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本文引用的文献

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Deep learning in radiology: An overview of the concepts and a survey of the state of the art with focus on MRI.深度学习在放射学中的应用:概念概述及磁共振成像技术的研究现状综述。
J Magn Reson Imaging. 2019 Apr;49(4):939-954. doi: 10.1002/jmri.26534. Epub 2018 Dec 21.
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Automatic defect detection for TFT-LCD array process using quasiconformal kernel support vector data description.基于拟共形核支持向量数据描述的TFT-LCD阵列工艺自动缺陷检测
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The physics of computed radiography.计算机X线摄影的物理学
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Empirical investigation of the signal performance of a high-resolution, indirect detection, active matrix flat-panel imager (AMFPI) for fluoroscopic and radiographic operation.对用于荧光透视和射线照相操作的高分辨率、间接检测、有源矩阵平板成像器(AMFPI)的信号性能进行实证研究。
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X-ray detectors for digital radiography.用于数字射线照相术的X射线探测器。
Phys Med Biol. 1997 Jan;42(1):1-39. doi: 10.1088/0031-9155/42/1/001.

利用深度学习进行平板X射线摄影成像中的像素缺陷校正。

Using deep learning for pixel-defect corrections in flat-panel radiography imaging.

作者信息

Lee Eunae, Hong Eunyeong, Kim Dong Sik

机构信息

Hankuk University of Foreign Studies, Department of Electronics Engineering, Gyeonggi-do, Republic of Korea.

DRTECH Co., Seongnam-si, Republic of Korea.

出版信息

J Med Imaging (Bellingham). 2021 Mar;8(2):023501. doi: 10.1117/1.JMI.8.2.023501. Epub 2021 Mar 4.

DOI:10.1117/1.JMI.8.2.023501
PMID:33681407
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7930811/
Abstract

Flat-panel radiography detectors employ thin-film transistor (TFT) panels to acquire high-quality x-ray images. Pixel defects occur due to circuit shorts or opens in the TFT panel. The defects may degrade the image quality, as well as lower the production yield, and eventually raise the production cost. Hence, it is important to develop an appropriate defect correction algorithm for acquired images. Traditional correction algorithms are based on a complicated adaptive filtering technique, which exploits neighbor pixels, to faithfully preserve the edge components. Because of the complexity of the traditional sophisticated approaches, optimizing their correction performances is difficult. We considered various pixel-defect correction algorithms based on different deep learning models, such as the artificial neural network (ANN), convolutional neural network (CNN), concatenate CNN, and generative adversarial networks (GAN). We considered two cases of maximal defect sizes, and , and conducted extensive learning experiments to find the best structures of the learning models using the mean square error (MSE) as the loss function. To conduct experiments, practical chest x-ray images were acquired from a general radiography detector. The MSE values of the correction results from ANN, CNN, concatenate CNN, and GAN were 69.40, 75.13, 68.21, and 73.77, respectively, and were much smaller than that of the conventional template match correction method. A concatenate CNN showed the best defect-correction performance. However, ANN could achieve a similar correction performance with much smaller encoding complexity. Therefore, the single-layer ANN can efficiently conduct defect corrections in terms of both correction and complexity.

摘要

平板X射线摄影探测器采用薄膜晶体管(TFT)面板来获取高质量的X射线图像。由于TFT面板中的电路短路或断路,会出现像素缺陷。这些缺陷可能会降低图像质量,同时降低生产良率,并最终提高生产成本。因此,为获取的图像开发一种合适的缺陷校正算法很重要。传统的校正算法基于复杂的自适应滤波技术,该技术利用相邻像素来忠实地保留边缘成分。由于传统复杂方法的复杂性,优化其校正性能很困难。我们考虑了基于不同深度学习模型的各种像素缺陷校正算法,如人工神经网络(ANN)、卷积神经网络(CNN)、级联CNN和生成对抗网络(GAN)。我们考虑了两种最大缺陷尺寸的情况,并进行了广泛的学习实验,以使用均方误差(MSE)作为损失函数来找到学习模型的最佳结构。为了进行实验,从普通的X射线摄影探测器获取了实际的胸部X射线图像。ANN、CNN、级联CNN和GAN校正结果的MSE值分别为69.40、75.13、68.21和73.77,并且远小于传统模板匹配校正方法的MSE值。级联CNN表现出最佳的缺陷校正性能。然而,ANN可以以小得多的编码复杂度实现类似的校正性能。因此,单层ANN在校正和复杂度方面都可以有效地进行缺陷校正。