Most of the Deep Neural Networks (DNNs) based CT image denoising literature shows that DNNs outperform traditional iterative methods in terms of metrics such as the RMSE, the PSNR and the SSIM. In many instances, using the same metrics, the DNN results from low-dose inputs are also shown to be comparable to their high-dose counterparts. However, these metrics do not reveal if the DNN results preserve the visibility of subtle lesions or if they alter the CT image properties such as the noise texture. Accordingly, in this work, we seek to examine the image quality of the DNN results from a holistic viewpoint for low-dose CT image denoising. First, we build a library of advanced DNN denoising architectures. This library is comprised of denoising architectures such as the DnCNN, U-Net, Red-Net, GAN, etc. Next, each network is modeled, as well as trained, such that it yields its best performance in terms of the PSNR and SSIM. As such, data inputs (e.g. training patch-size, reconstruction kernel) and numeric-optimizer inputs (e.g. minibatch size, learning rate, loss function) are accordingly tuned. Finally, outputs from thus trained networks are further subjected to a series of CT bench testing metrics such as the contrast-dependent MTF, the NPS and the HU accuracy. These metrics are employed to perform a more nuanced study of the resolution of the DNN outputs' low-contrast features, their noise textures, and their CT number accuracy to better understand the impact each DNN algorithm has on these underlying attributes of image quality.
翻译:以深神经网络(Deep Neal Networks)为基础的大多数基于深神经网络(DNN)图像分解文献显示,DNN在RMSE、PSNR和SSIM等衡量标准方面优于传统的迭代方法。在许多情况下,使用同样的衡量标准,DNN的低剂量输入结果也显示与其高剂量的对应单位相仿。然而,这些衡量标准没有显示,如果DNN的结果保持了微妙的偏差的可见度,或者它们改变了CT的偏差性,例如噪音纹理等。因此,在这项工作中,我们试图从低剂量CT图像分解的整体观点中审查DNNN结果的准确性。首先,我们建立了一个高级DNNND分解结构的图书馆。这个图书馆由DNNNNN、 U-Net、Red-Net、GAN等消化结构组成。这些网络经过了建模,并且经过培训后,在PSNRNR和SSIM方面产生了最佳的性能。因此,其内部数据输入(egnNNNNNCal-dealalalalal ladeal-deal ladeal lade ) 和Mim redustrual-deal redudududududududududududududududududududuction 。