Zhao Binsheng, Gamsu Gordon, Ginsberg Michelle S, Jiang Li, Schwartz Lawrence H
Department of Medical Physics, Memorial Sloan-Kettering Cancer Center, 1275 York Avenue, New York, New York 10021, USA.
J Appl Clin Med Phys. 2003 Summer;4(3):248-60. doi: 10.1120/jacmp.v4i3.2522.
Increasingly, computed tomography (CT) offers higher resolution and faster acquisition times. This has resulted in the opportunity to detect small lung nodules, which may represent lung cancers at earlier and potentially more curable stages. However, in the current clinical practice, hundreds of such thin-sectional CT images are generated for each patient and are evaluated by a radiologist in the traditional sense of looking at each image in the axial mode. This results in the potential to miss small nodules and thus potentially miss a cancer. In this paper, we present a computerized method for automated identification of small lung nodules on multislice CT (MSCT) images. The method consists of three steps: (i) separation of the lungs from the other anatomic structures, (ii) detection of nodule candidates in the extracted lungs, and (iii) reduction of false-positives among the detected nodule candidates. A three-dimensional lung mask can be extracted by analyzing density histogram of volumetric chest images followed by a morphological operation. Higher density structures including nodules scattered throughout the lungs can be identified by using a local density maximum algorithm. Information about nodules such as size and compact shape are then incorporated into the algorithm to reduce the detected nodule candidates which are not likely to be nodules. The method was applied to the detection of computer simulated small lung nodules (2 to 7 mm in diameter) and achieved a sensitivity of 84.2% with, on average, five false-positive results per scan. The preliminary results demonstrate the potential of this technique for assisting the detection of small nodules from chest MSCT images.
计算机断层扫描(CT)的分辨率越来越高,采集时间也越来越快。这使得检测小肺结节成为可能,这些小肺结节可能代表处于更早且可能更易治愈阶段的肺癌。然而,在当前的临床实践中,为每位患者生成了数百张这样的薄层CT图像,放射科医生以传统的轴向模式查看每张图像的方式进行评估。这就有可能遗漏小的结节,从而可能漏诊癌症。在本文中,我们提出了一种用于在多层螺旋CT(MSCT)图像上自动识别小肺结节的计算机化方法。该方法包括三个步骤:(i)将肺部与其他解剖结构分离;(ii)在提取的肺部中检测结节候选物;(iii)减少检测到的结节候选物中的假阳性。通过分析胸部容积图像的密度直方图并随后进行形态学操作,可以提取三维肺掩码。使用局部密度最大值算法可以识别包括散布在整个肺部的结节在内的更高密度结构。然后将有关结节的信息(如大小和紧凑形状)纳入算法,以减少不太可能是结节的检测到的结节候选物。该方法应用于计算机模拟的小肺结节(直径2至7毫米)的检测,平均每次扫描有5个假阳性结果,灵敏度达到84.2%。初步结果证明了该技术辅助从胸部MSCT图像中检测小结节的潜力。