智能医疗的认知物联网集成:心脏病检测和监测案例研究

K. G. Rani Roopha Devi, R. Mahendra Chozhan, R. Murugesan
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引用次数: 5

摘要

随着医学和计算机技术的快速发展,医疗保健系统成为学术界和研究人员感兴趣的话题。此外,部分医疗系统对患者的紧急情况分析不成功,无法为患者提供个性化的服务资源。为了解决这一危机,在这项调查中,基于物联网的认知计算[C-IoT]被用于智能医疗保健系统。在本文提出的C-IoT方法中,心电传感器传输并记录患者的心电信号。该C-IoT能够使用认知计算分析用户的身体健康状况。它还处理认知框架,对进一步的活动做出实时决策,并将数据传输到卷积神经网络模块。该系统通过潜在语义分析(Latent semantic Analysis, LSA)来检测患者的状态。LSA作为一个最小化程序,以确定患者病情的严重程度。结果提供给医生来监测病人。实验结果表明,与传统的深度学习方法相比,该方法具有更好的折衷性。CNN方法的LSA准确率达到99.30%,灵敏度达到94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cognitive IoT Integration for Smart Healthcare: Case Study for Heart Disease Detection and Monitoring
with the fast advancement in medical and computer technologies, healthcare systems turns to be an interesting topic for both academia and researchers. Moreover, some of the healthcare systems are not successful in analyzing the emergency circumstances of patients and incapable to offer personalized service resources for patients. To address this crisis, in this investigation, an IoT based Cognitive computing [C-IoT] for smart healthcare system has been anticipated. In the proposed C-IoT method, ECG sensors transmit and record ECG signals from patients. This C-IoT is capable to analyze user’s physical health using cognitive computing. It also deals with the cognitive framework for making real time decisions over further activities and transmits the data to Convolutional Neural Network module. The proposed system examines the state of patients with Latent semantic Analysis [LSA]. LSA act as a minimization procedure to identify the severity of patient’s condition. The results are provided to the doctors to monitor the patients. The experimental results show better trade off than the conventional deep learning approach. The accuracy of 99.30% and sensitivity of 94% of LSA with CNN method has increased correspondingly.
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