基于随机医学测量嵌入的零空间去噪扩散交叉模态增强稀疏CT成像

IF 6.2 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Xiaoyue Li , Kai Shang , Mark D. Butala , Gaoang Wang
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引用次数: 0

摘要

稀疏视图医学计算机断层扫描(CT)扩散模型的最新进展缓解了监督深度学习中的常见问题,如过度平滑和有限泛化。然而,这些模型往往依赖于冗长的采样链,导致不切实际的计算时间和错误积累,特别是在数据分布发生重大变化的情况下。此外,他们通常会忽视临床噪音,这在现实世界中很普遍。为了解决这些问题,我们引入了带有交叉模态先验和物理测量嵌入的去噪扩散模型(DDMM-CT)来重建稀疏视图CT图像。DDMM-CT利用跨模态几何信息细化推理过程中中间结果的零空间,在每个去噪步骤中缩小目标区域。测量相关的空间组件被替换为物理运算符和测量的组合,以最小的额外计算来强制数据一致性。集成了误差反馈校正块,以减少由于重构步骤不完善而产生的误差。我们也提出了ddmm - ct噪声,设计用于临床场景复杂的噪声混合。该方法具有良好的通用性和灵活性,无需再训练即可调整投影数量和测量噪声强度。我们的研究结果表明,DDMM-CT在推理时间和图像质量方面优于最近的同类方法。代码可在https://github.com/Lxy98Code/DDMM-CT上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-modal enhanced sparse CT imaging via null-space denoising diffusion with random medical measurement embedding
Recent advancements in diffusion models for sparse-view medical computed tomography (CT) have mitigated common issues in supervised deep learning, such as over-smoothing and limited generalization. However, these models often rely on lengthy sampling chains, leading to impractical computation times and error accumulation, especially under significant data distribution shifts. Moreover, they typically overlook clinical noise, which is prevalent in real-world scenarios. To address these challenges, we introduce the Denoising Diffusion model with cross-Modal prior and physical Measurement embedding (DDMM-CT) for reconstructing sparse-view CT images. DDMM-CT refines the null space of intermediate results during inference by leveraging cross-modal geometric information, narrowing the target region in each denoising step. The measurement-related space component is replaced with a combination of the physical operator and measurements to enforce data consistency with minimal additional computation. An error-feedback correction block is integrated to reduce errors from imperfect reconstruction steps. We also present DDMM-CT-noise, designed for clinical scenarios with complex noise mixtures. The proposed method demonstrates superior generalization and flexibility, allowing adjustments in the number of projections and measurement noise intensity without retraining. Our results show that DDMM-CT outperforms recent comparable methods in terms of inference time and image quality. The code is available at https://github.com/Lxy98Code/DDMM-CT.
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来源期刊
alexandria engineering journal
alexandria engineering journal Engineering-General Engineering
CiteScore
11.20
自引率
4.40%
发文量
1015
审稿时长
43 days
期刊介绍: Alexandria Engineering Journal is an international journal devoted to publishing high quality papers in the field of engineering and applied science. Alexandria Engineering Journal is cited in the Engineering Information Services (EIS) and the Chemical Abstracts (CA). The papers published in Alexandria Engineering Journal are grouped into five sections, according to the following classification: • Mechanical, Production, Marine and Textile Engineering • Electrical Engineering, Computer Science and Nuclear Engineering • Civil and Architecture Engineering • Chemical Engineering and Applied Sciences • Environmental Engineering
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