A Hybrid Prediction Model integrating DBSCAN, SMOTE, and Random Forest provided the best performance compared to other models for predicting type 2 diabetes and hypertension.
Does a Hybrid Prediction Model using DBSCAN, SMOTE, and Random Forest improve the early prediction of type 2 diabetes and hypertension compared to other models?
A hybrid machine learning model combining DBSCAN, SMOTE, and Random Forest improves the early prediction of type 2 diabetes and hypertension and can be integrated into IoT-based healthcare monitoring systems.
As the risk of diseases diabetes and hypertension increases, machine learning algorithms are being utilized to improve early stage diagnosis. This study proposes a Hybrid Prediction Model (HPM), which can provide early prediction of type 2 diabetes (T2D) and hypertension based on input risk-factors from individuals. The proposed HPM consists of Density-based Spatial Clustering of Applications with Noise (DBSCAN)-based outlier detection to remove the outlier data, Synthetic Minority Over-Sampling Technique (SMOTE) to balance the distribution of class, and Random Forest (RF) to classify the diseases. Three benchmark datasets were utilized to predict the risk of diabetes and hypertension at the initial stage. The result showed that by integrating DBSCAN-based outlier detection, SMOTE, and RF, diabetes and hypertension could be successfully predicted. The proposed HPM provided the best performance result as compared to other models for predicting diabetes as well as hypertension. Furthermore, our study has demonstrated that the proposed HPM can be applied in real cases in the IoT-based Health-care Monitoring System, so that the input risk-factors from end-user android application can be stored and analyzed in a secure remote server. The prediction result from the proposed HPM can be accessed by users through an Android application; thus, it is expected to provide an effective way to find the risk of diabetes and hypertension at the initial stage.
Ijaz et al. (Wed,) conducted a other in Type 2 diabetes and hypertension. Hybrid Prediction Model (HPM) vs. Other models was evaluated on Prediction of type 2 diabetes and hypertension. A Hybrid Prediction Model integrating DBSCAN, SMOTE, and Random Forest provided the best performance compared to other models for predicting type 2 diabetes and hypertension.
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