管理糖尿病:移动平台中用户数据支持的模式发现和咨询

Diogo Machado, Tiago Paiva, I. Dutra, V. S. Costa, P. Brandão
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引用次数: 5

摘要

糖尿病管理是一个复杂而明智的问题,因为每个糖尿病患者都是一个具有特定需求的独特病例。最佳的解决方案是持续监测糖尿病患者的数值,并自动采取相应的行动。我们提出了一种指导用户并分析收集到的数据以给出个人建议的方法。通过使用数据挖掘算法和方法,我们发现了可能导致危机情况的隐藏行为模式。然后可以将这些模式转换为逻辑规则,能够在特定上下文中触发并向用户提供建议。我们相信,这种解决方案,不仅有利于糖尿病患者,也有利于医生陪同的情况。这些建议和规则是医学专家在制定特定治疗方案时可以使用的有用输入。在数据收集阶段,当记录数量不足以得出有用的结论时,根据医疗规程、指令和/或咨询意见确定的一套基本逻辑规则负责向用户提供咨询和指导。拟议的系统将在开始时与用户一起提供一般性建议,并通过不断学习,更具体地建议用户。我们讨论了这种方法,描述了系统的体系结构、基本规则和数据挖掘组件。该系统将被整合到目前正在开发的Android糖尿病管理应用程序中。
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Managing diabetes: Pattern discovery and counselling supported by user data in a mobile platform
Diabetes management is a complex and a sensible problem as each diabetic is a unique case with particular needs. The optimal solution would be a constant monitoring of the diabetic's values and automatically acting accordingly. We propose an approach that guides the user and analyses the data gathered to give individual advice. By using data mining algorithms and methods, we uncover hidden behaviour patterns that may lead to crisis situations. These patterns can then be transformed into logical rules, able to trigger in a particular context, and advise the user. We believe that this solution, is not only beneficial for the diabetic, but also for the doctor accompanying the situation. The advice and rules are useful input that the medical expert can use while prescribing a particular treatment. During the data gathering phase, when the number of records is not enough to attain useful conclusions, a base set of logical rules, defined from medical protocols, directives and/or advice, is responsible for advise and guiding the user. The proposed system will accompany the user at start with generic advice, and with constant learning, advise the user more specifically. We discuss this approach describing the architecture of the system, its base rules and data mining component. The system is to be incorporated in a currently developed diabetes management application for Android.
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