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基于全剂量训练数据库的自适应先验特征的低剂量肺部 CT 图像恢复。

Low-Dose Lung CT Image Restoration Using Adaptive Prior Features From Full-Dose Training Database.

出版信息

IEEE Trans Med Imaging. 2017 Dec;36(12):2510-2523. doi: 10.1109/TMI.2017.2757035. Epub 2017 Sep 27.

DOI:10.1109/TMI.2017.2757035
PMID:28961108
Abstract

The valuable structure features in full-dose computed tomography (FdCT) scans can be exploited as prior knowledge for low-dose CT (LdCT) imaging. However, lacking the capability to represent local characteristics of interested structures of the LdCT image adaptively may result in poor preservation of details/textures in LdCT image. This paper aims to explore a novel prior knowledge retrieval and representation paradigm, called adaptive prior features assisted restoration algorithm, for the purpose of better restoration of the low-dose lung CT images by capturing local features from FdCT scans adaptively. The innovation lies in the construction of an offline training database and the online patch-search scheme integrated with the principal components analysis (PCA). Specifically, the offline training database is composed of 3-D patch samples extracted from existing full-dose lung scans. For online patch-search, 3-D patches with structure similar to the noisy target patch are first selected from the database as the training samples. Then, PCA is applied on the training samples to retrieve their local prior principal features adaptively. By employing the principal features to decompose the noisy target patch and using an adaptive coefficient shrinkage technique for inverse transformation, the noise of the target patch can be efficiently removed and the detailed texture can be well preserved. The effectiveness of the proposed algorithm was validated by CT scans of patients with lung cancer. The results show that it can achieve a noticeable gain over some state-of-the-art methods in terms of noise suppression and details/textures preservation.

摘要

全剂量计算机断层扫描(FdCT)中的有价值的结构特征可以被利用为低剂量 CT(LdCT)成像的先验知识。然而,由于缺乏自适应表示 LdCT 图像中感兴趣结构的局部特征的能力,可能导致 LdCT 图像中细节/纹理的保存效果不佳。本文旨在探索一种新的先验知识检索和表示范式,称为自适应先验特征辅助恢复算法,用于通过自适应地从 FdCT 扫描中捕获局部特征来更好地恢复低剂量肺部 CT 图像。创新之处在于构建了一个离线训练数据库和一个与主成分分析(PCA)集成的在线补丁搜索方案。具体来说,离线训练数据库由从现有全剂量肺部扫描中提取的三维补丁样本组成。对于在线补丁搜索,首先从数据库中选择与噪声目标补丁结构相似的三维补丁作为训练样本。然后,在训练样本上应用 PCA 自适应地检索其局部先验主特征。通过使用主特征对噪声目标补丁进行分解,并使用自适应系数收缩技术进行逆变换,可以有效地去除目标补丁的噪声,并很好地保留细节纹理。通过对肺癌患者的 CT 扫描进行验证,验证了所提出算法的有效性。结果表明,与一些最先进的方法相比,该算法在噪声抑制和细节/纹理保持方面具有显著的优势。

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