is shown by race in
Table 3
. The magnitude of the estimated
effects for all risk factors was many times the estimated standard
errors, suggesting that each of these is (on average) an important risk
factor for atherosclerosis as indexed by IMT (for
example, hypertensive participants had walls 41.5±7.1 µm
thicker than normotensive participants, a difference nearly six times
its standard error). Among white participants there was some
evidence (P<.05) that the magnitude of the impact of
"ever smoking," HDL-C, fibrinogen, and BMI differed between men
and women, in each case with larger effects in men than women. However,
the goal of this article is to assess whether these overall effects
differ across the spectrum of the age of the participants.
|
Figs 1
and 2
show the estimated difference in IMT thickness associated
with the presence (Fig 1
) or 2-SD change
(Fig 2
) for eight risk factors within
age-sex strata for whites and blacks. Table 4
provides probability values for
differences between the strata across age that are discussed below. The
following discussion is ordered by those factors where there was a
trend for an increasing impact of the risk factor with age (smoking),
those where the response was mixed (HDL-C), those where the impact
decreased (diabetes), and, finally, those with little impact
(hypertension, LDL-c, fibrinogen, and BMI).
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For both current and ever smoking, the difference in IMT was greater
among older white participants compared with their younger white
counterparts (P=.010 for current smoking and
P=.024 for past smoking). As seen in Fig 1
, current or ever
smoking exposure was associated with a small and nonsignificant
difference in IMT among participants aged 45 to 49 years (
16
µm), but increased to a more than 30-µm difference by age 60 to 64
years. Above that age, there was little change in the magnitude of the
association. This increase across the younger ages, but plateauing for
older ages, is shown by a highly significant trend in the ARIC cohort
(P=.001) but no trend in the CHS cohort (P=.20
for current smoking and P=.27 for ever smoking). There was
little evidence of a differential effect by gender (P=.44
and P=.087) and little evidence of a change across ages in
the impact of smoking exposure on IMT among blacks
(P>.05).
For whites (see Fig 2
), IMT difference associated with HDL-C increased
among older participants (P=.015). Among white participants
aged 45 to 49 years, an approximate 2-SD increase in HDL-C (33.8
mg/dL) was associated with IMT differences of -43 µm in
men and -30 µm in women; while for those older than 75 years
the same difference in HDL-C was associated with IMT differences of
-62 µm and -69 µm, respectively. For blacks (Fig 2
),
there was evidence of a different pattern across ages for men and women
(Page-by-sex interaction=.022). Among black
women, the magnitude of the HDL-CIMT association declined among the
older age strata; a 2-SD difference in HDL-C was associated with a
difference of approximately -40 µm for ages 45 to 49 years and
50 to 54 years. For ages 55 to 59 years, the same difference in HDL-C
was associated with a difference in IMT of -97 µm; however, for
age strata above 60 years there was a reasonably consistent
decrease in the magnitude of the association with HDL-C, and in fact it
became positive in the oldest age strata (
36 µm per 2-SD
change). There was not a significant trend in either direction for
black men (P=.17).
For whites, the estimated trend for the difference in IMT associated with diabetes decreased among the older age strata (P=.003). For white men, diabetics aged 45 to 49 years had average IMTs 123 µm greater than nondiabetics, and the difference for white women aged 45 to 49 years was 106 µm. The difference in IMT between diabetics and nondiabetics tended to decrease at older ages, and the differences for those older than age 75 years were 9 µm for men and 71 µm for women. This larger decrease in the magnitude of the association of diabetes and HDL-C for men than for women resulted in an interaction that suggested a differential effect by gender (Page-by-sex interaction=.15). When sex-specific trends between diabetes and the magnitude of the IMT difference were tested, the decreased impact of diabetes was clear in men (P=.003) and not present in women (P=.21). There was no evidence of a change in the magnitude of the association with diabetes across the age strata for blacks.
