Generalizable AI approach for detecting projection type and left-right reversal in chest X-rays.

IF 1.5 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Yukino Ohta, Yutaka Katayama, Takao Ichida, Akane Utsunomiya, Takayuki Ishida
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引用次数: 0

Abstract

The verification of chest X-ray images involves several checkpoints, including orientation and reversal. To address the challenges of manual verification, this study developed an artificial intelligence (AI)-based system using a deep convolutional neural network (DCNN) to automatically verify the consistency between the imaging direction and examination orders. The system classified the chest X-ray images into four categories: anteroposterior (AP), posteroanterior (PA), flipped AP, and flipped PA. To evaluate the impact of internal and external datasets on the classification accuracy, the DCNN was trained using multiple publicly available chest X-ray datasets and tested on both internal and external data. The results demonstrated that the DCNN accurately classified the imaging directions and detected image reversal. However, the classification accuracy was strongly influenced by the training dataset. When trained exclusively on NIH data, the network achieved an accuracy of 98.9% on the same dataset; however, this reduced to 87.8% when evaluated with PADChest data. When trained on a mixed dataset, the accuracy improved to 96.4%; however, it decreased to 76.0% when tested on an external COVID-CXNet dataset. Further, using Grad-CAM, we visualized the decision-making process of the network, highlighting the areas of influence, such as the cardiac silhouette and arm positioning, depending on the imaging direction. Thus, this study demonstrated the potential of AI in assisting in automating the verification of imaging direction and positioning in chest X-rays. However, the network must be fine-tuned to local data characteristics to achieve optimal performance.

用于胸部x光片投影类型和左右反转检测的通用人工智能方法。
胸部x线图像的验证涉及几个检查点,包括定向和反转。为了解决人工验证的挑战,本研究开发了一种基于人工智能(AI)的系统,利用深度卷积神经网络(DCNN)自动验证成像方向与检查顺序之间的一致性。该系统将胸部x线图像分为四类:正位(AP)、后前位(PA)、翻转AP和翻转PA。为了评估内部和外部数据集对分类精度的影响,DCNN使用多个公开可用的胸部x射线数据集进行训练,并在内部和外部数据上进行测试。结果表明,DCNN能够准确地对成像方向进行分类,并检测到图像的反转。然而,分类精度受到训练数据集的强烈影响。当仅对NIH数据进行训练时,该网络在同一数据集上的准确率达到98.9%;然而,当使用PADChest数据进行评估时,这一比例降至87.8%。在混合数据集上训练时,准确率提高到96.4%;然而,在外部COVID-CXNet数据集上进行测试时,它降至76.0%。此外,使用Grad-CAM,我们可视化了网络的决策过程,突出了影响区域,如心脏轮廓和手臂定位,取决于成像方向。因此,本研究证明了人工智能在协助自动验证胸部x射线成像方向和定位方面的潜力。但是,必须对网络进行微调,以适应本地数据的特点,以获得最佳性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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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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