| Literature DB >> 35913656 |
Michael Joubert1,2, Anaïs R Briant3, Laurence Kessler4, Fatéma Fall-Mostaine4, Severine Dubois5, Bruno Guerci6, Laurène Schoumacker-Ley6, Yves Reznik7,8, Jean-Jacques Parienti8,3,9.
Abstract
INTRODUCTION: The use of predictive low-glucose suspend (PLGS) sensor-augmented pumps has been shown to lead to a significant reduction in hypoglycemic episodes in patients with type 1 diabetes (T1D), but their effects on hyperglycemia exposure are heterogeneous. The aim of this study was to determine the settings of the Medtronic 640G system to obtain the optimal balance between occurrence of both hypoglycemia and hyperglycemia.Entities:
Keywords: Hypo-minimizer; Predictive low-glucose suspend; Sensor-augmented pump; Type 1 diabetes
Year: 2022 PMID: 35913656 PMCID: PMC9399327 DOI: 10.1007/s13300-022-01302-3
Source DB: PubMed Journal: Diabetes Ther ISSN: 1869-6961 Impact factor: 3.595
Baseline characteristics of the entire population and for each center
| Baseline characteristics | All ( | Center 1 ( | Center 2 ( | Center 3 ( | Center 4 ( | |
|---|---|---|---|---|---|---|
| Age at inclusion (years), mean ± SD | 46.9 ± 11.9 | 46.3 ± 13.3 | 48.4 ± 11.3 | 44.5 ± 10.4 | 47.2 ± 13.0 | 0.667 |
| Duration of diabetes* (years) mean ± SD | 28.2 ± 11.9 | 26.8 ± 12.6 | 31.4 ± 11.8 | 27.5 ± 11.9 | 24.5 ± 10.8 | 0.140 |
| Duration of pump** (years), median (IQR) | 10 (7–14) | 9 (7–14) | 11.5 (8–17) | 8 (6–13) | 8 (3–13) | 0.058 |
| Weight* (kg), mean ± SD | 75.8 ± 15.7 | 74.2 ± 13.9 | 77.1 ± 16.3 | 76.3 ± 17.4 | 74.4 ± 15.4 | 0.867 |
| Height* (cm), mean ± SD | 170.5 ± 8.3 | 170.1 ± 8.5 | 171.4 ± 8.3 | 170.76 ± 9.6 | 169.0 ± 6.8 | 0.729 |
| BMI* (kg/m2), median (IQR) | 25.1 (22.4–29.3) | 24.8 (23–27.8) | 25.6 (22.3–29.4) | 25.6 (22.0–30.1) | 24.8 (22.9–28.4) | 0.984 |
| HbA1c* (%), median (IQR) | 7.6 (7.2–8.2) | 7.3 (6.9–7.7) | 7.5 (7.2–7.9) | 8.1 (7.6–8.4) | 7.8 (7.3–8.8) |
Bold value indicates the significant results (with p < 0.05)
*One missing value; **three missing values. Comparison of means between centers was performed via ANOVA test (parametric test) or Kruskal–Wallis test (nonparametric test)
Fig. 1Hyper- and hypoglycemia AUC centered and reduced in each participating center
Factors associated with hyper- and hypoglycemia AUC in univariate and multivariate models
| Risk factors | Hyperglycemia AUC | Hypoglycemia AUC | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Univariate | Multivariate ( | Univariate | Multivariate ( | |||||||||
| 95% CI | 95% CI | 95% CI | 95% CI | |||||||||
| Age at inclusion | − 0.022 | [− 0.039; − 0.005] | − 0.028 | [− 0.045; − 0.012] | − 0.012 | [− 0.025; 0.002] | 0.091 | − 0.013 | [− 0.025; − 0.001] | |||
| Duration of diabetes | − 0.009 | [− 0.023; 0.006] | 0.230 | − 0.005 | [− 0.017; 0.007] | 0.448 | ||||||
| Duration of pump | − 0.022 | [− 0.048; 0.005] | 0.107 | − 0.005 | [− 0.031; 0.020] | 0.687 | 0.007 | [− 0.019; 0.033] | 0.612 | |||
