Localized energy-based normalization of medical images: application to chest radiography
Publication year
2015Source
IEEE Transactions on Medical Imaging, 34, 9, (2015), pp. 1965-75ISSN
Publication type
Article / Letter to editor

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Organization
Medical Imaging
Journal title
IEEE Transactions on Medical Imaging
Volume
vol. 34
Issue
iss. 9
Page start
p. 1965
Page end
p. 75
Subject
Radboudumc 12: Sensory disorders RIHS: Radboud Institute for Health Sciences; Radboudumc 9: Rare cancers RIHS: Radboud Institute for Health SciencesAbstract
Automated quantitative analysis systems for medical images often lack the capability to successfully process images from multiple sources. Normalization of such images prior to further analysis is a possible solution to this limitation. This work presents a general method to normalize medical images and thoroughly investigates its effectiveness for chest radiography (CXR). The method starts with an energy decomposition of the image in different bands. Next, each band's localized energy is scaled to a reference value and the image is reconstructed. We investigate iterative and local application of this technique. The normalization is applied iteratively to the lung fields on six datasets from different sources, each comprising 50 normal CXRs and 50 abnormal CXRs. The method is evaluated in three supervised computer-aided detection tasks related to CXR analysis and compared to two reference normalization methods. In the first task, automatic lung segmentation, the average Jaccard overlap significantly increased from 0:720:30 and 0:870:11 for both reference methods to 0:89 0:09 (p < 0:01) with normalization. The second experiment was aimed at segmentation of the clavicles. The reference methods had an average Jaccard index of 0:570:26 and 0:530:26; with normalization this significantly increased to 0:68 0:23 (p < 0:01). The third experiment was detection of tuberculosis related abnormalities in the lung fields. The average area under the Receiver Operating Curve increased significantly from 0:720:14 and 0:790:06 using the reference methods to 0:85 0:05 (p < 0:01) with normalization. We conclude that the normalization can be successfully applied in chest radiography and makes supervised systems more generally applicable to data from different sources.
This item appears in the following Collection(s)
- Academic publications [229302]
- Electronic publications [111733]
- Faculty of Medical Sciences [87821]
- Open Access publications [80515]
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