利用物联网预测糖尿病异类疾病的深度学习技术综合研究

Ramesh Balaraju, Kuruva Lakshmanna
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引用次数: 0

摘要

据估计,印度有 7700 万糖尿病患者,是世界上发病率第二高的疾病。糖尿病是一种慢性综合征,随着血细胞中糖分水平的升高而发生。糖尿病一旦被诊断出来,如果没有得到医生的治疗,可能会慢慢影响内脏器官,因此有必要进行早期预测。目前流行的机器学习(ML)技术可用于糖尿病的早期预测。机器学习算法在全面管理中考虑了一个重要的视角,但它还不足以成为预测 DMT2 的良好模型。因此,深度学习(DL)模型被用来提高预测的准确性。在不显眼的测试信息上对 ML 方法进行了独特的评估和分析。DL 是 ML 的一个子部分,经常使用许多数据集来训练系统。物联网是另一种基于新兴技术的医疗保健监测系统(HMS),旨在支持医疗保健领域患者和医生的愿景。最后,通过对其进行研究,深度学习方法在预测与糖尿病相关的异类疾病以及使用移动物联网设备预测其他疾病方面表现良好。这项研究将为未来的深度学习理念做出贡献,有助于更准确地检测糖尿病相关疾病。
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A Comprehensive Study of Deep Learning Techniques to Predict Dissimilar Diseases in Diabetes Mellitus Using IoT
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.
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Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
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0.00%
发文量
142
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