For hypertension (Fig 1
), LDL-c (Fig 1
), fibrinogen (Fig 2
), and BMI
(Fig 2
), there was little evidence that the estimated IMT difference
changed across the age strata for either whites or blacks
(P>.05).
| Discussion |
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One important aspect not addressed in these analyses is the confounding of age with the duration of exposure to the risk factors. Current cigarette smoking is the risk factor found most clearly to increase in magnitude of association with increasing age, but age and duration of exposure are highly confounded. Since nearly all smokers begin smoking below the age of 20 years,21 exposure to smoking increases proportionally with age in current smokers. That past smoking shows a pattern of increasing and then plateauing impact with increasing ages is also consistent with expected exposure patterns. The median age of stopping smoking is 45 years.22 At younger ages, past smokers are more likely to have recently quit, and the risk of being a past smoker will resemble that seen for current smokers. However, at older ages the time of quitting is more likely to be remote, and once a smoker quits additional exposure is not acquired. Alternatively, it is possible that the change in the magnitude of the association could be associated to the minor difference in the definition of "past" smoking between the two studies, where ARIC required 400 cigarettes, and CHS 100 cigarettes, during the participant's lifetime. However, we feel this difference in definitions is relatively minor and unlikely to explain the plateauing. However, because of the former reasons, it is thus reasonable to expect the association with past smoking to increase at young ages and plateau at older ages. Exposure for participants with low HDL-C or elevated LDL-c is also potentially confounded with age (dyslipidemia acquired at a "young" age and endured to the time of evaluation), and as such age is also a surrogate for exposure time. Hence, age is likely a surrogate for exposure for the lipid and smoking measurements. This is in contrast to the relationship between age and either hypertension or diabetes, risk factors that tend to be acquired at much older ages. For example, it is possible that a 70-year-old diabetic participant has not been exposed to diabetes longer than a 50-year-old diabetic patient. In addition, survival bias may remove participants from this cross-sectional analysis who have had these risk factors for a more extended period. Although the data on time of acquisition of elevated fibrinogen levels and increased BMI are less clear, a similar process may be occurring for these factors. It thus appears that the association of risk factors that tend to be acquired at a young age (implying that age is a surrogate for exposure) increase at older ages, but the associations with risk factors acquired at older ages to be stable or decrease with advancing age, perhaps because age is not necessarily a surrogate for exposure.
We can only offer speculation as to why we observe a stable or increasing association between risk factors with atherosclerosis with increasing age, while others have observed a decreasing association between risk factors and clinical events at older ages.1 2 3 While it is difficult to reconcile these discordant observations, several explanations may be offered. First, the decline in risk factor impact on clinical events is traditionally described by ratio measures (odds ratios, hazard ratios, etc). If the impact of a risk factor is reflected by a constant difference in the distribution (such as for hypertension), but the prevalence of the risk factor increases with age (such as for hypertension), the ratio of those with the disease to those without disease will decrease.23 For example, if odds of events in hypertensive participants at age 45 to 49 years is 0.2 and for normotensive participants is 0.1, then the resulting odds ratio is 2.0. But if these odds increase in a parallel manner to 0.4 and 0.3, respectively, for ages older than 75 years, the odds ratio will decrease to 1.25. As such, the equal impact of a risk factor on the underlying atherosclerosis, but the increase in the prevalence of the risk factor and clinical events, could lead to a decrease in the odds ratio. Even if the relative risk decreased with age, efficacious treatments may reduce the number of events among the elderly because of the overall increase in rates. The finding that most risk factors have a relatively constant association with atherosclerosis across the age spectrum may thus be consistent with decreasing odds ratios associated with the risk factor at older ages. It is important to note that the observed decrease in the relative importance of risk factors at older ages among the elderly is consistent with a constant absolute difference associated with the risk factor. Second, in ARIC and CHS the IMT measurements may reflect subclinical atherosclerosis estimated with a reduced survival bias; with only a small proportion of the population eventually advancing to clinical events and subsequently removed from the evaluation. As such, survival bias may have a smaller impact (few people die with "advanced subclinical" disease) in the assessment of changes in IMT than for clinical disease. Because this bias is playing a smaller role, we may be observing a more representative view of the changes in risk factor association over a broad age range. Finally, it is possible that survival selection in the ARIC and CHS cohorts may result in a cohort able to develop and maintain atherosclerosis but to not suffer clinical events.
There are two statistical issues that warrant comment. In general, more
differences in the magnitude of the association between risk factors
were found for the white, as compared with black, participants. While
it may be true that more differential effects are present in whites
(relative to blacks), we feel that a more likely explanation for this
observation is the increased power to detect differences in whites that
was provided by a larger sample size. In addition, there could be
concerns that the large number of statistical tests presented
in Table 4
could give rise to concerns of spurious findings through
multiple testing. The broad scope of these probability values was
provided for completeness and for further examination by the readers.
