Paper
15 March 2019 Pulmonary lobar segmentation from computed tomography scans based on a statistical finite element analysis of lobe shape
Yuwen Zhang, Mahyar Osanlouy, Alys R. Clark, Hari Kumar, Clair King, Margaret L. Wilsher, David G. Milne, Eric A. Hoffman, Merryn H. Tawhai
Author Affiliations +
Abstract
Automatic identification of pulmonary lobes from imaging is important in disease assessment and treatment planning. However, the lobar fissures can be difficult to detect automatically, as they are thin, usually of fuzzy appearance and incomplete on CT scans. The fissures can also be obscured by or confused with features of disease, for example the tissue abnormalities that characterise fibrosis. Traditional anatomical knowledge-based methods rely heavily on anatomic knowledge and largely ignore individual variability, which may result in failure to segment pathological lungs. In this study, we aim to overcome difficulties in identifying pulmonary fissures by using a statistical finite element shape model of lobes to guide lobar segmentation. By deforming a principle component analysis based statistical shape model onto an individual’s lung shape, we predict the likely region of fissure locations, to initialize the search region for fissures. Then, an eigenvalue of Hessian matrix analysis and a connected component eigenvector based analysis are used to determine a set of fissure-like candidate points. A smooth multi-level β-spline curve is fitted to the most fissure-like points (those with high fissure probability) and the fitted fissure plane is extrapolated to the lung boundaries. The method was tested on 20 inspiratory and expiratory CT scans, and the results show that the algorithm performs well both in healthy young subjects and older subjects with fibrosis. The method was able to estimate the fissure location in 100% of cases, whereas two comparison segmentation softwares that use anatomy-based methods were unable to segment 7/20 and 9/20 subjects, respectively.
© (2019) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Yuwen Zhang, Mahyar Osanlouy, Alys R. Clark, Hari Kumar, Clair King, Margaret L. Wilsher, David G. Milne, Eric A. Hoffman, and Merryn H. Tawhai "Pulmonary lobar segmentation from computed tomography scans based on a statistical finite element analysis of lobe shape", Proc. SPIE 10949, Medical Imaging 2019: Image Processing, 1094932 (15 March 2019); https://doi.org/10.1117/12.2512642
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Cited by 2 scholarly publications.
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KEYWORDS
Lung

Image segmentation

Computed tomography

Shape analysis

Finite element methods

Statistical modeling

Principal component analysis

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