Literature DB >> 25186393

Effect of segmentation algorithms on the performance of computerized detection of lung nodules in CT.

Wei Guo1, Qiang Li2.   

Abstract

PURPOSE: The purpose of this study is to reveal how the performance of lung nodule segmentation algorithm impacts the performance of lung nodule detection, and to provide guidelines for choosing an appropriate segmentation algorithm with appropriate parameters in a computer-aided detection (CAD) scheme.
METHODS: The database consisted of 85 CT scans with 111 nodules of 3 mm or larger in diameter from the standard CT lung nodule database created by the Lung Image Database Consortium. The initial nodule candidates were identified as those with strong response to a selective nodule enhancement filter. A uniform viewpoint reformation technique was applied to a three-dimensional nodule candidate to generate 24 two-dimensional (2D) reformatted images, which would be used to effectively distinguish between true nodules and false positives. Six different algorithms were employed to segment the initial nodule candidates in the 2D reformatted images. Finally, 2D features from the segmented areas in the 24 reformatted images were determined, selected, and classified for removal of false positives. Therefore, there were six similar CAD schemes, in which only the segmentation algorithms were different. The six segmentation algorithms included the fixed thresholding (FT), Otsu thresholding (OTSU), fuzzy C-means (FCM), Gaussian mixture model (GMM), Chan and Vese model (CV), and local binary fitting (LBF). The mean Jaccard index and the mean absolute distance (Dmean) were employed to evaluate the performance of segmentation algorithms, and the number of false positives at a fixed sensitivity was employed to evaluate the performance of the CAD schemes.
RESULTS: For the segmentation algorithms of FT, OTSU, FCM, GMM, CV, and LBF, the highest mean Jaccard index between the segmented nodule and the ground truth were 0.601, 0.586, 0.588, 0.563, 0.543, and 0.553, respectively, and the corresponding Dmean were 1.74, 1.80, 2.32, 2.80, 3.48, and 3.18 pixels, respectively. With these segmentation results of the six segmentation algorithms, the six CAD schemes reported 4.4, 8.8, 3.4, 9.2, 13.6, and 10.4 false positives per CT scan at a sensitivity of 80%.
CONCLUSIONS: When multiple algorithms are available for segmenting nodule candidates in a CAD scheme, the "optimal" segmentation algorithm did not necessarily lead to the "optimal" CAD detection performance.

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Mesh:

Year:  2014        PMID: 25186393      PMCID: PMC5148127          DOI: 10.1118/1.4892056

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  17 in total

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Journal:  Acad Radiol       Date:  2007-12       Impact factor: 3.173

5.  Segmentation of pulmonary nodules in three-dimensional CT images by use of a spiral-scanning technique.

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Journal:  Med Phys       Date:  2007-12       Impact factor: 4.071

6.  Active contours without edges.

Authors:  T F Chan; L A Vese
Journal:  IEEE Trans Image Process       Date:  2001       Impact factor: 10.856

7.  Computerized detection of lung nodules in thin-section CT images by use of selective enhancement filters and an automated rule-based classifier.

Authors:  Qiang Li; Feng Li; Kunio Doi
Journal:  Acad Radiol       Date:  2008-02       Impact factor: 3.173

8.  Selective enhancement filters for nodules, vessels, and airway walls in two- and three-dimensional CT scans.

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Journal:  Med Phys       Date:  2003-08       Impact factor: 4.071

9.  Assessing screening tests: extensions of McNemar's test.

Authors:  P A Lachenbruch; C J Lynch
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10.  Automated segmentation of lungs with severe interstitial lung disease in CT.

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Authors:  F H Cornelis; M Martin; O Saut; X Buy; M Kind; J Palussiere; T Colin
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2.  Designing image segmentation studies: Statistical power, sample size and reference standard quality.

Authors:  Eli Gibson; Yipeng Hu; Henkjan J Huisman; Dean C Barratt
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