However, we do not feel that multiple testing is a large problem for
two reasons. First, although there are many probability values in Table 4
, few are actually interpreted in the text or in our decisions of how
to interpret the data. Specifically, we first examined the probability
value for interaction with sex to assess whether it is reasonable to
pool the genders. If there was no evidence, then the overall tests were
the next probability values assessed. These are the primary tests of
the hypotheses of the article, and the majority of the interpretation
is made on these relatively few statistical tests (hence, reducing
concerns from multiple testing). The other probability values are
offered to describe the specific effects or to describe the
consistency of the effect in subgroups. Second, multiple
testing concerns are usually an issue when there are many
"significant" findings (of which some subgroup happened by chance
alone). In our case, the primary finding of the paper was a lack of
significant findings, and, as such, spurious findings are perhaps of
less concern. Nevertheless, we did examine eight risk factors in two
ethnic groups (a total of 16 evaluations), and as such we should expect
approximately one association to have occurred by chance alone
(1/16
1/20=0.05).
There are a number of shortcomings of this report. A number of assumptions were required to combine the data of the ARIC and CHS studies. Although we discuss the relationship between risk factors and IMT as an index of atherosclerosis, the relationship of IMT or atherosclerosis may be different in younger than older populations. Of particular concern is the possibility that any trend (or lack of trend) in the association across age is confounded with study. For example, a positive association would be present if there were no association with age within either study but a difference between studies where the risk factors play a larger role in CHS (perhaps because of a difference in cohorts). There is no statistical method to remove this potential bias. However, we (subjectively) feel that this is unlikely because of the consistency (lack of large discontinuous "jumps" in effect size) of the relationship between age and risk factors between the oldest ARIC participants (60 to 64 years) and the youngest CHS participants (65 to 69 years). Second, while the conduct and interpretation of ultrasound exams were similar, they were not identical. Differences in the ultrasound examination may be influencing results in complex ways. Similar concerns exist for the measurements of risk factors that were assessed using similar (but not identical) methods. It is also possible that a survival bias is acting to reduce those older participants with more advanced atherosclerosis, potentially producing biased estimates of the effect of risk factors (particularly in the elderly). Finally, as for all cross-sectional analyses, we are reporting only the changing in the magnitude of the estimated association between the risk factors and IMT, and inferences to causation are always problematic in cross-sectional analyses.
In conclusion, the association of most major risk factors with atherosclerosis was relatively constant over 5-year age strata from 45 to 49 years to older than 75 years. This consistency is in contrast to reported diminished associations with clinical events at advanced ages, and may reflect more complete and unbiased ascertainment as well as assessment of absolute rather than relative risks. This relatively consistent association of risk factors to atherosclerosis may possibly support the continued importance of investigating efforts to reduce atherosclerosis through risk factor control in the elderly population.
| Selected Abbreviations and Acronyms |
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| Acknowledgments |
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| Footnotes |
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| Appendix 1 |
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CHS
Forsyth County, NCBowman Gray School of Medicine of Wake
Forest University: Sharon Jackson, Alan Elster, Walter H. Ettinger,
Curt D. Furberg, Gerardo Heiss, Dalane Kitzman, Margie Lamb, David S.
Lefkowitz, Mary F. Lyles, Cathy Nunn, Ward Riley, John Chen, Beverly
Tucker; Forsyth County, NCBowman Gray School of Medicine-EKG Reading
Center: Farida Rautaharju, Pentti Rautaharju; Sacramento County,
CAUniversity of California, Davis: William Bommer, Charles Bernick,
Andrew Duxbury, Mary Haan, Calvin Hirsch, Lawrence Laslett, Marshall
Lee, John Robbins, Richard White; Washington County, MdThe Johns
Hopkins University: M. Jan Busby-Whitehead, Joyce Chabot, George W.
