Abstract

Diabetes has been recognized as a global medical problem for more than half a century. Patients with diabetes can benefit from the Internet of Things (IoT) devices such as continuous glucose monitoring (CGM), intelligent pens, and similar devices. Smart devices generate continuous data streams that must be processed in real-time to benefit the users. The amount of medical data collected is vast and heterogeneous since it is gathered from various sources. An accurate diagnosis can be achieved through a variety of scientific and medical techniques. It is necessary to process this streaming data faster to obtain relevant and significant knowledge. Recently, the research has concentrated on improving the prediction model's performance by using ensemble-based and Deep Learning (DL) approaches. However, the performance of the DL model can degrade due to overfitting. This paper proposes the Extra-Tree Ensemble feature selection technique to reduce the input feature space with DL (ETEODL), a predictive framework to predict the likelihood of diabetes. In the proposed work, dropout layers follow the hidden layers of the DL model to prevent overfitting. This research utilized a dataset from the UCI Machine learning (ML) repository for an Early-stage prediction of diabetes. The proposed scheme results have been compared with state-of-the-art ML algorithms, and the comparison validates the effectiveness of the predictive framework. This proposed work, which outperforms the other selected classifiers, achieves a 97.38 per cent accuracy rate. F1-Score, precision, and recall percent are 96, 97.7, and 97.7, respectively. The comparison unveils the superiority of the suggested approach. Thus, the proposed method effectively improves the performance against the earlier ML techniques and recent DL approaches and avoids overfitting.

Highlights

  • In a survey made by IDF and WHO, nearly half a billion of the population worldwide have diabetes and posing about $13,700 financial burden per year

  • Patients with diabetes can benefit from the Internet of Things devices such as continuous glucose monitoring (CGM), intelligent pens, and other similar devices, according to the American Diabetes Association (ADA)

  • The proposed Extra-Tree Ensemble optimized DL framework (ETEODL) model was implemented over Python

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Summary

Introduction

In a survey made by IDF and WHO, nearly half a billion of the population worldwide have diabetes and posing about $13,700 financial burden per year. Diabetes is a persistent disease caused when the blood sugar level crosses certain levels and can have adverse consequences on other organs of the human body and severely affect the entire body If it is not diagnosed at the right time and remains untreated, it can increase the risk of other. Health care data comes from various sources, including medical history and records of patients in hospitals, medical diagnosis reports, medical examination reports by doctors, real-time data from multiple IoT devices and health-related Apps, and data streams from social networking sites Dealing with such heterogeneous healthcare data has become increasingly difficult in recent years, owing to the large volume of data, security issues, incompetence in wireless network application development, and the rapidity with which it is being generated.

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