Brain extraction is a critical preprocessing step in almost every neuroimaging study, enabling accurate segmentation and analysis of Magnetic Resonance Imaging (MRI) data. FSL's Brain Extraction Tool (BET), although considered the current gold standard, presents limitations such as over-extraction, which can be particularly problematic in brains with lesions affecting the outer regions, inaccurate differentiation between brain tissue and surrounding meninges, and susceptibility to image quality issues. Recent advances in computer vision research have led to the development of the Segment Anything Model (SAM) by Meta AI, which has demonstrated remarkable potential across a wide range of applications. In this paper, we present a comparative analysis of brain extraction techniques using BET and SAM on a variety of brain scans with varying image qualities, MRI sequences, and brain lesions affecting different brain regions. We find that SAM outperforms BET based on several metrics, particularly in cases where image quality is compromised by signal inhomogeneities, non-isotropic voxel resolutions, or the presence of brain lesions that are located near or involve the outer regions of the brain and the meninges. These results suggest that SAM has the potential to emerge as a more accurate and precise tool for a broad range of brain extraction applications.
翻译:脑部提取是几乎所有神经影像研究的关键预处理步骤,可以精确地分割和分析磁共振成像(MRI)数据。虽然FSL脑部提取工具(BET)被认为是当前的黄金标准,但存在一些限制,比如超提取,在影响外部区域的病变大脑中可能特别有问题,无法准确区分脑组织和周围脑膜,以及易受图像质量问题的影响。最近计算机视觉研究的先进成果导致了Meta AI的Segment Anything Model(SAM)的开发,它在广泛的应用中展示出了显著的潜力。在本文中,我们针对多种脑扫描(具有不同的图像质量、MRI序列以及影响不同脑区域的脑病变)使用BET和SAM方法进行脑部提取技术的比较分析。我们发现,SAM在多个指标上表现优于BET,尤其是在图像质量受信号不均匀性、非等向像素分辨率或附近或涉及脑外部区域和脑膜的脑病变的情况下。这些结果表明,SAM有潜力成为广泛脑部提取应用的更准确和精确的工具。