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首页> 外文期刊>Medical Physics >Automated lung segmentation of diseased and artifact-corrupted magnetic resonance sections.
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Automated lung segmentation of diseased and artifact-corrupted magnetic resonance sections.

机译:病变和伪影损坏的磁共振切片的自动肺分割。

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摘要

Segmentation of the lungs within magnetic resonance (MR) scans is a necessary step in the computer-based analysis of thoracic MR images. This process is often confounded by image acquisition artifacts and disease-induced morphological deformation. We have developed an automated method for lung segmentation that is insensitive to these complications. The automated method was applied to 23 thoracic MR scans (413 sections) obtained from 10 patients. Two radiologists manually outlined the lung regions in a random sample of 101 sections (n=202 lungs), and the extent to which disease or artifact confounded lung border visualization was evaluated. Accuracy of lung regions extracted by the automated segmentation method was quantified by comparison with the radiologist-defined lung regions using an area overlap measure (AOM) that ranged from 0 (disjoint lung regions) to 1 (complete overlap). The AOM between each observer and the automated method was 0.82 when averaged over all lungs. The average AOM in the lungbases, where lung segmentation is most difficult, was 0.73.
机译:在基于计算机的胸部MR图像分析中,在磁共振(MR)扫描中分割肺部是必不可少的步骤。这个过程经常被图像获取伪像和疾病引起的形态变形所混淆。我们已经开发了一种对这些并发症不敏感的自动肺分割方法。自动化方法应用于从10例患者获得的23例胸腔MR扫描(413个切片)。两位放射科医生手动绘制了101个切片(n = 202个肺)的随机样本中的肺区域轮廓,并评估了疾病或伪影混淆肺边界可视化的程度。通过与放射科医生定义的肺区域进行比较,使用范围从0(不相交的肺区域)到1(完全重叠)的区域重叠量度(AOM),对通过自动分割方法提取的肺区域的准确性进行量化。每个观察者与自动方法之间的AOM在所有肺部平均时为0.82。在最难以进行肺分割的肺部,平均AOM为0.73。

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