A Smart Architecture for Diabetic Patient Monitoring Using Machine Learning Algorithms
暂无分享,去创建一个
Sandra Sendra | Jaime Lloret | Abdelmajid Oumnad | Amine Rghioui | Jaime Lloret | Amine Rghioui | A. Oumnad | S. Sendra
[1] Xiaoya Wang,et al. Prediction of Type 2 Diabetes Risk and Its Effect Evaluation Based on the XGBoost Model , 2020, Healthcare.
[2] Ivan Izonin,et al. The Combined Use of the Wiener Polynomial and SVM for Material Classification Task in Medical Implants Production , 2018, International Journal of Intelligent Systems and Applications.
[3] Hyun Yoo,et al. A Frequency Pattern Mining Model Based on Deep Neural Network for Real-Time Classification of Heart Conditions , 2020, Healthcare.
[4] Jaime Lloret,et al. An architecture and protocol for smart continuous eHealth monitoring using 5G , 2017, Comput. Networks.
[5] Xiaohui Xie,et al. Indoor Anti-Collision Alarm System Based on Wearable Internet of Things for Smart Healthcare , 2018, IEEE Communications Magazine.
[6] Ali Serener,et al. Effects of External Factors in CGM Sensor Glucose Concentration Prediction , 2016 .
[7] V. Kulyk,et al. Alloys selection based on the supervised learning technique for design of biocompatible medical materials , 2018, Archives of Materials Science and Engineering.
[8] Bohdana Havrysh,et al. Imbalance Data Classification via Neural-Like Structures of Geometric Transformations Model: Local and Global Approaches , 2018 .
[9] Qingyi Zhan,et al. Numerical Study on Stochastic Diabetes Mellitus Model with Additive Noise , 2019, Comput. Math. Methods Medicine.
[10] A. Piétrus,et al. Diabetes, Complications And Limit Cycles , 2015 .
[11] Victor C. M. Leung,et al. Mobility Support for Health Monitoring at Home Using Wearable Sensors , 2011, IEEE Transactions on Information Technology in Biomedicine.
[12] Devottam Gaurav,et al. Smart home health monitoring system for predicting type 2 diabetes and hypertension , 2020, J. King Saud Univ. Comput. Inf. Sci..
[13] Ignacio Bosch,et al. Machine Learning Prediction Approach to Enhance Congestion Control in 5G IoT Environment , 2019, Electronics.
[14] Jing Zhang,et al. 5G-Smart Diabetes: Toward Personalized Diabetes Diagnosis with Healthcare Big Data Clouds , 2018, IEEE Communications Magazine.
[15] Anusorn Charleonnan,et al. Predictive analytics for chronic kidney disease using machine learning techniques , 2016, 2016 Management and Innovation Technology International Conference (MITicon).
[16] Mumbai,et al. Internet of Things (IoT): A Literature Review , 2015 .
[17] Kok-Lim Alvin Yau,et al. 5G-Based Smart Healthcare Network: Architecture, Taxonomy, Challenges and Future Research Directions , 2019, IEEE Access.
[18] Marco Ruffini,et al. Multidimensional Convergence in Future 5G Networks , 2016, Journal of Lightwave Technology.
[19] Damodar Reddy Edla,et al. Type 2 diabetes data classification using stacked autoencoders in deep neural networks , 2019, Clinical Epidemiology and Global Health.
[20] Parra,et al. Glucose Data Classification for Diabetic Patient Monitoring , 2019, Applied Sciences.