Author:
Liu Ran,Wang Miye,Zheng Tao,Zhang Rui,Li Nan,Chen Zhongxiu,Yan Hongmei,Shi Qingke
Abstract
Abstract
Background
Myocardial infarction can lead to malignant arrhythmia, heart failure, and sudden death. Clinical studies have shown that early identification of and timely intervention for acute MI can significantly reduce mortality. The traditional MI risk assessment models are subjective, and the data that go into them are difficult to obtain. Generally, the assessment is only conducted among high-risk patient groups.
Objective
To construct an artificial intelligence–based risk prediction model of myocardial infarction (MI) for continuous and active monitoring of inpatients, especially those in noncardiovascular departments, and early warning of MI.
Methods
The imbalanced data contain 59 features, which were constructed into a specific dataset through proportional division, upsampling, downsampling, easy ensemble, and w-easy ensemble. Then, the dataset was traversed using supervised machine learning, with recursive feature elimination as the top-layer algorithm and random forest, gradient boosting decision tree (GBDT), logistic regression, and support vector machine as the bottom-layer algorithms, to select the best model out of many through a variety of evaluation indices.
Results
GBDT was the best bottom-layer algorithm, and downsampling was the best dataset construction method. In the validation set, the F1 score and accuracy of the 24-feature downsampling GBDT model were both 0.84. In the test set, the F1 score and accuracy of the 24-feature downsampling GBDT model were both 0.83, and the area under the curve was 0.91.
Conclusion
Compared with traditional models, artificial intelligence–based machine learning models have better accuracy and real-time performance and can reduce the occurrence of in-hospital MI from a data-driven perspective, thereby increasing the cure rate of patients and improving their prognosis.
Funder
Project of Science and Technology Department of Sichuan Province
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Structural Biology
Reference30 articles.
1. McCormick N, Lacaille D, Bhole V, Avina-Zubieta JA. Validity of myocardial infarction diagnoses in administrative databases: a systematic review. PLoS ONE. 2014;9: e92286.
2. Boersma E, Maas AC, Deckers JW, Simoons ML. Early thrombolytic treatment in acute myocardial infarction: reappraisal of the golden hour. Lancet. 1996;348:771–5.
3. Tiefenbrunn AJ, Sobel BE. Timing of coronary recanalization. Paradigms, paradoxes, and pertinence. Circulation. 1992;85:2311–5.
4. Xun YW, Yang JG, Song L, Sun YH, Lu CL, Yang YJ, Hu DY. In-hospital delay to primary angioplasty for patients with ST-elevated myocardial infarction between cardiac specialized hospitals and non-specialized hospitals in Beijing, China. China Med J (Engl). 2010;123:800–5.
5. He C, Jin X, Zhao Z, Xiang T. A cloud computing solution for hospital information system. In 2010 IEEE International Conference on Intelligent Computing and Intelligent Systems, 2010. pp. 517–520. IEEE, Xiamen, China.
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