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首页> 外文期刊>Academic radiology >Automatic model-guided segmentation of the human brain ventricular system from CT images.
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Automatic model-guided segmentation of the human brain ventricular system from CT images.

机译:从CT图像对人脑心室系统进行模型指导的自动分割。

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摘要

RATIONALE AND OBJECTIVES: Accurate segmentation of the brain ventricular system on computed tomographic (CT) imaging is useful in neurodiagnosis and neurosurgery. Manual segmentation is time consuming, usually not reproducible, and subjective. Because of image noise, low contrast between soft tissues, large interslice distance, large shape, and size variations of the ventricular system, no automatic method is presently available. The authors propose a model-guided method for the automated segmentation of the ventricular system. MATERIALS AND METHODS: Fifty CT scans of patients with strokes at different sites were collected for this study. Given a brain CT image, its ventricular system was segmented in five steps: (1) a predefined volumetric model was registered (or deformed) onto the image; (2) according to the deformed model, eight regions of interest were automatically specified; (3) the intensity threshold of cerebrospinal fluid was calculated in a region of interest and used to segment all regions of cerebrospinal fluid from the entire brain volume; (4) each ventricle was segmented in its specified region of interest; and (5) intraventricular calcification regions were identified to refine the ventricular segmentation. RESULTS: Compared to ground truths provided by experts, the segmentation results of this method achieved an average overlap ratio of 85% for the entire ventricular system. On a desktop personal computer with a dual-core central processing unit running at 2.13 GHz, about 10 seconds were required to analyze each data set. CONCLUSION: Experiments with clinical CT images showed that the proposed method can generate acceptable results in the presence of image noise, large shape, and size variations of the ventricular system, and therefore it is potentially useful for the quantitative interpretation of CT images in neurodiagnosis and neurosurgery.
机译:理由和目的:在计算机断层扫描(CT)成像上对脑室系统进行精确分割对神经诊断和神经外科手术很有用。手动细分非常耗时,通常无法重现且主观。由于图像噪声,软组织之间的低对比度,较大的层间距离,较大的形状以及心室系统的尺寸变化,目前没有自动方法可用。作者提出了一种模型指导的心室系统自动分割方法。材料与方法:本研究收集了不同部位的中风患者的五十张CT扫描。给定大脑CT图像,其心室系统分为五个步骤:(1)将预定义的体积模型注册(或变形)到图像上; (2)根据变形模型,自动指定八个感兴趣区域; (3)计算感兴趣区域中的脑脊液强度阈值,并将其用于从整个大脑体积中分割出脑脊液的所有区域; (4)每个心室在其指定的感兴趣区域中进行了细分; (5)确定脑室内钙化区域以改善心室分割。结果:与专家提供的地面实况相比,该方法的分割结果对整个心室系统实现了85%的平均重叠率。在具有运行在2.13 GHz的双核中央处理器的台式个人计算机上,分析每个数据集大约需要10秒钟。结论:临床CT图像的实验表明,该方法在存在图像噪声,较大的心室形状和心室系统尺寸变化的情况下可以产生可接受的结果,因此对于定量诊断CT图像在神经诊断和诊断中可能具有实用价值。神经外科。

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