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    Please use this identifier to cite or link to this item: http://tkuir.lib.tku.edu.tw:8080/dspace/handle/987654321/102583

    Title: 對尿失禁患者進行凱格爾骨盆肌肉運動後治療效能的評估
    Other Titles: Assessment of Kegel pelvic muscle exercise performance for the treatment of patient with incontinence
    Authors: 劉冠宏;Liu, Guan-Hong
    Contributors: 淡江大學資訊工程學系碩士班
    陳瑞發;Chen, Jui-Fa
    Keywords: 尿失禁;世界衛生組織生活品質問卷;項目反應理論;資料探勘;決策樹;Urinary incontinence;World Health Organization Quality of Life;Item Response Theory;data mining;Decision tree
    Date: 2014
    Issue Date: 2015-05-04 09:59:26 (UTC+8)
    Abstract: 目前大多數醫師對尿失禁的診斷方式,以患者口頭描述的病情做為判斷病情嚴重性的依據,醫師根據經驗來判定該患者應採用藥物治療、手術治療或復健運動等治療方式。醫師目前使用的醫療系統缺少分析機制,在沒有使用儀器檢查的情況下,醫師診治時有可能忽略部分患者的隱藏因子,因而不容易做出最佳的診斷方式。
    Most doctors in the diagnosis of urinary incontinence, using the condition of patient''s description as a basis to determine the severity of the disease. Doctors based on experience to determine which patients should be treated with medication, surgery or rehabilitation. Doctors currently lack health systems analysis mechanism, in the absence of the use of instrument checks, it is possible to ignore the factor in some patients when doctors choose for treatment, which is not easy to make the best diagnosis.
    In this thesis, using item response theory to analysis the response of patients in questionnaires and further investigate its causes and subsequent coping. In addition, using of the decision tree algorithm analysis patient''s related information. Through not specify classification module or specify classification module find the effectiveness of treatment in patients with factor, classification module speculate general and special patient and provides doctors as treatment information.
    Appears in Collections:[Graduate Institute & Department of Computer Science and Information Engineering] Thesis

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