Comstock, Adrian Dobs, Linda P. Fried, Joel G. Hill, Steven J. Kittner,
Shiriki Kumanyika, David Levine, Joao A. Lima, Neil R. Powe, Thomas
R. Price, Jeff Williamson, Moyses Szklo, Melvyn Tockman; MRI Reading
Center-Washington County, MdThe Johns Hopkins University: R. Nick
Bryan, Norman Beauchamp, Carolyn C. Meltzer, Naiyer Iman, Douglas
Fellows, Melanie Hawkins, Patrice Holtz, Michael Kraut, Grace Lee,
Larry Schertz, Cynthia Quinn, Earl P. Steinberg, Scott Wells, Linda
Wilkins, Nancy C. Yue; Allegheny County, PAUniversity of Pittsburgh:
Diane G. Ives, Charles A. Jungreis, Laurie Knepper, Lewis H. Kuller,
Elaine Meilahn, Peg Meyer, Roberta Moyer, Anne Newman, Richard Schulz,
Vivienne E. Smith; Echocardiography Reading Center
(Baseline)University of California, Irvine: Hoda Anton-Culver, Julius
M. Gardin, Margaret Knoll, Tom Kurosaki, Nathan Wong;
Echocardiography Reading Center
(Follow-up)Georgetown Medical Center: John Gottdiener, Eva
Hausner, Stephen Kraus, Judy Gay, Sue Livengood, Mary Ann Yohe, Retha
Webb; Ultrasound Reading CenterGeisinger Medical Center: Daniel H.
O'Leary, Joseph F. Polak, Laurie Funk; Central Blood Analysis
LaboratoryUniversity of Vermont: Edwin Bovill, Elaine Cornell, Mary
Cushman, Russell P. Tracy; Respiratory SciencesUniversity of
Arizona-Tucson: Paul Enright; Coordinating CenterUniversity of
Washington, Seattle: Alice Arnold, Annette L. Fitzpatrick, Bonnie K.
Lind, Richard A. Kronmal, Bruce M. Psaty, David S. Siscovick, Lynn
Shemanski, Lloyd Fisher, Will Longstreth, Patricia W. Wahl, David
Yanez, Paula Diehr, Maryann McBurnie; NHLBI Project Office: Diane
E. Bild, Robin Boineau, Peter J. Savage, Patricia Smith.
Received March 6, 1997; revision received June 2, 1997; accepted June 2, 1997.
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T. Y. Wong, A. Kamineni, R. Klein, A. R. Sharrett, B. E. Klein, D. S. Siscovick, M. Cushman, and B. B. Duncan Quantitative Retinal Venular Caliber and Risk of Cardiovascular Disease in Older Persons: The Cardiovascular Health Study Arch Intern Med, November 27, 2006; 166(21): 2388 - 2394. [Abstract] [Full Text] [PDF] |
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L. J. Shaw, P. Raggi, T. Q. Callister, and D. S. Berman Prognostic value of coronary artery calcium screening in asymptomatic smokers and non-smokers Eur. Heart J., April 2, 2006; 27(8): 968 - 975. [Abstract] [Full Text] [PDF] |
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P. Mitchell, J. J. Wang, T. Y. Wong, W. Smith, R. Klein, and S. R. Leeder Retinal microvascular signs and risk of stroke and stroke mortality Neurology, October 11, 2005; 65(7): 1005 - 1009. [Abstract] [Full Text] [PDF] |
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Y. Arad, K. J. Goodman, M. Roth, D. Newstein, and A. D. Guerci Coronary Calcification, Coronary Disease Risk Factors, C-Reactive Protein, and Atherosclerotic Cardiovascular Disease Events: The St. Francis Heart Study J. Am. Coll. Cardiol., July 5, 2005; 46(1): 158 - 165. [Abstract] [Full Text] [PDF] |
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A.A. Lteif, K. Han, and K.J. Mather Obesity, Insulin Resistance, and the Metabolic Syndrome: Determinants of Endothelial Dysfunction in Whites and Blacks Circulation, July 5, 2005; 112(1): 32 - 38. [Abstract] [Full Text] [PDF] |
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A. Vryonidou, A. Papatheodorou, A. Tavridou, T. Terzi, V. Loi, I.-A. Vatalas, N. Batakis, C. Phenekos, and A. Dionyssiou-Asteriou Association of Hyperandrogenemic and Metabolic Phenotype with Carotid Intima-Media Thickness in Young Women with Polycystic Ovary Syndrome J. Clin. Endocrinol. Metab., May 1, 2005; 90(5): 2740 - 2746. [Abstract] [Full Text] [PDF] |
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D. M. Yousem, R. N. Bryan, N. J. Beauchamp Jr., and A. M. Arnold A National Neuroimaging Database: A Call to Action AJNR Am. J. Neuroradiol., June 1, 2004; 25(6): 908 - 909. [Full Text] [PDF] |
