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Automatic Lung Segmentation With Juxta-Pleural Nodule Identification Using Active Contour Model and Bayesian Approach

机译:利用主动轮廓模型和贝叶斯方法对具有胸膜结节识别的肺自动分割

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摘要

Objective: chest computed tomography (CT) images and their quantitative analyses have become increasingly important for a variety of purposes, including lung parenchyma density analysis, airway analysis, diaphragm mechanics analysis, and nodule detection for cancer screening. Lung segmentation is an important prerequisite step for automatic image analysis. We propose a novel lung segmentation method to minimize the juxta-pleural nodule issue, a notorious challenge in the applications. Method: we initially used the Chan–Vese (CV) model for active lung contours and adopted a Bayesian approach based on the CV model results, which predicts the lung image based on the segmented lung contour in the previous frame image or neighboring upper frame image. Among the resultant juxta-pleural nodule candidates, false positives were eliminated through concave points detection and circle/ellipse Hough transform. Finally, the lung contour was modified by adding the final nodule candidates to the area of the CV model results. Results: to evaluate the proposed method, we collected chest CT digital imaging and communications in medicine images of 84 anonymous subjects, including 42 subjects with juxta-pleural nodules. There were 16 873 images in total. Among the images, 314 included juxta-pleural nodules. Our method exhibited a disc similarity coefficient of 0.9809, modified hausdorff distance of 0.4806, sensitivity of 0.9785, specificity of 0.9981, accuracy of 0.9964, and juxta-pleural nodule detection rate of 96%. It outperformed existing methods, such as the CV model used alone, the normalized CV model, and the snake algorithm. Clinical impact: the high accuracy with the juxta-pleural nodule detection in the lung segmentation can be beneficial for any computer aided diagnosis system that uses lung segmentation as an initial step.
机译:目的:胸部计算机断层扫描(CT)图像及其定量分析对于多种目的已变得越来越重要,包括肺实质密度分析,气道分析、,肌力学分析以及用于癌症筛查的结节检测。肺分割是自动图像分析的重要先决条件。我们提出了一种新的肺分割方法,以最大程度地减少并发胸膜结节的问题,这在应用中是一个挑战。方法:我们最初将Chan-Vese(CV)模型用于活动的肺部轮廓,并基于CV模型结果采用贝叶斯方法,该方法基于先前帧图像或相邻的上部帧图像中分割的肺部轮廓预测肺图像。在最终的胸膜结节候选物中,通过凹点检测和圆/椭圆霍夫变换消除了假阳性。最后,通过将最终的结节候选者添加到CV模型结果区域来修改肺部轮廓。结果:为评估所提出的方法,我们收集了84例匿名受试者(包括42例并发胸膜结节的受试者)的医学图像中的胸部CT数字成像和交流信息。共有16873张图像。在图像中,有314个包括胸膜结节。我们的方法显示出椎间盘相似系数为0.9809,修正的hausdorff距离为0.4806,灵敏度为0.9785,特异性为0.9981,准确性为0.9964,并发胸膜结节检出率为96%。它的性能优于现有方法,例如单独使用的CV模型,规范化的CV模型和snake算法。临床影响:肺分割中并发胸膜结节检测的高精度对于使用肺分割作为初始步骤的任何计算机辅助诊断系统都是有益的。

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