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用于CT降噪的自训练深度卷积神经网络。

Self-trained deep convolutional neural network for noise reduction in CT.

作者信息

Zhou Zhongxing, Inoue Akitoshi, McCollough Cynthia H, Yu Lifeng

机构信息

Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.

出版信息

J Med Imaging (Bellingham). 2023 Jul;10(4):044008. doi: 10.1117/1.JMI.10.4.044008. Epub 2023 Aug 24.

Abstract

PURPOSE

Supervised deep convolutional neural network (CNN)-based methods have been actively used in clinical CT to reduce image noise. The networks of these methods are typically trained using paired high- and low-quality data from a massive number of patients and/or phantom images. This training process is tedious, and the network trained under a given condition may not be generalizable to patient images acquired and reconstructed under different conditions. We propose a self-trained deep CNN (ST_CNN) method for noise reduction in CT that does not rely on pre-existing training datasets.

APPROACH

The ST_CNN training was accomplished using extensive data augmentation in the projection domain, and the inference was applied to the data itself. Specifically, multiple independent noise insertions were applied to the original patient projection data to generate multiple realizations of low-quality projection data. Then, rotation augmentation was adopted for both the original and low-quality projection data by applying the rotation angle directly on the projection data so that images were rotated at arbitrary angles without introducing additional bias. A large number of paired low- and high-quality images from the same patient were reconstructed and paired for training the ST_CNN model.

RESULTS

No significant difference was found between the ST_CNN and conventional CNN models in terms of the peak signal-to-noise ratio and structural similarity index measure. The ST_CNN model outperformed the conventional CNN model in terms of noise texture and homogeneity in liver parenchyma as well as better subjective visualization of liver lesions. The ST_CNN may sacrifice the sharpness of vessels slightly compared to the conventional CNN model but without affecting the visibility of peripheral vessels or diagnosis of vascular pathology.

CONCLUSIONS

The proposed ST_CNN method trained from the data itself may achieve similar image quality in comparison with conventional deep CNN denoising methods pre-trained on external datasets.

摘要

目的

基于监督深度卷积神经网络(CNN)的方法已被积极应用于临床CT以降低图像噪声。这些方法的网络通常使用来自大量患者的配对高质量和低质量数据及/或体模图像进行训练。这个训练过程很繁琐,并且在给定条件下训练的网络可能无法推广到在不同条件下采集和重建的患者图像。我们提出一种用于CT降噪的自训练深度CNN(ST_CNN)方法,该方法不依赖于预先存在的训练数据集。

方法

ST_CNN训练是通过在投影域中进行广泛的数据增强来完成的,并且推理应用于数据本身。具体而言,对原始患者投影数据应用多次独立的噪声插入,以生成低质量投影数据的多个实例。然后,通过直接在投影数据上应用旋转角度,对原始投影数据和低质量投影数据都采用旋转增强,以便图像以任意角度旋转而不引入额外偏差。从同一患者重建并配对大量低质量和高质量的配对图像,用于训练ST_CNN模型。

结果

在峰值信噪比和结构相似性指数测量方面,ST_CNN与传统CNN模型之间未发现显著差异。在肝脏实质的噪声纹理和均匀性方面以及肝脏病变的更好主观可视化方面,ST_CNN模型优于传统CNN模型。与传统CNN模型相比,ST_CNN可能会稍微牺牲血管的清晰度,但不影响外周血管的可见性或血管病变的诊断。

结论

与在外部数据集上预训练的传统深度CNN去噪方法相比,从数据本身训练的所提出的ST_CNN方法可以实现相似的图像质量。

相似文献

1
Self-trained deep convolutional neural network for noise reduction in CT.用于CT降噪的自训练深度卷积神经网络。
J Med Imaging (Bellingham). 2023 Jul;10(4):044008. doi: 10.1117/1.JMI.10.4.044008. Epub 2023 Aug 24.

本文引用的文献

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Unsharp Structure Guided Filtering for Self-Supervised Low-Dose CT Imaging.基于非锐化掩模引导滤波的自监督低剂量 CT 成像方法
IEEE Trans Med Imaging. 2023 Nov;42(11):3283-3294. doi: 10.1109/TMI.2023.3280217. Epub 2023 Oct 27.

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