用于脑外伤特征描述的手动病灶分割。

Frontiers in neuroimaging Pub Date : 2023-03-16 eCollection Date: 2023-01-01 DOI:10.3389/fnimg.2023.1068591
Alexis Bennett, Rachael Garner, Michael D Morris, Marianna La Rocca, Giuseppe Barisano, Ruskin Cua, Jordan Loon, Celina Alba, Patrick Carbone, Shawn Gao, Asenat Pantoja, Azrin Khan, Noor Nouaili, Paul Vespa, Arthur W Toga, Dominique Duncan
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摘要

创伤性脑损伤(TBI)通常会导致不同程度的病变,这些病变可以通过磁共振成像(MRI)等各种神经成像技术观察到。然而,不同患者的损伤负荷差异很大,而且结构变形往往会影响现有分析算法的可用性。因此,很难在创伤性脑损伤队列中自动、准确地分割病灶。对病变的错误标记最终会导致成像生物标志物的研究结果不准确。因此,手动分割目前被认为是黄金标准,因为与现有的自动算法相比,它能产生更准确的掩膜。这些掩膜可提供重要的病变表型数据,包括位置、体积和强度等。最近,人们一直在推动研究这些特征与创伤后癫痫(PTE)发病之间的相关性,创伤后癫痫是创伤性脑损伤的一种致残后果。抗癫痫治疗的癫痫生物信息学研究(EpiBioS4Rx)的动机之一是确定 PTE 的可靠影像生物标志物。在此,我们报告了我们对加入 EpiBioS4Rx 的中重度创伤性脑损伤患者进行人工分割的程序和重要性。通过这些方法,我们为 TBI 患者生成了一个包含 127 个经过验证的病灶分割掩码的数据集。这些基本事实可用于稳健的 PTE 生物标记分析,包括通过纳入病变组织标签优化多模态 MRI 分析。此外,我们的方案还允许对细化过程进行分析。这项工作中报告的方法虽然繁琐,但对于创建可靠的数据以有效训练未来基于机器学习的 TBI 患者病灶分割方法以及后续的 PTE 分析非常必要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Manual lesion segmentations for traumatic brain injury characterization.

Traumatic brain injury (TBI) often results in heterogenous lesions that can be visualized through various neuroimaging techniques, such as magnetic resonance imaging (MRI). However, injury burden varies greatly between patients and structural deformations often impact usability of available analytic algorithms. Therefore, it is difficult to segment lesions automatically and accurately in TBI cohorts. Mislabeled lesions will ultimately lead to inaccurate findings regarding imaging biomarkers. Therefore, manual segmentation is currently considered the gold standard as this produces more accurate masks than existing automated algorithms. These masks can provide important lesion phenotype data including location, volume, and intensity, among others. There has been a recent push to investigate the correlation between these characteristics and the onset of post traumatic epilepsy (PTE), a disabling consequence of TBI. One motivation of the Epilepsy Bioinformatics Study for Antiepileptogenic Therapy (EpiBioS4Rx) is to identify reliable imaging biomarkers of PTE. Here, we report the protocol and importance of our manual segmentation process in patients with moderate-severe TBI enrolled in EpiBioS4Rx. Through these methods, we have generated a dataset of 127 validated lesion segmentation masks for TBI patients. These ground-truths can be used for robust PTE biomarker analyses, including optimization of multimodal MRI analysis via inclusion of lesioned tissue labels. Moreover, our protocol allows for analysis of the refinement process. Though tedious, the methods reported in this work are necessary to create reliable data for effective training of future machine-learning based lesion segmentation methods in TBI patients and subsequent PTE analyses.

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