Deep Learning Based Hybrid Network Architecture to Diagnose IoT Sensor Signal in Healthcare System

S. S., M. S. Koti
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Abstract

IoT is a fascinating technology in today's IT world, in which items may transmit data and interact through intranet or internet networks. TheInternet of Things (IoT) has shown a lot of promise in connecting various medical equipment, sensors, and healthcare specialists to provide high-quality medical services from afar. As a result, patient safety has improved, healthcare expenses have fallen, healthcare service accessibility has increased, and operational efficiency has increased in the healthcare industry. Healthcare IoT signal analysis is now widely employed in clinics as a critical diagnostic tool for diagnosing health issues. In the medical domain, automated identification and classification technologies help clinicians make more accurate and timely diagnoses. In this paper, we have proposed a Deep Learning-Based hybrid network architecture (CNN-R-LSTM (DCRL)) that combines the characteristics of a Convolutional Neural Network (CNN) and a Recurrent Neural Network (RNN) based long-short-term memory (LSTM) to diagnose IoT sensor signals and classify them into three categories: healthy, patient, and serious illness. Deep CNN-R-LSTM Algorithm is used for classify the IoT healthcare data support via a dedicated neural networking model. For our study, we have used the MIT-BIH dataset, the Pima Indians Diabetes dataset, the BP dataset, and the Cleveland Cardiology datasets. The experimental results revealed great classification performance in accuracy, specificity, and sensitivity, with 99.02 percent, 99.47 percent, and 99.56 percent, respectively. Our proposed DCLR model is based on healthcare IoT Centre inputs enhanced with the centenary, which may aid clinicians in effectively recognizing the health condition.
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基于深度学习的混合网络架构诊断医疗系统中物联网传感器信号
物联网是当今IT世界中一项引人入胜的技术,其中物品可以通过内部网或互联网传输数据并进行交互。物联网(IoT)在连接各种医疗设备、传感器和医疗保健专家以提供远程高质量医疗服务方面显示出了很大的前景。因此,患者安全得到改善,医疗保健费用下降,医疗保健服务可及性增加,医疗保健行业的运营效率提高。医疗物联网信号分析现已广泛应用于诊所,作为诊断健康问题的关键诊断工具。在医疗领域,自动识别和分类技术帮助临床医生做出更准确和及时的诊断。在本文中,我们提出了一种基于深度学习的混合网络架构(CNN- r -LSTM (DCRL)),该架构结合了卷积神经网络(CNN)和基于循环神经网络(RNN)的长短期记忆(LSTM)的特征来诊断物联网传感器信号,并将其分为三类:健康、患者和严重疾病。深度CNN-R-LSTM算法通过专用的神经网络模型对物联网医疗数据支持进行分类。在我们的研究中,我们使用了MIT-BIH数据集、皮马印第安人糖尿病数据集、BP数据集和克利夫兰心脏病学数据集。实验结果表明,该方法在准确率、特异性和敏感性方面具有良好的分类性能,分别达到99.02%、99.47%和99.56%。我们提出的DCLR模型是基于医疗物联网中心的输入,这可以帮助临床医生有效地识别健康状况。
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