Affiliation:
1. Driems Autonomous College
2. Silicon Institute of Technology
3. Veer Surendra Sai university of Technology
Abstract
Abstract
The most widely studied research area in healthcare is healthcare systems using modern integrated computing techniques. A lot of data is generated from innu- merable heterogeneous healthcare sensors, IoT devices, and monitoring devices. Collecting, organizing, understanding, and forecasting patient health is extremely important. In this research paper, a smart healthcare recommendation system, namely, Hybrid and Effective Prediction of Diabetes (HEPD), is proposed. HEPD uses data fusion techniques and machine learning methods to predict and recom- mend treatment for diabetes and other life-threatening diseases more accurately. It is an intelligent recommendation system that is trained to predict diabetes. For in-depth evaluation of this HEPD model, it is simulated and examined on estab- lished heterogeneous datasets. The outcome of the simulations is analogized with the most recent development and existing models. From the comparison results, it is found that the HEPD achieves 91.5% accuracy, which is much higher than the renowned machine learning methods.
Publisher
Research Square Platform LLC
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