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Applications of Fuzzy Theory on Health Care: An Example of Depression Disorder Classification Based on FCM

机译:模糊理论在卫生保健中的应用:基于FCM的抑郁症分类实例

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The purpose of this study is to apply fuzzy theory on health care. To achieve this goal, Beck Depression Inventory (BDI)-II was adopted as the instrument and outpatients of a psychiatric clinic were recruited as samples and undergraduates as non-clinical sample as well. To elicit the membership degree, we asked the subjects are free to choose more than one alternative for each item listed in BDI and, in turn, assign percentages on the chosen alternatives. Moreover, the sum of percentages of the chosen categories is restricted to 100%. We performed the possibility- based (fuzzy c-means, FCM) and probability-based classification (Wald's method and k-means) to classification of severity of depression. The scoring of BDI of subjects were analyzed by clustering analysis while the diagnose of depression-severity by a psychiatrist was used as the criterion to evaluate classification accuracy. The percentage of correct classification among FCM, Wald's method and k-means were compared. The analytical results show the Kendall's τ coefficient of FCM, Wald's method and k-means were .549, .316, and .395, respectively. That is, FCM exhibited a higher association between the original and classified membership than did Wald's and k-means methods. We concluded that FCM identified the data structure more accurately than the two crisp clustering methods. It is also suggested that considerable cost concerning prevention and cure of depression might be reduced via FCM.
机译:本研究的目的是将模糊理论应用于医疗保健。为了实现这一目标,采用了贝克抑郁量表(BDI)-II作为工具,并招募了精神病诊所的门诊病人作为样本,并招收了大学生作为非临床样本。为了获得会员资格,我们要求受试者自由选择BDI中列出的每个项目的一个以上替代方案,然后依次为所选替代方案分配百分比。此外,所选类别的百分比总和限制为100%。我们对抑郁症的严重程度进行了基于可能性的(模糊c均值,FCM)和基于概率的分类(Wald方法和k均值)。通过聚类分析对受试者的BDI评分进行了分析,同时使用精神科医生对抑郁程度的诊断作为评估分类准确性的标准。比较了FCM,Wald方法和k均值中正确分类的百分比。分析结果表明,FCM的肯德尔τ系数,Wald方法和k均值分别为.549,.316和.395。也就是说,与Wald和k-means方法相比,FCM在原始成员和分类成员之间显示出更高的关联性。我们得出的结论是,与两种清晰的聚类方法相比,FCM能够更准确地识别数据结构。还建议可以通过FCM减少有关抑郁症预防和治疗的可观费用。

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