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Deep Learning for Grading Cardiomegaly Severity in Chest X-Rays: An Investigation

机译:深度学习对胸部X光检查中的心脏肥大程度分级:一项调查

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This study investigates using deep convolutional neural networks (CNN) for automatic detection of cardiomegaly in digital chest X-rays (CXRs). First, we employ and fine-tune several deep CNN architectures to detect presence of cardiomegaly in CXRs. Next, we introduce a CXR-based pre-trained model where we first fully train an architecture with a very large CXR dataset and then fine-tune the system with cardiomegaly CXRs. Finally, we investigate the correlation between softmax probability of an architecture and the severity of the disease. We use two publicly available datasets, NLM-Indiana Collection and NIH-CXR datasets. Based on our preliminary results (i) data-driven approach produces better results than prior rule-based approaches developed for cardiomegaly detection, (ii) our preliminary experiment with alternative pre-trained model is promising, and (iii) the system is more confident if severity increases.
机译:这项研究调查使用深度卷积神经网络(CNN)来自动检测数字胸部X线(CXR)中的心脏肥大。首先,我们采用并微调了几种深层的CNN架构,以检测CXR中是否存在心脏肥大。接下来,我们介绍一个基于CXR的预训练模型,在该模型中,我们首先使用非常大的CXR数据集对体系结构进行完全训练,然后使用心脏增大的CXR对系统进行微调。最后,我们研究了架构的softmax概率与疾病严重程度之间的相关性。我们使用两个公开可用的数据集,即NLM-Indiana Collection和NIH-CXR数据集。基于我们的初步结果(i)数据驱动的方法产生的结果要优于先前针对心脏肿大检测开发的基于规则的方法,(ii)我们使用替代的预训练模型进行的初步实验很有希望,并且(iii)系统更加有信心如果严重性增加。

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