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基于最大曲率策略的自适应区域生长法在F-FDG PET肿瘤分割中的应用

Adaptive region-growing with maximum curvature strategy for tumor segmentation in F-FDG PET.

作者信息

Tan Shan, Li Laquan, Choi Wookjin, Kang Min Kyu, D'Souza Warren D, Lu Wei

机构信息

Key Laboratory of Image Processing and Intelligent Control of Ministry of Education of China, School of Automation, Huazhong University of Science and Technology, Wuhan 430074, People's Republic of China. Department of Radiation Oncology, University of Maryland School of Medicine, Baltimore, Maryland 21201, United States of America.

出版信息

Phys Med Biol. 2017 Jul 7;62(13):5383-5402. doi: 10.1088/1361-6560/aa6e20. Epub 2017 Jun 12.

Abstract

Accurate tumor segmentation in PET is crucial in many oncology applications. We developed an adaptive region-growing (ARG) algorithm with a maximum curvature strategy (ARG_MC) for tumor segmentation in PET. The ARG_MC repeatedly applied a confidence connected region-growing algorithm with increasing relaxing factor f. The optimal relaxing factor (ORF) was then determined at the transition point on the f-volume curve, where the volume just grew from the tumor into the surrounding normal tissues. The ARG_MC along with five widely used algorithms were tested on a phantom with 6 spheres at different signal to background ratios and on two clinic datasets including 20 patients with esophageal cancer and 11 patients with non-Hodgkin lymphoma (NHL). The ARG_MC did not require any phantom calibration or any a priori knowledge of the tumor or PET scanner. The identified ORF varied with tumor types (mean ORF  =  9.61, 3.78 and 2.55 respectively for the phantom, esophageal cancer, and NHL datasets), and varied from one tumor to another. For the phantom, the ARG_MC ranked the second in segmentation accuracy with an average Dice similarity index (DSI) of 0.86, only slightly worse than Daisne's adaptive thresholding method (DSI  =  0.87), which required phantom calibration. For both the esophageal cancer dataset and the NHL dataset, the ARG_MC had the highest accuracy with an average DSI of 0.87 and 0.84, respectively. The ARG_MC was robust to parameter settings and region of interest selection, and it did not depend on scanners, imaging protocols, or tumor types. Furthermore, the ARG_MC made no assumption about the tumor size or tumor uptake distribution, making it suitable for segmenting tumors with heterogeneous FDG uptake. In conclusion, the ARG_MC was accurate, robust and easy to use, it provides a highly potential tool for PET tumor segmentation in clinic.

摘要

在许多肿瘤学应用中,正电子发射断层扫描(PET)图像中准确的肿瘤分割至关重要。我们开发了一种具有最大曲率策略的自适应区域生长(ARG)算法(ARG_MC)用于PET图像中的肿瘤分割。ARG_MC通过不断增加松弛因子f来反复应用置信连接区域生长算法。然后在f - 体积曲线上的过渡点确定最佳松弛因子(ORF),此时体积刚从肿瘤生长到周围正常组织。将ARG_MC与五种广泛使用的算法一起在具有不同信号背景比的6个球体的体模以及包括20例食管癌患者和11例非霍奇金淋巴瘤(NHL)患者的两个临床数据集上进行测试。ARG_MC不需要任何体模校准或关于肿瘤或PET扫描仪的任何先验知识。确定的ORF因肿瘤类型而异(体模、食管癌和NHL数据集的平均ORF分别为9.61、3.78和2.55),并且在不同肿瘤之间也有所不同。对于体模,ARG_MC在分割准确性方面排名第二,平均骰子相似性指数(DSI)为0.86,仅略逊于需要体模校准的戴斯内自适应阈值法(DSI = 0.87)。对于食管癌数据集和NHL数据集,ARG_MC的准确性最高,平均DSI分别为0.87和0.84。ARG_MC对参数设置和感兴趣区域选择具有鲁棒性,并且不依赖于扫描仪、成像协议或肿瘤类型。此外,ARG_MC对肿瘤大小或肿瘤摄取分布不做任何假设,适用于分割具有异质性氟代脱氧葡萄糖(FDG)摄取的肿瘤。总之,ARG_MC准确、鲁棒且易于使用,它为临床PET肿瘤分割提供了一种极具潜力的工具。

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