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

Q2 Computer Science
Rishita Konda, Anuraag Ramineni, Jayashree J, Niharika Singavajhala, Sai Akshaj Vanka
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引用次数: 0

Abstract

  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].
利用各种机器学习技术检测糖尿病的集成嵌入式系统
简介:这项名为 "使用各种机器学习和深度学习算法检测糖尿病的集成系统 "的研究旨在通过研究和应用各种机器学习和深度学习技术,提高糖尿病诊断的准确性和可用性。目标:方法:该方法包括从数据收集和预处理到高级模型开发和性能评估的每个阶段。实验展示了如何将多种机器学习和深度学习技术结合起来,彻底改变糖尿病检测方法。在称赞成绩的同时,该方法也强调了数据收集过程中的缺陷。未来改进路线图的目标是利用技术更好地检测和治疗糖尿病,最终帮助所有年龄和背景的人。结果:该项目的显著成果证明了所选方法的合理性,同时也凸显了其彻底改变糖尿病诊断和治疗的潜力 结论:该项目的结论为下一步的发展奠定了基础,例如改进用户界面和扩大数据集范围。通过这些举措,提供更精确、更便捷的糖尿病诊断这一长期目标将成为现实,并为不同年龄段和人口结构的人群带来显著优势[6]。
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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