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基于经验驱动的肺部CT中叶状成像征象的自动检测

Empirical Driven Automatic Detection of Lobulation Imaging Signs in Lung CT.

作者信息

Han Guanghui, Liu Xiabi, Soomro Nouman Q, Sun Jia, Zhao Yanfeng, Zhao Xinming, Zhou Chunwu

机构信息

Beijing Key Laboratory of Intelligent Information Technology, School of Computer Science and Technology, Beijing Institute of Technology, Beijing, China.

Department of Software Engineering, Mehran University of Engineering and Technology, SZAB Campus, Khairpur Mir's, Pakistan.

出版信息

Biomed Res Int. 2017;2017:3842659. doi: 10.1155/2017/3842659. Epub 2017 Mar 29.

Abstract

Computer-aided detection (CAD) of lobulation can help radiologists to diagnose/detect lung diseases easily and accurately. Compared to CAD of nodule and other lung lesions, CAD of lobulation remained an unexplored problem due to very complex and varying nature of lobulation. Thus, many state-of-the-art methods could not detect successfully. Hence, we revisited classical methods with the capability of extracting undulated characteristics and designed a sliding window based framework for lobulation detection in this paper. Under the designed framework, we investigated three categories of lobulation classification algorithms: template matching, feature based classifier, and bending energy. The resultant detection algorithms were evaluated through experiments on LISS database. The experimental results show that the algorithm based on combination of global context feature and BOF encoding has best overall performance, resulting in 1 score of 0.1009. Furthermore, bending energy method is shown to be appropriate for reducing false positives. We performed bending energy method following the LIOP-LBP mixture feature, the average positive detection per image was reduced from 30 to 22, and 1 score increased to 0.0643 from 0.0599. To the best of our knowledge this is the first kind of work for direct lobulation detection and first application of bending energy to any kind of lobulation work.

摘要

计算机辅助检测(CAD)肺叶征有助于放射科医生轻松、准确地诊断/检测肺部疾病。与结节及其他肺部病变的CAD相比,由于肺叶征的性质非常复杂且多变,肺叶征的CAD仍是一个未被探索的问题。因此,许多先进的方法都无法成功检测。为此,我们重新审视了具有提取起伏特征能力的经典方法,并设计了一种基于滑动窗口的肺叶征检测框架。在设计的框架下,我们研究了三类肺叶征分类算法:模板匹配、基于特征的分类器和弯曲能量法。通过在LISS数据库上进行实验,对所得的检测算法进行了评估。实验结果表明,基于全局上下文特征和词袋编码相结合的算法具有最佳的整体性能,得分为0.1009。此外,弯曲能量法被证明适用于减少假阳性。我们在LIOP-LBP混合特征之后采用弯曲能量法,每张图像的平均阳性检测数从30减少到22,得分从0.0599提高到0.0643。据我们所知,这是第一篇关于直接肺叶征检测的工作,也是弯曲能量法在任何肺叶征相关工作中的首次应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/48a1/5390675/8b69219fefea/BMRI2017-3842659.001.jpg

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