基于反向传播模型和布谷鸟搜索启发式的自适应梯度布尔粒子群优化设计用于慢性肾脏疾病自动预测

Q3 Social Sciences Journal of Mobile Multimedia Pub Date : 2023-10-14 DOI:10.13052/jmm1550-4646.1962
Anindita Khade, Amarsinh V. Vidhate, Deepali Vidhate
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引用次数: 0

摘要

目的:一种被称为反向传播神经网络(BPNN)的人工神经网络(ANN)已经广泛应用于各种领域,包括医疗诊断,光学字符识别,股票市场预测等。许多研究已经使用BPNN来创建决策支持工具,供医生在进行临床诊断时使用。慢性肾脏疾病(Chronic Kidney Disease, CKD)就是这样一种疾病,由于其早期缺乏症状,在过去的几十年里受到了人们的重视。这项工作的目标是证明人工智能(AI)算法在CKD早期检测中的性能。方法:收集我院800例患者的实时资料进行调查。自适应梯度布尔粒子群算法(SAG-BPSO)是粒子群算法的改进版本,用于特征选择。采用布谷鸟搜索算法(CSA)对bp神经网络的权重和偏置进行优化。最后,将该混合模型与bp神经网络相结合进行最终预测。最后,对几种最先进的算法与本文提出的方法进行了比较。结果:在数据集上应用BPNN的准确率约为91.45%。BPNN+SAGBPSO组合模型的准确率约为92.25%。BPNN+SAGBPSO+CSA混合模型的准确率接近98.07%。结论:本研究使用SAGBPSO进行特征选择,使用CSA确定BPNN的权重和偏置。研究在我们的实时数据集上实现了BPNN、BPNN+SAGBPSO和BPNN+SAGBPSO+CSA。所提出的混合模型BPNN+SAGBPSO+CSA在性能指标方面优于所有最先进的深度学习算法。
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Design of an Optimized Self-Acclimation Graded Boolean PSO with Back Propagation Model and Cuckoo Search Heuristics for Automatic Prediction of Chronic Kidney Disease
Objectives: A kind of Artificial Neural Network (ANN) known as a Back Propagation Neural Network (BPNN) has been extensively applied in a variety of sectors, including medical diagnosis, optical character recognition, stock market forecasting, and others. Many studies have employed BPNN to create decision-support tools for doctors to use while making clinical diagnoses. Chronic Kidney Disease (CKD) is one such kind of disease which has been receiving due importance from the past decades due to lack of symptoms in its early stages. The goal of this work is to demonstrate the performance of Artificial Intelligent (AI) algorithms in the early detection of CKD. Method: We received 800 patients’ real-time data from DY Patil Hospitals for this investigation. Self-Acclimation Graded Boolean PSO (SAG-BPSO), a modified version of Particle Swarm Optimization (PSO), has been proposed and used in this study to accomplish feature selection. Cuckoo Search Algorithm (CSA) has been used to optimise the weights and biases of the BPNN. Finally, this hybrid model is combined with BPNN for final predictions. Finally, a comparison is made between few state of art algorithms and the proposed approach. Results: The accuracy noted on applying BPNN on the dataset was approximately 91.45%. The combined model of BPNN+SAGBPSO provided an accuracy of about 92.25%. The accuracy achieved for the hybrid model of BPNN+SAGBPSO+CSA was approximately near to 98.07%. Conclusions: This research used SAGBPSO for feature selection and CSA for finalizing the weights and biases of BPNN. The research implemented BPNN, BPNN+SAGBPSO and BPNN+SAGBPSO+CSA on our real time dataset. The proposed hybrid model BPNN+SAGBPSO+CSA outperformed all the state of art deep learning algorithms in terms of performance metrics.
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来源期刊
Journal of Mobile Multimedia
Journal of Mobile Multimedia Social Sciences-Communication
CiteScore
1.90
自引率
0.00%
发文量
80
期刊介绍: The scope of the journal will be to address innovation and entrepreneurship aspects in the ICT sector. Edge technologies and advances in ICT that can result in disruptive concepts of major impact will be the major focus of the journal issues. Furthermore, novel processes for continuous innovation that can maintain a disruptive concept at the top level in the highly competitive ICT environment will be published. New practices for lean startup innovation, pivoting methods, evaluation and assessment of concepts will be published. The aim of the journal is to focus on the scientific part of the ICT innovation and highlight the research excellence that can differentiate a startup initiative from the competition.
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