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R. C. Pasternak, M. H. Criqui, E. J. Benjamin, F. G. R. Fowkes, E. M. Isselbacher, P. A. McCullough, P. A. Wolf, and Z.-J. Zheng Atherosclerotic Vascular Disease Conference: Writing Group I: Epidemiology Circulation, June 1, 2004; 109(21): 2605 - 2612. [Full Text] [PDF] |
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F. J. Nieto, D. M. Herrington, S. Redline, E. J. Benjamin, and J. A. Robbins Sleep Apnea and Markers of Vascular Endothelial Function in a Large Community Sample of Older Adults Am. J. Respir. Crit. Care Med., February 1, 2004; 169(3): 354 - 360. [Abstract] [Full Text] [PDF] |
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H.-H. S. Oei, R. Vliegenthart, A. Hofman, M. Oudkerk, and J. C.M. Witteman Risk factors for coronary calcification in older subjects: The Rotterdam Coronary Calcification Study Eur. Heart J., January 1, 2004; 25(1): 48 - 55. [Abstract] [Full Text] [PDF] |
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R. F. Redberg, R. A. Vogel, M. H. Criqui, D. M. Herrington, J. A. C. Lima, and M. J. Roman Task force #3--what is the spectrum of current and emerging techniques for the noninvasive measurement of atherosclerosis? J. Am. Coll. Cardiol., June 4, 2003; 41(11): 1886 - 1898. [Full Text] [PDF] |
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G. T. Kondos, J. A. Hoff, A. Sevrukov, M. L. Daviglus, D. B. Garside, S. S. Devries, E. V. Chomka, and K. Liu Electron-Beam Tomography Coronary Artery Calcium and Cardiac Events: A 37-Month Follow-Up of 5635 Initially Asymptomatic Low- to Intermediate-Risk Adults Circulation, May 27, 2003; 107(20): 2571 - 2576. [Abstract] [Full Text] [PDF] |
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J. A. Hoff, L. Quinn, A. Sevrukov, R. B. Lipton, M. Daviglus, D. B. Garside, N. K. Ajmere, S. Gandhi, and G. T. Kondos The prevalence of coronary arterycalcium among diabetic individuals without known coronary artery disease J. Am. Coll. Cardiol., March 19, 2003; 41(6): 1008 - 1012. [Abstract] [Full Text] [PDF] |
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D. Baldassarre, M. Amato, L. Pustina, E. Tremoli, C. R. Sirtori, L. Calabresi, and G. Franceschini Increased Carotid Artery Intima-Media Thickness in Subjects With Primary Hypoalphalipoproteinemia Arterioscler Thromb Vasc Biol, February 1, 2002; 22(2): 317 - 322. [Abstract] [Full Text] [PDF] |
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Y. Arad, L. A. Spadaro, K. Goodman, D. Newstein, and A. D. Guerci Prediction of coronary events with electron beam computed tomography J. Am. Coll. Cardiol., October 1, 2000; 36(4): 1253 - 1260. [Abstract] [Full Text] [PDF] |
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D. Baldassarre, M. Amato, A. Bondioli, C. R. Sirtori, and E. Tremoli Carotid Artery Intima-Media Thickness Measured by Ultrasonography in Normal Clinical Practice Correlates Well With Atherosclerosis Risk Factors Stroke, October 1, 2000; 31(10): 2426 - 2430. [Abstract] [Full Text] [PDF] |
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A. Castillo-Richmond, R. H. Schneider, C. N. Alexander, R. Cook, H. Myers, S. Nidich, C. Haney, M. Rainforth, and J. Salerno Effects of Stress Reduction on Carotid Atherosclerosis in Hypertensive African Americans Stroke, March 1, 2000; 31(3): 568 - 573. [Abstract] [Full Text] [PDF] |
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M. Pahor, M. B. Elam, R. J. Garrison, S. B. Kritchevsky, and W. B. Applegate Emerging Noninvasive Biochemical Measures to Predict Cardiovascular Risk Arch Intern Med, February 8, 1999; 159(3): 237 - 245. [Abstract] [Full Text] [PDF] |
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D. T. Lackland, D. L. Bachman, T. D. Carter, D. L. Barker, S. Timms, and H. Kohli The Geographic Variation in Stroke Incidence in Two Areas of the Southeastern Stroke Belt : The Anderson and Pee Dee Stroke Study Stroke, October 1, 1998; 29(10): 2061 - 2068. [Abstract] [Full Text] [PDF] |
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