Early diagnosis of NSTEMI and UA patients is mainly through the construction of machine learning model.
The patients with NSTEMI and UA were included. After manual labeling, the admiss- ion record characteristics of patients were selected. 75% of the data is used to build the model, and 25% of the data is used to verify the validity of the model. Five classification models of one-dimensional convolution (CNN), naive Bayesian (NB), support vector machine (SVM), random forest (RF) and ensemble learning were constructed to identify and diagnose NSTEMI and UA patients. Multi-fold cross-validation and ROC-AUC curve are used to measure the advantages and disadvantages of the models.
Study Type
OBSERVATIONAL
Enrollment
2,500
Early diagnosis of NTEMI patients by machine learning model
The first affiliated Hospital of Xinjiang Medical University
Ürümqi, Xinjiang, China
Accurate diagnosis of NSTEMI from patients with acute chest pain
NSTEMI patients are accurately diagnosed from patients with acute chest pain through a trained machine learning algorithm. Our model uses multi-fold cross-validation and ROC-AUC curve as the measurement index, 75% of the data are modeled, and 25% of the data verify the effect of the model. For this reason, we will calculate the accuracy, specificity and likelihood ratio when the sensitivity cutoff value is 0.9.
Time frame: Within 1 year
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