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Building decision trees for diagnosing intracavitary uterine pathology

机译:建立用于诊断腔内子宫病理的决策树

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摘要

Objectives: To build decision trees to predict intrauterine disease, based on a clinical data set, and using mathematical software.Methods: Diagnostic algorithms were built and validated using the data of 402 consecutive patients who underwent grey scale ultrasound, followed by colour Doppler, saline infusion sonography (SIS), office hysteroscopy and endometrial sampling. The “final diagnosis” was classified as “abnormal” in case of endometrial polyps, hyperplasia or malignancy or intracavitary myoma. “Pre-test parameters” included patient’s age, weight, length, parity, menopausal status, bleeding symptoms and cervical cytology; “post-test parameters” included ultrasound-, color Doppler-, SIS-, hysteroscopy- findings and histology results after endometrial sampling. Decision Tree #1 was built using both “pre-test” and “post-test” parameters; Tree #2 was only based on “post-test” parameters; Tree #3 was designed without using the hysteroscopy variables. The Waikato Environment for Knowledge Analysis (Weka) software was used for the development of decision trees.Results: All trees started with an imaging technique: hysteroscopy or SIS. The diagnostic accuracy was 88.3%, 88.3% and 84.0% for Tree #1, #2 and #3 respectively, the sensitivity and specificity was 95.5% and 82%, 97.7% and 80.0, 93.2 and 76.0%, respectively.Conclusion: The method used in this study enables the comparison between different decision trees containing multiple tests.
机译:目的:基于临床数据集并使用数学软件,建立预测子宫内疾病的决策树。方法:使用402例连续接受灰度超声检查的患者,然后进行彩色多普勒,生理盐水的数据,建立诊断算法并进行验证输注超声检查(SIS),办公室宫腔镜检查和子宫内膜取样。如果子宫内膜息肉,增生或恶性肿瘤或腔内肌瘤,则“最终诊断”被分类为“异常”。 “测试前参数”包括患者的年龄,体重,身长,均等,绝经状态,出血症状和宫颈细胞学检查; “测试后参数”包括子宫内膜取样后的超声,彩色多普勒,SIS,宫腔镜检查结果和组织学结果。决策树#1是使用“预测试”和“后测试”参数构建的;树#2仅基于“后期测试”参数; 3号树的设计没有使用宫腔镜检查变量。怀卡托知识分析环境(Weka)软件用于开发决策树。结果:所有树都以一种成像技术开始:宫腔镜检查或SIS。对1号,2号和3号树的诊断准确度分别为88.3%,88.3%和84.0%,敏感性和特异性分别为95.5%和82%,97.7%和80.0、93.2和76.0%。本研究中使用的方法使得能够在包含多个测试的不同决策树之间进行比较。

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