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Modeling Blood Pressure Allostasis and Adaptation


As articulated above, studies regarding the morbidity and mortality risk of arterial


blood pressure variation have focused on summary measures of variation over 24 h,


such as the standard deviation of the 24-h arithmetic average of the intermittent


measurements (Hansen et al. 2010 ), the coefficient of variation (24-h standard


deviation/24-h mean) (e.g., Kikuya et al. 2000 ; Flores 2013 ) or the difference in
pressure associated with the transitions from waking to sleep (e.g., Fagard et al.


2009 ), or sleep to waking (e.g., Kario 2010 ). It has long been known that there is


heteroscedasticity in the relationship between the mean 24-h blood pressure and its


variance, such that as the mean pressure increases, so does the variance (Pickering


1991 ). Thus, it is not surprising that when the mean and variability measures are


forced into the same predictive model in populations containing large numbers of


both hypertensives and normotensives, variability appears to add little to the pre-


diction of cardiovascular risk beyond the mean 24-h blood pressure, but is pre-


dictive when variability alone, without the 24-h mean, is considered (e.g., Hansen


et al. 2010 ). While efforts have been made to create standardized variation indexes


for clinical purposes, from these types of variation assessment there is no capacity


for examining what is actually driving the variation, nor any ability to assess


whether the observed variation is appropriate for the circumstances, which in my


opinion, are really the relevant characteristics of variation when it comes to car-


diovascular disease risk. Bluntly, examining gross blood pressure variability does


not really tell you why the variation is adaptive or how it leads to pathology. To


understand why blood pressure varies, it is critical to have information regarding


the conditions of each blood pressure measurement. That is, if blood pressure is


responding to the ambient conditions in an allostatic fashion and thus facilitating


adaptation, in order to evaluate the adaptive process, there needs to be a means of


defining the constantly changing conditions (James 2013 ).


While direct observation of subjects wearing the monitor has been used (e.g., Ice
et al. 2003 ), for most studies of circadian blood pressure variation, subjects have


self-reported their waking conditions at each blood pressure measurement in a


diary, which have taken on a variety of forms, from pencil and paper in the earliest


studies, to handheld computers in later assessments (James2007b, 2013 ). Most


studies that examine the sources of variation in intermittently taken blood pressure


measurements have not been conducted with a focus toward allostasis, or even


understanding cardiovascular adaptation for that matter. Rather, the interest has


either been in simply defining the sources of diurnal blood pressure variation, or


evaluating whether people with specific characteristics differ in their responses to


similar stimuli (James 2013 ).


As I have previously noted, to assess the sources of diurnal ambulatoryblood


pressure variation, two general approaches have been used (James2007a, 2013 ).


Thefirst is a“natural experimental”approach in which there are a priori design


elements that define predictable changing behaviors or situations that occur during a


typical day. This quasi-experimental approach has its roots in laboratory reactivity


150 G.D. James

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