Optimizing automated white matter hyperintensity segmentation in individuals with stroke.

Frontiers in neuroimaging Pub Date : 2023-03-09 eCollection Date: 2023-01-01 DOI:10.3389/fnimg.2023.1099301
Jennifer K Ferris, Bethany P Lo, Mohamed Salah Khlif, Amy Brodtmann, Lara A Boyd, Sook-Lei Liew
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Abstract

White matter hyperintensities (WMHs) are a risk factor for stroke. Consequently, many individuals who suffer a stroke have comorbid WMHs. The impact of WMHs on stroke recovery is an active area of research. Automated WMH segmentation methods are often employed as they require minimal user input and reduce risk of rater bias; however, these automated methods have not been specifically validated for use in individuals with stroke. Here, we present methodological validation of automated WMH segmentation methods in individuals with stroke. We first optimized parameters for FSL's publicly available WMH segmentation software BIANCA in two independent (multi-site) datasets. Our optimized BIANCA protocol achieved good performance within each independent dataset, when the BIANCA model was trained and tested in the same dataset or trained on mixed-sample data. BIANCA segmentation failed when generalizing a trained model to a new testing dataset. We therefore contrasted BIANCA's performance with SAMSEG, an unsupervised WMH segmentation tool available through FreeSurfer. SAMSEG does not require prior WMH masks for model training and was more robust to handling multi-site data. However, SAMSEG performance was slightly lower than BIANCA when data from a single site were tested. This manuscript will serve as a guide for the development and utilization of WMH analysis pipelines for individuals with stroke.

Abstract Image

Abstract Image

Abstract Image

优化中风患者的自动白质高密度分割。
白质增厚(WMH)是中风的一个危险因素。因此,许多中风患者都合并有 WMHs。WMHs 对中风康复的影响是一个活跃的研究领域。由于自动 WMH 切分方法只需极少的用户输入,并能降低评分者偏差的风险,因此经常被采用;然而,这些自动方法尚未经过专门用于中风患者的验证。在此,我们介绍在脑卒中患者中对 WMH 自动分割方法的方法学验证。我们首先在两个独立(多站点)数据集中优化了 FSL 公开发布的 WMH 切分软件 BIANCA 的参数。当 BIANCA 模型在同一数据集中进行训练和测试或在混合样本数据中进行训练时,我们优化的 BIANCA 方案在每个独立数据集中都取得了良好的性能。当将训练好的模型推广到新的测试数据集时,BIANCA 的分割就失败了。因此,我们将 BIANCA 的性能与 FreeSurfer 提供的无监督 WMH分割工具 SAMSEG 进行了对比。SAMSEG 在模型训练时不需要事先获得 WMH 掩膜,而且在处理多站点数据时更加稳健。不过,在测试单个部位的数据时,SAMSEG 的性能略低于 BIANCA。本手稿将作为开发和使用脑卒中患者 WMH 分析管道的指南。
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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