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首页> 外文期刊>Diabetes care >Use of an automated decision support tool optimizes clinicians' ability to interpret and appropriately respond to structured self-monitoring of blood glucose data.
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Use of an automated decision support tool optimizes clinicians' ability to interpret and appropriately respond to structured self-monitoring of blood glucose data.

机译:使用自动决策支持工具可优化临床医生解释和适当响应血糖数据的结构化自我监测的能力。

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摘要

We evaluated the impact of an automated decision support tool (DST) on clinicians' ability to identify glycemic abnormalities in structured self-monitoring of blood glucose (SMBG) data and then make appropriate therapeutic changes based on the glycemic patterns observed.In this prospective, randomized, controlled, multicenter study, 288 clinicians (39.6% family practice physicians, 37.9% general internal medicine physicians, and 22.6% nurse practitioners) were randomized to structured SMBG alone (STG; n = 72); structured SMBG with DST (DST; n = 72); structured SMBG with an educational DVD (DVD; n = 72); and structured SMBG with DST and the educational DVD (DST+DVD; n = 72). Clinicians analyzed 30 patient cases (type 2 diabetes), identified the primary abnormality, and selected the most appropriate therapy.A total of 222 clinicians completed all 30 patient cases with no major protocol deviations. Significantly more DST, DVD, and DST+DVD clinicians correctly identified the glycemic abnormality and selected the most appropriate therapeutic option compared with STG clinicians: 49, 51, and 55%, respectively, vs. 33% (all P < 0.0001) with no significant differences among DST, DVD, and DST+DVD clinicians.Use of structured SMBG, combined with the DST, the educational DVD, or both, enhances clinicians' ability to correctly identify significant glycemic patterns and make appropriate therapeutic decisions to address those patterns. Structured testing interventions using either the educational DVD or the DST are equally effective in improving data interpretation and utilization. The DST provides a viable alternative when comprehensive education is not feasible, and it may be integrated into medical practices with minimal training.
机译:我们评估了自动决策支持工具(DST)对临床医生在结构化血糖自我监测(SMBG)数据中识别血糖异常的能力的影响,然后根据观察到的血糖模式做出适当的治疗性改变。随机,对照,多中心研究将288名临床医生(39.6%的家庭执业医师,37.9%的普通内科医师和22.6%的执业医师)随机分配至仅结构化SMBG(STG; n = 72)。具有DST的结构化SMBG(DST; n = 72);具有教育性DVD的结构化SMBG(DVD; n = 72);以及带有DST和教育性DVD的结构化SMBG(DST + DVD; n = 72)。临床医生分析了30例患者(2型糖尿病),确定了原发异常并选择了最合适的治疗方法。总共222名临床医生完成了所有30例患者的研究,且没有重大的方案偏差。与STG临床医生相比,有更多的DST,DVD和DST + DVD临床医生正确识别了血糖异常并选择了最合适的治疗方案:分别为49%,51%和55%,而33%(所有P <0.0001)没有DST,DVD和DST + DVD临床医生之间存在显着差异。结构化SMBG与DST,教育性DVD或两者结合使用,可增强临床医生正确识别重要血糖模式并做出适当治疗决策以解决这些模式的能力。使用教育性DVD或DST进行的结构化测试干预措施在改善数据解释和利用方面同样有效。如果无法进行全面的教育,则DST提供了一种可行的替代方法,并且只需进行最少的培训即可将其整合到医疗实践中。

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