Torres E Lopez, Fiorina E, Pennazio F, Peroni C, Saletta M, Camarlinghi N, Fantacci M E, Cerello P
CEADEN, Havana 11300, Cuba and INFN, Sezione di Torino, Torino 10125, Italy.
Department of Physics, University of Torino, Torino 10125, Italy and INFN, Sezione di Torino, Torino 10125, Italy.
Med Phys. 2015 Apr;42(4):1477-89. doi: 10.1118/1.4907970.
M5L, a fully automated computer-aided detection (CAD) system for the detection and segmentation of lung nodules in thoracic computed tomography (CT), is presented and validated on several image datasets.
M5L is the combination of two independent subsystems, based on the Channeler Ant Model as a segmentation tool [lung channeler ant model (lungCAM)] and on the voxel-based neural approach. The lungCAM was upgraded with a scan equalization module and a new procedure to recover the nodules connected to other lung structures; its classification module, which makes use of a feed-forward neural network, is based of a small number of features (13), so as to minimize the risk of lacking generalization, which could be possible given the large difference between the size of the training and testing datasets, which contain 94 and 1019 CTs, respectively. The lungCAM (standalone) and M5L (combined) performance was extensively tested on 1043 CT scans from three independent datasets, including a detailed analysis of the full Lung Image Database Consortium/Image Database Resource Initiative database, which is not yet found in literature.
The lungCAM and M5L performance is consistent across the databases, with a sensitivity of about 70% and 80%, respectively, at eight false positive findings per scan, despite the variable annotation criteria and acquisition and reconstruction conditions. A reduced sensitivity is found for subtle nodules and ground glass opacities (GGO) structures. A comparison with other CAD systems is also presented.
The M5L performance on a large and heterogeneous dataset is stable and satisfactory, although the development of a dedicated module for GGOs detection could further improve it, as well as an iterative optimization of the training procedure. The main aim of the present study was accomplished: M5L results do not deteriorate when increasing the dataset size, making it a candidate for supporting radiologists on large scale screenings and clinical programs.
介绍一种用于胸部计算机断层扫描(CT)中肺结节检测和分割的全自动计算机辅助检测(CAD)系统M5L,并在多个图像数据集上进行验证。
M5L由两个独立的子系统组成,一个基于通道蚁模型作为分割工具[肺通道蚁模型(lungCAM)],另一个基于体素的神经方法。lungCAM通过扫描均衡模块和一种新的程序进行了升级,该程序用于恢复与其他肺结构相连的结节;其分类模块利用前馈神经网络,基于少量特征(13个),以尽量减少缺乏泛化的风险,鉴于训练和测试数据集大小差异很大(分别包含94个和1019个CT),这种风险是可能存在的。lungCAM(独立)和M5L(组合)的性能在来自三个独立数据集的1043次CT扫描上进行了广泛测试,包括对完整的肺图像数据库联盟/图像数据库资源倡议数据库的详细分析,这在文献中尚未见报道。
尽管注释标准、采集和重建条件各不相同,但lungCAM和M5L在各数据库中的性能一致,在每次扫描8个假阳性发现时,灵敏度分别约为70%和80%。对于微小肺结节和磨玻璃影(GGO)结构,灵敏度有所降低。还与其他CAD系统进行了比较。
M5L在大型异质数据集上的性能稳定且令人满意,尽管开发一个用于GGO检测的专用模块以及对训练程序进行迭代优化可能会进一步提高其性能。本研究的主要目标已经实现:增加数据集大小时,M5L的结果不会恶化,使其成为大规模筛查和临床项目中支持放射科医生的候选工具。