Sparse-View Reconstruction in Dental Computed Tomography by Using a Dictionary-Learning Based Method

被引:0
|
作者
Guna Kim
Soyoung Park
Chulkyu Park
Dongyeon Lee
Younghwan Lim
Kyuseok Kim
Woosung Kim
Hyosung Cho
Changwoo Seo
Hyunwoo Lim
Hunwoo Lee
Seokyoon Kang
Jeongeun Park
Duhee Jeon
机构
[1] Yonsei University,Department of Radiation Convergence Engineering
来源
Journal of the Korean Physical Society | 2019年 / 74卷
关键词
Dental computed tomography; Sparse-view; Dictionary-learning; Low radiation dosage;
D O I
暂无
中图分类号
学科分类号
摘要
In this study, we investigated sparse-view reconstruction in dental computed tomography (DCT) by using a dictionary-learning (DL)-based method to reduce excessive radiation dose to patients. In sparse-view DCT, only a small number (< 100) of projections, far less than what is required by the Nyquist sampling theory, are acquired from the imaging system and used for image reconstruction. DL is a representation learning theory that aims to find a sparse representation of the input signal in the form of a linear combination of basic elements (or atoms). We implemented a DL-based reconstruction algorithm and performed a systematic simulation and an experiment to evaluate the algorithm’s effectiveness for sparse-view reconstruction in DCT. DCT images were reconstructed using the three sparse-view projections of P30, P40, and P60, and their image qualities were quantitatively evaluated in terms of the intensity profile, the universal quality index, and the peak signal-to-noise ratio. The hardware system used in the experiment consisted of an X-ray tube, which was run at 90 kVp and 40 mA, and a flat-panel detector with a 388-μm pixel size. Our simulation and experimental results indicate that the DL-based method significantly reduced streak artifacts in the sparse-view DCT reconstruction when using P40, thus maintaining image quality.
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页码:57 / 62
页数:5
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