Sivakumar Thimmakkondu Babuji, Hasan Hussain Shahul Hameed, Balamanigandan R
Department of Computer Science and Engineering, Syed Ammal Engineering College, Ramanathapuram, India.
Department of Computer Science and Engineering, Saveetha School of Engineering, Saveetha Institute of Medical and Technical Sciences, SIMATS, Saveetha University, Chennai, India.
Network. 2024 Oct 13:1-24. doi: 10.1080/0954898X.2024.2392770.
The integration of IoT and cloud services enhances communication and quality of life, while predictive analytics powered by AI and deep learning enables proactive healthcare. Deep learning, a subset of machine learning, efficiently analyzes vast datasets, offering rapid disease prediction. Leveraging recurrent neural networks on electronic health records improves accuracy for timely intervention and preventative care. In this manuscript, Internet of Things and Cloud Computing-based Disease Diagnosis using Optimized Improved Generative Adversarial Network in Smart Healthcare System (IOT-CC-DD-OICAN-SHS) is proposed. Initially, an Internet of Things (IoT) device collects diabetes, chronic kidney disease, and heart disease data from patients via wearable devices and intelligent sensors and then saves the patient's large data in the cloud. These cloud data are pre-processed to turn them into a suitable format. The pre-processed dataset is sent into the Improved Generative Adversarial Network (IGAN), which reliably classifies the data as disease-free or diseased. Then, IGAN was optimized using the Flamingo Search optimization algorithm (FSOA). The proposed technique is implemented in Java using Cloud Sim and examined utilizing several performance metrics. The proposed method attains greater accuracy and specificity with lower execution time compared to existing methodologies, IoT-C-SHMS-HDP-DL, PPEDL-MDTC and CSO-CLSTM-DD-SHS respectively.
物联网与云服务的整合提升了通信水平和生活质量,而由人工智能和深度学习驱动的预测分析则实现了主动式医疗保健。深度学习作为机器学习的一个子集,能够高效分析海量数据集,实现快速疾病预测。在电子健康记录上利用循环神经网络可提高及时干预和预防护理的准确性。在本论文中,提出了智能医疗系统中基于物联网和云计算的疾病诊断方法,即使用优化改进生成对抗网络(IOT-CC-DD-OICAN-SHS)。首先,物联网设备通过可穿戴设备和智能传感器收集患者的糖尿病、慢性肾病和心脏病数据,然后将患者的大数据存储在云端。对这些云数据进行预处理,使其转化为合适的格式。将预处理后的数据集送入改进生成对抗网络(IGAN),该网络可可靠地将数据分类为无病或患病。然后,使用火烈鸟搜索优化算法(FSOA)对IGAN进行优化。所提出的技术在Java中使用Cloud Sim实现,并利用多个性能指标进行检验。与现有方法物联网-C-SHMS-HDP-DL、PPEDL-MDTC和CSO-CLSTM-DD-SHS相比,所提出的方法分别以更低的执行时间实现了更高的准确率和特异性。