Suzuki Kenji
Department of Radiology, Committee on Medical Physics, The University of Chicago, 5841 South Maryland Avenue, Chicago, IL 60637, USA.
Phys Med Biol. 2009 Sep 21;54(18):S31-45. doi: 10.1088/0031-9155/54/18/S03. Epub 2009 Aug 18.
Computer-aided diagnosis (CAD) has been an active area of study in medical image analysis. A filter for the enhancement of lesions plays an important role for improving the sensitivity and specificity in CAD schemes. The filter enhances objects similar to a model employed in the filter; e.g. a blob-enhancement filter based on the Hessian matrix enhances sphere-like objects. Actual lesions, however, often differ from a simple model; e.g. a lung nodule is generally modeled as a solid sphere, but there are nodules of various shapes and with internal inhomogeneities such as a nodule with spiculations and ground-glass opacity. Thus, conventional filters often fail to enhance actual lesions. Our purpose in this study was to develop a supervised filter for the enhancement of actual lesions (as opposed to a lesion model) by use of a massive-training artificial neural network (MTANN) in a CAD scheme for detection of lung nodules in CT. The MTANN filter was trained with actual nodules in CT images to enhance actual patterns of nodules. By use of the MTANN filter, the sensitivity and specificity of our CAD scheme were improved substantially. With a database of 69 lung cancers, nodule candidate detection by the MTANN filter achieved a 97% sensitivity with 6.7 false positives (FPs) per section, whereas nodule candidate detection by a difference-image technique achieved a 96% sensitivity with 19.3 FPs per section. Classification-MTANNs were applied for further reduction of the FPs. The classification-MTANNs removed 60% of the FPs with a loss of one true positive; thus, it achieved a 96% sensitivity with 2.7 FPs per section. Overall, with our CAD scheme based on the MTANN filter and classification-MTANNs, an 84% sensitivity with 0.5 FPs per section was achieved.
计算机辅助诊断(CAD)一直是医学图像分析中一个活跃的研究领域。用于增强病变的滤波器对于提高CAD方案中的灵敏度和特异性起着重要作用。该滤波器增强与滤波器中使用的模型相似的对象;例如,基于黑塞矩阵的斑点增强滤波器增强球形对象。然而,实际病变往往与简单模型不同;例如,肺结节通常被建模为实心球体,但存在各种形状且内部不均匀的结节,如带有毛刺和磨玻璃样不透明度的结节。因此,传统滤波器常常无法增强实际病变。我们在本研究中的目的是在用于CT中肺结节检测的CAD方案中,通过使用大规模训练人工神经网络(MTANN)开发一种用于增强实际病变(而非病变模型)的监督滤波器。MTANN滤波器使用CT图像中的实际结节进行训练,以增强结节的实际模式。通过使用MTANN滤波器,我们CAD方案的灵敏度和特异性得到了显著提高。在一个包含69例肺癌的数据库中,MTANN滤波器进行结节候选检测时,每幅图像的灵敏度达到97%,假阳性(FP)为6.7个,而通过差分图像技术进行结节候选检测时,每幅图像的灵敏度为96%,假阳性为19.3个。分类MTANN被用于进一步减少假阳性。分类MTANN去除了60%的假阳性,但损失了一个真阳性;因此,它每幅图像的灵敏度为96%,假阳性为2.7个。总体而言,基于MTANN滤波器和分类MTANN的我们的CAD方案,每幅图像的灵敏度达到84%,假阳性为0.5个。