| BMI | − 0.003 | [− 0.044; 0.037] | 0.874 | − 0.049 | [− 0.074; − 0.024] | − 0.027 | [− 0.051; − 0.003] | |||||
| Baseline HbA1c | 0.456 | [0.221; 0.691] | 0.359 | [0.122; 0.597] | − 0.221 | [− 0.457; 0.014] | 0.066 | − 0.040 | [− 0.249; 0.168] | 0.703 | ||
| Center | ||||||||||||
| 2 | 1 | 1 | ||||||||||
| 1 | − 0.071 | [− 0.480; 0.338] | 0.734 | − 0.038 | [− 0.458; 0.383] | 0.861 | ||||||
| 3 | 0.100 | [− 0.467; 0.667] | 0.730 | − 0.046 | [− 0.521; 0.430] | 0.851 | ||||||
| 4 | − 0.024 | [− 0.524; 0.476] | 0.925 | − 0.063 | [− 0.436; 0.309] | 0.739 | ||||||
| Hypoglycemia threshold | 0.005 | [− 0.011; 0.022] | 0.536 | − 0.004 | [− 0.021; 0.013] | 0.623 | ||||||
| % basal | − 0.018 | [− 0.026; − 0.011] | − 0.017 | [− 0.023; − 0.012] | − 0.006 | [− 0.014; 0.002] | 0.113 | − 0.006 | [− 0.013; 0.001] | 0.077 | ||
| PLGS | − 0.004 | [− 0.006; − 0.003] | − 0.004 | [− 0.005; − 0.003] | 0.004 | [0.003; 0.006] | 0.004 | [0.003; 0.006] | ||||
| TDD | 1.139 | [0.225; 2.053] | 0.514 | [− 0.243; 1.271] | 0.184 | − 0.133 | [− 0.563; 0.298] | 0.546 | ||||
| − 0.009 | [− 0.027; 0.009] | 0.333 | − 0.013 | [− 0.032; 0.006] | 0.190 | |||||||
Bold values indicate the significant results (with p < 0.05)
n, number of patients
p value of univariate and multivariate generalized linear regression with repeated data
Diagnostic values of setting parameters
| Pump parameters | Hyperglycemia** | Hypoglycemia** | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Cutoff | AUC [95% CI] | Sensitivity [95% CI] | Specificity [95% CI] | Cutoff | AUC [95% CI] | Sensitivity [95% CI] | Specificity [95% CI] | |||
| % basal (%) | ≤ 52.0 | 0.62 [0.58–0.66] | 0.66 [0.61–0.70] | 0.53 [0.48–0.59] | < 0.001 | |||||
| PLGS (min) | > 157.5 | 0.60 [0.56–0.64] | 0.47 [0.43–0.52] | 0.73 [0.68–0.78] | ≤ 174.4 | 0.71 [0.67–0.75] | 0.83 [0.79–0.86] | 0.51 [0.46–0.57] | ||
Bold values indicate the significant results (with p < 0.05)
*p value of logistic regression
**We modeled the probability of no event (avoidance of hyper- or hypoglycemia)
Cutoff for avoidance of hyper- or hypoglycemia
Fig. 2ROC curves of setting parameters to protect from hyperglycemia (A) and hypoglycemia (B)
Fig. 3Plot of between-visit PLGS evolution (∆PLGS) (min) versus TDD evolution (∆TDD) (UI/kg). The computed regression equation between these two parameters is indicated on the graph
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| Effect of hypo-minimizer systems on overall glucose control is heterogeneous. This effect mostly relies on system settings. |
| The aim of this study was to determine optimal settings of the Minimed 640G hypo-minimizer system to reduce both hypo- and hyperglycemia exposure. |
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| Optimal settings were determined to optimize glucose control. |
| The most important parameter to adjust was total daily insulin dose in order to target a mean daily predictive low-glucose suspend duration between 157.5 and 174.5 min/day. |