Diagnostic Image Analysis Group, Radboud University Medical Center, Nijmegen, The Netherlands.
Section of Radiology, University Hospital of Parma, Parma, Italy.
Sci Rep. 2018 Jan 12;8(1):646. doi: 10.1038/s41598-017-19101-3.
Subsolid pulmonary nodules are commonly encountered in lung cancer screening and clinical routine. Compared to other nodule types, subsolid nodules are associated with a higher malignancy probability for which the size and mass of the nodule and solid core are important indicators. However, reliably measuring these characteristics on computed tomography (CT) can be hampered by the presence of vessels encompassed by the nodule, since vessels have similar CT attenuation as solid cores. This can affect treatment decisions and patient management. We present a method based on voxel classification to automatically identify vessels and solid cores in given subsolid nodules on CT. Three experts validated our method on 170 screen-detected subsolid nodules from the Multicentric Italian Lung Disease trial. The agreement between the proposed method and the observers was substantial for vessel detection and moderate for solid core detection, which was similar to the inter-observer agreement. We found a relatively high variability in the inter-observer agreement and low method-observer agreements for delineating the borders of vessels and solid cores, illustrating the difficulty of this task. However, 92.4% of the proposed vessel and 80.6% of the proposed solid core segmentations were labeled as usable in clinical practice by the majority of experts.
肺部亚实性结节在肺癌筛查和临床常规中较为常见。与其他结节类型相比,亚实性结节的恶性程度更高,结节和实性成分的大小和质量是重要的预测指标。然而,由于结节内包含的血管与实性成分具有相似的 CT 衰减值,在 CT 上可靠地测量这些特征可能会受到影响。这可能会影响治疗决策和患者管理。我们提出了一种基于体素分类的方法,可自动识别 CT 上给定的亚实性结节内的血管和实性成分。三位专家在多中心意大利肺病试验中对 170 个筛查出的亚实性结节进行了方法验证。该方法与观察者之间的一致性对于血管检测是显著的,对于实性核心检测是中等的,与观察者间的一致性相似。我们发现观察者间的一致性存在较大差异,并且在界定血管和实性核心边界方面,观察者间和观察者与方法间的一致性均较低,这表明这项任务具有一定难度。然而,在临床实践中,大多数专家认为 92.4%的建议血管分割和 80.6%的建议实性核心分割是可用的。