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老年冠心病患者再入院风险预测模型的构建与验证

Construction and validation of a readmission risk prediction model for elderly patients with coronary heart disease.

作者信息

Luo Hanyu, Wang Benlong, Cao Rui, Feng Jun

机构信息

Department of Cardiology of Lu'an People's Hospital, Lu'an Hospital of Anhui Medical University, Lu'an, China.

出版信息

Front Cardiovasc Med. 2024 Dec 18;11:1497916. doi: 10.3389/fcvm.2024.1497916. eCollection 2024.

Abstract

BACKGROUND

To investigate the risk factors for readmission of elderly patients with coronary artery disease, and to construct and validate a predictive model for readmission risk of elderly patients with coronary artery disease within 3 years by applying machine learning method.

METHODS

We selected 575 elderly patients with CHD admitted to the Affiliated Lu'an Hospital of Anhui Medical University from January 2020 to January 2023. Based on whether patients were readmitted within 3 years, they were divided into two groups: those readmitted within 3 years (215 patients) and those not readmitted within 3 years (360 patients). Lasso regression and multivariate logistic regression were used to compare the predictive value of these models. XGBoost, LR, RF, KNN and DT algorithms were used to build prediction models for readmission risk. ROC curves and calibration plots were used to evaluate the prediction performance of the model. For external validation, 143 patients who were admitted between February and June 2023 from a different associated hospital in Lu'an City were also used.

RESULTS

The XGBoost model demonstrated the most accurate prediction performance out of the five machine learning techniques. Diabetes, Red blood cell distribution width (RDW), and Triglyceride glucose-body mass index (TyG-BMI), as determined by Lasso regression and multivariate logistic regression. Calibration plot analysis demonstrated that the XGBoost model maintained strong calibration performance across both training and testing datasets, with calibration curves closely aligning with the ideal curve. This alignment signifies a high level of concordance between predicted probabilities and observed event rates. Additionally, decision curve analysis highlighted that both decision trees and XGBoost models achieved higher net benefits within the majority of threshold ranges, emphasizing their significant potential in clinical decision-making processes. The XGBoost model's area under the ROC curve (AUC) reached 0.903, while the external validation dataset yielded an AUC of 0.891, further validating the model's predictive accuracy and its ability to generalize across different datasets.

CONCLUSION

TyG-BMI, RDW, and diabetes mellitus at the time of admission are the factors affecting readmission of elderly patients with coronary artery disease, and the model constructed based on the XGBoost algorithm for readmission risk prediction has good predictive efficacy, which can provide guidance for identifying high-risk patients and timely intervention strategies.

摘要

背景

探讨老年冠心病患者再入院的危险因素,并应用机器学习方法构建和验证老年冠心病患者3年内再入院风险的预测模型。

方法

选取2020年1月至2023年1月在安徽医科大学附属六安医院住院的575例老年冠心病患者。根据患者在3年内是否再次入院,将其分为两组:3年内再次入院的患者(215例)和3年内未再次入院的患者(360例)。采用Lasso回归和多因素logistic回归比较这些模型的预测价值。使用XGBoost、LR、RF、KNN和DT算法构建再入院风险预测模型。采用ROC曲线和校准图评估模型的预测性能。为进行外部验证,还使用了2023年2月至6月间在六安市另一家附属医院住院的143例患者。

结果

在五种机器学习技术中,XGBoost模型表现出最准确的预测性能。通过Lasso回归和多因素logistic回归确定,糖尿病、红细胞分布宽度(RDW)和甘油三酯葡萄糖体质指数(TyG-BMI)是相关因素。校准图分析表明,XGBoost模型在训练数据集和测试数据集中均保持了较强的校准性能,校准曲线与理想曲线紧密对齐。这种对齐表明预测概率与观察到的事件发生率之间具有高度一致性。此外,决策曲线分析强调,决策树和XGBoost模型在大多数阈值范围内均实现了更高的净效益,突出了它们在临床决策过程中的巨大潜力。XGBoost模型的ROC曲线下面积(AUC)达到0.903,而外部验证数据集的AUC为0.891,进一步验证了该模型的预测准确性及其在不同数据集上的泛化能力。

结论

入院时的TyG-BMI、RDW和糖尿病是影响老年冠心病患者再入院的因素,基于XGBoost算法构建的再入院风险预测模型具有良好的预测效能,可为识别高危患者和制定及时的干预策略提供指导。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/13ec/11689274/800f7921ba20/fcvm-11-1497916-g001.jpg

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