Affiliation:
1. Department of IT, SCORE, VIT University, Vellore, India
Abstract
Abstract:
India has evaluated 77 million people with diabetes, which makes it the second most
elaborated disease in the world. Diabetes is a chronic syndrome that occurs with increased sugar
levels in the blood cells. Once diabetes is diagnosed and untreated by physicians, it may affect
the internal organs slowly, so there is a necessity for early prediction. Popular Machine
Learning (ML) techniques existed for the early prediction of diabetes mellitus. A significant
perspective is to be considered in total management by machine learning algorithms, but it is
not a good enough model to predict DMT2. Therefore, Deep learning (DL) models are utilized
to produce enhanced prediction accuracy. The ML methods are evaluated and analyzed distinctly
on the inconspicuous test information. DL is a subpart of ML with many data sets recurrently
used to train the system. IoT was another emerging technology-based Healthcare Monitoring
System (HMS) built to support the vision of patients and doctors in the healthcare domain.
This paper aims to survey ML and DL techniques relevant to Dissimilar Disease prediction
in Diabetes Mellitus. Finally, by doing a study on it, deep learning methods performed
well in predicting the dissimilar diseases related to diabetes and also other disease predictions
using m-IoT devices. This study will contribute to future deep-learning ideas that will assist in
detecting diabetic-related illnesses with greater accuracy.
Publisher
Bentham Science Publishers Ltd.
Cited by
1 articles.
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1. Explainable Artificial Intelligence in Internet-of-Medical Things;Recent Advances in Computer Science and Communications;2024-06