Li Zhoubo, Yu Lifeng, Trzasko Joshua D, Lake David S, Blezek Daniel J, Fletcher Joel G, McCollough Cynthia H, Manduca Armando
Department of Physiology and Biomedical Engineering, Mayo Clinic, Rochester, Minnesota 55905.
Department of Radiology, Mayo Clinic, Rochester, Minnesota 55905.
Med Phys. 2014 Jan;41(1):011908. doi: 10.1118/1.4851635.
To develop and evaluate an image-domain noise reduction method based on a modified nonlocal means (NLM) algorithm that is adaptive to local noise level of CT images and to implement this method in a time frame consistent with clinical workflow.
A computationally efficient technique for local noise estimation directly from CT images was developed. A forward projection, based on a 2D fan-beam approximation, was used to generate the projection data, with a noise model incorporating the effects of the bowtie filter and automatic exposure control. The noise propagation from projection data to images was analytically derived. The analytical noise map was validated using repeated scans of a phantom. A 3D NLM denoising algorithm was modified to adapt its denoising strength locally based on this noise map. The performance of this adaptive NLM filter was evaluated in phantom studies in terms of in-plane and cross-plane high-contrast spatial resolution, noise power spectrum (NPS), subjective low-contrast spatial resolution using the American College of Radiology (ACR) accreditation phantom, and objective low-contrast spatial resolution using a channelized Hotelling model observer (CHO). Graphical processing units (GPU) implementation of this noise map calculation and the adaptive NLM filtering were developed to meet demands of clinical workflow. Adaptive NLM was piloted on lower dose scans in clinical practice.
The local noise level estimation matches the noise distribution determined from multiple repetitive scans of a phantom, demonstrated by small variations in the ratio map between the analytical noise map and the one calculated from repeated scans. The phantom studies demonstrated that the adaptive NLM filter can reduce noise substantially without degrading the high-contrast spatial resolution, as illustrated by modulation transfer function and slice sensitivity profile results. The NPS results show that adaptive NLM denoising preserves the shape and peak frequency of the noise power spectrum better than commercial smoothing kernels, and indicate that the spatial resolution at low contrast levels is not significantly degraded. Both the subjective evaluation using the ACR phantom and the objective evaluation on a low-contrast detection task using a CHO model observer demonstrate an improvement on low-contrast performance. The GPU implementation can process and transfer 300 slice images within 5 min. On patient data, the adaptive NLM algorithm provides more effective denoising of CT data throughout a volume than standard NLM, and may allow significant lowering of radiation dose. After a two week pilot study of lower dose CT urography and CT enterography exams, both GI and GU radiology groups elected to proceed with permanent implementation of adaptive NLM in their GI and GU CT practices.
This work describes and validates a computationally efficient technique for noise map estimation directly from CT images, and an adaptive NLM filtering based on this noise map, on phantom and patient data. Both the noise map calculation and the adaptive NLM filtering can be performed in times that allow integration with clinical workflow. The adaptive NLM algorithm provides effective denoising of CT data throughout a volume, and may allow significant lowering of radiation dose.
开发并评估一种基于改进的非局部均值(NLM)算法的图像域降噪方法,该算法能适应CT图像的局部噪声水平,并在与临床工作流程一致的时间框架内实现此方法。
开发了一种直接从CT图像进行局部噪声估计的高效计算技术。基于二维扇形束近似的前向投影用于生成投影数据,其噪声模型纳入了蝴蝶结滤波器和自动曝光控制的影响。分析推导了从投影数据到图像的噪声传播。使用体模的重复扫描对分析噪声图进行验证。对三维NLM去噪算法进行修改,使其能基于此噪声图在局部调整去噪强度。在体模研究中,从平面内和跨平面高对比度空间分辨率、噪声功率谱(NPS)、使用美国放射学会(ACR)认证体模的主观低对比度空间分辨率以及使用通道化霍特林模型观察者(CHO)的客观低对比度空间分辨率等方面评估这种自适应NLM滤波器的性能。开发了此噪声图计算和自适应NLM滤波的图形处理单元(GPU)实现方式,以满足临床工作流程的需求。在临床实践中,对低剂量扫描进行了自适应NLM的试点应用。
局部噪声水平估计与通过体模多次重复扫描确定的噪声分布相匹配,这通过分析噪声图与重复扫描计算得到的噪声图之间的比率图变化较小得以证明。体模研究表明,自适应NLM滤波器可大幅降低噪声而不降低高对比度空间分辨率,调制传递函数和切片灵敏度剖面结果说明了这一点。NPS结果表明,自适应NLM去噪比商业平滑内核能更好地保留噪声功率谱的形状和峰值频率,且表明低对比度水平下的空间分辨率没有显著降低。使用ACR体模的主观评估和使用CHO模型观察者对低对比度检测任务的客观评估均显示低对比度性能有所改善。GPU实现方式可在5分钟内处理并传输300幅切片图像。在患者数据上,自适应NLM算法在整个容积内对CT数据的去噪效果比标准NLM更有效,并且可能允许显著降低辐射剂量。在对低剂量CT尿路造影和CT小肠造影检查进行为期两周的试点研究后,胃肠和泌尿生殖放射学组均选择在其胃肠和泌尿生殖CT实践中永久实施自适应NLM。
本研究描述并验证了一种直接从CT图像进行噪声图估计的高效计算技术,以及基于此噪声图的自适应NLM滤波,涵盖体模和患者数据。噪声图计算和自适应NLM滤波均可在允许与临床工作流程整合的时间内完成。自适应NLM算法在整个容积内对CT数据提供有效的去噪,并且可能允许显著降低辐射剂量。