Kachelriess M, Watzke O, Kalender W A
Institute of Medical Physics, University of Erlangen-Nürnberg, Germany.
Med Phys. 2001 Apr;28(4):475-90. doi: 10.1118/1.1358303.
In modern computed tomography (CT) there is a strong desire to reduce patient dose and/or to improve image quality by increasing spatial resolution and decreasing image noise. These are conflicting demands since increasing resolution at a constant noise level or decreasing noise at a constant resolution level implies a higher demand on x-ray power and an increase of patient dose. X-ray tube power is limited due to technical reasons. We therefore developed a generalized multi-dimensional adaptive filtering approach that applies nonlinear filters in up to three dimensions in the raw data domain. This new method differs from approaches in the literature since our nonlinear filters are applied not only in the detector row direction but also in the view and in the z-direction. This true three-dimensional filtering improves the quantum statistics of a measured projection value proportional to the third power of the filter size. Resolution tradeoffs are shared among these three dimensions and thus are considerably smaller as compared to one-dimensional smoothing approaches. Patient data of spiral and sequential single- and multi-slice CT scans as well as simulated spiral cone-beam data were processed to evaluate these new approaches. Image quality was assessed by evaluation of difference images, by measuring the image noise and the noise reduction, and by calculating the image resolution using point spread functions. The use of generalized adaptive filters helps to reduce image noise or, alternatively, patient dose. Image noise structures, typically along the direction of the highest attenuation, are effectively reduced. Noise reduction values of typically 30%-60% can be achieved in noncylindrical body regions like the shoulder. The loss in image resolution remains below 5% for all cases. In addition, the new method has a great potential to reduce metal artifacts, e.g., in the hip region.
在现代计算机断层扫描(CT)中,人们强烈希望通过提高空间分辨率和降低图像噪声来减少患者剂量和/或提高图像质量。这些要求相互矛盾,因为在恒定噪声水平下提高分辨率或在恒定分辨率水平下降低噪声意味着对X射线功率有更高要求,从而增加患者剂量。由于技术原因,X射线管功率有限。因此,我们开发了一种广义多维自适应滤波方法,该方法在原始数据域中应用高达三维的非线性滤波器。这种新方法与文献中的方法不同,因为我们的非线性滤波器不仅应用于探测器排方向,还应用于视图方向和z方向。这种真正的三维滤波改善了测量投影值的量子统计,与滤波器尺寸的三次方成正比。分辨率的权衡在这三个维度之间共享,因此与一维平滑方法相比要小得多。对螺旋和序列单排及多排CT扫描的患者数据以及模拟螺旋锥束数据进行了处理,以评估这些新方法。通过评估差异图像、测量图像噪声和降噪效果以及使用点扩散函数计算图像分辨率来评估图像质量。使用广义自适应滤波器有助于降低图像噪声,或者减少患者剂量。通常沿最高衰减方向的图像噪声结构得到有效降低。在肩部等非圆柱形身体区域,降噪值通常可达30% - 60%。在所有情况下,图像分辨率的损失均保持在5%以下。此外,新方法在减少金属伪影方面具有很大潜力,例如在髋部区域。