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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Principal Component Analysis in Projection and Image Domains—Another Form of Spectral Imaging in Photon-Counting CT
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Principal Component Analysis in Projection and Image Domains—Another Form of Spectral Imaging in Photon-Counting CT

机译:投影和图像域的主成分分析 - 光子计数CT中的另一种形式的光谱成像

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Objective: We explore the feasibility of principal component analysis (PCA) as a form of spectral imaging in photon-counting CT. Methods: Using the data acquired by a prototype system and simulated by computer, we investigate the feasibility of spectral imaging in photon-counting CT via PCA for feature extraction and study the impacts made by data standardization and de-noising on its performance. Results: The PCA in the projection domain maintains the data consistence that is essential for tomographic image reconstruction and performs virtually the same as that in the image domain. The first three primary components account for more than 99.99% covariance of the data. Within anticipation, the contrast-to-noise ratio (CNR) between the target and background in the first principal component image can be larger than that in the image generated from the data acquired in each energy bin. More importantly, the CNR in the first principal component image may be larger than that in the image formed by the summed data acquired in all energy bins (i.e., the conventional polychromatic CT image). In addition, de-noising can not only reduce the noise in images but also improve the effectiveness/efficiency of PCA in feature extraction. Conclusion: The PCA in either projection or image domain provides another form of spectral imaging in photon-counting CT that fits the essential requirements on spectral imaging in true color. Significance: The verification of PCA's feasibility in CT as a form spectral imaging and observation of its potential superiority in CNR over conventional polychromatic CT are meaningful in theory and practice.
机译:目的:我们探讨了主成分分析(PCA)作为光子计数CT中光谱成像形式的可行性。方法:使用由原型系统获取的数据和计算机模拟,我们研究了通过PCA的光子计数CT中的光谱成像的可行性,用于特征提取,并研究数据标准化和对其性能取消发出的影响。结果:投影域中的PCA维护了对断层图像重建至关重要的数据一致性,并且实际上与图像域中的实际上相同。前三个主要组件占数据的超过99.99%。在预期内,第一主成分图像中的目标和背景之间的对比度(CNR)可以大于从每个能量仓中获取的数据产生的图像中的图像。更重要的是,第一主成分图像中的CNR可以大于由在所有能量箱(即,传统多色CT图像)中获取的总和数据形成的图像中的图像。此外,去噪不仅可以降低图像中的噪声,还可以提高特征提取中PCA的有效性/效率。结论:投影或图像域中的PCA在光子计数CT中提供了另一种形式的光谱成像,符合真实颜色的光谱成像的基本要求。意义:验证PCA在CT中的可行性作为形式光谱成像,并在常规多色CT中观察其在CNR中的潜在优越性在理论和实践中有意义。

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