首页> 外文会议>IEEE Engineering in Medicine and Biology Society., Conference. >Comparison of robustness against missing values of alternative decision tree and multiple logistic regression for predicting clinical data in primary breast cancer
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Comparison of robustness against missing values of alternative decision tree and multiple logistic regression for predicting clinical data in primary breast cancer

机译:对替代决策树缺失值的鲁棒性比较及多重逻辑回归预测原发性乳腺癌临床资料

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Nomogram based on multiple logistic regression (MLR) is a standard technique for predicting diagnostic and treatment outcomes in medical fields. However, the applicability of MLR to data mining of clinical information is limited. To overcome these issues, we have developed prediction models using ensembles of alternative decision trees (ADTree). Here, we compare the performance of MLR and ADTree models in terms of robustness against missing values. As a case study, we employ datasets including pathological complete response (pCR) of neoadjuvant therapy, one of the most important decision-making factors in the diagnosis and treatment of primary breast cancer. Ensembled ADTree models are more robust against missing values than MLR. Sufficient robustness is attained at low boosting and ensemble number, and is compromised as these numbers increase.
机译:基于多个逻辑回归(MLR)的拓图是一种预测医疗领域诊断和治疗结果的标准技术。 然而,MLR对临床信息的数据挖掘的适用性是有限的。 为了克服这些问题,我们使用替代决策树(Adtree)的集合开发了预测模型。 在这里,我们将MLR和Adtree模型的性能与缺失值的稳健性进行比较。 作为一个案例研究,我们雇佣了包括新辅助治疗的病理完全反应(PCR)的数据集,是诊断和治疗原发性乳腺癌中最重要的决策因素之一。 Ensemeded Adtree模型对缺失值更加强大而不是MLR。 在低升压和集合编号处实现了足够的稳健性,并且随着这些数字的增加而受到损害。

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