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Automated Detection of Pulmonary Nodules from Whole Lung Helical CT Scans: Performance comparison for isolated and attached nodules

机译:从整个肺部螺旋CT扫描中自动检测肺结节:孤立结节和附着结节的性能比较

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The objective of this research is to evaluate and compare the performance of our automated detection algorithm on isolated and attached nodules in whole lung CT scans. Isolated nodules are surrounded by the lung parenchyma with no attachment to large solid structures such as the chest wall or mediastinum surface, while attached nodules are adjacent to these structures. The detection algorithm involves three major stages. First, the region of the image space where pulmonary nodules are to be found is identified. This involves segmenting the lung region and generating the pleural surface. In the second stage, which is the hypothesis generation stage, nodule candidate locations are identified and their sizes are estimated. The nodule candidates are successively refined in the third stage a sequence of filters of increasing complexity. The algorithm was tested on a dataset containing 250 low-dose whole lung CT scans with 2.5mm slice thickness. A scan is composed of images covering the whole lung region for a single person. The dataset was partitioned into 200 and 50 scans for training and testing the algorithm. Only solid nodules were considered in this study. Experienced chest radiologists identified a total of 447 solid nodules. 345 and 102 of the nodules were from the training and testing datasets respectively. 126(28.2%) of the nodules in the dataset were attached nodules. The detection performance was then evaluated separately for isolated and attached nodule types considering different size ranges. For nodules 3mm and larger, the algorithm achieved a sensitivity of 97.8% with 2.0 false positives (FPs) per scan and 95.7% with 19.3 FPs per scan for isolated and attached nodules respectively. For nodules 4mm and larger, a sensitivity of 96.6% with 1.5 FP per scan and a 100% sensitivity with 13 FPs per scan were obtained for isolated and attached nodule types respectively. The results show that our algorithm detects isolated and attached nodules with comparable sensitivity but differing number of false positives per scan. The high number of false positives for attached nodule detection was mainly due to the complexity of the mediastinum lung surface.
机译:这项研究的目的是评估和比较我们的自动检测算法在全肺CT扫描中对孤立结节和附着结节的性能。孤立的结节被肺实质包围,没有附着于大型实心结构,如胸壁或纵隔表面,而附着的结节与这些结构相邻。检测算法包括三个主要阶段。首先,确定要发现肺结节的图像空间区域。这涉及分割肺区域并产生胸膜表面。在第二个阶段,即假设生成阶段,确定结节候选位置并估计其大小。在第三个阶段中,依次对结节候选进行精炼,以增加一系列复杂性的过滤器。该算法在包含250个低剂量全肺CT扫描和2.5mm切片厚度的数据集上进行了测试。扫描由覆盖单个人的整个肺区域的图像组成。数据集被分为200和50次扫描,以训练和测试算法。在本研究中仅考虑实性结节。经验丰富的胸部放射科医生发现了总共447个实体结节。分别有345个和102个结节来自训练和测试数据集。数据集中结节中有126个(28.2%)是结节。然后考虑到不同的大小范围,分别对孤立和结节类型的检测性能进行评估。对于3mm及更大的结节,该算法分别对孤立结节和附着结节实现了97.8%的灵敏度(每次扫描2.0假阳性)和95.7%的灵敏度(每次扫描19.3 FP)。对于4mm及更大的结节,对于分离的结节类型和附着结节类型,灵敏度分别为96.6%(每次扫描1.5 FP)和100%灵敏度(每次扫描13 FP)。结果表明,我们的算法可以检测到分离的结节和附着的结节,具有相当的灵敏度,但每次扫描的假阳性数不同。附着结节检测假阳性的高数量主要是由于纵隔肺表面的复杂性。

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