首页> 外文期刊>BMC Medical Informatics and Decision Making >Improvement of APACHE II score system for disease severity based on XGBoost algorithm
【24h】

Improvement of APACHE II score system for disease severity based on XGBoost algorithm

机译:基于XGBoost算法的疾病严重程度的Apache II分数系统的改进

获取原文
           

摘要

Prognostication is an essential tool for risk adjustment and decision making in the intensive care units (ICUs). In order to improve patient outcomes, we have been trying to develop a more effective model than Acute Physiology and Chronic Health Evaluation (APACHE) II to measure the severity of the patients in ICUs. The aim of the present study was to provide a mortality prediction model for ICUs patients, and to assess its performance relative to prediction based on the APACHE II scoring system. We used the Medical Information Mart for Intensive Care version III (MIMIC-III) database to build our model. After comparing the APACHE II with 6 typical machine learning (ML) methods, the best performing model was screened for external validation on anther independent dataset. Performance measures were calculated using cross-validation to avoid making biased assessments. The primary outcome was hospital mortality. Finally, we used TreeSHAP algorithm to explain the variable relationships in the extreme gradient boosting algorithm (XGBoost) model. We picked out 14 variables with 24,777 cases to form our basic data set. When the variables were the same as those contained in the APACHE II, the accuracy of XGBoost (accuracy: 0.858) was higher than that of APACHE II (accuracy: 0.742) and other algorithms. In addition, it exhibited better calibration properties than other methods, the result in the area under the ROC curve (AUC: 0.76). we then expand the variable set by adding five new variables to improve the performance of our model. The accuracy, precision, recall, F1, and AUC of the XGBoost model increased, and were still higher than other models (0.866, 0.853, 0.870, 0.845, and 0.81, respectively). On the external validation dataset, the AUC was 0.79 and calibration properties were good. As compared to conventional severity scores APACHE II, our XGBoost proposal offers improved performance for predicting hospital mortality in ICUs patients. Furthermore, the TreeSHAP can help to enhance the understanding of our model by providing detailed insights into the impact of different features on the disease risk. In sum, our model could help clinicians determine prognosis and improve patient outcomes.
机译:预测是强化护理单位(ICU)中风险调整和决策的重要工具。为了改善患者的结果,我们一直试图开发比急性生理学和慢性健康评估(Apache)II更有效的模型,以衡量ICU中患者的严重程度。本研究的目的是为ICU患者提供死亡率预测模型,并根据Apache II评分系统评估其相对于预测的性能。我们使用医疗信息MART进行重症监护版III(MIMIC-III)数据库来构建我们的模型。将Apache II与6个典型机器学习(ML)方法进行比较后,筛选了最佳执行模型,用于在特定的独立数据集上进行外部验证。使用交叉验证计算性能措施以避免进行偏见的评估。主要结果是医院死亡率。最后,我们使用Treeshap算法来解释极端梯度升压算法(XGBoost)模型中的变量关系。我们选择了24,777个案例的14个变量来形成我们的基本数据集。当变量与Apache II中包含的变量相同时,XGBoost的准确性(精度:0.858)高于Apache II(精度:0.742)和其他算法。此外,它表现出比其他方法更好的校准特性,因此ROC曲线下面积(AUC:0.76)的结果。然后,我们通过添加五个新变量来展开变量集,以提高模型的性能。 XGBoost模型的精度,精度,召回,F1和AUC的增加仍然高于其他型号(0.866,0.853,0.870,0.845和0.81)。在外部验证数据集上,AUC为0.79,校准特性良好。与传统严重性分数Apache II相比,我们的XGBoost提案提供了改进的性能,以预测ICU患者的医院死亡率。此外,Treeshap可以通过提供对不同特征对疾病风险的影响来帮助提高对模型的理解。总之,我们的模型可以帮助临床医生确定预后并改善患者结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号