Hydra:糖尿病的混合诊断和监测架构

Özgür Kafali, Ulrich Schaechtle, Kostas Stathis
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引用次数: 6

摘要

我们提出Hydra:一个多代理混合诊断和监测架构,旨在帮助糖尿病患者管理他们的疾病。它利用基于模型的诊断技术,其中模型可以通过两种不同的方法以一种新的方式组合而成。在第一种方法中,我们根据为糖尿病提供的医学指南构建模型。计算逻辑代理监视患者,并在当前对患者的观察足以得出结论时基于模型提供反馈。在第二种方法中,我们为模型假设一个函数,并通过数据学习它的参数。该模型通过对患者的观察不断更新,并允许预测可能的未来值。我们描述了这种架构的组成部分,以及如何将其集成到现有的COMMODITY12个人健康系统中。我们实现了Hydra的原型,并以低血糖监测为例介绍了它的工作原理。我们报告这一情景的预测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hydra: A hybrid diagnosis and monitoring architecture for diabetes
We present Hydra: a multi-agent hybrid diagnosis and monitoring architecture that is aimed at helping diabetic patients manage their illness. It makes use of model-based diagnosis techniques, where the model can be developed by two different approaches combined in a novel way. In the first approach, we build the model based on the medical guidelines provided for diabetes. A computational logic agent monitors the patient and provides feedback based on the model whenever the current observations regarding the patient are sufficient to draw a conclusion. In the second approach, we assume a function for the model, and learn its parameters through data. The model is consistently updated via incoming observations about the patients, and allows prediction of possible future values. We describe the components of such an architecture, and how it can integrated into the existing COMMODITY12 personal health system. We implement a prototype of Hydra, and present its workings on a case study on hypoglycemia monitoring. We report our prediction results for this scenario.
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