Nie Jingxin, Xue Zhong, Liu Tianming, Young Geoffrey S, Setayesh Kian, Guo Lei, Wong Stephen T C
Methodist Center for Biotechnology and Informatics, The Methodist Hospital Research Institute, Weill Cornell Medical College, USA.
Comput Med Imaging Graph. 2009 Sep;33(6):431-41. doi: 10.1016/j.compmedimag.2009.04.006. Epub 2009 May 14.
A variety of algorithms have been proposed for brain tumor segmentation from multi-channel sequences, however, most of them require isotropic or pseudo-isotropic resolution of the MR images. Although co-registration and interpolation of low-resolution sequences, such as T2-weighted images, onto the space of the high-resolution image, such as T1-weighted image, can be performed prior to the segmentation, the results are usually limited by partial volume effects due to interpolation of low-resolution images. To improve the quality of tumor segmentation in clinical applications where low-resolution sequences are commonly used together with high-resolution images, we propose the algorithm based on Spatial accuracy-weighted Hidden Markov random field and Expectation maximization (SHE) approach for both automated tumor and enhanced-tumor segmentation. SHE incorporates the spatial interpolation accuracy of low-resolution images into the optimization procedure of the Hidden Markov Random Field (HMRF) to segment tumor using multi-channel MR images with different resolutions, e.g., high-resolution T1-weighted and low-resolution T2-weighted images. In experiments, we evaluated this algorithm using a set of simulated multi-channel brain MR images with known ground-truth tissue segmentation and also applied it to a dataset of MR images obtained during clinical trials of brain tumor chemotherapy. The results show that more accurate tumor segmentation results can be obtained by comparing with conventional multi-channel segmentation algorithms.
已经提出了多种用于从多通道序列进行脑肿瘤分割的算法,然而,它们中的大多数都需要磁共振图像具有各向同性或伪各向同性分辨率。尽管可以在分割之前将低分辨率序列(如T2加权图像)配准并插值到高分辨率图像(如T1加权图像)的空间中,但由于低分辨率图像的插值,结果通常会受到部分容积效应的限制。为了在临床应用中提高肿瘤分割的质量,在这些应用中低分辨率序列通常与高分辨率图像一起使用,我们提出了基于空间精度加权隐马尔可夫随机场和期望最大化(SHE)方法的算法,用于自动肿瘤分割和增强肿瘤分割。SHE将低分辨率图像的空间插值精度纳入隐马尔可夫随机场(HMRF)的优化过程中,以使用具有不同分辨率的多通道磁共振图像(例如高分辨率T1加权图像和低分辨率T2加权图像)来分割肿瘤。在实验中,我们使用一组具有已知真实组织分割的模拟多通道脑磁共振图像对该算法进行了评估,并将其应用于脑肿瘤化疗临床试验期间获得的磁共振图像数据集。结果表明,与传统的多通道分割算法相比,可以获得更准确的肿瘤分割结果。