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[Keyword] fuzzy differential diagnosis(3hit)

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  • Discussion on "A Fuzzy Method for Medical Diagnosis of Headache"

    Kuo-Chen HUNG  Yu-Wen WOU  Peterson JULIAN  

     
    LETTER-Pattern Recognition

      Vol:
    E93-D No:5
      Page(s):
    1307-1308

    This paper is in response to the report of Ahn, Mun, Kim, Oh, and Han published in IEICE Trans. INF. & SYST., Vol.E91-D, No.4, 2008, 1215-1217. They tried to extend their previous paper that published on IEICE Trans. INF. & SYST., Vol.E86-D, No.12, 2003, 2790-2793. However, we will point out that their extension is based on the detailed data of knowing the frequency of three types. Their new occurrence information based on intuitionistic fuzzy set for medical diagnosis of headache becomes redundant. We advise researchers to directly use the detailed data to decide the diagnosis of headache.

  • A Fuzzy Method for Medical Diagnosis of Headache

    Jeong-Yong AHN  Kill-Sung MUN  Young-Hyun KIM  Sun-Young OH  Beom-Soo HAN  

     
    LETTER-Biological Engineering

      Vol:
    E91-D No:4
      Page(s):
    1215-1217

    In this note we propose a fuzzy diagnosis of headache. The method is based on the relations between symptoms and diseases. For this purpose, we suggest a new diagnosis measure using the occurrence information of patient's symptoms and develop an improved interview chart with fuzzy degrees assigned according to the relation among symptoms and three labels of headache. The proposed method is illustrated by two examples.

  • A Fuzzy Differential Diagnosis of Headache Applying Linear Regression Method and Fuzzy Classification

    Jeong-Yong AHN  Young-Hyun KIM  Soon-Ki KIM  

     
    LETTER-Medical Engineering

      Vol:
    E86-D No:12
      Page(s):
    2790-2793

    The fuzzy set framework can be utilized in several different approaches to modeling the diagnostic process. In this paper, we introduce two main relations between symptoms and diseases where the relations are described by intuitionistic fuzzy set data. Also, we suggest four measures for medical diagnosis. We are dealing with the preliminary diagnosis from the information of interview chart. We quantify the qualitative information based on the interview chart by dual scaling. Prototype of fuzzy diagnostic sets and the linear regression methods are established with these quantified data. These methods can be used to classify new patient's tone of diseases with certain degrees of belief and its concerned symptoms.