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Enhanced automatic lung segmentation using graph cut for Interstitial Lung Disease

机译:使用曲线切割对间质性肺病的增强的自动肺分段

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Radiologists are known to suffer from fatigue and drop in diagnostic accuracy due to large number of slices to read and long working hours. A computer aided diagnosis (CAD) system could help lighten the workload. Segmentation is the first step in a CAD system. This study aims to propose an accurate automatic segmentation. This study deals with High Resolution Computed Tomography (HRCT) scans of the thorax for 15 healthy patients and 81 diseased lungs segregated to five levels based on anatomic landmarks by a senior radiologist. The method used in this study combines thresholding and normalized graph cut which is a combination of region and contour based methods. The way the graph cut is implemented with a rule of exclusion can offer some knowledge for greater accuracy of segmentation. The segmentation was compared to manual tracing done by a trained person who is familiar with lung images. The segmentation yielded 98.32% and 98.07% similarity for right lung (RL) and left lung (LL). The segmentation error of Relative Volume Difference (RVD) for both RL and LL are also low at 0.89% and -0.13% respectively. The Overlap Volume Errors (OVE) are low at 3.17% and 3.74% for RL and LL. Thus the automatic segmentation proposed was able to segment accurately across right and left lung and was able to segment severe diseased lungs.
机译:众所周知,由于大量的切片,读取和长时间工作时间,尚未遭受疲劳和降低诊断精度。计算机辅助诊断(CAD)系统可以帮助减轻工作量。分段是CAD系统中的第一步。本研究旨在提出准确的自动分割。本研究涉及高分辨率计算断层扫描(HRCT)胸部的15名健康患者的肺部扫描,81名患病肺部基于高级放射科医师基于解剖学地标进行分离到五个水平。本研究中使用的方法结合了阈值和归一化的曲线图,其是基于区域和轮廓的方法的组合。通过排除规则实现图形切割的方式可以提供一些关于分段准确性的一些知识。将细分与熟悉肺图像熟悉的人进行的手动跟踪进行比较。右肺(RL)和左肺(LL)产生98.32%和98.07%的98.32%和98.07%。 R1和L1的相对体积差(RVD)的分割误差分别为0.89%和-0.13%。 R1和LL的重叠体积误差(OVE)低3.17%和3.74%。因此,所提出的自动分割能够精确地横跨右肺细分,并能够将严重的患病肺部分段。

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