Mader J K, Neubauer K M, Schaupp L, Augustin T, Beck P, Spat S, Höll B, Treiber G M, Fruhwald F M, Pieber T R, Plank J
Division of Endocrinology and Metabolism, Department of Internal Medicine, Medical University of Graz, Graz, Austria.
Diabetes Obes Metab. 2014 Feb;16(2):137-46. doi: 10.1111/dom.12186. Epub 2013 Aug 29.
To evaluate glycaemic control and usability of a workflow-integrated algorithm for basal-bolus insulin therapy in a proof-of-concept study to develop a decision support system in hospitalized patients with type 2 diabetes.
In this ward-controlled study, 74 type 2 diabetes patients (24 female, age 68 ± 11 years, HbA1c 8.7 ± 2.4% and body mass index 30 ± 7) were assigned to either algorithm-based treatment with a basal-bolus insulin therapy or to standard glycaemic management. Algorithm performance was assessed by continuous glucose monitoring and staff's adherence to algorithm-calculated insulin dose.
Average blood glucose levels (mmol/l) in the algorithm group were significantly reduced from 11.3 ± 3.6 (baseline) to 8.2 ± 1.8 (last 24 h) over a period of 7.5 ± 4.6 days (p < 0.001). The algorithm group had a significantly higher percentage of glucose levels in the ranges from 5.6 to 7.8 mmol/l (target range) and 3.9 to 10.0 mmol/l compared with the standard group (33 vs. 23% and 73 vs. 53%, both p < 0.001). Physicians' adherence to the algorithm-calculated total daily insulin dose was 95% and nurses' adherence to inject the algorithm-calculated basal and bolus insulin doses was high (98 and 93%, respectively). In the algorithm group, significantly more glucose values <3.9 mmol/l were detected in the afternoon relative to other times (p < 0.05), a finding mainly related to pronounced morning glucose excursions and requirements for corrective bolus insulin at lunch.
The workflow-integrated algorithm for basal-bolus therapy was effective in establishing glycaemic control and was well accepted by medical staff. Our findings support the implementation of the algorithm in an electronic decision support system.
在一项概念验证研究中评估基础-餐时胰岛素治疗的工作流程集成算法在2型糖尿病住院患者中开发决策支持系统时的血糖控制情况和可用性。
在这项病房对照研究中,74例2型糖尿病患者(24例女性,年龄68±11岁,糖化血红蛋白8.7±2.4%,体重指数30±7)被分配接受基于算法的基础-餐时胰岛素治疗或标准血糖管理。通过持续葡萄糖监测和工作人员对算法计算的胰岛素剂量的依从性来评估算法性能。
算法组的平均血糖水平(mmol/L)在7.5±4.6天的时间内从11.3±3.6(基线)显著降至8.2±1.8(最后24小时)(p<0.001)。与标准组相比,算法组血糖水平在5.6至7.8 mmol/L(目标范围)和3.9至10.0 mmol/L范围内的百分比显著更高(分别为33%对23%和73%对53%,均p<0.001)。医生对算法计算的每日总胰岛素剂量的依从性为95%,护士对注射算法计算的基础和餐时胰岛素剂量的依从性很高(分别为98%和93%)。在算法组中,下午检测到的血糖值<3.9 mmol/L明显多于其他时间(p<0.05),这一发现主要与明显的早晨血糖波动以及午餐时校正餐时胰岛素的需求有关。
基础-餐时治疗的工作流程集成算法在建立血糖控制方面有效,并且被医务人员很好地接受。我们的研究结果支持在电子决策支持系统中实施该算法。