用于诊断胸部疾病的鲁棒性集合卷积神经网络

M. Alhlalat, Abdel-Aziz Sharieh, Mohammed Belal Al-Zoubi
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引用次数: 0

摘要

放射科医生利用x射线图像来鉴别各种胸部疾病。鉴于这种诊断程序的复杂性和细致性,在从x射线图像检测和诊断疾病时,自动化模型的辅助变得必不可少。本文提出了一种新的方法,称为集成卷积神经网络诊断胸部疾病(ECDCNet),旨在通过对肺部x射线图像的分析,准确有效地诊断15种不同的胸部疾病。ECDCNet模型由5个cnn组成:ResNet152V2、DenseNet121、Inceptionv3、Vogg19和小波变换cnn,具有不同的架构和超参数,以提高整体预测性能。该模型利用U-Net模型对肺区域进行图像分割,对相关空间进行定位和聚焦,便于识别结节、混浊、空腔、实变等特定影像学征象。此外,该研究利用了三种集成CNN策略:平均投票、多数投票和一种被称为加权性能指标集成策略(WPME)的CNN集成策略来设置预测阶段的权重。本文提出的WPME策略采用精度、召回率、F1-score和准确率四种评价指标来评估每个基础CNN在集成模型中的重要性,以增强集成模型的预测能力。所提出的ECDCNet模型在15种胸部疾病的110804张图像上,在平均投票、多数投票和WPME策略上的准确率分别为95.3、95.8和96.1%。此外,在另一个包含13150张胸部疾病图像的公共数据集上,它在平均投票、多数投票和WPME策略上的准确率分别为97.9%、98.2%和98.9%。
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A Robust Ensemble Convolutional Neural Networks for Diagnosing Chest Diseases
: Radiologists employ X-ray images to differentiate various chest diseases. Given the intricate and meticulous nature of this diagnostic procedure, the assistance of automated models becomes imperative in detecting and diagnosing diseases from X-ray images. This research paper proposed a novel approach called Ensemble Convolutional Neural Network for Diagnosing Chest Diseases (ECDCNet), aimed at accurately and efficiently diagnosing fifteen different chest diseases through the analysis of X-ray images of the lungs. The ECDCNet model comprised a stack of five CNNs: ResNet152V2, DenseNet121, Inceptionv3, Vogg19, and Wavelet transform-CNN with various architectures and hyper-parameters to enhance the overall prediction performance. The proposed model applied the image segmentation for the lung's region using the U-Net model to localize and focus on the relevant space and facilitate the identification of specific radiological signs such as nodules, opacities, cavities, and consolidation. Furthermore, the study exploited three ensemble CNN strategies: Average voting, majority voting, and a proposed CNN-ensemble strategy called the Weighted Performance Metrics Ensemble Strategy (WPME) to set the weights of the prediction stage. The proposed WPME strategy used four evaluation measures for assessing the importance of each base CNN in the ensemble model, including precision, recall, F1-score, and accuracy, to enhance the prediction of the ensemble model. The proposed ECDCNet model achieved an accuracy of 95.3, 95.8 and 96.1% in the average voting, the majority voting, and the WPME strategy on a collected dataset of 110804 images for fifteen chest diseases. Further, it achieved an accuracy of 97.9, 98.2 and 98.9% in the average voting, the majority voting, and the WPME strategy on another public dataset of 13150 images for three chest diseases.
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来源期刊
Journal of Computer Science
Journal of Computer Science Computer Science-Computer Networks and Communications
CiteScore
1.70
自引率
0.00%
发文量
92
期刊介绍: Journal of Computer Science is aimed to publish research articles on theoretical foundations of information and computation, and of practical techniques for their implementation and application in computer systems. JCS updated twelve times a year and is a peer reviewed journal covers the latest and most compelling research of the time.
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