Huang Yu, Parra Lucas C
Department of Biomedical Engineering, City College of the City University of New York, New York, NY, USA.
PLoS One. 2015 May 18;10(5):e0125477. doi: 10.1371/journal.pone.0125477. eCollection 2015.
Individualized current-flow models are needed for precise targeting of brain structures using transcranial electrical or magnetic stimulation (TES/TMS). The same is true for current-source reconstruction in electroencephalography and magnetoencephalography (EEG/MEG). The first step in generating such models is to obtain an accurate segmentation of individual head anatomy, including not only brain but also cerebrospinal fluid (CSF), skull and soft tissues, with a field of view (FOV) that covers the whole head. Currently available automated segmentation tools only provide results for brain tissues, have a limited FOV, and do not guarantee continuity and smoothness of tissues, which is crucially important for accurate current-flow estimates. Here we present a tool that addresses these needs. It is based on a rigorous Bayesian inference framework that combines image intensity model, anatomical prior (atlas) and morphological constraints using Markov random fields (MRF). The method is evaluated on 20 simulated and 8 real head volumes acquired with magnetic resonance imaging (MRI) at 1 mm3 resolution. We find improved surface smoothness and continuity as compared to the segmentation algorithms currently implemented in Statistical Parametric Mapping (SPM). With this tool, accurate and morphologically correct modeling of the whole-head anatomy for individual subjects may now be feasible on a routine basis. Code and data are fully integrated into SPM software tool and are made publicly available. In addition, a review on the MRI segmentation using atlas and the MRF over the last 20 years is also provided, with the general mathematical framework clearly derived.
使用经颅电刺激或磁刺激(TES/TMS)精确靶向脑结构需要个体化电流模型。脑电图和脑磁图(EEG/MEG)中的电流源重建亦是如此。生成此类模型的第一步是获得个体头部解剖结构的精确分割,不仅包括脑,还包括脑脊液(CSF)、颅骨和软组织,且视野(FOV)要覆盖整个头部。目前可用的自动分割工具仅能提供脑组织的分割结果,视野有限,且不能保证组织的连续性和平滑性,而这对于准确估计电流至关重要。在此,我们展示一种能满足这些需求的工具。它基于一个严格的贝叶斯推理框架,该框架使用马尔可夫随机场(MRF)将图像强度模型、解剖学先验(图谱)和形态学约束相结合。该方法在20个模拟的和8个通过磁共振成像(MRI)以1mm³分辨率获取的真实头部体积数据上进行了评估。与目前在统计参数映射(SPM)中实现的分割算法相比,我们发现表面平滑度和连续性得到了改善。借助此工具,现在可以在常规基础上为个体受试者实现准确且形态学正确的全脑解剖结构建模。代码和数据已完全集成到SPM软件工具中并公开提供。此外,还提供了一篇关于过去20年使用图谱和MRF进行MRI分割的综述,并清晰推导了通用数学框架。