Junbo Peng, Tonghe Wang, Richard L. J. Qiu, Chih-Wei Chang, Justin Roper, David S. Yu, Xiangyang Tang, Xiaofeng Yang
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Methods: An inter-spectral structural similarity-based regularization was\nintegrated into the iterative image reconstruction in LA-DECBCT. By enforcing\nthe similarity between the DE images, LA artifacts were efficiently reduced in\nthe reconstructed DECBCT images. The proposed method was evaluated using four\nphysical phantoms and three digital phantoms, demonstrating its efficacy in\nquantitative DECBCT imaging. Results: In all the studies, the proposed method achieves accurate image\nreconstruction without visible residual artifacts from LA-DECBCT projection\ndata. In the digital phantom study, the proposed method reduces the\nmean-absolute-error (MAE) from 419 to 14 HU for the High-energy CBCT and 591 to\n20 HU for the low-energy CBCT. Conclusions: The proposed method achieves accurate image reconstruction\nwithout the need for X-ray spectra measurement for optimization or paired\ndatasets for model training, showing great practical value in clinical\nimplementations of LA-DECBCT.","PeriodicalId":501378,"journal":{"name":"arXiv - PHYS - Medical Physics","volume":"132 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-09-07","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Optimization-Based Image Reconstruction Regularized with Inter-Spectral Structural Similarity for Limited-Angle Dual-Energy Cone-Beam CT\",\"authors\":\"Junbo Peng, Tonghe Wang, Richard L. J. Qiu, Chih-Wei Chang, Justin Roper, David S. Yu, Xiangyang Tang, Xiaofeng Yang\",\"doi\":\"arxiv-2409.04674\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Background: Limited-angle (LA) dual-energy (DE) cone-beam CT (CBCT) is\\nconsidered as a potential solution to achieve fast and low-dose DE imaging on\\ncurrent CBCT scanners without hardware modification. However, its clinical\\nimplementations are hindered by the challenging image reconstruction from LA\\nprojections. While optimization-based and deep learning-based methods have been\\nproposed for image reconstruction, their utilization is limited by the\\nrequirement for X-ray spectra measurement or paired datasets for model\\ntraining. Purpose: This work aims to facilitate the clinical applications of fast and\\nlow-dose DECBCT by developing a practical solution for image reconstruction in\\nLA-DECBCT. Methods: An inter-spectral structural similarity-based regularization was\\nintegrated into the iterative image reconstruction in LA-DECBCT. By enforcing\\nthe similarity between the DE images, LA artifacts were efficiently reduced in\\nthe reconstructed DECBCT images. The proposed method was evaluated using four\\nphysical phantoms and three digital phantoms, demonstrating its efficacy in\\nquantitative DECBCT imaging. Results: In all the studies, the proposed method achieves accurate image\\nreconstruction without visible residual artifacts from LA-DECBCT projection\\ndata. In the digital phantom study, the proposed method reduces the\\nmean-absolute-error (MAE) from 419 to 14 HU for the High-energy CBCT and 591 to\\n20 HU for the low-energy CBCT. 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引用次数: 0
摘要
背景:有限角度(LA)双能量(DE)锥束 CT(CBCT)被认为是在当前 CBCT 扫描仪上实现快速、低剂量 DE 成像而无需修改硬件的潜在解决方案。然而,LA 投影的图像重建难度很大,阻碍了其临床应用。虽然基于优化和深度学习的方法已被提出用于图像重建,但由于需要测量 X 射线光谱或配对数据集进行模型训练,这些方法的使用受到了限制。目的:这项工作旨在通过开发一种实用的LA-DECBCT 图像重建解决方案,促进快速、低剂量 DECBCT 的临床应用。方法:在 LA-DECBCT 的迭代图像重建中加入了基于光谱间结构相似性的正则化。通过加强 DE 图像之间的相似性,重建的 DECBCT 图像中的 LA 伪影得以有效减少。使用四个物理模型和三个数字模型对所提出的方法进行了评估,证明了该方法在定量 DECBCT 成像中的有效性。结果:在所有研究中,所提出的方法都能从 LA-DECBCT 投影数据中准确地重建图像,且无明显的残留伪影。在数字模型研究中,所提出的方法将高能量 CBCT 的主题误差(MAE)从 419 HU 降至 14 HU,将低能量 CBCT 的主题误差(MAE)从 591 HU 降至 20 HU。结论:该方法无需测量 X 射线光谱进行优化,也无需成对的数据集进行模型训练,即可实现精确的图像重建,在 LA-DECBCT 的临床应用中显示出巨大的实用价值。
Optimization-Based Image Reconstruction Regularized with Inter-Spectral Structural Similarity for Limited-Angle Dual-Energy Cone-Beam CT
Background: Limited-angle (LA) dual-energy (DE) cone-beam CT (CBCT) is
considered as a potential solution to achieve fast and low-dose DE imaging on
current CBCT scanners without hardware modification. However, its clinical
implementations are hindered by the challenging image reconstruction from LA
projections. While optimization-based and deep learning-based methods have been
proposed for image reconstruction, their utilization is limited by the
requirement for X-ray spectra measurement or paired datasets for model
training. Purpose: This work aims to facilitate the clinical applications of fast and
low-dose DECBCT by developing a practical solution for image reconstruction in
LA-DECBCT. Methods: An inter-spectral structural similarity-based regularization was
integrated into the iterative image reconstruction in LA-DECBCT. By enforcing
the similarity between the DE images, LA artifacts were efficiently reduced in
the reconstructed DECBCT images. The proposed method was evaluated using four
physical phantoms and three digital phantoms, demonstrating its efficacy in
quantitative DECBCT imaging. Results: In all the studies, the proposed method achieves accurate image
reconstruction without visible residual artifacts from LA-DECBCT projection
data. In the digital phantom study, the proposed method reduces the
mean-absolute-error (MAE) from 419 to 14 HU for the High-energy CBCT and 591 to
20 HU for the low-energy CBCT. Conclusions: The proposed method achieves accurate image reconstruction
without the need for X-ray spectra measurement for optimization or paired
datasets for model training, showing great practical value in clinical
implementations of LA-DECBCT.