Segmentation of Perivascular Spaces Using Vascular Features and Structured Random Forest from 7T MR Image.

Jun Zhang, Yaozong Gao, Sang Hyun Park, Xiaopeng Zong, Weili Lin, Dinggang Shen
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引用次数: 12

Abstract

Quantitative analysis of perivascular spaces (PVSs) is important to reveal the correlations between cerebrovascular lesions and neurodegenerative diseases. In this study, we propose a learning-based segmentation framework to extract the PVSs from high-resolution 7T MR images. Specifically, we integrate three types of vascular filter responses into a structured random forest for classifying voxels into PVS and background. In addition, we also propose a novel entropy-based sampling strategy to extract informative samples in the background for training the classification model. Since various vascular features can be extracted by the three vascular filters, even thin and low-contrast structures can be effectively extracted from the noisy background. Moreover, continuous and smooth segmentation results can be obtained by utilizing the patch-based structured labels. The segmentation performance is evaluated on 19 subjects with 7T MR images, and the experimental results demonstrate that the joint use of entropy-based sampling strategy, vascular features and structured learning improves the segmentation accuracy, with the Dice similarity coefficient reaching 66 %.

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基于血管特征和结构化随机森林的7T MR图像血管周围空间分割。
定量分析血管周围间隙对揭示脑血管病变与神经退行性疾病的相关性具有重要意义。在本研究中,我们提出了一种基于学习的分割框架,用于从高分辨率7T MR图像中提取PVSs。具体来说,我们将三种类型的血管过滤器响应整合到一个结构化随机森林中,用于将体素分类为pv和背景。此外,我们还提出了一种新的基于熵的采样策略,在背景中提取信息样本用于训练分类模型。由于三种血管滤波器可以提取各种血管特征,因此可以有效地从噪声背景中提取薄的低对比度结构。此外,利用基于patch的结构化标签可以获得连续平滑的分割结果。实验结果表明,基于熵的采样策略、血管特征和结构化学习的联合使用提高了分割精度,Dice相似系数达到66%。
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