Pang Jincheng, Driban Jeffrey B, McAlindon Timothy E, Tamez-Peña José G, Fripp Jurgen, Miller Eric L
IEEE J Biomed Health Inform. 2015 May;19(3):1153-67. doi: 10.1109/JBHI.2014.2329493. Epub 2014 Jun 30.
Active contour techniques have been widely employed for medical image segmentation. Significant effort has been focused on the use of training data to build prior statistical models applicable specifically to problems where the objects of interest are embedded in cluttered background. Usually, the training data consist of whole shapes of certain organs or structures obtained manually by clinical experts. The resulting prior models enforce segmentation accuracy uniformly over the entire structure or structures to be identified. In this paper, we consider a new coupled prior shape model which is demonstrated to provide high accuracy, specifically in the region of the interest where precision is most needed for the application of the segmentation of the femur and tibia in magnetic resonance (MR) images. Experimental results for the segmentation of MR images of human knees demonstrate that the combination of the new coupled prior shape and a directional edge force provides the improved segmentation performance. Moreover, the new approach allows for equivalent accurate identification of bone marrow lesions, a promising biomarker related to osteoarthritis, to the current state of the art but requires significantly less manual interaction.
活动轮廓技术已被广泛应用于医学图像分割。大量的工作集中在利用训练数据来构建专门适用于感兴趣对象嵌入杂乱背景的问题的先验统计模型。通常,训练数据由临床专家手动获取的某些器官或结构的完整形状组成。由此产生的先验模型在整个要识别的一个或多个结构上统一强制分割精度。在本文中,我们考虑一种新的耦合先验形状模型,该模型被证明能够提供高精度,特别是在磁共振(MR)图像中股骨和胫骨分割应用最需要精度的感兴趣区域。人体膝盖MR图像分割的实验结果表明,新的耦合先验形状和方向边缘力的组合提供了改进的分割性能。此外,新方法能够以与当前技术水平相当的精度识别骨髓病变,骨髓病变是一种与骨关节炎相关的有前景的生物标志物,但所需的人工交互显著减少。