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Table 8 Comparison with related work in IoT for Healthcare

From: Predictis: an IoT and machine learning-based system to predict risk level of cardio-vascular diseases

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%