Abstract

Background and Objective When radiologists diagnose lung diseases in chest radiography, they can miss some lung nodules overlapped with ribs or clavicles. Dual-energy subtraction (DES) imaging performs well because it can produce soft tissue images, in which the bone components in chest radiography were almost suppressed but the visibility of nodules and lung vessels was still maintained. However, most routinely available X-ray machines do not possess the DES function. Thus, we presented a data-driven decomposition model to perform virtual DES function for decomposing a single conventional chest radiograph into soft tissue and bone images. Methods For a given chest radiograph, similar chest radiographs with corresponding DES soft tissue and bone images are selected from the training database as exemplars for decomposition. The corresponding fields between the observed chest radiograph and the exemplars are solved by a hierarchically dense matching algorithm. Then, nonparametric priors of soft tissue and bone components are constructed by sampling image patches from the selected soft tissue and bone images according to the corresponding fields. Finally, these nonparametric priors are integrated into our decomposition model, the energy function of which is efficiently optimized by an iteratively reweighted least-squares scheme (IRLS). Results The decomposition method is evaluated on a data set of posterior-anterior DES radiography (503 cases), as well as on the JSRT data set. The proposed method can produce soft tissue and bone images similar to those produced by the actual DES system. Conclusions The proposed method can markedly reduce the visibility of bony structures in chest radiographs and shows potential to enhance diagnosis.

Highlights

  • Chest radiography is a widely used diagnostic imaging technique for lung diseases, such as tuberculosis, pneumonia, and lung cancer, because this method is cheap, routinely available, and relatively safe

  • Studies showed that approximately 30% of pulmonary nodules in chest radiographs could be missed by radiologists, and 82% to 95% of such missed nodules are partly obscured by ribs and clavicles [1]

  • We presented a decomposition method of chest radiographs using the exemplar-based nonparametric priors of soft tissue and bone images

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Summary

Introduction

Chest radiography is a widely used diagnostic imaging technique for lung diseases, such as tuberculosis, pneumonia, and lung cancer, because this method is cheap, routinely available, and relatively safe. DES radiography involves capturing two radiographs with the use of two X-ray exposures at two different energy levels Dual-energy subtraction (DES) imaging performs well because it can produce soft tissue images, in which the bone components in chest radiography were almost suppressed but the visibility of nodules and lung vessels was still maintained. Nonparametric priors of soft tissue and bone components are constructed by sampling image patches from the selected soft tissue and bone images according to the corresponding fields These nonparametric priors are integrated into our decomposition model, the energy function of which is efficiently optimized by an iteratively reweighted least-squares scheme (IRLS). The proposed method can markedly reduce the visibility of bony structures in chest radiographs and shows potential to enhance diagnosis

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