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A machine learning model for improving healthcare services on cloud computing environment

机译:一种改进云计算环境医疗服务的机器学习模型

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Recently, cloud computing gained an important role in healthcare services (HCS) due to its ability to improve the HCS performance. However, the optimal selection of virtual machines (VMs) to process a medical request represents a big challenge. Optimal selection of VMs performs a significant enhancement of the performance through reducing the execution time of medical requests (tasks) coming from stakeholders (patients, doctors, etc.) and maximizing utilization of cloud resources. For that, this paper proposes a new model for HCS based on cloud environment using Parallel Particle Swarm Optimization (PPSO) to optimize the VMs selection. In addition, a new model for chronic kidney disease (CKD) diagnosis and prediction is proposed to measure the performance of our VMs model. The prediction model of CKD is implemented using two consecutive techniques, which are linear regression (LR) and neural network (NN). LR is used to determine critical factors that influence on CKD. NN is used to predict of CKD. The results show that, the proposed model outperforms the state-of-the art models in total execution time the rate of 50%. In addition, the system efficiency regarding real-time data retrieval is greatly improved by 5.2%. In addition, the accuracy of hybrid intelligent model in predicting of CKD is 97.8%. The proposed model is superior to most of the referred models in the related works by 64%.
机译:最近,由于能够提高HCS性能,云计算在医疗保健服务(HCS)中获得了重要作用。然而,对处理医疗请求的虚拟机(VM)的最佳选择代表着大挑战。通过减少来自利益相关者(患者,医生等)的医疗请求(任务)的执行时间并最大限度地利用云资源,通过减少医疗请求(任务)的执行时间来执行显着提高性能的显着增强。为此,本文提出了基于使用并行粒子群优化(PPSO)的云环境的HCS新模型,以优化VM选择。此外,提出了一种慢性肾病(CKD)诊断和预测的新模型来衡量我们的VMS模型的性能。 CKD的预测模型是使用两个连续的技术实现的,这些技术是线性回归(LR)和神经网络(NN)。 LR用于确定影响CKD的关键因素。 NN用于预测CKD。结果表明,所提出的模型在总执行时间内优于最先进的模型,速率为50%。此外,关于实时数据检索的系统效率大大提高了5.2%。此外,Hybrid智能模型预测CKD的准确性为97.8%。该建议的模型优于相关工程中的大多数推荐模型64%。

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