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Rough Sets and Fuzzy Sets Theory Applied to the Sequential Medical Diagnosis

机译:粗糙集和模糊集理论在顺序医学诊断中的应用

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摘要

Sequential classification task is typical in medical diagnosis, when the investigations of the patient's state are repeated several times. Such situation always takes place in the controlling of the drug therapy efficacy. A specific feature of this diagnosis task is the dependence between patient's states at particular instants, which should be taken into account in sequential diagnosis algorithms. In this paper methods for performing sequential diagnosis using fuzzy sets and rough sets theory are developed and evaluated. For both soft methodologies several algorithms are proposed which differ in kind of input data and in details of classification procedures for particular instants of decision process. Proposed algorithms were practically applied to the computer-aided medical problem of recognition of patient's acid-base equilibrium states. Results of comparative experimental analysis of investigated algorithms in respect of classification accuracy are also presented and discussed.
机译:当对患者状态的调查重复几次时,顺序分类任务是医学诊断中的典型任务。这种情况总是发生在药物治疗功效的控制中。此诊断任务的一个特殊功能是特定时刻患者状态之间的依赖性,在顺序诊断算法中应予以考虑。在本文中,开发并评估了使用模糊集和粗糙集理论进行顺序诊断的方法。对于这两种软方法,提出了几种算法,这些算法在输入数据的种类以及决策过程的特定时刻的分类过程细节方面有所不同。所提出的算法已实际应用于识别患者酸碱平衡状态的计算机辅助医学问题。还提出并讨论了关于分类精度的研究算法的比较实验分析结果。

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