胸部X射线图像用于胸部疾病诊断的深度生成分类器。

Chengsheng Mao, Yiheng Pan, Zexian Zeng, Liang Yao, Yuan Luo
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引用次数: 22

摘要

胸科疾病是困扰大量人群的非常严重的健康问题。胸部X光检查是目前最流行的胸部疾病诊断方法之一,在医疗工作流程中发挥着重要作用。然而,对于放射科医生来说,读取胸部X光图像并给出准确诊断仍然是一项具有挑战性的任务。随着深度学习在计算机视觉中的成功,越来越多的深度神经网络架构被应用于胸部X射线图像分类。然而,以前的大多数深度神经网络分类器都是基于确定性架构的,这些架构通常对噪声非常敏感,可能会加剧过拟合问题。在本文中,为了使深度架构对噪声更具鲁棒性并减少过拟合,我们建议使用深度生成分类器从胸部X射线图像中自动诊断胸部疾病。与传统的确定性分类器不同,深度生成分类器在深度神经网络中具有分布中间层。采样层然后从分布层中抽取随机样本,并将其输入到下一层进行分类。分类器是生成的,因为类标签是从相关分布的样本中生成的。通过训练具有一定随机性的模型,期望深度生成分类器对噪声具有鲁棒性,可以减少过拟合,从而获得良好的性能。我们基于许多众所周知的确定性神经网络架构实现了我们的深度生成分类器,并在胸部X-ray14数据集上测试了我们的模型。结果表明,与相应的深度确定性分类器相比,深度生成分类器具有优越性。
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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Deep Generative Classifiers for Thoracic Disease Diagnosis with Chest X-ray Images.

Thoracic diseases are very serious health problems that plague a large number of people. Chest X-ray is currently one of the most popular methods to diagnose thoracic diseases, playing an important role in the healthcare workflow. However, reading the chest X-ray images and giving an accurate diagnosis remain challenging tasks for expert radiologists. With the success of deep learning in computer vision, a growing number of deep neural network architectures were applied to chest X-ray image classification. However, most of the previous deep neural network classifiers were based on deterministic architectures which are usually very noise-sensitive and are likely to aggravate the overfitting issue. In this paper, to make a deep architecture more robust to noise and to reduce overfitting, we propose using deep generative classifiers to automatically diagnose thorax diseases from the chest X-ray images. Unlike the traditional deterministic classifier, a deep generative classifier has a distribution middle layer in the deep neural network. A sampling layer then draws a random sample from the distribution layer and input it to the following layer for classification. The classifier is generative because the class label is generated from samples of a related distribution. Through training the model with a certain amount of randomness, the deep generative classifiers are expected to be robust to noise and can reduce overfitting and then achieve good performances. We implemented our deep generative classifiers based on a number of well-known deterministic neural network architectures, and tested our models on the chest X-ray14 dataset. The results demonstrated the superiority of deep generative classifiers compared with the corresponding deep deterministic classifiers.

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