Huh Shin, Ketter Terence A, Sohn Kwang Hoon, Lee Chulhee
Department of Electronic Engineering, 134 Shinchon-Dong, Seodaemun-Gu, Seoul, South Korea.
Comput Biol Med. 2002 Sep;32(5):311-28. doi: 10.1016/s0010-4825(02)00023-9.
We present a fully automated cerebrum segmentation algorithm for full three-dimensional sagittal brain MR images. First, cerebrum segmentation from a midsagittal brain MR image is performed utilizing landmarks, anatomical information, and a connectivity-based threshold segmentation algorithm as previously reported. Recognizing that cerebrum in laterally adjacent slices tends to have similar size and shape, we use the cerebrum segmentation result from the midsagittal brain MR image as a mask to guide cerebrum segmentation in adjacent lateral slices in an iterative fashion. This masking operation yields a masked image (preliminary cerebrum segmentation) for the next lateral slice, which may truncate brain region(s). Truncated regions are restored by first finding end points of their boundaries, by comparing the mask image and masked image boundaries, and then applying a connectivity-based algorithm. The resulting final extracted cerebrum image for this slice is then used as a mask for the next lateral slice. The algorithm yielded satisfactory fully automated cerebrum segmentations in three-dimensional sagittal brain MR images, and had performance superior to conventional edge detection algorithms for segmentation of cerebrum from 3D sagittal brain MR images.
我们提出了一种用于完整三维矢状位脑磁共振图像的全自动大脑分割算法。首先,如先前报道的那样,利用地标、解剖学信息和基于连通性的阈值分割算法,对矢状位脑磁共振图像进行大脑分割。认识到横向相邻切片中的大脑往往具有相似的大小和形状,我们将矢状位脑磁共振图像的大脑分割结果用作掩码,以迭代方式指导相邻横向切片中的大脑分割。这种掩码操作会为下一个横向切片生成一个掩码图像(初步大脑分割),这可能会截断脑区。通过首先通过比较掩码图像和掩码后图像的边界找到截断区域边界的端点,然后应用基于连通性的算法来恢复截断区域。然后将该切片得到的最终提取的大脑图像用作下一个横向切片的掩码。该算法在三维矢状位脑磁共振图像中产生了令人满意的全自动大脑分割结果,并且在从三维矢状位脑磁共振图像中分割大脑方面,其性能优于传统的边缘检测算法。