a College of Biomedical Engineering , Third Military Medical University , Chongqing , China.
b State Key Laboratory of Trauma, Burns and Combined Injury, Institute of Surgery Research , Daping Hospital, Third Military Medical University , Chongqing , China.
Comput Assist Surg (Abingdon). 2017 Dec;22(sup1):200-211. doi: 10.1080/24699322.2017.1389398. Epub 2017 Oct 26.
Image segmentation is a preliminary and fundamental step in computer aided magnetic resonance imaging (MRI) images analysis. But the performance of most current image segmentation methods is easily depreciated by noise in MRI images. A precise and anti-noise segmentation of MRI images is desired in modern medical image diagnosis.
This paper presents a segmentation of MRI images which combines fuzzy clustering and Markov random field (MRF). In order to utilize gray level information sufficiently and alleviate noise disturbance, fuzzy clustering is carried out on the original image and the coarse scale image of multi-scale decomposition. The spatial constraints between neighboring pixels are modeled by a defined potential function in the MRF to reduce the effect of noise and increase the integrity of segmented regions. Spatial constraints and the gray level information refined by Fuzzy C-Means (FCM) algorithm are integrated by maximum a posteriori Markov random field (MAP-MRF). In the proposed method, the fuzzy clustering membership obtained from the original image and the coarse scale image is integrated into the single-site clique potential functions by MAP-MRF. The defined potential functions and the distance weight are introduced to model the neighborhood constraint with MRF.
The experiments are carried out on noised synthetic images, simulated brain MR images and real MR images. The experimental results show that the proposed method has strong robustness and satisfying performance. Meanwhile the method is compared with FCM, FGFCM and FLICM algorithms visually and statistically in the experiments. In the comparison, the proposed method has achieved the best results. In the statistical comparison, the proposed method has an average similarity index of 36.8%, 33.7%, 2.75% increase against FCM, FGFCM and FLICM.
This paper proposes a MRI segmentation method combining fuzzy clustering and Markov random field. The method is tested in the noised image databases and comparison experiments, which shows that it is a precise and robust MRI segmentation method.
图像分割是计算机辅助磁共振成像(MRI)图像分析的初步和基础步骤。但大多数当前的图像分割方法的性能很容易受到 MRI 图像中的噪声的影响。在现代医学图像诊断中,期望对 MRI 图像进行精确和抗噪的分割。
本文提出了一种将模糊聚类和马尔可夫随机场(MRF)相结合的 MRI 图像分割方法。为了充分利用灰度信息并减轻噪声干扰,在原始图像和多尺度分解的粗尺度图像上进行模糊聚类。在 MRF 中,通过定义势函数来对相邻像素之间的空间约束进行建模,以减小噪声的影响并增加分割区域的完整性。通过最大后验马尔可夫随机场(MAP-MRF)将空间约束和由 Fuzzy C-Means(FCM)算法细化的灰度信息进行集成。在提出的方法中,从原始图像和粗尺度图像获得的模糊聚类隶属度通过 MAP-MRF 集成到单站点团块势函数中。通过 MRF 引入定义的势函数和距离权重来对邻域约束进行建模。
在噪声合成图像、模拟脑 MRI 图像和真实 MRI 图像上进行了实验。实验结果表明,该方法具有较强的鲁棒性和令人满意的性能。同时,在实验中,该方法与 FCM、FGFCM 和 FLICM 算法进行了可视化和统计比较。在比较中,该方法取得了最佳结果。在统计比较中,与 FCM、FGFCM 和 FLICM 相比,该方法的平均相似指数分别提高了 36.8%、33.7%和 2.75%。
本文提出了一种将模糊聚类和马尔可夫随机场相结合的 MRI 图像分割方法。该方法在噪声图像数据库和比较实验中进行了测试,结果表明它是一种精确且稳健的 MRI 分割方法。