Xu Yucan, Ju Lingsha, Tong Jianhua, Zhou Chengmao, Yang Jianjun
Department of Anesthesiology, First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan, People's Republic of China.
Onco Targets Ther. 2019 Nov 1;12:9059-9067. doi: 10.2147/OTT.S223603. eCollection 2019.
To use machine learning algorithms to predict the death outcomes of patients with triple-negative breast cancer, 5 years after discharge.
1570 stage I-III breast cancer patients receiving treatment from Sun Yat-sen Memorial Hospital were analyzed. Machine learning was used to predict the death outcomes of patients with triple-negative breast cancer, 5 years after discharge.
The results showed that platelets, LMR (lymphocyte-to-monocyte ratio), age, PLR (the platelet-to-lymphocyte ratio) and white blood cell counts accounted for a significant weight in the 5-year prognosis of triple-negative breast cancer patients. The results of model prediction indicated that rankings for accuracy among the training group (from high to low) were forest, gbm, and DecisionTree (0.770335, 0.760766, 0.751994, 0.737640 and 0.734450, respectively). For AUC value (high to low), they were forest, Logistic and DecisionTree (0.896673, 0.895408, 0.776836, 0.722799 and 0.702804, respectively). The highest MSE value for DecisionTree was 0.2656, and the lowest MSE value for forest was 0.2297. In the test group, accuracy rankings (from high to low) were DecisionTree, and GradientBoosting (0.748408, 0.738854, 0.738854, 0.732484 and gbm, respectively). For AUC value (high to low), the rankings were GradientBoosting, gbm, and DecisionTree (0.731595, 0.715438, 0.712767, 0.708348 and 0.691960, respectively). The maximum MSE value for gbm was 0.2707, and the minimum MSE value for DecisionTree was 0.2516.
The machine learning algorithm can predict the death outcomes of patients with triple-negative breast cancer 5 years after discharge. This can be used to estimate individual outcomes for patients with triple-negative breast cancer.
运用机器学习算法预测三阴性乳腺癌患者出院5年后的死亡结局。
分析了1570例在中山大学孙逸仙纪念医院接受治疗的Ⅰ-Ⅲ期乳腺癌患者。运用机器学习预测三阴性乳腺癌患者出院5年后的死亡结局。
结果显示,血小板、淋巴细胞与单核细胞比值(LMR)、年龄、血小板与淋巴细胞比值(PLR)及白细胞计数在三阴性乳腺癌患者的5年预后中占显著权重。模型预测结果表明,训练组中准确率排名(从高到低)依次为随机森林、梯度提升回归树和决策树(分别为0.770335、0.760766、0.751994、0.737640和0.734450)。对于AUC值(从高到低),依次为随机森林、逻辑回归和决策树(分别为0.896673、0.895408、0.776836、0.722799和0.702804)。决策树的最高均方误差值为0.2656,随机森林的最低均方误差值为0.2297。在测试组中,准确率排名(从高到低)依次为决策树和梯度提升回归(分别为0.748408、0.738854、0.738854、0.732484和梯度提升回归树)。对于AUC值(从高到低),排名依次为梯度提升回归、梯度提升回归树和决策树(分别为0.731595、0.715438、0.712767、0.708348和CART)。梯度提升回归树的最大均方误差值为0.2707,决策树(minimum MSE value for DecisionTree)的最小均方误差值为0.2516。
机器学习算法可预测三阴性乳腺癌患者出院5年后的死亡结局。这可用于评估三阴性乳腺癌患者的个体预后。