Literature DB >> 27705854

Accurate Lungs Segmentation on CT Chest Images by Adaptive Appearance-Guided Shape Modeling.

Ahmed Soliman, Fahmi Khalifa, Ahmed Elnakib, Mohamed Abou El-Ghar, Neal Dunlap, Brian Wang, Georgy Gimel'farb, Robert Keynton, Ayman El-Baz.   

Abstract

To accurately segment pathological and healthy lungs for reliable computer-aided disease diagnostics, a stack of chest CT scans is modeled as a sample of a spatially inhomogeneous joint 3D Markov-Gibbs random field (MGRF) of voxel-wise lung and chest CT image signals (intensities). The proposed learnable MGRF integrates two visual appearance sub-models with an adaptive lung shape submodel. The first-order appearance submodel accounts for both the original CT image and its Gaussian scale space (GSS) filtered version to specify local and global signal properties, respectively. Each empirical marginal probability distribution of signals is closely approximated with a linear combination of discrete Gaussians (LCDG), containing two positive dominant and multiple sign-alternate subordinate DGs. The approximation is separated into two LCDGs to describe individually the lungs and their background, i.e., all other chest tissues. The second-order appearance submodel quantifies conditional pairwise intensity dependencies in the nearest voxel 26-neighborhood in both the original and GSS-filtered images. The shape submodel is built for a set of training data and is adapted during segmentation using both the lung and chest appearances. The accuracy of the proposed segmentation framework is quantitatively assessed using two public databases (ISBI VESSEL12 challenge and MICCAI LOLA11 challenge) and our own database with, respectively, 20, 55, and 30 CT images of various lung pathologies acquired with different scanners and protocols. Quantitative assessment of our framework in terms of Dice similarity coefficients, 95-percentile bidirectional Hausdorff distances, and percentage volume differences confirms the high accuracy of our model on both our database (98.4±1.0%, 2.2±1.0 mm, 0.42±0.10%) and the VESSEL12 database (99.0±0.5%, 2.1±1.6 mm, 0.39±0.20%), respectively. Similarly, the accuracy of our approach is further verified via a blind evaluation by the organizers of the LOLA11 competition, where an average overlap of 98.0% with the expert's segmentation is yielded on all 55 subjects with our framework being ranked first among all the state-of-the-art techniques compared.

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Year:  2016        PMID: 27705854     DOI: 10.1109/TMI.2016.2606370

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  21 in total

1.  Multi-resolution convolutional neural networks for fully automated segmentation of acutely injured lungs in multiple species.

Authors:  Sarah E Gerard; Jacob Herrmann; David W Kaczka; Guido Musch; Ana Fernandez-Bustamante; Joseph M Reinhardt
Journal:  Med Image Anal       Date:  2019-11-07       Impact factor: 8.545

2.  Automated Segmentation of Tissues Using CT and MRI: A Systematic Review.

Authors:  Leon Lenchik; Laura Heacock; Ashley A Weaver; Robert D Boutin; Tessa S Cook; Jason Itri; Christopher G Filippi; Rao P Gullapalli; James Lee; Marianna Zagurovskaya; Tara Retson; Kendra Godwin; Joey Nicholson; Ponnada A Narayana
Journal:  Acad Radiol       Date:  2019-08-10       Impact factor: 3.173

3.  Classification of pressure ulcer tissues with 3D convolutional neural network.

Authors:  Begoña García-Zapirain; Mohammed Elmogy; Ayman El-Baz; Adel S Elmaghraby
Journal:  Med Biol Eng Comput       Date:  2018-06-15       Impact factor: 2.602

4.  Boundary Restored Network for Subpleural Pulmonary Lesion Segmentation on Ultrasound Images at Local and Global Scales.

Authors:  Yupeng Xu; Yi Zhang; Ke Bi; Zhiyu Ning; Lisha Xu; Mengjun Shen; Guoying Deng; Yin Wang
Journal:  J Digit Imaging       Date:  2020-10       Impact factor: 4.056

5.  Segmentation of MRI brain scans using spatial constraints and 3D features.

Authors:  Jonas Grande-Barreto; Pilar Gómez-Gil
Journal:  Med Biol Eng Comput       Date:  2020-11-05       Impact factor: 2.602

Review 6.  Detection of Lung Contour with Closed Principal Curve and Machine Learning.

Authors:  Tao Peng; Yihuai Wang; Thomas Canhao Xu; Lianmin Shi; Jianwu Jiang; Shilang Zhu
Journal:  J Digit Imaging       Date:  2018-08       Impact factor: 4.056

7.  Automatic lung segmentation in routine imaging is primarily a data diversity problem, not a methodology problem.

Authors:  Johannes Hofmanninger; Forian Prayer; Jeanny Pan; Sebastian Röhrich; Helmut Prosch; Georg Langs
Journal:  Eur Radiol Exp       Date:  2020-08-20

Review 8.  Radiomics and artificial intelligence in lung cancer screening.

Authors:  Franciszek Binczyk; Wojciech Prazuch; Paweł Bozek; Joanna Polanska
Journal:  Transl Lung Cancer Res       Date:  2021-02

9.  Fuzzy-C-Means Clustering Based Segmentation and CNN-Classification for Accurate Segmentation of Lung Nodules

Authors:  Jalal Deen K; Ganesan R; Merline A
Journal:  Asian Pac J Cancer Prev       Date:  2017-07-27

10.  3D Kidney Segmentation from Abdominal Images Using Spatial-Appearance Models.

Authors:  Fahmi Khalifa; Ahmed Soliman; Adel Elmaghraby; Georgy Gimel'farb; Ayman El-Baz
Journal:  Comput Math Methods Med       Date:  2017-02-09       Impact factor: 2.238

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