Xie Long, Wisse Laura E M, Das Sandhitsu R, Wang Hongzhi, Wolk David A, Manjón Jose V, Yushkevich Paul A
Penn Image Computing and Science Laboratory (PICSL), Department of Radiology, University of Pennsylvania, Philadelphia, USA.
Department of Neurology, University of Pennsylvania, Philadelphia, USA.
Med Image Comput Comput Assist Interv. 2016 Oct;9901:564-571. doi: 10.1007/978-3-319-46723-8_65. Epub 2016 Oct 2.
Quantification of medial temporal lobe (MTL) cortices, including entorhinal cortex (ERC) and perirhinal cortex (PRC), from MRI is desirable for studying the human memory system as well as in early diagnosis and monitoring of Alzheimer's disease. However, ERC and PRC are commonly over-segmented in T1-weighted (T1w) MRI because of the adjacent meninges that have similar intensity to gray matter in T1 contrast. This introduces errors in the quantification and could potentially confound imaging studies of ERC/PRC. In this paper, we propose to segment MTL cortices along with the adjacent meninges in T1w MRI using an established multi-atlas segmentation framework together with super-resolution technique. Experimental results comparing the proposed pipeline with existing pipelines support the notion that a large portion of meninges is segmented as gray matter by existing algorithms but not by our algorithm. Cross-validation experiments demonstrate promising segmentation accuracy. Further, agreement between the volume and thickness measures from the proposed pipeline and those from the manual segmentations increase dramatically as a result of accounting for the confound of meninges. Evaluated in the context of group discrimination between patients with amnestic mild cognitive impairment and normal controls, the proposed pipeline generates more biologically plausible results and improves the statistical power in discriminating groups in absolute terms comparing to other techniques using T1w MRI. Although the performance of the proposed pipeline is inferior to that using T2-weighted MRI, which is optimized to image MTL sub-structures, the proposed pipeline could still provide important utilities in analyzing many existing large datasets that only have T1w MRI available.
从磁共振成像(MRI)中对内侧颞叶(MTL)皮质进行定量分析,包括内嗅皮质(ERC)和嗅周皮质(PRC),对于研究人类记忆系统以及阿尔茨海默病的早期诊断和监测都很有必要。然而,在T1加权(T1w)MRI中,由于相邻脑膜在T1对比度下与灰质强度相似,ERC和PRC通常会被过度分割。这会在定量分析中引入误差,并可能混淆ERC/PRC的成像研究。在本文中,我们建议使用已建立的多图谱分割框架以及超分辨率技术,在T1w MRI中对MTL皮质及其相邻脑膜进行分割。将所提出的流程与现有流程进行比较的实验结果支持了这样一种观点,即现有算法会将大部分脑膜分割为灰质,而我们的算法不会。交叉验证实验证明了有前景的分割精度。此外,由于考虑了脑膜的混淆因素,所提出流程的体积和厚度测量值与手动分割测量值之间的一致性显著提高。在遗忘型轻度认知障碍患者与正常对照之间的组间区分背景下进行评估时,与使用T1w MRI的其他技术相比,所提出的流程产生了更符合生物学原理的结果,并在绝对意义上提高了区分组别的统计能力。尽管所提出流程的性能不如使用T2加权MRI的性能,后者经过优化以成像MTL子结构,但所提出的流程在分析许多仅具有T1w MRI的现有大型数据集中仍可提供重要的实用价值。