Automated glycemic pattern analysis can improve health care professional efficiency and accuracy

自动化血糖模式分析可以提高医疗保健专业人员的工作效率和准确性。

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Abstract

BACKGROUND: Health care professionals (HCPs) routinely review handwritten blood glucose (BG) logbooks during office visits of patients with diabetes. METHOD: In this study, 64 HCPs were asked to assess glycemic patterns and estimate BG averages in six simulated handwritten logbooks. The HCPs then reviewed the pattern logs and averages in six OneTouch® Verio™IQ meters containing corresponding data sets. RESULTS: The average time needed for pattern review was 7.3 min for handwritten logbooks versus 0.9 min using the meter. The total error rate for logbook pattern identification was 43.0% compared with the meter. The mean percentage deviation between HCP estimates of 30-day BG averages and actual values was 14.5%. CONCLUSIONS: The meter is associated with faster and more accurate pattern analysis compared with handwritten logbooks.

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