Grady Mike, Campbell Denise, MacLeod Kirsty, Srinivasan Aparna
LifeScan Scotland Ltd, Inverness, UK.
J Diabetes Sci Technol. 2013 Jul 1;7(4):970-8. doi: 10.1177/193229681300700419.
This study aimed to evaluate the performance of a glucose pattern recognition tool incorporated in a blood glucose monitoring system (BGMS) and its association with clinical measures, and to assess user perception and understanding of the pattern messages they receive.
Participants had type 1 or type 2 diabetes mellitus and were self-adjusting insulin doses for ≥1 year. During a 4-week home testing period, participants performed ≥6 daily self-tests, adjusted their insulin regimen based on BGMS results, and recorded pattern messages in the logbook. Participants reflected on usability of the pattern tool in a questionnaire.
Study participants (n = 101) received a mean ± standard deviation of 4.5 ± 1.9 pattern messages per week (3.6 ± 1.8 high glucose patterns and 0.9 ± 1.3 low glucose patterns). Most received ≥1 high (96.5%) and/or ≥1 low (46.0%) pattern message per week. The average number of high- and low-pattern messages per week was associated with higher and lower, respectively, baseline hemoglobin A1c (p < .01) and fasting plasma glucose (p < .05). Participants found high- and low-pattern messages clear and easy to understand (84.2% and 83.2%, respectively) and considered the frequency of low (82.0%) and high (63.4%) pattern messages about right. Overall, 71.3% of participants indicated they preferred to use a meter with pattern messages.
The on-device Pattern tool identified meaningful blood glucose patterns, highlighting potential opportunities for improving glycemic control in patients who self-adjust their insulin.
本研究旨在评估血糖监测系统(BGMS)中包含的血糖模式识别工具的性能及其与临床指标的关联,并评估用户对所接收模式信息的认知和理解。
参与者患有1型或2型糖尿病,且自行调整胰岛素剂量≥1年。在为期4周的家庭测试期间,参与者每天进行≥6次自我检测,根据BGMS结果调整胰岛素治疗方案,并在日志中记录模式信息。参与者通过问卷调查对模式工具的可用性进行反馈。
研究参与者(n = 101)每周平均收到4.5±1.9条模式信息(标准差)(3.6±1.8条高血糖模式信息和0.9±1.3条低血糖模式信息)。大多数参与者每周收到≥1条高血糖(96.5%)和/或≥1条低血糖(46.0%)模式信息。每周高血糖和低血糖模式信息的平均数量分别与较高和较低的基线糖化血红蛋白(p <.01)和空腹血糖(p <.05)相关。参与者认为高血糖和低血糖模式信息清晰易懂(分别为84.2%和83.2%),并认为低血糖(82.0%)和高血糖(63.4%)模式信息的频率大致合适。总体而言,71.3%的参与者表示他们更喜欢使用带有模式信息的血糖仪。
设备上的模式工具识别出有意义的血糖模式,突出了在自行调整胰岛素的患者中改善血糖控制的潜在机会。