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磁共振脑区分割方法之间的差异:对单受试者分析的影响

Differences Between MR Brain Region Segmentation Methods: Impact on Single-Subject Analysis.

作者信息

Huizinga W, Poot D H J, Vinke E J, Wenzel F, Bron E E, Toussaint N, Ledig C, Vrooman H, Ikram M A, Niessen W J, Vernooij M W, Klein S

机构信息

Biomedical Imaging Group Rotterdam, Department of Radiology & Nuclear Medicine and Medical Informatics, Erasmus MC, Rotterdam, Netherlands.

Department of Radiology & Nuclear Medicine, Erasmus MC, Rotterdam, Netherlands.

出版信息

Front Big Data. 2021 Jul 30;4:577164. doi: 10.3389/fdata.2021.577164. eCollection 2021.

Abstract

For the segmentation of magnetic resonance brain images into anatomical regions, numerous fully automated methods have been proposed and compared to reference segmentations obtained manually. However, systematic differences might exist between the resulting segmentations, depending on the segmentation method and underlying brain atlas. This potentially results in sensitivity differences to disease and can further complicate the comparison of individual patients to normative data. In this study, we aim to answer two research questions: 1) to what extent are methods interchangeable, as long as the same method is being used for computing normative volume distributions and patient-specific volumes? and 2) can different methods be used for computing normative volume distributions and assessing patient-specific volumes? To answer these questions, we compared volumes of six brain regions calculated by five state-of-the-art segmentation methods: Erasmus MC (EMC), FreeSurfer (FS), geodesic information flows (GIF), multi-atlas label propagation with expectation-maximization (MALP-EM), and model-based brain segmentation (MBS). We applied the methods on 988 non-demented (ND) subjects and computed the correlation (PCC-v) and absolute agreement (ICC-v) on the volumes. For most regions, the PCC-v was good ( ), indicating that volume differences between methods in ND subjects are mainly due to systematic differences. The ICC-v was generally lower, especially for the smaller regions, indicating that it is essential that the same method is used to generate normative and patient data. To evaluate the impact on single-subject analysis, we also applied the methods to 42 patients with Alzheimer's disease (AD). In the case where the normative distributions and the patient-specific volumes were calculated by the same method, the patient's distance to the normative distribution was assessed with the z-score. We determined the diagnostic value of this z-score, which showed to be consistent across methods. The absolute agreement on the AD patients' z-scores was high for regions of thalamus and putamen. This is encouraging as it indicates that the studied methods are interchangeable for these regions. For regions such as the hippocampus, amygdala, caudate nucleus and accumbens, and globus pallidus, not all method combinations showed a high ICC-z. Whether two methods are indeed interchangeable should be confirmed for the specific application and dataset of interest.

摘要

为了将磁共振脑图像分割成解剖区域,人们已经提出了许多全自动方法,并与手动获得的参考分割结果进行比较。然而,根据分割方法和基础脑图谱的不同,最终的分割结果之间可能存在系统差异。这可能导致对疾病的敏感性差异,并可能进一步使个体患者与标准数据的比较变得复杂。在本研究中,我们旨在回答两个研究问题:1)只要使用相同的方法来计算标准体积分布和患者特定体积,这些方法在多大程度上可以互换?2)是否可以使用不同的方法来计算标准体积分布和评估患者特定体积?为了回答这些问题,我们比较了由五种先进的分割方法计算出的六个脑区的体积:伊拉斯姆斯医学中心(EMC)、FreeSurfer(FS)、测地线信息流(GIF)、基于期望最大化的多图谱标签传播(MALP-EM)和基于模型的脑分割(MBS)。我们将这些方法应用于988名非痴呆(ND)受试者,并计算了体积上的相关性(PCC-v)和绝对一致性(ICC-v)。对于大多数区域,PCC-v良好( ),表明ND受试者中各方法之间的体积差异主要是由于系统差异。ICC-v通常较低,尤其是对于较小的区域,这表明使用相同的方法来生成标准数据和患者数据至关重要。为了评估对单受试者分析的影响,我们还将这些方法应用于42名阿尔茨海默病(AD)患者。在通过相同方法计算标准分布和患者特定体积的情况下,使用z分数评估患者与标准分布的距离。我们确定了该z分数的诊断价值,结果表明各方法之间是一致的。丘脑和壳核区域AD患者z分数的绝对一致性较高。这令人鼓舞,因为这表明所研究的方法在这些区域是可互换的。对于海马体、杏仁核、尾状核和伏隔核以及苍白球等区域,并非所有方法组合都显示出高ICC-z。对于特定的应用和感兴趣的数据集,两种方法是否真的可互换应予以确认。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/aa6c/8552517/399366a540b9/fdata-04-577164-g001.jpg

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