Suzuki Kenji, Abe Hiroyuki, MacMahon Heber, Doi Kunio
Kurt Rossmann Laboratories for Radiologic Image Research, Department of Radiology, The University of Chicago, 5841 S. Maryland Ave., Chicago, IL 60637, USA.
IEEE Trans Med Imaging. 2006 Apr;25(4):406-16. doi: 10.1109/TMI.2006.871549.
When lung nodules overlap with ribs or clavicles in chest radiographs, it can be difficult for radiologists as well as computer-aided diagnostic (CAD) schemes to detect these nodules. In this paper, we developed an image-processing technique for suppressing the contrast of ribs and clavicles in chest radiographs by means of a multiresolution massive training artificial neural network (MTANN). An MTANN is a highly nonlinear filter that can be trained by use of input chest radiographs and the corresponding "teaching" images. We employed "bone" images obtained by use of a dual-energy subtraction technique as the teaching images. For effective suppression of ribs having various spatial frequencies, we developed a multiresolution MTANN consisting of multiresolution decomposition/composition techniques and three MTANNs for three different-resolution images. After training with input chest radiographs and the corresponding dual-energy bone images, the multiresolution MTANN was able to provide "bone-image-like" images which were similar to the teaching bone images. By subtracting the bone-image-like images from the corresponding chest radiographs, we were able to produce "soft-tissue-image-like" images where ribs and clavicles were substantially suppressed. We used a validation test database consisting of 118 chest radiographs with pulmonary nodules and an independent test database consisting of 136 digitized screen-film chest radiographs with 136 solitary pulmonary nodules collected from 14 medical institutions in this study. When our technique was applied to nontraining chest radiographs, ribs and clavicles in the chest radiographs were suppressed substantially, while the visibility of nodules and lung vessels was maintained. Thus, our image-processing technique for rib suppression by means of a multiresolution MTANN would be potentially useful for radiologists as well as for CAD schemes in detection of lung nodules on chest radiographs.
当肺部结节在胸部X光片中与肋骨或锁骨重叠时,放射科医生以及计算机辅助诊断(CAD)方案都很难检测到这些结节。在本文中,我们开发了一种图像处理技术,通过多分辨率大规模训练人工神经网络(MTANN)来抑制胸部X光片中肋骨和锁骨的对比度。MTANN是一种高度非线性滤波器,可以通过使用输入的胸部X光片和相应的“教学”图像进行训练。我们使用通过双能减影技术获得的“骨骼”图像作为教学图像。为了有效抑制具有各种空间频率的肋骨,我们开发了一种多分辨率MTANN,它由多分辨率分解/合成技术和用于三种不同分辨率图像的三个MTANN组成。在用输入的胸部X光片和相应的双能骨骼图像进行训练后,多分辨率MTANN能够提供与教学骨骼图像相似的“类骨骼图像”。通过从相应的胸部X光片中减去类骨骼图像,我们能够生成“类软组织图像”,其中肋骨和锁骨被大幅抑制。在本研究中,我们使用了一个由118张有肺结节的胸部X光片组成的验证测试数据库和一个由从14个医疗机构收集的136张有136个孤立性肺结节的数字化屏-片胸部X光片组成的独立测试数据库。当我们的技术应用于非训练胸部X光片时,胸部X光片中的肋骨和锁骨被大幅抑制,同时结节和肺血管的可见性得以保持。因此,我们通过多分辨率MTANN进行肋骨抑制的图像处理技术对于放射科医生以及胸部X光片上肺结节检测的CAD方案可能具有潜在的用途。