WACPN:肺炎诊断的神经网络。

IF 2.2 4区 计算机科学 Q2 Computer Science
Shui-Hua Wang, Muhammad Attique Khan, Ziquan Zhu, Yu-Dong Zhang
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引用次数: 4

摘要

社区获得性肺炎(CAP)被认为是在医院和诊所以外发生的一种肺炎。为了更有效地诊断社区获得性肺炎(CAP),我们提出了一种新的神经网络模型。我们引入二维小波熵(2d-WE)层和自适应混沌粒子群优化(ACP)算法来训练前馈神经网络。ACP采用自适应惯性权重因子(AIWF)和罗斯勒吸引子(RA)来提高标准粒子群优化的性能。最终的组合模型被命名为基于we层acp的网络(WACPN),其灵敏度为91.87±1.37%,特异性为90.70±1.19%,精度为91.01±1.12%,准确度为91.29±1.09%,F1评分为91.43±1.09%,MCC为82.59±2.19%,FMI为91.44±1.09%。该WACPN模型的AUC为0.9577。结果表明,选择最大沉积水平为4时,效果最好。实验证明了AIWF和RA的有效性。最后,提出的WACPN在诊断CAP方面是有效的,优于六个最先进的模型。我们的模型将被分发到云计算环境中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

WACPN: A Neural Network for Pneumonia Diagnosis.

WACPN: A Neural Network for Pneumonia Diagnosis.

WACPN: A Neural Network for Pneumonia Diagnosis.

WACPN: A Neural Network for Pneumonia Diagnosis.

Community-acquired pneumonia (CAP) is considered a sort of pneumonia developed outside hospitals and clinics. To diagnose community-acquired pneumonia (CAP) more efficiently, we proposed a novel neural network model. We introduce the 2-dimensional wavelet entropy (2d-WE) layer and an adaptive chaotic particle swarm optimization (ACP) algorithm to train the feed-forward neural network. The ACP uses adaptive inertia weight factor (AIWF) and Rossler attractor (RA) to improve the performance of standard particle swarm optimization. The final combined model is named WE-layer ACP-based network (WACPN), which attains a sensitivity of 91.87±1.37%, a specificity of 90.70±1.19%, a precision of 91.01±1.12%, an accuracy of 91.29±1.09%, F1 score of 91.43±1.09%, an MCC of 82.59±2.19%, and an FMI of 91.44±1.09%. The AUC of this WACPN model is 0.9577. We find that the maximum deposition level chosen as four can obtain the best result. Experiments demonstrate the effectiveness of both AIWF and RA. Finally, this proposed WACPN is efficient in diagnosing CAP and superior to six state-of-the-art models. Our model will be distributed to the cloud computing environment.

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来源期刊
Computer Systems Science and Engineering
Computer Systems Science and Engineering 工程技术-计算机:理论方法
CiteScore
3.10
自引率
13.60%
发文量
308
审稿时长
>12 weeks
期刊介绍: The journal is devoted to the publication of high quality papers on theoretical developments in computer systems science, and their applications in computer systems engineering. Original research papers, state-of-the-art reviews and technical notes are invited for publication. All papers will be refereed by acknowledged experts in the field, and may be (i) accepted without change, (ii) require amendment and subsequent re-refereeing, or (iii) be rejected on the grounds of either relevance or content. The submission of a paper implies that, if accepted for publication, it will not be published elsewhere in the same form, in any language, without the prior consent of the Publisher.
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