Optimal Designs For Model-Based Assessment Of Insulin Sensitivity And Glucose Effectiveness

JOURNAL OF CLINICAL PHARMACOLOGY(2021)

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摘要
The integrated minimal model allows assessment of clinical diagnosis indices, for example, insulin sensitivity (S-I) and glucose effectiveness (S-G), from data of the insulin-modified intravenous glucose tolerance test (IVGTT), which is laborious with an intense sampling schedule, up to 32 samples. The aim of this study was to propose a more informative, although less laborious, IVGTT design to be used for model-based assessment of S(I)and S-G. The IVGTT design was optimized simultaneously for all design variables: glucose and insulin infusion doses, time of glucose dose and start of insulin infusion, insulin infusion duration, sampling times, and number of samples. Design efficiency was used to compare among different designs. The simultaneously optimized designs showed a profound higher efficiency than both standard rich (32 samples) and sparse (10 samples) designs. The optimized designs, after removing replicate sample times, were 1.9 and 7.1 times more efficient than the standard rich and sparse designs, respectively. After including practical aspects of the designs, for example, sufficient duration between samples and avoidance of prolonged hypoglycemia, we propose 2 practical designs with fewer sampling times and lower input of glucose and insulin than standard designs, constrained to prevent hypoglycemia. The optimized practical rich design is equally efficient in assessing S(I)and S(G)as the rich standard design, but with half the number of the samples, while the optimized practical sparse design has 1 less sample and requires 4.6 times fewer individuals for equal certainty when assessing S(I)and S(G)than the sparse standard design.
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关键词
glucose effectiveness, insulin sensitivity, minimal model, nonlinear mixed effects, optimal design
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