Maitree Rapeepan, Perez-Carrillo Gloria J Guzman, Shimony Joshua S, Gach H Michael, Chundury Anupama, Roach Michael, Li H Harold, Yang Deshan
Washington University School of Medicine, Department of Radiation Oncology, St. Louis, Missouri, United States.
Washington University School of Medicine, Mallinckrodt Institute of Radiology, St. Louis, Missouri, United States.
J Med Imaging (Bellingham). 2017 Jul;4(3):034004. doi: 10.1117/1.JMI.4.3.034004. Epub 2017 Sep 1.
Low-field magnetic resonance imaging (MRI) has recently been integrated with radiation therapy systems to provide image guidance for daily cancer radiation treatments. The main benefit of the low-field strength is minimal electron return effects. The main disadvantage of low-field strength is increased image noise compared to diagnostic MRIs conducted at 1.5 T or higher. The increased image noise affects both the discernibility of soft tissues and the accuracy of further image processing tasks for both clinical and research applications, such as tumor tracking, feature analysis, image segmentation, and image registration. An innovative method, adaptive anatomical preservation optimal denoising (AAPOD), was developed for optimal image denoising, i.e., to maximally reduce noise while preserving the tissue boundaries. AAPOD employs a series of adaptive nonlocal mean (ANLM) denoising trials with increasing denoising filter strength (i.e., the block similarity filtering parameter in the ANLM algorithm), and then detects the tissue boundary losses on the differences of sequentially denoised images using a zero-crossing edge detection method. The optimal denoising filter strength per voxel is determined by identifying the denoising filter strength value at which boundary losses start to appear around the voxel. The final denoising result is generated by applying the ANLM denoising method with the optimal per-voxel denoising filter strengths. The experimental results demonstrated that AAPOD was capable of reducing noise adaptively and optimally while avoiding tissue boundary losses. AAPOD is useful for improving the quality of MRIs with low-contrast-to-noise ratios and could be applied to other medical imaging modalities, e.g., computed tomography.
低场磁共振成像(MRI)最近已与放射治疗系统集成,为日常癌症放射治疗提供图像引导。低场强的主要优点是电子回波效应最小。与在1.5T或更高场强下进行的诊断性MRI相比,低场强的主要缺点是图像噪声增加。增加的图像噪声会影响软组织的可辨别性以及临床和研究应用中进一步图像处理任务的准确性,如肿瘤跟踪、特征分析、图像分割和图像配准。一种创新方法,即自适应解剖结构保留最优去噪(AAPOD),被开发用于最优图像去噪,也就是在保留组织边界的同时最大程度地降低噪声。AAPOD采用一系列去噪滤波器强度不断增加的自适应非局部均值(ANLM)去噪试验(即ANLM算法中的块相似性滤波参数),然后使用过零边缘检测方法在顺序去噪图像的差异上检测组织边界损失。通过确定体素周围开始出现边界损失时的去噪滤波器强度值,来确定每个体素的最优去噪滤波器强度。最终的去噪结果是通过应用具有最优体素去噪滤波器强度的ANLM去噪方法生成的。实验结果表明,AAPOD能够自适应且最优地降低噪声,同时避免组织边界损失。AAPOD有助于提高低对比度噪声比的MRI质量,并且可应用于其他医学成像模态,如计算机断层扫描。