Multi-scaled morphological features for the characterization of mammographic masses using statistical classification schemes

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ObjectiveA comprehensive signal analysis approach on the mammographic mass boundary morphology is presented in this article. The purpose of this study is to identify efficient sets of simple yet effective shape features, employed in the original and multi-scaled spectral representations of the boundary, for the characterization of the mammographic mass. These new methods of mass boundary representation and processing in more than one domain greatly improve the information content of the base data that is used for pattern classification purposes, introducing comprehensive spectral and multi-scale wavelet versions of the original boundary signals. The evaluation is conducted against morphological and diagnostic characterization of the mass, using statistical methods, fractal dimension analysis and a wide range of classifier architectures.

论文关键词:Mammography,Morphological analysis,Multi-scaled analysis,Fractal dimension,Medical diagnostics

论文评审过程:Received 14 October 2006, Revised 11 June 2007, Accepted 12 June 2007, Available online 21 August 2007.

论文官网地址:https://doi.org/10.1016/j.artmed.2007.06.004