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Bayesian reconstruction of ultralow-dose CT images with texture prior from existing diagnostic full-dose CT database

机译:从现有诊断全剂量CT数据库中纹理的UltraLow剂量CT图像的贝叶斯重建

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Markov random field (MRF) has been widely used to incorporate a priori knowledge as a penalty for regional smoothing in ultralow-dose computed tomography (ULdCT) image reconstruction, while the regional smoothing does not explicitly consider the tissue-specific textures. Our previous work showed the tissue-specific textures can be enhanced by extracting the tissue-specific MRF from the to-be-reconstructed subject's previous full-dose CT (FdCT) scans. However, the same subject's FdCT scans might not be available in some applications. To address this limitation, we have also investigated the feasibility of extracting the tissue-specific textures from an existing FdCT database instead of the to-be-reconstructed subject. This study aims to implement a machine learning strategy to realize the feasibility. Specifically, we trained a Random Forest (RF) model to learn the intrinsic relationship between the tissue textures and subjects' physiological features. By learning this intrinsic correlation, this model can be used to identify one MRF candidate from the database as the prior knowledge for any subject's current ULdCT image reconstruction. Besides the conventional physiological factors (like body mass index: BMI, gender, age), we further introduced another two features LungMark and BodyAngle to address the scanning position and angle. The experimental results showed that the BMI and LungMark are two features of the most importance for the classification. Our trained model can predict 0.99 precision at the recall rate of 2%, which means that for each subject, there will be 3390*0.02 = 67.8 valid MRF candidates in the database, where 3,390 is the total number of candidates in the database. Moreover, it showed that introducing the ULdCT texture prior into the RF model can increase the recall rate by 3% while the precision remaining 0.99.
机译:Markov随机场(MRF)已被广泛用于将先验知识纳入超级剂量计算断层扫描(ULDCT)图像重建的区域平滑的惩罚,而区域平滑不会明确考虑组织特异性纹理。我们以前的工作表明,通过从待重建的受试者之前的全剂量CT(FDCT)扫描中,通过提取组织特异性MRF可以提高组织特异性纹理。但是,在某些应用中可能无法使用相同的主题FDCT扫描。为了解决此限制,我们还研究了从现有的FDCT数据库提取组织特异性纹理而不是待重建的主题的可行性。本研究旨在实施机器学习策略,以实现可行性。具体而言,我们培训了随机森林(RF)模型来学习组织纹理和受试者的生理特征之间的内在关系。通过学习这种内在相关性,该模型可用于从数据库中识别一个MRF候选者作为任何受试者当前的ULDCT图像重建的先前知识。除了传统的生理因素(如体重指数:BMI,性别,年龄),我们还进一步推出了另外两个特征Lungmark和Bodyangle以解决扫描位置和角度。实验结果表明,BMI和Lungmark是对分类最重要的两个特征。我们培训的模型可以以2%的召回率预测0.99精度,这意味着对于每个主题,数据库中将有3390 * 0.02 = 67.8有效的MRF候选者,其中3,390个是数据库中的候选人总数。此外,它表明,在RF模型中引入ULDCT纹理可以将召回率增加3%,而剩余0.99。

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