IEEE Trans Cybern. 2019 Jul;49(7):2618-2630. doi: 10.1109/TCYB.2018.2830977. Epub 2018 May 21.
Magnetic resonance imaging (MRI) is extensively applied in clinical practice. Segmentation of the MRI brain image is significant to the detection of brain abnormalities. However, owing to the coexistence of intensity inhomogeneity and noise, dividing the MRI brain image into different clusters precisely has become an arduous task. In this paper, an improved possibilistic fuzzy c -means (FCM) method based on a similarity measure is proposed to improve the segmentation performance for MRI brain images. By introducing the new similarity measure, the proposed method is more effective for clustering the data with nonspherical distribution. Besides that, the new similarity measure could alleviate the "cluster-size sensitivity" problem that most FCM-based methods suffer from. Simultaneously, the proposed method could preserve image details as well as suppress image noises via the use of local label information. Experiments conducted on both synthetic and clinical images show that the proposed method is very effective, providing mitigation to the cluster-size sensitivity problem, resistance to noisy images, and applicability to data with more complex distribution.
磁共振成像(MRI)在临床实践中得到了广泛应用。MRI 脑图像分割对于检测脑异常具有重要意义。然而,由于强度不均匀性和噪声的共存,精确地将 MRI 脑图像分割成不同的聚类已经成为一项艰巨的任务。在本文中,提出了一种基于相似性度量的改进可能性模糊 C-均值(FCM)方法,以提高 MRI 脑图像的分割性能。通过引入新的相似性度量,该方法对于聚类具有非球形分布的数据更加有效。此外,新的相似性度量可以减轻大多数基于 FCM 的方法所面临的“聚类大小敏感性”问题。同时,该方法可以通过利用局部标签信息来保留图像细节并抑制图像噪声。在合成和临床图像上进行的实验表明,该方法非常有效,减轻了聚类大小敏感性问题,对噪声图像具有抵抗力,并且适用于具有更复杂分布的数据。