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arxiv: 2002.00751 · v1 · pith:IMNIY2JL · submitted 2020-02-03 · physics.med-ph · cs.CV· cs.LG· eess.IV· stat.ML

Separation of target anatomical structure and occlusions in chest radiographs

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classification physics.med-ph cs.CVcs.LGeess.IVstat.ML
keywords radiographsvisualchestdataground-truthimagerelevantstructure
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Chest radiographs are commonly performed low-cost exams for screening and diagnosis. However, radiographs are 2D representations of 3D structures causing considerable clutter impeding visual inspection and automated image analysis. Here, we propose a Fully Convolutional Network to suppress, for a specific task, undesired visual structure from radiographs while retaining the relevant image information such as lung-parenchyma. The proposed algorithm creates reconstructed radiographs and ground-truth data from high resolution CT-scans. Results show that removing visual variation that is irrelevant for a classification task improves the performance of a classifier when only limited training data are available. This is particularly relevant because a low number of ground-truth cases is common in medical imaging.

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