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Intelligent Decision Support System for Depression Diagnosis Based on Neuro-fuzzy-CBR Hybrid

机译:基于神经模糊-CBR混合的抑郁症诊断智能决策支持系统

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Depression disorder is common in primary care, but its diagnosis is complex and controversial due to the conflicting, overlapping and confusing nature of the multitude of symptoms, hence the need to retain cases in a case base and reuse effective previous solutions for current cases. This paper proposes a neuro-fuzzy-Case Base Reasoning (CBR) driven decision support system that utilizes solutions to previous cases in assisting physicians in the diagnosis of depression disorder. The system represents depression disorder with 25 symptoms grouped into five categories. Fuzzy logic provided a means for handling imprecise symptoms. Local similarity between the input cases and retrieved cases was achieved using the absolute deviation as the distance metric, while adaptive neuro-fuzzy inference system handled fuzzy rules whose antecedents are the mapped local similarities of each category of symptoms for global similarity measurement, upon which the retrieved cases are ranked. The 5 best matched cases are subjected to the emotional filter of the system for diagnostic decision making. This approach derives strengths from the hybridization since the tools are complementary to one another.
机译:抑郁症在初级保健中很常见,但由于多种症状的冲突,重叠和混乱性质,其诊断是复杂且有争议的,因此需要将病例保留在病例库中并为当前病例重新使用有效的先前解决方案。本文提出了一种神经模糊案例基础推理(CBR)驱动的决策支持系统,该系统利用以前案例的解决方案来协助医师诊断抑郁症。该系统代表抑郁症,其中25种症状分为五个类别。模糊逻辑提供了一种处理不精确症状的方法。输入案例与检索案例之间的局部相似性是使用绝对偏差作为距离度量来实现的,而自适应神经模糊推理系统处理的模糊规则的先验条件是用于全局相似性度量的每种症状类别的映射局部相似性,检索到的案例进行排名。对5个最匹配的案例进行系统的情感过滤,以进行诊断决策。由于工具相互补充,因此这种方法从杂交中获得了优势。

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