腹部CT 4D增强多器官自动分割

M. Linguraru, R. Summers
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引用次数: 25

摘要

医学成像和计算机辅助诊断(CAD)传统上侧重于基于器官或疾病的应用。为了从以器官为基础的方法转变为以生物体为基础的方法,CAD需要复制放射科医生的工作并连续分析多个器官。提出了一种从4D CT数据中同时分割腹部四个器官的全自动方法。对16例患者进行了腹部增强CT扫描,分为三个阶段:非对比期、动脉期和门静脉期。使用demons算法对患者内部数据进行非严格注册,并使用各向异性扩散进行平滑。在随后的采集过程中,相互信息解释了同一器官内的强度变化,数据用三次b样条插值。然后,利用肝、脾和肾的强度特征,将非均匀侵蚀应用于多相数据。侵蚀滤波器是一个4D卷积,只保留满足上述强度标准的图像区域。最后,用测地线水平集完成对四个腹部器官的分割。这种腹部数据的三维评估显示了作为多器官和多疾病分析的计算机辅助放射学工具的巨大前景。
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Multi-organ automatic segmentation in 4D contrast-enhanced abdominal CT
Medical imaging and computer-aided diagnosis (CAD) traditionally focus on organ- or disease-based applications. To shift from organ-based to organism-based approaches, CAD needs to replicate the work of radiologists and analyze consecutively multiple organs. A fully automatic method is presented for the simultaneous segmentation of four abdominal organs from 4D CT data. Abdominal contrast- enhanced CT scans from sixteen patients were obtained at three phases: non-contrast, arterial and portal. Intra- patient data is registered non-rigidly using the demons algorithm and smoothed with anisotropic diffusion. Mutual information accounts for intensity variability within the same organ during subsequent acquisitions and data are interpolated with cubic B-splines. Then heterogeneous erosion is applied to multi-phase data using the intensity characteristics of the liver, spleen, and kidneys. The erosion filter is a 4D convolution that preserves only image regions that satisfy the above intensity criteria. Finally, a geodesic level set completes the segmentation of the four abdominal organs. This 3D evaluation of abdominal data shows great promise as a computer-aided radiology tool for multi-organ and multi-disease analysis.
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