医学
预测建模
病历
外科
机器学习
心脏外科
内科学
接收机工作特性
逻辑回归
线性回归
心脏病学
回归分析
急诊医学
支持向量机
心脏病
计算机科学
作者
Xinwei Du,Hao Wang,Shun-ming Wang,Yi He,Jinghao Zheng,Hao Zhang,Lifeng Yin,Yiwei Chen,Zhiwei Xu,Zhaohui Lu
出处
期刊:Chinese Journal of Thoracic and Cardiovaescular Surgery
日期:2020-02-25
卷期号:36 (02): 65-73
标识
DOI:10.3760/cma.j.issn.1001-4497.2020.02.001
摘要
Objective
Explore a predictive model for predicting postoperative hospital mortality in children with congenital heart disease.
Methods
We retrospectively analyzed the characteristics of all children with congenital heart disease from January 1, 2006 to December 31, 2017 at Shanghai Children's Medical Center. Each procedure was assigned a complexity score based on Aristotle Score. In-hospital death prediction models including a procedure complexity score and patient-level risk factors were constructed using logistic regression analysis and machine learning methods. The predictive values of the models were tested by C-index.
Results
A total of 24 693 patients underwent CHD operations were include in the study, there were 585 (2.4%) in-hospital deaths. In-hospital mortality for each procedure varies between 0 to 77.8%, with 32 procedures with 0 death record. The prediction model constructed using logistic regression found that in addition to the complexity score, other risk factors included age, height, operation history, echocardiography characteristics as well as certain laboratory test results (mainly coagulation factors) were significantly correlated with in-hospital death. Receiver operating curve analysis showed that prediction with only the complexity score resulted in an AUC of 0.654 (95%CI: 0.628-0, 681, P<0.01) while model containing patient-level risk factors had significant higher prediction value with AUC of 0.886 (95%CI: 0.868-0.904, P<0.01). Training with machine learning method resulted in a final prediction model with high prediction value (AUC 0.889, with a sensitivity value for death prediction of 0.817). The key risk factors in machine learning model are in general agree with the logistic regression model however with subtle differences.
Conclusion
Through combination of procedure complexity score with pre-operative patient-level factors, predictive model constructed using regression or machine learning method had high accuracy in in-hospital mortality prediction.
Key words:
Congenital heart disease; Regression analysis; Machine learning; Predictive model
科研通智能强力驱动
Strongly Powered by AbleSci AI