A deep-learning-based scatter correction with water equivalent path length map for digital radiography.

IF 1.7 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Radiological Physics and Technology Pub Date : 2024-06-01 Epub Date: 2024-05-02 DOI:10.1007/s12194-024-00807-9
Masayuki Hattori, Hisato Tsubakiya, Sung-Hyun Lee, Takayuki Kanai, Koji Suzuki, Tetsuya Yuasa
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引用次数: 0

Abstract

We proposed a new deep learning (DL) model for accurate scatter correction in digital radiography. The proposed network featured a pixel-wise water equivalent path length (WEPL) map of subjects with diverse sizes and 3D inner structures. The proposed U-Net model comprises two concatenated modules: one for generating a WEPL map and the other for predicting scatter using the WEPL map as auxiliary information. First, 3D CT images were used as numerical phantoms for training and validation, generating observed and scattered images by Monte Carlo simulation, and WEPL maps using Siddon's algorithm. Then, we optimised the model without overfitting. Next, we validated the proposed model's performance by comparing it with other DL models. The proposed model obtained scatter-corrected images with a peak signal-to-noise ratio of 44.24 ± 2.89 dB and a structural similarity index measure of 0.9987 ± 0.0004, which were higher than other DL models. Finally, scatter fractions (SFs) were compared with other DL models using an actual phantom to confirm practicality. Among DL models, the proposed model showed the smallest deviation from measured SF values. Furthermore, using an actual radiograph containing an acrylic object, the contrast-to-noise ratio (CNR) of the proposed model and the anti-scatter grid were compared. The CNR of the images corrected using the proposed model are 16% and 82% higher than those of the raw and grid-applied images, respectively. The advantage of the proposed method is that no actual radiography system is required for collecting training dataset, as the dataset is created from CT images using Monte Carlo simulation.

基于深度学习的数字射线摄影散射校正与水等效路径长度图。
我们提出了一种新的深度学习(DL)模型,用于数字射线摄影中的精确散射校正。所提议的网络以具有不同尺寸和三维内部结构的被摄体的像素等效水路径长度(WEPL)图为特征。拟议的 U-Net 模型包括两个串联模块:一个用于生成 WEPL 图,另一个用于使用 WEPL 图作为辅助信息预测散射。首先,使用三维 CT 图像作为数值模型进行训练和验证,通过蒙特卡罗模拟生成观察图像和散射图像,并使用 Siddon 算法生成 WEPL 图。然后,我们在不过度拟合的情况下对模型进行了优化。接下来,我们通过与其他 DL 模型进行比较,验证了所提出模型的性能。所提模型获得的散射校正图像的峰值信噪比为 44.24 ± 2.89 dB,结构相似性指数为 0.9987 ± 0.0004,均高于其他 DL 模型。最后,利用实际模型与其他 DL 模型进行了散射分数(SF)比较,以确认其实用性。在 DL 模型中,所提出的模型与测量 SF 值的偏差最小。此外,还使用包含丙烯酸物体的实际射线照片,比较了建议模型和反散射网格的对比度-噪声比(CNR)。使用建议模型校正的图像的 CNR 分别比原始图像和应用网格的图像高出 16% 和 82%。建议方法的优点是无需实际的放射成像系统来收集训练数据集,因为数据集是通过蒙特卡罗模拟从 CT 图像中创建的。
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来源期刊
Radiological Physics and Technology
Radiological Physics and Technology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
3.00
自引率
12.50%
发文量
40
期刊介绍: The purpose of the journal Radiological Physics and Technology is to provide a forum for sharing new knowledge related to research and development in radiological science and technology, including medical physics and radiological technology in diagnostic radiology, nuclear medicine, and radiation therapy among many other radiological disciplines, as well as to contribute to progress and improvement in medical practice and patient health care.
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