首页> 外文会议>International conference on medical image computing and computer-assisted intervention;MICCAI 2010 >Automatic Lung Lobe Segmentation Using Particles, Thin Plate Splines, and Maximum a Posteriori Estimation
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Automatic Lung Lobe Segmentation Using Particles, Thin Plate Splines, and Maximum a Posteriori Estimation

机译:使用粒子,薄板样条和最大后验估计自动进行肺叶分割

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摘要

We present a fully automatic lung lobe segmentation algorithm that is effective in high resolution computed tomography (CT) datasets in the presence of confounding factors such as incomplete fissures (anatomical structures indicating lobe boundaries), advanced disease states, high body mass index (BMI), and low-dose scanning protocols. In contrast to other algorithms that leverage segmentations of auxiliary structures (esp. vessels and airways), we rely only upon image features indicating fissure locations. We employ a particle system that samples the image domain and provides a set of candidate fissure locations. We follow this stage with maximum a posteriori (MAP) estimation to eliminate poor candidates and then perform a post-processing operation to remove remaining noise particles. We then fit a thin plate spline (TPS) interpolating surface to the fissure particles to form the final lung lobe segmentation. Results indicate that our algorithm performs comparably to pulmonologist-generated lung lobe segmentations on a set of challenging cases.
机译:我们提出了一种全自动肺叶分割算法,该算法在存在混杂因素(例如不完整的裂痕(表明叶边界的解剖结构),疾病进展状态,高体重指数(BMI))的情况下,在高分辨率计算机断层扫描(CT)数据集中有效以及低剂量扫描协议。与其他利用辅助结构(尤其是船只和气道)分割的算法相比,我们仅依赖于指示裂痕位置的图像特征。我们采用了对图像域进行采样并提供一组候选裂缝位置的粒子系统。我们在此阶段进行最大后验(MAP)估计,以消除较差的候选对象,然后执行后处理操作以去除残留的噪声粒子。然后,我们将薄板样条(TPS)内插表面拟合到裂缝颗粒,以形成最终的肺叶分割。结果表明,在一组具有挑战性的案例中,我们的算法与肺科医师生成的肺叶分割具有可比性。

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