Ji Zexuan, Xia Yong, Zheng Yuhui
School of Computer Science and Engineering, Nanjing University of Science and Technology, Nanjing, 210094, China.
Shaanxi Key Lab of Speech and Image Information Processing (SAIIP), School of Computer Science, Northwestern Polytechnical University, Xi'an, 710072, China; Centre for Multidisciplinary Convergence Computing (CMCC), School of Computer Science, Northwestern Polytechnical University, Xi'an, 710072, China.
Comput Methods Programs Biomed. 2017 Nov;151:123-138. doi: 10.1016/j.cmpb.2017.08.017. Epub 2017 Aug 24.
Accurate segmentation of brain tissues from magnetic resonance (MR) images based on the unsupervised statistical models such as Gaussian mixture model (GMM) has been widely studied during last decades. However, most GMM based segmentation methods suffer from limited accuracy due to the influences of noise and intensity inhomogeneity in brain MR images. To further improve the accuracy for brain MR image segmentation, this paper presents a Robust Generative Asymmetric GMM (RGAGMM) for simultaneous brain MR image segmentation and intensity inhomogeneity correction.
First, we develop an asymmetric distribution to fit the data shapes, and thus construct a spatial constrained asymmetric model. Then, we incorporate two pseudo-likelihood quantities and bias field estimation into the model's log-likelihood, aiming to exploit the neighboring priors of within-cluster and between-cluster and to alleviate the impact of intensity inhomogeneity, respectively. Finally, an expectation maximization algorithm is derived to iteratively maximize the approximation of the data log-likelihood function to overcome the intensity inhomogeneity in the image and segment the brain MR images simultaneously.
To demonstrate the performances of the proposed algorithm, we first applied the proposed algorithm to a synthetic brain MR image to show the intermediate illustrations and the estimated distribution of the proposed algorithm. The next group of experiments is carried out in clinical 3T-weighted brain MR images which contain quite serious intensity inhomogeneity and noise. Then we quantitatively compare our algorithm to state-of-the-art segmentation approaches by using Dice coefficient (DC) on benchmark images obtained from IBSR and BrainWeb with different level of noise and intensity inhomogeneity. The comparison results on various brain MR images demonstrate the superior performances of the proposed algorithm in dealing with the noise and intensity inhomogeneity.
In this paper, the RGAGMM algorithm is proposed which can simply and efficiently incorporate spatial constraints into an EM framework to simultaneously segment brain MR images and estimate the intensity inhomogeneity. The proposed algorithm is flexible to fit the data shapes, and can simultaneously overcome the influence of noise and intensity inhomogeneity, and hence is capable of improving over 5% segmentation accuracy comparing with several state-of-the-art algorithms.
在过去几十年中,基于高斯混合模型(GMM)等无监督统计模型从磁共振(MR)图像中准确分割脑组织的研究已广泛开展。然而,由于脑MR图像中噪声和强度不均匀性的影响,大多数基于GMM的分割方法精度有限。为进一步提高脑MR图像分割的准确性,本文提出一种鲁棒生成非对称GMM(RGAGMM),用于同时进行脑MR图像分割和强度不均匀性校正。
首先,我们开发一种非对称分布来拟合数据形状,从而构建一个空间约束非对称模型。然后,我们将两个伪似然量和偏差场估计纳入模型的对数似然中,旨在分别利用聚类内和聚类间的邻域先验信息,并减轻强度不均匀性的影响。最后,推导一种期望最大化算法来迭代最大化数据对数似然函数的近似值,以克服图像中的强度不均匀性并同时分割脑MR图像。
为证明所提算法的性能,我们首先将所提算法应用于合成脑MR图像,以展示中间插图和所提算法的估计分布。接下来的一组实验在临床3T加权脑MR图像上进行,这些图像包含相当严重的强度不均匀性和噪声。然后,我们在从IBSR和BrainWeb获得的具有不同噪声和强度不均匀性水平的基准图像上,使用骰子系数(DC)将我们的算法与当前最先进的分割方法进行定量比较。在各种脑MR图像上的比较结果证明了所提算法在处理噪声和强度不均匀性方面的优越性能。
本文提出了RGAGMM算法,该算法可以简单有效地将空间约束纳入EM框架,以同时分割脑MR图像并估计强度不均匀性。所提算法能够灵活地拟合数据形状,并且可以同时克服噪声和强度不均匀性的影响,因此与几种当前最先进的算法相比,能够提高超过5%的分割精度。