Hua Lei, Gu Yi, Gu Xiaoqing, Xue Jing, Ni Tongguang
School of Artificial Intelligence and Computer Science, Jiangnan University, Wuxi, China.
School of Computer and Artificial Intelligence, Changzhou University, Changzhou, China.
Front Neurosci. 2021 Mar 25;15:662674. doi: 10.3389/fnins.2021.662674. eCollection 2021.
The brain magnetic resonance imaging (MRI) image segmentation method mainly refers to the division of brain tissue, which can be divided into tissue parts such as white matter (WM), gray matter (GM), and cerebrospinal fluid (CSF). The segmentation results can provide a basis for medical image registration, 3D reconstruction, and visualization. Generally, MRI images have defects such as partial volume effects, uneven grayscale, and noise. Therefore, in practical applications, the segmentation of brain MRI images has difficulty obtaining high accuracy. The fuzzy clustering algorithm establishes the expression of the uncertainty of the sample category and can describe the ambiguity brought by the partial volume effect to the brain MRI image, so it is very suitable for brain MRI image segmentation (B-MRI-IS). The classic fuzzy -means (FCM) algorithm is extremely sensitive to noise and offset fields. If the algorithm is used directly to segment the brain MRI image, the ideal segmentation result cannot be obtained. Accordingly, considering the defects of MRI medical images, this study uses an improved multiview FCM clustering algorithm (IMV-FCM) to improve the algorithm's segmentation accuracy of brain images. IMV-FCM uses a view weight adaptive learning mechanism so that each view obtains the optimal weight according to its cluster contribution. The final division result is obtained through the view ensemble method. Under the view weight adaptive learning mechanism, the coordination between various views is more flexible, and each view can be adaptively learned to achieve better clustering effects. The segmentation results of a large number of brain MRI images show that IMV-FCM has better segmentation performance and can accurately segment brain tissue. Compared with several related clustering algorithms, the IMV-FCM algorithm has better adaptability and better clustering performance.
脑磁共振成像(MRI)图像分割方法主要是指对脑组织的划分,可分为白质(WM)、灰质(GM)和脑脊液(CSF)等组织部分。分割结果可为医学图像配准、三维重建和可视化提供依据。一般来说,MRI图像存在部分容积效应、灰度不均匀和噪声等缺陷。因此,在实际应用中,脑MRI图像的分割难以获得高精度。模糊聚类算法建立了样本类别不确定性的表达式,能够描述部分容积效应给脑MRI图像带来的模糊性,因此非常适合脑MRI图像分割(B-MRI-IS)。经典的模糊均值(FCM)算法对噪声和偏移场极其敏感。如果直接使用该算法对脑MRI图像进行分割,无法获得理想的分割结果。因此,考虑到MRI医学图像的缺陷,本研究采用一种改进的多视图FCM聚类算法(IMV-FCM)来提高算法对脑图像的分割精度。IMV-FCM采用视图权重自适应学习机制,使每个视图根据其聚类贡献获得最优权重。最终的分割结果通过视图融合方法得到。在视图权重自适应学习机制下,各视图之间的协调更加灵活,每个视图都能进行自适应学习以实现更好的聚类效果。大量脑MRI图像的分割结果表明,IMV-FCM具有更好的分割性能,能够准确分割脑组织。与几种相关聚类算法相比,IMV-FCM算法具有更好的适应性和更好的聚类性能。