Background
Objective measures are needed to quantify dietary adherence during caloric
restriction (CR) while participants are freeliving. One method to monitor adherence
is to compare observed weight loss to the expected weight loss during a prescribed
level of CR. Normograms (graphs) of expected weight loss can be created from
mathematical modeling of weight change to a given level of CR, conditional on the
individual’s set of baseline characteristics. These normograms can then be used by
counselors to help the participant adhere to their caloric target.
Purpose
(1) To develop models of weight loss over a year of caloric restriction-given
demographics, and well-defined measurements of body mass index, total daily energy
expenditure (TDEE) and %CR. (2) To utilize these models to develop normograms, given
the level of caloric restriction prescribed, and measures of these variables.
Methods
Seventy-seven individuals completing a 6–12-month caloric restriction
intervention (CALERIE) at three sites (Pennington Biomedical Research Center, Tufts
University, and Washington University) and had body weight and body composition
measured frequently. Energy intake (and %CR) was estimated from TDEE (by doubly
labeled water) and body composition (by DXA) at baseline and months 1, 3, 6, and 12.
Bodyweight was modeled to determine the predictors and distribution of the expected
trajectory of percent weight change over 12 months of CR.
Results
As expected, CR was related to change in body weight. Controlling for
time-varying measures, initially simple models of the functional form indicated that
the trajectory of percent weight change was predicted by a nonlinear function of age,
TDEE, %CR, and sex. Using these estimates, normograms for the weight change were
developed. Our model estimates that the mean weight loss (% change from baseline
weight) for an individual adherent to a 25% CR regimen is −10.9 ± 6.3% for females
and −13.9 + 6.4% for men after 12 months.
Limitations
There are several limitations. Sample sizes are small
(n = 77), and, by design, the protocols, including prescribed CR,
for the interventions differed by site, and not all subjects completed a year of
follow-up. In addition, the inclusion of subjects by age and initial BMI was
constricted, so that these results may not generalize to other populations including
older and obese subjects.
Conclusions
The trajectory of percent weight change during CR interventions in the
presence of well-measured covariates can be modeled using simple nonlinear functions,
and is related level of CR, the percent change in TDEE, gender, and age. Displayed on
a normogram, individually tailored trajectories can be used by counselors and
participants to monitor weight loss and adherence to a CR regimen.