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首页> 外文期刊>Medical image analysis >Robust whole-brain segmentation: Application to traumatic brain injury
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Robust whole-brain segmentation: Application to traumatic brain injury

机译:健壮的全脑分割:在脑外伤中的应用

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We propose a framework for the robust and fully-automatic segmentation of magnetic resonance (MR) brain images called "Multi-Atlas-Label Propagation with Expectation-Maximisation based refinement" (MALP-EM). The presented approach is based on a robust registration approach (MAPER), highly performant label fusion (joint label fusion) and intensity-based label refinement using EM. We further adapt this framework to be applicable for the segmentation of brain images with gross changes in anatomy. We propose to account for consistent registration errors by relaxing anatomical priors obtained by multi-atlas propagation and a weighting scheme to locally combine anatomical atlas priors and intensity-refined posterior probabilities. The method is evaluated on a benchmark dataset used in a recent MICCAI segmentation challenge. In this context we show that MALP-EM is competitive for the segmentation of MR brain scans of healthy adults when compared to state-of-the-art automatic labelling techniques. To demonstrate the versatility of the proposed approach, we employed MALP-EM to segment 125 MR brain images into 134 regions from subjects who had sustained traumatic brain injury (TBI). We employ a protocol to assess segmentation quality if no manual reference labels are available. Based on this protocol, three independent, blinded raters confirmed on 13 MR brain scans with pathology that MALP-EM is superior to established label fusion techniques. We visually confirm the robustness of our segmentation approach on the full cohort and investigate the potential of derived symmetry-based imaging biomarkers that correlate with and predict clinically relevant variables in TBI such as the Marshall Classification (MC) or Glasgow Outcome Score (GOS). Specifically, we show that we are able to stratify TBI patients with favourable outcomes from non-favourable outcomes with 64.7% accuracy using acute-phase MR images and 66.8% accuracy using follow-up MR images. Furthermore, we are able to differentiate subjects with the presence of a mass lesion or midline shift from those with diffuse brain injury with 76.0% accuracy. The thalamus, putamen, pallidum and hippocampus are particularly affected. Their involvement predicts TBI disease progression. (C) 2014 The Authors. Published by Elsevier B.V.
机译:我们为磁共振(MR)脑图像的鲁棒和全自动分割提出了一个框架,该框架称为“基于期望最大化的精细化多图集标签传播”(MALP-EM)。提出的方法基于稳健的配准方法(MAPER),高性能的标签融合(联合标签融合)和使用EM的基于强度的标签细化。我们进一步调整了该框架,以适用于解剖结构发生重大变化的脑图像分割。我们提议通过放宽通过多图集传播获得的解剖先验和加权方案来解决一致的配准错误,该加权方案将解剖图谱先验和强度精确的后验概率局部组合。在最近的MICCAI细分挑战中使用的基准数据集上对该方法进行了评估。在这种情况下,我们表明,与最新的自动标记技术相比,MALP-EM在健康成年人的MR脑扫描分割方面具有竞争力。为了证明所提出方法的多功能性,我们使用MALP-EM将来自遭受持续性脑损伤(TBI)的受试者的125 MR脑图像分割为134个区域。如果没有可用的手动参考标签,我们将采用一种协议来评估细分质量。基于此协议,在13个MR脑部扫描的病理学检查中证实了三个独立的盲目评分者,MALP-EM优于已建立的标签融合技术。我们在视觉上证实了我们的细分方法在整个队列中的鲁棒性,并研究了与基于TBI的临床对称变量(例如马歇尔分类(MC)或格拉斯哥结果评分(GOS))相关并预测其临床对称性的基于对称性的成像生物标记物的潜力。具体而言,我们表明我们能够将TBI患者的不良结果与不良结果进行分层,其中使用急性期MR图像的准确性为64.7%,使用后续MR图像的准确性为66.8%。此外,我们能够以76.0%的准确度将存在肿块或中线移位的受试者与弥散性脑损伤的受试者区分开。丘脑,壳核,苍白球和海马特别受影响。他们的参与预示着TBI疾病的进展。 (C)2014作者。由Elsevier B.V.发布

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