A Novel Machine Learning Technique for Diabetic Prediction in IoT-based Healthcare Monitoring System
The successful development of a diagnosis system to identify diabetes in the Internet of Things (IoT) e-healthcare scenario has gained considerable attention to implement accurate diabetes diagnosis. IoT is playing an increasingly important role in healthcare environment by providing a structure for...
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Published in: | 2023 International Conference on Sustainable Computing and Smart Systems (ICSCSS) pp. 1000 - 1005 |
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Main Authors: | , , , , , |
Format: | Conference Proceeding |
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IEEE
14-06-2023
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Abstract | The successful development of a diagnosis system to identify diabetes in the Internet of Things (IoT) e-healthcare scenario has gained considerable attention to implement accurate diabetes diagnosis. IoT is playing an increasingly important role in healthcare environment by providing a structure for evaluating medical information to detect diseases via data mining techniques. The existing diagnostic methods have some challenges, such as lengthy calculation times and inaccurate predictions. To evade the limitations, this article suggested an IOT-based diagnosis system that uses Machine Learning (ML) techniques. Through the dataset from UCI Repository with medical sensors, a novel systematic technique is utilized to treat diabetic disease, and relevant medical data is produced to precisely predict those who would be seriously impacted by the condition. For predicting the illness and its severity, a brand-new classification technique called Tuna Swarm optimization-Aided Neural Classifier (TSO-NN) is suggested (T. The experimentation is conducted in MATLAB and the performance is evaluated using accuracy, precision, and F1-score. Besides, the efficiency is tested and confirmed by comparing over SOTA methods. |
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AbstractList | The successful development of a diagnosis system to identify diabetes in the Internet of Things (IoT) e-healthcare scenario has gained considerable attention to implement accurate diabetes diagnosis. IoT is playing an increasingly important role in healthcare environment by providing a structure for evaluating medical information to detect diseases via data mining techniques. The existing diagnostic methods have some challenges, such as lengthy calculation times and inaccurate predictions. To evade the limitations, this article suggested an IOT-based diagnosis system that uses Machine Learning (ML) techniques. Through the dataset from UCI Repository with medical sensors, a novel systematic technique is utilized to treat diabetic disease, and relevant medical data is produced to precisely predict those who would be seriously impacted by the condition. For predicting the illness and its severity, a brand-new classification technique called Tuna Swarm optimization-Aided Neural Classifier (TSO-NN) is suggested (T. The experimentation is conducted in MATLAB and the performance is evaluated using accuracy, precision, and F1-score. Besides, the efficiency is tested and confirmed by comparing over SOTA methods. |
Author | Arun, M. R. Ganesh, R. Jesuraj, S Aravinth Vijay Sridharan, M. Manjramkar, Vinda Dubey, Vivek Ravishankar |
Author_xml | – sequence: 1 givenname: S Aravinth Vijay surname: Jesuraj fullname: Jesuraj, S Aravinth Vijay email: vijay2020neo@gmail.com organization: Nirmala College of Health Science, Poolani-Puzhpagiri Rd,Department of Pharmacy Practice,Meloor,Kerala,India – sequence: 2 givenname: R. surname: Ganesh fullname: Ganesh, R. email: r.ganesh@iare.ac.in organization: Institute of Aeronautical Engineering,Department of Computer Science and Engineering (AI &ML),Hyderabad,Telangana,India – sequence: 3 givenname: Vinda surname: Manjramkar fullname: Manjramkar, Vinda email: vindamanjramkar@yahoo.com organization: B.N.Bandodkar College of Science(Autonomous),Thane west,Maharashtra,India – sequence: 4 givenname: M. surname: Sridharan fullname: Sridharan, M. email: msridharan1972@gmail.com organization: NPR College of Engineering and Technology, Natham,Department of Science and Humanities,Dindigul Dist,Tamil Nadu,India,624401 – sequence: 5 givenname: Vivek Ravishankar surname: Dubey fullname: Dubey, Vivek Ravishankar email: 22.vivekdubey@gmail.com organization: Bharat Institute of Engg & Tech (BIET),Department of Computer Science and Engineering,Hyderabad,Telangana,India – sequence: 6 givenname: M. R. surname: Arun fullname: Arun, M. R. email: mrarunresearch@gmail.com organization: Vel Tech Rangarajan Dr. Sagunthala R & D Institute of Science and Technology,Department of ECE,Chennai,Tamil Nadu,India |
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Snippet | The successful development of a diagnosis system to identify diabetes in the Internet of Things (IoT) e-healthcare scenario has gained considerable attention... |
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SubjectTerms | Diabetes Diabetic Prediction Healthcare Monitoring System Internet of Things Internet of Things (IoT) Machine learning Medical services Sensor systems Sensors Systematics Tuna Swarm Optimization |
Title | A Novel Machine Learning Technique for Diabetic Prediction in IoT-based Healthcare Monitoring System |
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