Title of article :
Scattering features for lung cancer detection in fibered confocal fluorescence microscopy images
Author/Authors :
F. and Rakotomamonjy، نويسنده , , Alain and Petitjean، نويسنده , , Caroline and Salaün، نويسنده , , Mathieu and Thiberville، نويسنده , , Luc، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
14
From page :
105
To page :
118
Abstract :
AbstractObjective ess the feasibility of lung cancer diagnosis using fibered confocal fluorescence microscopy (FCFM) imaging technique and scattering features for pattern recognition. s maging technique is a new medical imaging technique for which interest has yet to be established for diagnosis. This paper addresses the problem of lung cancer detection using FCFM images and, as a first contribution, assesses the feasibility of computer-aided diagnosis through these images. Towards this aim, we have built a pattern recognition scheme which involves a feature extraction stage and a classification stage. The second contribution relies on the features used for discrimination. Indeed, we have employed the so-called scattering transform for extracting discriminative features, which are robust to small deformations in the images. We have also compared and combined these features with classical yet powerful features like local binary patterns (LBP) and their variants denoted as local quinary patterns (LQP). s w that scattering features yielded to better recognition performances than classical features like LBP and their LQP variants for the FCFM image classification problems. Another finding is that LBP-based and scattering-based features provide complementary discriminative information and, in some situations, we empirically establish that performance can be improved when jointly using LBP, LQP and scattering features. sions s work we analyze the joint capability of FCFM images and scattering features for lung cancer diagnosis. The proposed method achieves a good recognition rate for such a diagnosis problem. It also performs well when used in conjunction with other features for other classical medical imaging classification problems.
Keywords :
wavelet transform , Fibered confocal fluorescence microscopy imaging , Local Binary Pattern , Scattering transform , Texture analysis , bronchoscopy , Support vector machine
Journal title :
Artificial Intelligence In Medicine
Serial Year :
2014
Journal title :
Artificial Intelligence In Medicine
Record number :
1841721
Link To Document :
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