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The Comparisons Of Prognostic Indexes Using Data Mining Techniques And Cox Regression Analysis In The Breast Cancer Data

机译:乳腺癌数据预后指标的数据挖掘技术比较及Cox回归分析

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The purpose of this study is to determine new prognostic indexes for the differentiation of subgroups of breast cancer patients with the techniques of decision tree algorithms (C&RT, CHAID, QUEST, ID3, C4.5 and C5.0) and Cox regression analysis for disease-free survival (DFS) in breast cancer patients. A retrospective analysis was performed in 381 breast cancer patients diagnosed. Age, menopausal status, age of menarche, family history of cancer, histologic tumor type, quadrant of tumor, tumor size, estrogen and progesterone receptor status, histologic and nuclear grading, axillary nodal status, pericapsular involvement of lymph nodes, lymphovascular and perineural invasion, adjuvant radiotherapy, chemotherapy and hormonal therapy were assessed. Based on these prognostic factors, new prognostic indexes for C&RT, CHAID, QUEST, ID3, C4.5 and C5.0 and Cox regression were obtained. Prognostic indexes showed a good degree of classification, which demonstrates that an improvement seems possible using standard risk factors. We obtained that C4.5 has a better performance than C&RT, CHAID, QUEST, ID3, C5.0 and Cox regression to determine risk groups using Random Survival Forests (RSF).
机译:这项研究的目的是通过决策树算法(C&RT,CHAID,QUEST,ID3,C4.5和C5.0)以及针对疾病的Cox回归分析技术,确定用于区分乳腺癌患者亚组的新预后指标。乳腺癌患者的无生存期(DFS)。对381名确诊的乳腺癌患者进行了回顾性分析。年龄,更年期状态,初潮年龄,癌症家族史,组织学肿瘤类型,肿瘤象限,肿瘤大小,雌激素和孕激素受体状态,组织学和核分级,腋窝淋巴结状态,淋巴结包膜受累,淋巴管和神经周浸润评估了辅助放疗,化学疗法和激素疗法。基于这些预后因素,获得了C&RT,CHAID,QUEST,ID3,C4.5和C5.0以及Cox回归的新预后指标。预后指标显示出良好的分类度,这表明使用标准危险因素似乎有可能改善病情。我们发现,使用随机生存森林(RSF)确定风险组时,C4.5的性能优于C&RT,CHAID,QUEST,ID3,C5.0和Cox回归。

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