Suzuki Kenji, Doi Kunio
Kurt Rossmann Laboratories for Radiologic Image Research, Department of Radiology, The University of Chicago, 5841 South Maryland Avenue, Chicago, IL 60637, USA.
Acad Radiol. 2005 Oct;12(10):1333-41. doi: 10.1016/j.acra.2005.06.017.
To demonstrate that a massive training artificial neural network (MTANN) can be adequately trained with a small number of cases in the distinction between nodules and vessels (non-nodules) in thoracic computed tomography (CT) images.
An MTANN is a trainable, highly nonlinear filter consisting of a linear-output multilayer artificial neural network model. For enhancement of nodules and suppression of vessels, we used 10 nodules and 10 non-nodule images as training cases for MTANNs. The MTANN is trained with a large number of input subregions selected from the training cases and the corresponding pixels in teaching images that contain Gaussian distributions for nodules and zero for non-nodules. We trained three MTANNs with different numbers (1, 9, and 361) of training samples (pairs of the subregion and the teaching pixel) selected from the training cases. In order to investigate the basic characteristics of the trained MTANNs, we applied the MTANNs to simulated CT images containing various-sized model nodules (spheres) with different contrasts and various-sized model vessels (cylinders) with different orientations. In addition, we applied the trained MTANNs to nontraining actual clinical cases with 59 nodules and 1,726 non-nodules.
In the output images for the simulated CT images by use of the MTANNs trained with small numbers (one and nine) of subregions, model vessels were clearly visible and were not removed; thus, the MTANNs were not trained properly. However, in the output image of the MTANN trained with a large number of subregions, various-sized model nodules with different contrasts were represented by light nodular distributions, whereas various-sized model vessels with different orientations were dark and thus were almost removed. This result indicates that the MTANN was able to learn, from a very small number of actual nodule and non-nodule cases, the distinction between nodules (spherelike objects) and vessels (cylinder-like objects). In nontraining clinical cases, the MTANN was able to distinguish actual nodules from actual vessels in CT images. For 59 actual nodules and 1,726 non-nodules, the performance of the MTANN decreased as the number of training samples (subregions) in each case decreased.
The MTANN can be trained with a very small number of training cases (10 nodules and 10 non-nodules) in the distinction between nodules and non-nodules (vessels) in CT images. Massive training by scanning of training cases to produce a large number of training samples (input subregions and teaching pixels) would contributed to a high generalization ability of the MTANN.
证明在胸部计算机断层扫描(CT)图像中,利用少量病例对大规模训练人工神经网络(MTANN)进行训练,足以使其在区分结节与血管(非结节)方面发挥作用。
MTANN是一种由线性输出多层人工神经网络模型组成的可训练、高度非线性滤波器。为增强结节并抑制血管,我们使用10个结节图像和10个非结节图像作为MTANN的训练病例。MTANN通过从训练病例中选取大量输入子区域以及教学图像中相应像素进行训练,教学图像中结节部分包含高斯分布,非结节部分为零。我们用从训练病例中选取的不同数量(1、9和361)的训练样本(子区域与教学像素对)训练了三个MTANN。为研究训练后的MTANN的基本特征,我们将其应用于包含不同对比度的各种大小的模型结节(球体)和不同方向的各种大小的模型血管(圆柱体)的模拟CT图像。此外,我们将训练后的MTANN应用于包含59个结节和1726个非结节的非训练实际临床病例。
在使用少量(1个和9个)子区域训练的MTANN对模拟CT图像生成的输出图像中,模型血管清晰可见且未被去除;因此,MTANN未得到正确训练。然而,在使用大量子区域训练的MTANN的输出图像中,不同对比度的各种大小的模型结节以浅色结节分布呈现,而不同方向的各种大小的模型血管则呈深色,因此几乎被去除。这一结果表明,MTANN能够从极少量的实际结节和非结节病例中学习到结节(类球体物体)与血管(类圆柱体物体)之间的区别。在非训练临床病例中,MTANN能够在CT图像中区分实际结节与实际血管。对于59个实际结节和1726个非结节,随着每个病例中训练样本(子区域)数量的减少,MTANN的性能下降。
在CT图像中区分结节与非结节(血管)时,MTANN可以用极少量的训练病例(10个结节和10个非结节)进行训练。通过扫描训练病例以生成大量训练样本(输入子区域和教学像素)进行大规模训练,将有助于提高MTANN的泛化能力。