Eliminating rib shadows in chest radiographic images providing diagnostic assistance

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Abstract

A major difficulty with chest radiographic analysis is the invisibility of abnormalities caused by the superimposition of normal anatomical structures, such as ribs, over the main tissue to be examined. Suppressing the ribs with no information loss about the original tissue would therefore be helpful during manual identification or computer-aided detection of nodules on a chest radiographic image. In this study, we introduce a two-step algorithm for eliminating rib shadows in chest radiographic images. The algorithm first delineates the ribs using a novel hybrid self-template approach and then suppresses these delineated ribs using an unsupervised regression model that takes into account the change in proximal thickness (depth) of bone in the vertical axis. The performance of the system is evaluated using a benchmark set of real chest radiographic images. The experimental results determine that proposed method for rib delineation can provide higher accuracy than existing methods. The knowledge of rib delineation can remarkably improve the nodule detection performance of a current computer-aided diagnosis (CAD) system. It is also shown that the rib suppression algorithm can increase the nodule visibility by eliminating rib shadows while mostly preserving the nodule intensity.

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CITATION STYLE

APA

Oğul, H., Oğul, B. B., Ağıldere, A. M., Bayrak, T., & Sümer, E. (2016). Eliminating rib shadows in chest radiographic images providing diagnostic assistance. Computer Methods and Programs in Biomedicine, 127, 174–184. https://doi.org/10.1016/j.cmpb.2015.12.006

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