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Automated iterative neutrosophic lung segmentation for image analysis in thoracic computed tomography

机译:自动迭代中智性肺分割在胸部计算机断层扫描中的图像分析

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Purpose: Lung segmentation is a fundamental step in many image analysis applications for lung diseases and abnormalities in thoracic computed tomography (CT). The authors have previously developed a lung segmentation method based on expectation-maximization (EM) analysis and morphological operations (EMM) for our computer-aided detection (CAD) system for pulmonary embolism (PE) in CT pulmonary angiography (CTPA). However, due to the large variations in pathology that may be present in thoracic CT images, it is difficult to extract the lung regions accurately, especially when the lung parenchyma contains extensive lung diseases. The purpose of this study is to develop a new method that can provide accurate lung segmentation, including those affected by lung diseases. Methods: An iterative neutrosophic lung segmentation (INLS) method was developed to improve the EMM segmentation utilizing the anatomic features of the ribs and lungs. The initial lung regions (ILRs) were extracted using our previously developed EMM method, in which the ribs were extracted using 3D hierarchical EM segmentation and the ribcage was constructed using morphological operations. Based on the anatomic features of ribs and lungs, the initial EMM segmentation was refined using INLS to obtain the final lung regions. In the INLS method, the anatomic features were mapped into a neutrosophic domain, and the neutrosophic operation was performed iteratively to refine the ILRs. With IRB approval, 5 and 58 CTPA scans were collected retrospectively and used as training and test sets, of which 2 and 34 cases had lung diseases, respectively. The lung regions manually outlined by an experienced thoracic radiologist were used as reference standard for performance evaluation of the automated lung segmentation. The percentage overlap area (POA), the Hausdorff distance (Hdist), and the average distance (AvgDist) of the lung boundaries relative to the reference standard were used as performance metrics. Results: The proposed method achieved larger POAs and smaller distance errors than the EMM method. For the 58 test cases, the average POA, Hdist, and AvgDist were improved from 85.4 ± 18.4%, 22.6 ± 29.4 mm, and 3.5 ± 5.4 mm using EMM to 91.2 ± 6.7%, 16.0 ± 11.3 mm, and 2.5 ± 1.0 mm using INLS, respectively. The improvements were statistically significant (p < 0.05). To evaluate the accuracy of the INLS method in the identification of the lung boundaries affected by lung diseases, the authors separately analyzed the performance of the proposed method on the cases with versus without the lung diseases. The results showed that the cases without lung diseases were segmented more accurately than the cases with lung diseases by both the EMM and the INLS methods, but the INLS method achieved better performance than the EMM method in both cases. Conclusions: The new INLS method utilizing the anatomic features of the rib and lung significantly improved the accuracy of lung segmentation, especially for the cases affected by lung diseases. Improvement in lung segmentation will facilitate many image analysis tasks and CAD applications for lung diseases and abnormalities in thoracic CT, including automated PE detection.
机译:目的:肺部分割是许多针对肺部疾病和胸部计算机断层扫描(CT)异常的图像分析应用程序中的基本步骤。作者之前已经为我们的CT肺血管造影(CTPA)中的肺栓塞(PE)计算机辅助检测(CAD)系统开发了基于期望最大化(EM)分析和形态学运算(EMM)的肺分割方法。但是,由于胸部CT图像中可能存在很大的病理变化,因此很难准确地提取出肺部区域,尤其是当肺实质包含大量肺部疾病时。这项研究的目的是开发一种可以提供准确的肺分割的新方法,包括受肺部疾病影响的肺分割。方法:开发了一种迭代中智性肺分割术(INLS),以利用肋骨和肺的解剖特征来改善EMM分割。使用我们先前开发的EMM方法提取初始肺区域(ILR),其中使用3D分层EM分割提取肋骨,并使用形态学操作构建胸腔。根据肋骨和肺的解剖特征,使用INLS细化初始EMM分割,以获得最终的肺区域。在INLS方法中,将解剖特征映射到中智区域,并且迭代执行中智操作以细化ILR。经IRB批准,回顾性收集了5例和58例CTPA扫描,并将其用作训练和测试集,其中2例和34例患有肺部疾病。由经验丰富的胸腔放射科医生手动绘制的肺区域被用作自动肺分割的性能评估的参考标准。相对于参考标准的肺边界的百分比重叠面积(POA),Hausdorff距离(Hdist)和平均距离(AvgDist)被用作性能指标。结果:与EMM方法相比,该方法实现了更大的POA和更小的距离误差。对于58个测试用例,使用EMM将平均POA,Hdist和AvgDist从85.4±18.4%,22.6±29.4 mm和3.5±5.4 mm改善到91.2±6.7%,16.0±11.3 mm和2.5±1.0 mm分别使用INLS。改善具有统计学意义(p <0.05)。为了评估INLS方法在识别受肺部疾病影响的肺边界方面的准确性,作者分别分析了该方法在有或无肺部疾病病例中的性能。结果表明,用EMM和INLS方法将没有肺部疾病的病例比具有肺部疾病的病例更准确地进行了细分,但是在这两种情况下,INLS方法都比EMM方法具有更好的性能。结论:利用肋骨和肺的解剖特征的新的INLS方法显着提高了肺分割的准确性,特别是对于受肺部疾病影响的病例。肺分割的改善将促进许多图像分析任务和CAD应用程序的应用,以解决肺部疾病和胸部CT异常,包括自动PE检测。

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