Integrated Embedded system for detecting diabetes mellitus using various machine learning techniques

被引:0
作者
Konda R. [1 ]
Ramineni A. [1 ]
Jayashree J. [1 ]
Singavajhala N. [2 ]
Vanka S.A. [3 ]
机构
[1] School of Computer Science and Engineering (SCOPE), VIT University, Tamil Nadu, Katpadi
[2] Mechanical Engineering, Vasavi College of Engineering, Telangana, Hyderabad
[3] Information Technology, Vasavi College of Engineering, Telangana, Hyderabad
关键词
Embedded Technique; Machine Learning; Mellitus; SGN Algorithm;
D O I
10.4108/eetpht.10.5497
中图分类号
学科分类号
摘要
INTRODUCTION: The goal of this study, titled ”Integrated System for Detecting Diabetes Mellitus using Various Machine Learning and Deep Learning Algorithms,” is to increase the precision and usability of diabetes diagnosis through the investigation and application of a wide range of machine learning and deep learning techniques. OBJECTIVES: The objective of the study was to establish a comprehensive system for identifying diabetes mellitus by combining several machine learning and deep learning methods METHODS: The methodology included every phase, from data gathering and preprocessing through advanced model development and performance assessment. The experiment demonstrated how combining several machine learning and deep learning techniques might completely transform diabetes detection. While praising accomplishments, the methodology also highlighted flaws in the data collection process. The goal of the roadmap for future improvements was to use technology to better detect and treat diabetes, which would ultimately help people of all ages and backgrounds. RESULTS: The project’s remarkable results demonstrate the legitimacy of the methodology chosen while also highlighting its potential to completely transform the diagnosis and treatment of diabetes CONCLUSION: The conclusion of this project lays the ground for next developments, such as improved user interfaces and the expansion of dataset scope. Through these initiatives, the long-term objective of providing more precise and accessible diabetes diagnoses becomes a real possibility, providing significant advantages to people from a variety of age groups and demographics[6]. © 2024 R. Konda et al., licensed to EAI.
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共 16 条
[1]  
Chuter Vivienne, Et al., Effectiveness of bedside investigations to diagnose periph-eral artery disease among people with diabetes mellitus: a systematic review, Diabetes/metabolism research and reviews, (2023)
[2]  
Chang Victor, Et al., Pima Indians diabetes mellitus classification based on machine learning (ML) algorithms, Neural Computing and Applications, 35, 22, pp. 16157-16173, (2023)
[3]  
Simmons David, Et al., Treatment of gestational diabetes mellitus diagnosed earlyin pregnancy, New England Journal of Medicine, 388, 23, pp. 2132-2144, (2023)
[4]  
Vesa Cosmin Mihai, Bungau Simona Gabriela, Novel molecules in diabetesmellitus, dyslipidemia and cardiovascular disease, International Journal of MolecularSciences, 24, 4, (2023)
[5]  
Kee Ooi Ting, Et al., Cardiovascular complications in a diabetes prediction model using machine learning: a systematic review, Cardiovascular Diabetology, 22, 1, (2023)
[6]  
Chou Chun-Yang, Hsu Ding-Yang, Chou Chun-Hung, Predicting the onsetof diabetes with machine learning methods, Journal of Personalized Medicine, 13, 3, (2023)
[7]  
Mansoori Amin, Et al., Prediction of type 2 diabetes mellitus using hematological factors based on machine learning approaches: a cohort study analysis, Scientific Reports, 13, 1, (2023)
[8]  
Challagundla Yagnesh, Et al., Screening of Citrus Diseases Using Deep Learning Embedders and Machine Learning Techniques, 2023 3rd International conference onArtificial Intelligence and Signal Processing (AISP), (2023)
[9]  
Pal Someswar, Et al., Deep learning techniques for prediction and diagnosis of diabetes mellitus, 2022 International mobile and embedded technology conference (MECON), (2022)
[10]  
Ganie Shahid Mohammad, Malik Majid Bashir, An ensemble machine learn-ing approach for predicting type-II diabetes mellitus based on lifestyle indicators, Healthcare Analytics, 2, (2022)