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False Positive Reduction in Lung GGO Nodule Detection with 3D Volume Shape Descriptor

机译:带有3D体积形状描述符的肺GGO结节检测中的假阳性减少

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Lung nodule detection, especially ground glass opacity (GGO) detection, in helical computed tomography (CT) images is a challenging Computer-Aided Detection (CAD) task due to the enormous variances in nodules'' volumes, shapes, appearances, and the structures nearby. Most of the detection algorithms employ some efficient candidate generation (CG) algorithms to spot the suspicious volumes with high sensitivity at the cost of low specificity, e.g. tens even hundreds of false positives per volume. This paper proposes a learning based method to reduce the number of false positives given by CG based on a new general 3D volume shape descriptor. The 3D volume shape descriptor is constructed by concatenating spatial histograms of gradient orientations, which is robust to large variabilities in intensity levels, shapes, and appearances. The proposed method achieves promising performance on a difficult mixture lung nodule dataset with average 81% detection rate and 4.3 false positives per volume.
机译:肺结核检测,尤其是地面玻璃不透明度(GGO)检测,在螺旋计算断层扫描(CT)图像中是一个具有挑战性的计算机辅助检测(CAD)任务,由于结节的卷,形状,外观和结构中的巨大差异附近。大多数检测算法采用一些有效的候选生成(CG)算法,以发现具有高灵敏度的可疑体积,以低特异性的成本,例如,每卷甚至数百个误报。本文提出了一种基于学习的方法,用于减少CG基于新的一般3D音量形状描述符的误报的数量。 3D音量形状描述符是通过连接梯度方向的空间直方图构造,这对于强度水平,形状和外观中的大变量是强大的。所提出的方法在困难的混合肺结节数据集上实现了有希望的性能,平均每体积为81%的检测率和4.3个误报。

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