Authors
Ahmed Shaffie, Ahmed Soliman, Luay Fraiwan, Mohammed Ghazal, Fatma Taher, Neal Dunlap, Brian Wang, Victor van Berkel, Robert Keynton, Adel Elmaghraby, Ayman El-Baz
Publication date
2018/9/20
Journal
Technology in cancer research & treatment
Volume
17
Pages
1533033818798800
Publisher
SAGE Publications
Description
A novel framework for the classification of lung nodules using computed tomography scans is proposed in this article. To get an accurate diagnosis of the detected lung nodules, the proposed framework integrates the following 2 groups of features: (1) appearance features modeled using the higher order Markov Gibbs random field model that has the ability to describe the spatial inhomogeneities inside the lung nodule and (2) geometric features that describe the shape geometry of the lung nodules. The novelty of this article is to accurately model the appearance of the detected lung nodules using a new developed seventh-order Markov Gibbs random field model that has the ability to model the existing spatial inhomogeneities for both small and large detected lung nodules, in addition to the integration with the extracted geometric features. Finally, a deep autoencoder classifier is fed by the above 2 feature groups …
Total citations
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Scholar articles
A Shaffie, A Soliman, L Fraiwan, M Ghazal, F Taher… - Technology in cancer research & treatment, 2018