连接受限环境中的可扩展多智能体架构:健康妊娠个性化护理案例研究

Msury Mahunnah, K. Taveter
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引用次数: 4

摘要

技术进步推动了不同领域的研究,对包括医疗保健领域在内的生活质量产生了巨大影响。阻碍这些技术在医疗保健领域有效实现的挑战包括:患者的异质性、有限的互联网连接——特别是在发展中国家——以及因住院和治疗严重健康状况而导致的医疗保健服务费用高昂。在本文中,我们通过对孕妇的案例研究来解决这些挑战。我们首先介绍了妊娠并发症管理的现状,这激发了改进的需要。然后,我们通过遵循面向代理的建模来描述分析和设计模型,该模型考虑了人造代理(软件代理)和人类代理。最后,我们提出并讨论了多智能体架构,该架构通过考虑(1)在连接有限的环境中提供的医疗保健服务的可扩展性(2)根据个体患者的特征(如过敏、病史和爱好)提供患者护理(3)通过使用多参数机器学习算法预测关键健康状况,从而解决了上述医疗保健挑战。(4)提供家庭护理,使患者能够收集自己的生理数据并将其提交给医院信息系统进行持续监测和分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A scalable multi-agent architecture in environments with limited connectivity: Case study on individualised care for healthy pregnancy
Technology advancement has motivated researches and studies in different domains which have enormous impact on the quality of life including healthcare domain. Among the challenges that hinder effective realization of these technologies in healthcare domain are heterogeneous nature of patients, limited internet connectivity - especially in developing countries -, and high costs of healthcare services resulting from hospitalizations and treatments of critical health conditions. In this paper we have addressed the solution to these challenges by using a case study of pregnant women. We firstly present the current status in the management of pregnancy complications, which motivates the need for improvement. We then describe analysis and design models by following agent-oriented modelling, which considers man-made agents (software agents) and human agents. Finally we present and discuss multi-agent architecture which addresses a solution to the outlined above healthcare challenges by considering (1) scalability of the provided healthcare service in environments with limited connectivity (2) providing patient care in accordance with the characteristics of individual patients such as allergies, medical history and hobbies (3) prediction of critical health conditions by using multi-parametric machine learning algorithms, which aim to provide early diagnosis of critical health condition, and (4) providing home care that enables patients to collect their physiological data and submit them to the hospital information system for continuous monitoring and analysis.
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