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利用迁移学习对胸部X光片中的肺炎进行分类。

Classifying Pneumonia among Chest X-Rays Using Transfer Learning.

作者信息

Irfan Abdullah, Adivishnu Akash L, Sze-To Antonio, Dehkharghanian Taher, Rahnamayan Shahryar, Tizhoosh H R

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:2186-2189. doi: 10.1109/EMBC44109.2020.9175594.

Abstract

Chest radiography has become the modality of choice for diagnosing pneumonia. However, analyzing chest X-ray images may be tedious, time-consuming and requiring expert knowledge that might not be available in less-developed regions. therefore, computer-aided diagnosis systems are needed. Recently, many classification systems based on deep learning have been proposed. Despite their success, the high development cost for deep networks is still a hurdle for deployment. Deep transfer learning (or simply transfer learning) has the merit of reducing the development cost by borrowing architectures from trained models followed by slight fine-tuning of some layers. Nevertheless, whether deep transfer learning is effective over training from scratch in the medical setting remains a research question for many applications. In this work, we investigate the use of deep transfer learning to classify pneumonia among chest X-ray images. Experimental results demonstrated that, with slight fine-tuning, deep transfer learning brings performance advantage over training from scratch. Three models, ResNet-50, Inception V3 and DensetNet121, were trained separately through transfer learning and from scratch. The former can achieve a 4.1% to 52.5% larger area under the curve (AUC) than those obtained by the latter, suggesting the effectiveness of deep transfer learning for classifying pneumonia in chest X-ray images.

摘要

胸部X光摄影已成为诊断肺炎的首选方式。然而,分析胸部X光图像可能繁琐、耗时,且需要专业知识,而在欠发达地区可能无法获得此类知识。因此,需要计算机辅助诊断系统。最近,已经提出了许多基于深度学习的分类系统。尽管它们取得了成功,但深度网络的高开发成本仍然是部署的一个障碍。深度迁移学习(或简称为迁移学习)具有通过借鉴训练模型的架构,然后对某些层进行轻微微调来降低开发成本的优点。然而,在医学环境中,深度迁移学习相对于从头开始训练是否有效,对于许多应用来说仍是一个研究问题。在这项工作中,我们研究了使用深度迁移学习对胸部X光图像中的肺炎进行分类。实验结果表明,通过轻微微调,深度迁移学习比从头开始训练具有性能优势。通过迁移学习和从头开始分别训练了三种模型,即ResNet-50、Inception V3和DensetNet121。前者的曲线下面积(AUC)比后者获得的AUC大4.1%至52.5%,这表明深度迁移学习在对胸部X光图像中的肺炎进行分类方面是有效的。

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