Unsupervised Bayesian generation of synthetic CT from CBCT using patient-specific score-based prior Journal Article


Authors: Peng, J.; Gao, Y.; Chang, C. W.; Qiu, R.; Wang, T.; Kesarwala, A.; Yang, K.; Scott, J.; Yu, D.; Yang, X.
Article Title: Unsupervised Bayesian generation of synthetic CT from CBCT using patient-specific score-based prior
Abstract: Background: Cone-beam computed tomography (CBCT) scans, performed fractionally (e.g., daily or weekly), are widely utilized for patient alignment in the image-guided radiotherapy (IGRT) process, thereby making it a potential imaging modality for the implementation of adaptive radiotherapy (ART) protocols. Nonetheless, significant artifacts and incorrect Hounsfield unit (HU) values hinder their application in quantitative tasks such as target and organ segmentations and dose calculation. Therefore, acquiring CT-quality images from the CBCT scans is essential to implement online ART in clinical settings. Purpose: This work aims to develop an unsupervised learning method using the patient-specific diffusion model for CBCT-based synthetic CT (sCT) generation to improve the image quality of CBCT. Methods: The proposed method is in an unsupervised framework that utilizes a patient-specific score-based model as the image prior alongside a customized total variation (TV) regularization to enforce coherence across different transverse slices. The score-based model is unconditionally trained using the same patient's planning CT (pCT) images to characterize the manifold of CT-quality images and capture the unique anatomical information of the specific patient. The efficacy of the proposed method was assessed on images from anatomical sites including head and neck (H&N) cancer, pancreatic cancer, and lung cancer. The performance of the proposed CBCT correction method was evaluated using quantitative metrics, including mean absolute error (MAE), non-uniformity (NU), and structural similarity index measure (SSIM). Additionally, the proposed algorithm was benchmarked against other unsupervised learning-based CBCT correction algorithms. Results: The proposed method significantly reduced various kinds of CBCT artifacts in the studies of H&N, pancreatic, and lung cancer patients. In the lung stereotactic body radiation therapy (SBRT) patient study, the MAE, NU, and SSIM were improved from 47 HU, 45 HU, and 0.58 in the original CBCT images to 13 HU, 14 dB, and 0.67 in the generated sCT images. Compared to other unsupervised learning-based algorithms, the proposed method demonstrated superior performance in artifact reduction. Conclusions: The proposed unsupervised method can generate sCT from CBCT with reduced artifacts and precise HU values, enabling CBCT-guided segmentation and replanning for online ART. © 2024 American Association of Physicists in Medicine.
Keywords: cancer patient; pancreas cancer; unsupervised learning; bayes theorem; radiotherapy; lung cancer; oncology; retrospective study; algorithm; head and neck cancer; computerized tomography; medical imaging; total quality management; image quality; benchmarking; image processing, computer-assisted; image processing; stereotactic body radiation therapy; dose calculation; artifact reduction; arthroplasty; diseases; cone beam computed tomography; head-and-neck cancer; cone-beam computed tomography; protocol; cbct; image guided radiotherapy; procedures; ct image; humans; human; article; computed tomography scan; patient specific; unsupervised machine learning; synthetic ct; mean absolute error; hounsfield units; image artifact; anatomical location; diffusion model; electromagnetic pulse; online adaptive radiotherapies; quality image; noise measurement
Journal Title: Medical Physics
Volume: 52
Issue: 4
ISSN: 0094-2405
Publisher: American Association of Physicists in Medicine  
Date Published: 2025-04-01
Start Page: 2238
End Page: 2246
Language: English
DOI: 10.1002/mp.17572
PUBMED: 39666566
PROVIDER: scopus
DOI/URL:
Notes: Article -- Source: Scopus
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  1. Tonghe Wang
    43 Wang