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Improving Risk Identification of Adverse Outcomes in Chronic Heart Failure Using SMOTE ENN and Machine Learning

机译:使用SMOTE ENN和机器学习改善慢性心力衰竭不良结果的风险鉴定

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Purpose:This study sought to develop models with good identification for adverse outcomes in patients with heart failure (HF) and find strong factors that affect prognosis.Patients and Methods:A total of 5004 qualifying cases were selected, among which 498 cases had adverse outcomes and 4506 cases were discharged after improvement. The study subjects were hospitalized patients diagnosed with HF from a regional cardiovascular hospital and the cardiology department of a medical university hospital in Shanxi Province of China between January 2014 and June 2019. Synthesizing minority oversampling technology combined with edited nearest neighbors (SMOTE ENN) was used to pre-process unbalanced data. Traditional logistic regression (LR), k-nearest neighbor (KNN), support vector machine (SVM), random forest (RF), and extreme gradient boosting (XGBoost) were used to build risk identification models, and each model was repeated 100 times. Model discrimination and calibration were estimated using F1-score, the area under the receiver-operating characteristic curve (AUROC), and Brier score. The best performing of the five models was used to identify the risk of adverse outcomes and evaluate the influencing factors.Results:The SME-XGBoost was the best performing model with means of F1-score (0.3673, 95% confidence interval [CI]: 0.3633-0.3712), AUC (0.8010, CI: 0.7974-0.8046), and Brier score (0.1769, CI: 0.1748-0.1789). Age, N-terminal pronatriuretic peptide, pulmonary disease, etc. were the most significant factors of adverse outcomes in patients with HF.Conclusion:The combination of SMOTE ENN and advanced machine learning methods effectively improved the discrimination efficacy of adverse outcomes in HF patients, accurately stratified patients at risk of adverse outcomes, and found the top factors of adverse outcomes. These models and factors emphasize the importance of health status data in determining adverse outcomes in patients with HF.? 2021 Wang et al.
机译:目的:该研究寻求开发具有心力衰竭患者(HF)患者不良结果的模型,并发现影响预后的强烈因素改善后4506例出院。研究受试者是在2014年1月至2019年1月至2019年1月山西省山西省山西省医科大学医院内心血管医院和医学院医院心脏病学系的住院患者。使用少数民族过采样技术与编辑的最近邻居(SMOTE ENN)相结合预处理不平衡数据。传统的逻辑回归(LR),k最近邻(KNN),支持向量机(SVM),随机森林(RF)和极端梯度升压(XGBoost)用于构建风险识别模型,每种型号都重复100次。使用F1分数,接收器操作特性曲线(AUROC)下的区域和BRIER得分估算模型鉴别和校准。五种模型的最佳表现用于确定不利结果的风险,并评估影响因素。结果:中小企业XGBoost是F1分数(0.3673,95%置信区间[CI]的最佳表演模型(0.3673,95%置信区间[CI]: 0.3633-0.3712),AUC(0.8010,CI:0.7974-0.8046)和Brider得分(0.1769,CI:0.1748-0.1789)。年龄,N-末端原母肽,肺病等是HF的患者不良结果的最重要因素准确分层的患者面临不良结果的风险,并发现了不良结果的最大因素。这些模型和因素强调了健康状况数据在确定HF患者的不良结果方面的重要性。 2021 Wang等人。

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