Performance Comparison of Deep Learning Models for Black Lung Detection on Chest X-ray Radiographs

Liton Devnath, S. Luo, P. Summons, Dadong Wang
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引用次数: 9

Abstract

Black Lung (BL) is an incurable respiratory disease caused by long term inhalation of respirable coal dust. Confidentiality restrictions and disease incidence limit the availability of BL datasets, which presents significant challenges in the training of deep learning (DL) models. This paper presents the implementations and detailed performance comparison of seven DL models for BL detection with small datasets. The models include VGG16, VGG19, InceptionV3, Xception, ResNet50, DenseNet121 and CheXNet. A small BL dataset of real and synthetic images was used to train the seven deep learning models. Segmented lung X-ray images, with and without BL, were used as training images to establish a benchmark. To increase the number of images required for training a deep learning system the training data set was augmented, using a Cycle-Consistent Adversarial Networks (CycleGAN) and the Keras Image Data Generator, to generate additional augmented and synthetic radiographs. The effects of different dropout nodes as a blocking factor was also investigated on all seven models. The best sensitivity (Normal Prediction Rate), specificity (BL prediction Rate), error rate (ERR or incorrect prediction rate), accuracy (1-ERR), as well as total execution time for binary classification for each model, with and without augmentation, was compared for optimal BL detection. On average, the CheXNet model gave the best performance of all seven DL models.
深度学习模型在胸部x线片黑肺检测中的性能比较
黑肺(BL)是由于长期吸入可呼吸性煤尘引起的一种无法治愈的呼吸系统疾病。机密性限制和疾病发生率限制了BL数据集的可用性,这对深度学习(DL)模型的训练提出了重大挑战。本文介绍了用于小数据集BL检测的七种深度学习模型的实现和详细的性能比较。包括VGG16、VGG19、InceptionV3、Xception、ResNet50、DenseNet121和CheXNet。使用真实图像和合成图像的小型BL数据集来训练七个深度学习模型。将有BL和无BL的肺x线图像分割为训练图像,建立基准。为了增加训练深度学习系统所需的图像数量,使用循环一致对抗网络(CycleGAN)和Keras图像数据生成器增强了训练数据集,以生成额外的增强和合成射线照片。不同的辍学节点作为一个阻碍因素的影响也研究了所有七个模型。比较每种模型在增强和不增强时的最佳灵敏度(Normal Prediction Rate)、特异性(BL Prediction Rate)、错误率(ERR或错误预测率)、准确率(1-ERR)和总执行时间,以获得最佳BL检测。平均而言,CheXNet模型在所有七个深度学习模型中表现最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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