posted on 2020-04-17, 16:18authored byHui Shao, Lizheng Shi, Vivian A Fonseca
<strong>OBJECTIVE</strong> This study evaluated the ability of the Building,
Relating, Assessing, and Validating Outcomes (BRAVO) risk engine to accurately project
cardiovascular outcomes in three major clinical trials (EMPA-REG, CANVAS, and
DECLARE-TIMI) on sodium-glucose cotransporter-2 inhibitors (SGL2is) to treat
patients with type 2 diabetes.
<p><strong>RESEARCH DESIGN AND METHODS</strong> Baseline data from the publications of the three
trials were obtained and entered into the BRAVO model to predict cardiovascular
outcomes. Projected benefits of reducing risk factors of interest (A1c,
systolic blood pressure (SBP), LDL, or BMI) on cardiovascular events were
evaluated, and simulated outcomes were compared to those observed in each
trial.</p>
<p><strong>RESULTS</strong> BRAVO achieved the best prediction accuracy when
simulating outcomes of the CANVAS and DECLARE-TIMI trials. For the EMPA-REG
trial, a mild bias was observed (~20%) in the prediction of mortality and
angina. The effect of risk reduction on outcomes in treatment vs placebo groups
predicted by the BRAVO model strongly correlated with the observed effect of risk
reduction on the trial outcomes as published. Finally, the BRAVO engine revealed
that most of the clinical benefit associated with SGLT2i treatment are through
A1c control, although reductions in SBP and BMI explain a proportion of the
observed decline in cardiovascular events.</p>
<p><strong>CONCLUSIONS</strong> The BRAVO risk
engine was effective in predicting the benefits of SGLT2i on cardiovascular
health through improvements in commonly measured risk factors, including A1c, SBP,
and BMI. Since these benefits are individually small, the use of the complex,
dynamic BRAVO model is ideal to explain the cardiovascular outcome trial
results. </p>