Australian e-Health Research Centre, CSIRO, Brisbane, QLD, Australia.
IEEE Trans Med Imaging. 2012 Oct;31(10):1955-64. doi: 10.1109/TMI.2012.2211377. Epub 2012 Aug 2.
Accurate localization of the prostate and its surrounding tissue is essential in the treatment of prostate cancer. This paper presents a novel approach to fully automatically segment the prostate, including its seminal vesicles, within a few minutes of a magnetic resonance (MR) scan acquired without an endorectal coil. Such MR images are important in external beam radiation therapy, where using an endorectal coil is highly undesirable. The segmentation is obtained using a deformable model that is trained on-the-fly so that it is specific to the patient's scan. This case specific deformable model consists of a patient specific initialized triangulated surface and image feature model that are trained during its initialization. The image feature model is used to deform the initialized surface by template matching image features (via normalized cross-correlation) to the features of the scan. The resulting deformations are regularized over the surface via well established simple surface smoothing algorithms, which is then made anatomically valid via an optimized shape model. Mean and median Dice's similarity coefficients (DSCs) of 0.85 and 0.87 were achieved when segmenting 3T MR clinical scans of 50 patients. The median DSC result was equal to the inter-rater DSC and had a mean absolute surface error of 1.85 mm. The approach is showed to perform well near the apex and seminal vesicles of the prostate.
准确地定位前列腺及其周围组织对于前列腺癌的治疗至关重要。本文提出了一种新的方法,可以在几分钟内自动分割前列腺,包括其精囊,而无需使用直肠内线圈获取磁共振(MR)扫描。这种 MR 图像在外照射放射治疗中非常重要,因为使用直肠内线圈是非常不可取的。分割是使用可变形模型完成的,该模型可以在飞行中进行训练,因此针对患者的扫描具有特异性。这种特定于病例的可变形模型由患者特定的初始三角网格表面和图像特征模型组成,在其初始化过程中进行训练。图像特征模型用于通过模板匹配图像特征(通过归一化互相关)将初始化表面变形为扫描的特征。通过成熟的简单曲面平滑算法对曲面进行正则化,然后通过优化的形状模型使曲面具有解剖学上的有效性。对 50 名患者的 3T MR 临床扫描进行分割时,平均和中位数的 Dice 相似系数(DSC)分别达到 0.85 和 0.87。中位数 DSC 结果与观察者间 DSC 相等,平均绝对表面误差为 1.85 毫米。该方法在靠近前列腺的顶点和精囊处表现良好。