Literature DB >> 19527950

Shape-based computer-aided detection of lung nodules in thoracic CT images.

Xujiong Ye1, Xinyu Lin, Jamshid Dehmeshki, Greg Slabaugh, Gareth Beddoe.   

Abstract

In this paper, a new computer tomography (CT) lung nodule computer-aided detection (CAD) method is proposed for detecting both solid nodules and ground-glass opacity (GGO) nodules (part solid and nonsolid). This method consists of several steps. First, the lung region is segmented from the CT data using a fuzzy thresholding method. Then, the volumetric shape index map, which is based on local Gaussian and mean curvatures, and the "dot" map, which is based on the eigenvalues of a Hessian matrix, are calculated for each voxel within the lungs to enhance objects of a specific shape with high spherical elements (such as nodule objects). The combination of the shape index (local shape information) and "dot" features (local intensity dispersion information) provides a good structure descriptor for the initial nodule candidates generation. Antigeometric diffusion, which diffuses across the image edges, is used as a preprocessing step. The smoothness of image edges enables the accurate calculation of voxel-based geometric features. Adaptive thresholding and modified expectation-maximization methods are employed to segment potential nodule objects. Rule-based filtering is first used to remove easily dismissible nonnodule objects. This is followed by a weighted support vector machine (SVM) classification to further reduce the number of false positive (FP) objects. The proposed method has been trained and validated on a clinical dataset of 108 thoracic CT scans using a wide range of tube dose levels that contain 220 nodules (185 solid nodules and 35 GGO nodules) determined by a ground truth reading process. The data were randomly split into training and testing datasets. The experimental results using the independent dataset indicate an average detection rate of 90.2%, with approximately 8.2 FP/scan. Some challenging nodules such as nonspherical nodules and low-contrast part-solid and nonsolid nodules were identified, while most tissues such as blood vessels were excluded. The method's high detection rate, fast computation, and applicability to different imaging conditions and nodule types shows much promise for clinical applications.

Mesh:

Year:  2009        PMID: 19527950     DOI: 10.1109/TBME.2009.2017027

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  45 in total

1.  High performance lung nodule detection schemes in CT using local and global information.

Authors:  Wei Guo; Qiang Li
Journal:  Med Phys       Date:  2012-08       Impact factor: 4.071

2.  Machine Learning in Computer-aided Diagnosis of the Thorax and Colon in CT: A Survey.

Authors:  Kenji Suzuki
Journal:  IEICE Trans Inf Syst       Date:  2013-04-01

3.  Computer-aided diagnosis systems for lung cancer: challenges and methodologies.

Authors:  Ayman El-Baz; Garth M Beache; Georgy Gimel'farb; Kenji Suzuki; Kazunori Okada; Ahmed Elnakib; Ahmed Soliman; Behnoush Abdollahi
Journal:  Int J Biomed Imaging       Date:  2013-01-29

4.  Shape and texture based novel features for automated juxtapleural nodule detection in lung CTs.

Authors:  Erdal Taşcı; Aybars Uğur
Journal:  J Med Syst       Date:  2015-03-03       Impact factor: 4.460

5.  Combining multi-scale feature fusion with multi-attribute grading, a CNN model for benign and malignant classification of pulmonary nodules.

Authors:  Jumin Zhao; Chen Zhang; Dengao Li; Jing Niu
Journal:  J Digit Imaging       Date:  2020-08       Impact factor: 4.056

6.  3D shape analysis to reduce false positives for lung nodule detection systems.

Authors:  Antonio Oseas de Carvalho Filho; Aristófanes Corrêa Silva; Anselmo Cardoso de Paiva; Rodolfo Acatauassú Nunes; Marcelo Gattass
Journal:  Med Biol Eng Comput       Date:  2016-10-17       Impact factor: 2.602

7.  Computer-aided diagnosis system for lung nodules based on computed tomography using shape analysis, a genetic algorithm, and SVM.

Authors:  Antonio Oseas de Carvalho Filho; Aristófanes Corrêa Silva; Anselmo Cardoso de Paiva; Rodolfo Acatauassú Nunes; Marcelo Gattass
Journal:  Med Biol Eng Comput       Date:  2016-10-03       Impact factor: 2.602

8.  Fast and adaptive detection of pulmonary nodules in thoracic CT images using a hierarchical vector quantization scheme.

Authors:  Hao Han; Lihong Li; Fangfang Han; Bowen Song; William Moore; Zhengrong Liang
Journal:  IEEE J Biomed Health Inform       Date:  2014-06-04       Impact factor: 5.772

9.  A review of computer-aided diagnosis in thoracic and colonic imaging.

Authors:  Kenji Suzuki
Journal:  Quant Imaging Med Surg       Date:  2012-09

10.  Expert knowledge-infused deep learning for automatic lung nodule detection.

Authors:  Jiaxing Tan; Yumei Huo; Zhengrong Liang; Lihong Li
Journal:  J Xray Sci Technol       Date:  2019       Impact factor: 1.535

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