Faculty of Electronic Information and Electrical Engineering, Dalian University of Technology, Dalian 116024, People's Republic of China.
School of Electronic and Information Engineering, Jiujiang University, Jiujiang 332005, People's Republic of China.
Phys Med Biol. 2021 Apr 23;66(9). doi: 10.1088/1361-6560/abf201.
Automated brain structures segmentation in positron emission tomography (PET) images has been widely investigated to help brain disease diagnosis and follow-up. To relieve the burden of a manual definition of volume of interest (VOI), automated atlas-based VOI definition algorithms were developed, but these algorithms mostly adopted a global optimization strategy which may not be particularly accurate for local small structures (especially the deep brain structures). This paper presents a PET/CT-based brain VOI segmentation algorithm combining anatomical atlas, local landmarks, and dual-modality information. The method incorporates local deep brain landmarks detected by the Deep Q-Network (DQN) to constrain the atlas registration process. Dual-modality PET/CT image information is also combined to improve the registration accuracy of the extracerebral contour. We compare our algorithm with the representative brain atlas registration methods based on 86 clinical PET/CT images. The proposed algorithm obtained accurate delineation of brain VOIs with an average Dice similarity score of 0.79, an average surface distance of 0.97 mm (sub-pixel level), and a volume recovery coefficient close to 1. The main advantage of our method is that it optimizes both global-scale brain matching and local-scale small structure alignment around the key landmarks, it is fully automated and produces high-quality parcellation of the brain structures from brain PET/CT images.
正电子发射断层扫描 (PET) 图像中的自动脑结构分割已被广泛研究,以帮助进行脑疾病诊断和随访。为了减轻手动定义感兴趣区域 (VOI) 的负担,已经开发了基于自动图谱的 VOI 定义算法,但这些算法大多采用全局优化策略,对于局部小结构(尤其是深部脑结构)可能不够准确。本文提出了一种基于 PET/CT 的脑 VOI 分割算法,结合了解剖图谱、局部地标和双模态信息。该方法将由深度 Q 网络 (DQN) 检测到的局部深部脑地标纳入图谱注册过程中。还结合了双模态 PET/CT 图像信息,以提高脑外轮廓的注册精度。我们将我们的算法与基于 86 个临床 PET/CT 图像的代表性脑图谱注册方法进行了比较。所提出的算法获得了准确的脑 VOI 描绘,平均骰子相似系数为 0.79,平均表面距离为 0.97 毫米(亚像素级),体积恢复系数接近 1。该方法的主要优势在于它优化了全局尺度的脑匹配和关键地标周围的局部尺度小结构对齐,它是完全自动化的,并从脑 PET/CT 图像中产生高质量的脑结构分割。