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自动语音识别的自动注药计算器在 1 型糖尿病患者中的疗效:一项随机交叉试验。

Efficacy of automatic bolus calculator with automatic speech recognition in patients with type 1 diabetes: A randomized cross-over trial.

机构信息

Nalecz Institute of Biocybernetics and Biomedical Engineering, Polish Academy of Sciences, Warsaw, Poland.

Department of Pediatrics, Institute of Mother and Child, Warsaw, Poland.

出版信息

J Diabetes. 2018 Jul;10(7):600-608. doi: 10.1111/1753-0407.12641. Epub 2018 Feb 9.

DOI:10.1111/1753-0407.12641
PMID:29316338
Abstract

BACKGROUND

Patients using an insulin pump as part of their diabetes treatment need to calculate insulin bolus doses to compensate for a meal. Some patients do not modify their meal boluses according to changes in the amount and composition of food products in a meal. The lack of correct meal boluses leads to unstable, and therefore harmful, blood glucose levels. The aim of the present study was to test a system supporting bolus determination based on a voice description of a meal.

METHODS

The bolus calculator developed (VoiceDiab) consists of a smartphone application and three remote servers for automatic speech recognition, text analysis, and insulin dosage calculation. Forty-four people with type 1 diabetes (T1D) treated with continuous subcutaneous insulin infusion finished the randomized cross-over study. Patients were randomly allocated to the group in which the VoiceDiab system supported bolus calculation or to an unsupported group, in which patients or their caregivers calculated boluses. After a 14-day washout period, patients from the supported group were switched to the unsupported group, whereas those in the unsupported group were switched to the supported group.

RESULTS

There was a significant difference between the supported and unsupported groups in the percentage of patients with 2-h postprandial glycemia within the 70-180 mg/dL range (58.6% vs 46.6%, respectively; P = 0.031).

CONCLUSIONS

The VoiceDiab system improves postprandial glucose control without increasing the time in hyperglycemia or hypoglycemia. Therefore, it may be useful in the treatment of patients with diabetes on intensive insulin therapy.

摘要

背景

作为糖尿病治疗的一部分,使用胰岛素泵的患者需要计算胰岛素推注剂量以补偿膳食。一些患者不会根据膳食中食物产品的数量和成分的变化来调整膳食推注量。缺乏正确的膳食推注量会导致血糖水平不稳定,从而对健康造成危害。本研究的目的是测试一种基于膳食语音描述来支持推注剂量确定的系统。

方法

开发的推注计算器(VoiceDiab)由智能手机应用程序和三个远程服务器组成,用于自动语音识别、文本分析和胰岛素剂量计算。44 名接受持续皮下胰岛素输注治疗的 1 型糖尿病(T1D)患者完成了随机交叉研究。患者被随机分配到接受 VoiceDiab 系统支持推注计算的组或不支持的组,在不支持的组中,患者或其照顾者计算推注量。经过 14 天的洗脱期后,支持组的患者切换到不支持组,而不支持组的患者切换到支持组。

结果

在餐后 2 小时血糖在 70-180mg/dL 范围内的患者比例方面,支持组和不支持组之间存在显著差异(分别为 58.6%和 46.6%;P=0.031)。

结论

VoiceDiab 系统可改善餐后血糖控制,而不会增加高血糖或低血糖时间。因此,它可能对接受强化胰岛素治疗的糖尿病患者的治疗有用。

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