AdaBoost与logistic回归检测结直肠癌同步肝转移的比较

Jingran Wen, Xiaoyan Zhang, Ye Xu, Zuofeng Li, Lei Liu
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引用次数: 9

摘要

同步肝转移是结直肠癌患者死亡的主要原因之一。本研究建立基于AdaBoost和logistic回归的结直肠癌患者术前同步肝转移检测预测模型并进行比较。采用信息增益法、遗传算法和AdaBoost进行特征选择。采用10倍交叉验证和受试者工作特征(ROC)曲线下面积对各模型的预测性能进行评价。确定了四个预测变量:CEA、CA50、肿瘤位置(直肠)和最大直径。用血清生物标志物CEA和CA50评估和比较缺失值的影响。我们的研究结果表明,AdaBoost在缺失值数据集上表现更好,而逻辑回归具有更好的灵敏度。两种模型均可用于建立结直肠癌同步肝转移的预测模型。
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Comparison of AdaBoost and logistic regression for detecting colorectal cancer patients with synchronous liver metastasis
Synchronous liver metastasis is one of the leading causes of the mortality in colorectal cancer patients. In this study, predictive models based on AdaBoost and logistic regression for detecting colorectal cancer patients with synchronous liver metastasis before operation were built and compared. Information gain method, genetic algorithm and AdaBoost were used for feature selection. The predictive performance of each model was evaluated with 10-fold cross-validation and the area under the receiver operating characteristic (ROC) curves. Four predictive variables were identified: CEA, CA50, tumor location (rectum) and maximum diameter. The influence of missing values was also evaluated and compared using serum biomarkers CEA and CA50. Our results indicate that AdaBoost performs better on data set with missing values, while logistic regression has better sensitivity. Both models could be used to develop a predictive model for colorectal cancer patients with synchronous liver metastasis.
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