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An extensible six-step methodology to automatically generate fuzzy DSSs for diagnostic applications

机译:可扩展的六步方法,可自动生成用于诊断应用的模糊DSS

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BackgroundThe diagnosis of many diseases can be often formulated as a decision problem; uncertainty affects these problems so that many computerized Diagnostic Decision Support Systems (in the following, DDSSs) have been developed to aid the physician in interpreting clinical data and thus to improve the quality of the whole process. Fuzzy logic, a well established attempt at the formalization and mechanization of human capabilities in reasoning and deciding with noisy information, can be profitably used. Recently, we informally proposed a general methodology to automatically build DDSSs on the top of fuzzy knowledge extracted from data.MethodsWe carefully refine and formalize our methodology that includes six stages, where the first three stages work with crisp rules, whereas the last three ones are employed on fuzzy models. Its strength relies on its generality and modularity since it supports the integration of alternative techniques in each of its stages.ResultsThe methodology is designed and implemented in the form of a modular and portable software architecture according to a component-based approach. The architecture is deeply described and a summary inspection of the main components in terms of UML diagrams is outlined as well. A first implementation of the architecture has been then realized in Java following the object-oriented paradigm and used to instantiate a DDSS example aimed at accurately diagnosing breast masses as a proof of concept.ConclusionsThe results prove the feasibility of the whole methodology implemented in terms of the architecture proposed.
机译:背景技术许多疾病的诊断通常可以制定为决策问题;不确定性影响这些问题,以便已经开发了许多计算机化诊断决策支持系统(以下,DDSS)以帮助医生在解释临床数据中,从而提高整个过程的质量。模糊逻辑,在推理和决定与嘈杂信息中的人体能力的形式化和机械化方面建立的良好尝试,可以有利时地使用。最近,我们非正式地提出了一般的方法,以自动构建从数据提取的模糊知识的顶部构建DDSS。仔细精心细化并将我们的方法正式化,包括六个阶段,其中前三个阶段与清晰的规则有用,而最后三个阶段是采用模糊模型。它的强度依赖于其一般性和模块化,因为它支持其每个阶段中的替代技术的集成。方法是根据基于组件的方法以模块化和便携式软件架构的形式设计和实现的。该架构深入描述,并且还概述了在UML图方面对主要组件的摘要检查。然后,在面向对象的范例之后的Java中实现了架构的第一次实现,并用于实例化旨在准确地诊断乳房肿块的DDS示例,作为概念证明。结论,结果证明了整个方法的可行性建议建议。

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