Paper
18 March 2015 Lesion insertion in projection domain for computed tomography image quality assessment
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Abstract
To perform task-based image quality assessment in CT, it is desirable to have a large number of realistic patient images with known diagnostic truth. One effective way to achieve this objective is to create hybrid images that combine patient images with simulated lesions. Because conventional hybrid images generated in the image-domain fails to reflect the impact of scan and reconstruction parameters on lesion appearance, this study explored a projection-domain approach. Liver lesion models were forward projected according to the geometry of a commercial CT scanner to acquire lesion projections. The lesion projections were then inserted into patient projections (decoded from commercial CT raw data with the assistance of the vendor) and reconstructed to acquire hybrid images. To validate the accuracy of the forward projection geometry, simulated images reconstructed from the forward projections of a digital ACR phantom were compared to physically acquired ACR phantom images. To validate the hybrid images, lesion models were inserted into patient images and visually assessed. Results showed that the simulated phantom images and the physically acquired phantom images had great similarity in terms of HU accuracy and high-contrast resolution. The lesions in the hybrid image had a realistic appearance and merged naturally into the liver background. In addition, the inserted lesion demonstrated reconstruction-parameter-dependent appearance. Compared to conventional image-domain approach, our method enables more realistic hybrid images for image quality assessment.
© (2015) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Baiyu Chen, Chi Ma, Zhicong Yu, Shuai Leng, Lifeng Yu, and Cynthia McCollough "Lesion insertion in projection domain for computed tomography image quality assessment", Proc. SPIE 9412, Medical Imaging 2015: Physics of Medical Imaging, 94121R (18 March 2015); https://doi.org/10.1117/12.2082049
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Cited by 6 scholarly publications.
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KEYWORDS
Computed tomography

Image quality

CT reconstruction

Liver

Scanners

Digital imaging

Image segmentation

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