王斌, 冯慧芬, 王芳, 黄平, 秦新华, 赵保玲, 赵敬, 易佳音. 梯度增强机算法预测重症手足口病的应用价值[J]. 解放军医学院学报, 2018, 39(11): 959-963,977. DOI: 10.3969/j.issn.2095-5227.2018.11.008
引用本文: 王斌, 冯慧芬, 王芳, 黄平, 秦新华, 赵保玲, 赵敬, 易佳音. 梯度增强机算法预测重症手足口病的应用价值[J]. 解放军医学院学报, 2018, 39(11): 959-963,977. DOI: 10.3969/j.issn.2095-5227.2018.11.008
WANG Bin, FENG Huifen, WANG Fang, HUANG Ping, QIN Xinhua, ZHAO Baoling, ZHAO Jing, YI Jiayin. Gradient boosting machine algorithms in prediction of severe hand-foot-mouth disease[J]. ACADEMIC JOURNAL OF CHINESE PLA MEDICAL SCHOOL, 2018, 39(11): 959-963,977. DOI: 10.3969/j.issn.2095-5227.2018.11.008
Citation: WANG Bin, FENG Huifen, WANG Fang, HUANG Ping, QIN Xinhua, ZHAO Baoling, ZHAO Jing, YI Jiayin. Gradient boosting machine algorithms in prediction of severe hand-foot-mouth disease[J]. ACADEMIC JOURNAL OF CHINESE PLA MEDICAL SCHOOL, 2018, 39(11): 959-963,977. DOI: 10.3969/j.issn.2095-5227.2018.11.008

梯度增强机算法预测重症手足口病的应用价值

Gradient boosting machine algorithms in prediction of severe hand-foot-mouth disease

  • 摘要: 目的 探讨梯度增强机算法模型在预测重症手足口病方面的应用价值。 方法 收集郑州大学附属儿童医院2017年5 -12月住院部诊治的手足口病患儿资料。使用R软件(V3.4.3)进行资料分析,分别构建梯度增强机模型和Logistic回归模型,并对两者的模型预测性能进行比较。 结果 共纳入1 137例手足口病患儿,平均年龄为2.0±1.4岁,其中男581例,女556例。对于梯度增强机和Logistic模型,其预测正确率分别为82.1%和76.4%,ROC曲线下面积分别为0.813(95% CI:0.796 ~ 0.829)和0.752(95% CI:0.693 ~ 0.731)。输出梯度增强机的预测变量重要性,前3位分别为白细胞计数、肠道病菌71(EV71)结果和中性细胞比率。 结论 梯度增强机模型可以用于预测重症手足口病,且相比于传统Logistic算法具有一定的优越性。

     

    Abstract: Objective To explore the value of gradient boosting machine (GBM) algorithms in predicting severe hand-foot-mouth disease (HFMD). Methods The medical data of children with HFMD admitted to Children's Hospital of Zhengzhou University from May to December in 2017 were collected and analyzed by the R software version 3.4.3. GBM and logistic regression model was built respectively and compared for the predictive performance. Results A total of 1 137 children with HFMD were enrolled, included 581 males and 556 females. The average age was 2.0±1.4 years. For GBM and logistic model, the prediction accuracy rates were 82.1%, 76.4% and the area under the ROC curves were 0.813 (95% CI, 0.796-0.829), and 0.752(95% CI, 0.693-0.731), respectively.In GBM analysis, the top three predictors were white blood cell count, EV71 and neutrophil ratio. The top three risk factors in the logistic model were blood glucose, EV71 and heart rate. Conclusion GBM model can be used to predict severe HFMD and it performs better than traditional logistic regression algorithm.

     

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