Somasundaram K, Kalavathi P
Department of Computer Science and Applications, Gandhigram Rural Institute-Deemed University, Dindigul, Tamil Nadu, India.
J Comput Assist Tomogr. 2013 May-Jun;37(3):353-68. doi: 10.1097/RCT.0b013e3182888256.
The high-resolution magnetic resonance brain images often contain some nonbrain tissues (ie, skin, fat, muscle, neck, eye balls, etc) compared with the functional images such as positron emission tomography, single-photon emission computed tomography, and functional magnetic resonance imaging (MRI) scans, which usually contain few nonbrain tissues. Automatic segmentation of brain tissues from MRI scans remains a challenging task due to the variation in shape and size, use of different pulse sequences, overlapping signal intensities and imaging artifacts. This article presents a contour-based automatic brain segmentation method to segment the brain regions from T1-, T2-, and proton density-weighted MRI of human head scans. The proposed method consists of 2 stages. In stage 1, the brain regions in the middle slice is extracted. Many of the existing methods failed to extract brain regions in the lower and upper slices of the brain volume, where the brain appears in more than 1 connected region. To overcome this problem, in the proposed method, a landmark circle is drawn at the center of the extracted brain region of a middle slice and is likely to pass through all the brain regions in the remaining lower and upper slices irrespective of whether the brain is composed of 1 or more connected components. In stage 2, the brain regions in the remaining slices are extracted with reference to the landmark circle obtained in stage 1. The proposed method is robust to the variability of brain anatomy, image orientation, and image type, and it extracts the brain regions accurately in T1-, T2-, and proton density-weighted normal and abnormal brain images. Experimental results by applying the proposed method on 100 volumes of brain images show that the proposed method exhibits best and consistent performance than by the popular existing methods brain extraction tool, brain surface extraction, watershed algorithm, hybrid watershed algorithm, and skull stripping using graph cuts.
与正电子发射断层扫描、单光子发射计算机断层扫描和功能磁共振成像(MRI)扫描等功能图像相比,高分辨率脑部磁共振图像通常包含一些非脑组织(即皮肤、脂肪、肌肉、颈部、眼球等),而功能图像通常很少包含非脑组织。由于形状和大小的变化、不同脉冲序列的使用、重叠的信号强度和成像伪影,从MRI扫描中自动分割脑组织仍然是一项具有挑战性的任务。本文提出了一种基于轮廓的自动脑部分割方法,用于从人类头部扫描的T1加权、T2加权和质子密度加权MRI中分割脑区。该方法包括两个阶段。在第一阶段,提取中间切片中的脑区。许多现有方法未能提取脑体积上下切片中的脑区,在这些切片中脑呈现为多个相连区域。为了克服这个问题,在所提出的方法中,在中间切片提取的脑区中心绘制一个地标圆,该地标圆可能会穿过其余上下切片中的所有脑区,而不管脑是由一个还是多个相连组件组成。在第二阶段,参考第一阶段获得的地标圆提取其余切片中的脑区。该方法对脑解剖结构、图像方向和图像类型的变化具有鲁棒性,并且能够在T1加权、T2加权和质子密度加权的正常和异常脑图像中准确提取脑区。将该方法应用于100组脑图像的实验结果表明,与现有的流行方法如脑提取工具、脑表面提取、分水岭算法、混合分水岭算法和使用图割的颅骨剥离相比,该方法表现出最佳且一致的性能。