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Fully Convolutional Neural Network for Lungs Segmentation from Chest X-Rays

机译:胸部X射线的肺部分割完全卷积神经网络

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Deep neural networks have entirely dominated the machine vision space in the past few years due to their astonishing human comparable performance. This paper applies power of such network to segment out lungs from chest x-rays, which is a crucial step in any computer aided diagnostic (CAD) system design. A fully convolutional network was used to extract lungs region from the x-rays. Post processing was done to fill holes, separate left and right lung from each other and remove unwanted objects that appeared in few cases. The process was repeated ten times, with random split of data into a 60:40 ratio as training and testing sets respectively, to calculate the average accuracy. The methodology was tested on three datasets: Japanese Society of Radiological Technology (JSRT), Montgomery County (MC), and a local dataset that achieved average accuracy of 97.1%, 97.7% & 94.2% respectively. The results proved that the proposed methodology is efficient enough and can be generalized for other such segmentation problems in medical imaging domain.
机译:由于令人惊讶的人类可比性,深度神经网络在过去几年中完全占据了机器视觉空间。本文采用这种网络的力量从胸部X射线分割肺部,这是任何计算机辅助诊断(CAD)系统设计的关键步骤。使用完全卷积的网络从X射线中提取肺部区域。完成后处理以填充孔,彼此分开左右肺部,并删除在少数情况下出现的不需要的物体。该过程重复十次,分别随着训练和测试集的60:40的比例随机分离为60:40,计算平均精度。该方法在三个数据集中进行了测试:日本放射技术(JSRT),蒙哥马利县(MC)和当地数据集,分别实现了97.1%,97.7%和94.2%的平均准确性。结果证明,所提出的方法是足够有效的,并且可以在医学成像结构域中的其他这种分割问题推广。

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