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一款基于人工智能技术构建的强化胰岛素治疗手机应用程序。

An intensive insulinotherapy mobile phone application built on artificial intelligence techniques.

作者信息

Curran Kevin, Nichols Eric, Xie Ermai, Harper Roy

机构信息

Faculty of Computing and Engineering, University of Ulster, Northern Ireland, UK.

出版信息

J Diabetes Sci Technol. 2010 Jan 1;4(1):209-20. doi: 10.1177/193229681000400126.

Abstract

BACKGROUND

Software to help control diabetes is currently an embryonic market with the main activity to date focused mainly on the development of noncomputerized solutions, such as cardboard calculators or computerized solutions that use "flat" computer models, which are applied to each person without taking into account their individual lifestyles. The development of true, mobile device-driven health applications has been hindered by the lack of tools available in the past and the sheer lack of mobile devices on the market. This has now changed, however, with the availability of pocket personal computer handsets.

METHOD

This article describes a solution in the form of an intelligent neural network running on mobile devices, allowing people with diabetes access to it regardless of their location. Utilizing an easy to learn and use multipanel user interface, people with diabetes can run the software in real time via an easy to use graphical user interface. The neural network consists of four neurons. The first is glucose. If the user's current glucose level is within the target range, the glucose weight is then multiplied by zero. If the glucose level is high, then there will be a positive value multiplied to the weight, resulting in a positive amount of insulin to be injected. If the user's glucose level is low, then the weights will be multiplied by a negative value, resulting in a decrease in the overall insulin dose.

RESULTS

A minifeasibility trial was carried out at a local hospital under a consultant endocrinologist in Belfast. The short study ran for 2 weeks with six patients. The main objectives were to investigate the user interface, test the remote sending of data over a 3G network to a centralized server at the university, and record patient data for further proofing of the neural network. We also received useful feedback regarding the user interface and the feasibility of handing real-world patients a new mobile phone. Results of this short trial confirmed to a large degree that our approach (which also can be known as intensive insulinotherapy) has value and perhaps that our neural network approach has implications for future intelligent insulin pumps.

CONCLUSIONS

Currently, there is no software available to tell people with diabetes how much insulin to inject in accordance with their lifestyle and individual inputs, which leads to adjustments in software predictions on the amount of insulin to inject. We have taken initial steps to supplement the knowledge and skills of health care professionals in controlling insulin levels on a daily basis using a mobile device for people who are less able to manage their disease, especially children and young adults.

摘要

背景

帮助控制糖尿病的软件目前尚处于萌芽阶段,迄今为止其主要活动主要集中在非计算机化解决方案的开发上,例如纸质计算器,或者使用“平面”计算机模型的计算机化解决方案,这些方案在应用于每个人时并未考虑其个人生活方式。过去,由于缺乏可用工具以及市场上移动设备的匮乏,真正由移动设备驱动的健康应用程序的开发受到了阻碍。然而,随着袖珍个人电脑手机的出现,这种情况现在已经发生了变化。

方法

本文介绍了一种以运行在移动设备上的智能神经网络形式呈现的解决方案,使糖尿病患者无论身处何地都能使用。利用易于学习和使用的多面板用户界面,糖尿病患者可以通过易于使用的图形用户界面实时运行该软件。该神经网络由四个神经元组成。第一个是葡萄糖。如果用户当前的血糖水平在目标范围内,那么葡萄糖权重就乘以零。如果血糖水平高,那么权重将乘以一个正值,从而导致要注射的胰岛素量为正值。如果用户的血糖水平低,那么权重将乘以一个负值,导致总体胰岛素剂量减少。

结果

在贝尔法斯特一位内分泌顾问医生的指导下,在当地一家医院进行了一项小型可行性试验。这项简短的研究对六名患者进行了为期两周的观察。主要目标是调查用户界面,测试通过3G网络将数据远程发送到大学的中央服务器,并记录患者数据以进一步验证神经网络。我们还收到了关于用户界面以及向现实中的患者提供新手机的可行性的有用反馈。这项简短试验的结果在很大程度上证实了我们的方法(也可称为强化胰岛素治疗)具有价值,或许我们的神经网络方法对未来的智能胰岛素泵具有启示意义。

结论

目前,没有软件能够根据糖尿病患者的生活方式和个人输入信息来告知他们应注射多少胰岛素,这导致软件对胰岛素注射量的预测需要进行调整。我们已经迈出了初步步伐,以补充医疗保健专业人员在日常使用移动设备为疾病管理能力较弱的人群(尤其是儿童和年轻人)控制胰岛素水平方面的知识和技能。

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本文引用的文献

1
Insulin pump therapy in childhood diabetes-cost implications for Primary Care Trusts.
Diabet Med. 2006 Jan;23(1):86-9. doi: 10.1111/j.1464-5491.2005.01763.x.

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