Liu Chi-Kuang, Chang Hui-Yu, Huang Hsuan-Ming
Department of Medical Imaging, Changhua Christian Hospital, 135 Nanxiao St., Changhua, 500, Taiwan.
Institute of Medical Device and Imaging, College of Medicine, National Taiwan University, No.1, Sec. 1, Jen Ai Rd., Zhongzheng Dist., Taipei City, 100, Taiwan.
Phys Eng Sci Med. 2025 May 31. doi: 10.1007/s13246-025-01560-y.
Since its development, virtual monoenergetic imaging (VMI) derived from dual-energy computed tomography (DECT) has been shown to be valuable in many clinical applications. However, DECT-based VMI showed increased noise at low keV levels. In this study, we proposed an unsupervised learning method to generate VMI from DECT. This means that we don't require training and labeled (i.e. high-quality VMI) data. Specifically, DECT images were fed into a deep learning (DL) based model expected to output VMI. Based on the theory that VMI obtained from image space data is a linear combination of DECT images, we used the model output (i.e. the predicted VMI) to recalculate DECT images. By minimizing the difference between the measured and recalculated DECT images, the DL-based model can be constrained itself to generate VMI from DECT images. We investigate whether the proposed DL-based method has the ability to improve the quality of VMIs. The experimental results obtained from patient data showed that the DL-based VMIs had better image quality than the conventional DECT-based VMIs. Moreover, the CT number differences between the DECT-based and DL-based VMIs were distributed within 10 HU for bone and 5 HU for brain, fat, and muscle. Except for bone, no statistically significant difference in CT number measurements was found between the DECT-based and DL-based VMIs (p > 0.01). Our preliminary results show that DL has the potential to unsupervisedly generate high-quality VMIs directly from DECT.
自双能计算机断层扫描(DECT)衍生出虚拟单能成像(VMI)以来,它已在许多临床应用中显示出价值。然而,基于DECT的VMI在低keV水平下噪声增加。在本研究中,我们提出了一种无监督学习方法,用于从DECT生成VMI。这意味着我们不需要训练数据和带标签(即高质量VMI)的数据。具体而言,将DECT图像输入到一个基于深度学习(DL)的模型中,期望该模型输出VMI。基于从图像空间数据获得的VMI是DECT图像的线性组合这一理论,我们使用模型输出(即预测的VMI)重新计算DECT图像。通过最小化测量的和重新计算的DECT图像之间的差异,基于DL的模型可以自我约束以从DECT图像生成VMI。我们研究了所提出的基于DL的方法是否有能力提高VMI的质量。从患者数据获得的实验结果表明,基于DL的VMI比传统的基于DECT的VMI具有更好的图像质量。此外,基于DECT的VMI和基于DL的VMI之间的CT值差异在骨骼中分布在10 HU以内,在脑、脂肪和肌肉中分布在5 HU以内。除骨骼外,基于DECT的VMI和基于DL的VMI在CT值测量上没有发现统计学上的显著差异(p>0.01)。我们的初步结果表明,深度学习有潜力直接从DECT无监督地生成高质量的VMI。