基于云计算的神经网络架构智能医疗系统网络分析

Alcides Bernardo Tello, Shi Jie, D. Manjunath, M. KusumaKumariB., Shabnam Sayyad
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引用次数: 0

摘要

人工智能(AI)、物联网(IoT)和云计算的最新进展将传统医疗保健系统转变为智能医疗保健系统。通过人工智能和物联网等关键技术的结合,可以改善医疗服务。人工智能和物联网的融合为医疗保健系统带来了一些机会。在机器学习中,深度学习被认为是一个有着广泛应用的知名话题,如生物医学、计算机视觉、语音识别、药物发现、视觉对象检测、自然语言处理、疾病预测、生物信息学等。在这些应用中,与医学有关的应用和卫生保健应用急剧增加。本研究开发了一种基于神经网络(CCNA-SHSNN)架构的基于云计算的智能医疗系统网络分析。提出的CCNA-SHSNN技术有助于实时云环境下医疗保健系统的决策过程。对于数据预处理,CCNA-SHSNN技术使用规范化方法。其次,CCNA-SHSNN技术将自编码器(AE)模型应用于CC平台的医疗数据分类。最后,利用引力搜索算法(GSA)对声发射模型进行超参数优化。实验结果是在一个基准数据集上确定的,结果表明CCNA-SHSNN技术与现有技术相比具有优异的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cloud Computing Based Network Analysis in Smart Healthcare System with Neural Network Architecture
The recent progressions in Artificial Intelligence (AI), the Internet of Things (IoT), and cloud computing transformed the traditional healthcare system into a smart healthcare system. Medical services can be improved through the incorporation of key technologies namely AI and IoT. The convergence of AI and IoT renders several openings in the healthcare system. In machine learning, deep learning can be considered a renowned topic with a wide range of applications like biomedicine, computer vision, speech recognition, drug discovery, visual object detection, natural language processing, disease prediction, bioinformatics, etc. Among these applications, medical science-related and health care applications were raised dramatically. This study develops a Cloud computing-based network analysis in the smart healthcare systems with neural network (CCNA-SHSNN) architecture. The presented CCNA-SHSNN technique assists in the decision-making process of the healthcare system in a real time cloud environment. For data pre-processing, the CCNA-SHSNN technique uses a normalization approach. Secondly, the CCNA-SHSNN technique applies the autoencoder (AE) model for healthcare data classification in the CC platform. At last, the gravitational search algorithm (GSA) is used for hyperparameter optimization of the AE model. The experimental outcomes are determined on a benchmark dataset and the outcomes signify the outperforming efficiency of the CCNA-SHSNN technique compared to existing techniques.
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