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Automatic lung nodule graph cuts segmentation with deep learning false positive reduction

机译:自动肺结节图削减了深度学习假阳性减少的分割

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To automatic detect lung nodules from CT images, we designed a two stage computer aided detection (CAD) system. The first stage is graph cuts segmentation to identify and segment the nodule candidates, and the second stage is convolutional neural network for false positive reduction. The dataset contains 595 CT cases randomly selected from Lung Image Database Consortium and Image Database Resource Initiative (LIDC/IDRI) and the 305 pulmonary nodules achieved diagnosis consensus by all four experienced radiologists were our detection targets. Consider each slice as an individual sample, 2844 nodules were included in our database. The graph cuts segmentation was conducted in a two-dimension manner, 2733 lung nodule ROIs are successfully identified and segmented. With a false positive reduction by a seven-layer convolutional neural network, 2535 nodules remain detected while the false positive dropped to 31.6%. The average F-measure of segmented lung nodule tissue is 0.8501.
机译:自动检测来自CT图像的肺结核,我们设计了两级计算机辅助检测(CAD)系统。第一阶段是图表切割分割以识别并分割结节候选物,第二阶段是卷积神经网络,用于假阳性降低。 DataSet包含595个CT病例,从肺图像数据库联盟和图像数据库资源计划(LIDC / IDRI)中随机选择,并通过所有四个经验丰富的放射科学家获得诊断共识的305个肺结核是我们的检测目标。将每个切片视为个别样本,我们的数据库中包含2844个结节。该图切割分割以双尺寸方式进行,成功鉴定了2733肺结节ROI和分段。通过七层卷积神经网络的假阳性减少,检测到2535个结节,而误报率下降至31.6%。分段肺结节组织的平均F法测量为0.8501。

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