Smart Detection of Cardiovascular Disease Using Gradient Descent Optimization

Kausar Parveen, Maryam Daud, Shahan Yamin Siddiqu
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Abstract

The Internet of Medical Things (IoMT) is the networking of health things or equipment that communicate data over the internet without the need for human involvement in the healthcare field. A large quantity of data is collected from numerous sensors in the health field, and it is all transferred and stored on the cloud. This data is growing bigger here all time, and it's becoming increasingly challenging to secure it on the cloud with real-time storage and computing. Data security problem can be addressed with the aid of machine algorithms and fog computing. For data security in IoMT gadgets correspondence in an intelligent fashion, an intelligent encryption algorithm (IEA) is proposed using blockchain technology in cloud based system framework (CBSF). It is applied on patient’s database to provide immutable security, tampering prevention and transaction transparency at the fog layer in IoMT.  The suggested expert system's results indicate that it is suitable for use in for the security. In the fog model, the blockchain technology approach also helps to address latency, centralization, and scalability difficulties.
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基于梯度下降优化的心血管疾病智能检测
医疗物联网(IoMT)是通过互联网进行数据通信的健康事物或设备的网络,无需人工参与医疗保健领域。从健康领域的众多传感器中收集大量数据,并将其全部传输和存储在云端。这里的数据一直在增长,通过实时存储和计算在云中保护这些数据变得越来越具有挑战性。数据安全问题可以借助机器算法和雾计算来解决。针对物联网设备通信中的智能数据安全问题,提出了一种基于区块链技术的基于云的系统框架(CBSF)智能加密算法。将其应用于患者数据库,在IoMT的雾层提供不可变的安全性、防篡改性和交易透明性。该专家系统的运行结果表明,该系统适合于安全领域的应用。在雾模型中,区块链技术方法还有助于解决延迟、集中化和可伸缩性问题。
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