Features | Learning Models | Training dataset | Prediction Accuracy (Testing) | ECG signal processing |
---|---|---|---|---|
[23] | Modified deep convolutional neural network | UCI heart disease dataset (303 datapoint) | Two level :93% | Not done |
Three level:- | ||||
[25] | MSSO-ANFIS | UCI heart disease dataset | Two level :98.79% | No ECG sensor mentioned. |
Three level:- | ||||
[9] | decision tree classification algorithm based on Iterative Dichotomiser 3 (j48 classifier) | UCI heart disease dataset | Two level :91.48% | No ECG sensor mentioned |
Three level:- | ||||
[10] | Random Forest classifier | UCI heart disease dataset (270 datapoint) | Two level :99% | implements an edge computing technique to find out three slope characteristics of the ST wave. |
Three level:- | ||||
[24] | Random Forest | consist of 191 records of the patient | Two level : 93% | No ECG sensor mentioned |
Three level:- | ||||
[30] | SVM | UCI heart disease dataset | Two level :97% | No ECG sensor mentioned |
Three level:- | ||||
Proposed | Stacking Classifier | UCI heart disease dataset (920 datapoint) | Two level :91% | QRS complex detection using pan-tompkins algorithm and slope measurement of the ST segment. |
Three level:80.4% |