The use of artificial intelligence technologies as a way to ensure the quality of chest radiography.

A. A. Borisov, Yu.A. Vasiliev, A.V. Vladzymyrskyy, O. V. Omelyanskaya, K. M. Arzamasov, Yu.S. Kirpichev
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Abstract

When performing radiographic studies, errors may occur that reduce the diagnostic value of the radiographs and complicate their interpretation by radiologists and diagnostic software based on artificial intelligence technology. The creation of automated quality assessment systems will optimize this process, especially in conditions of increased workload of medical personnel. Purpose: development of an automated quality control tool for chest radiographs, which allows for quality control of the patient’s positioning and the correctness of filling in meta-information about the study. Material and methods.To train and test automated quality control models, were used 61505 chest radiographs, obtained from open datasets and the Unified Radiological Information Service of the Unified Medical Information Analysis System of the City of Moscow. To create models we used transfer training of deep neural network architectures VGG19 and ResNet152V2. Results. 7 models were created: a model for determining the anatomical area of study, a model for determining projection, a model for determining photometric interpretation, models for determining incomplete visualization of the anatomical area on the frontal and lateral projections of the chest radiographs, a model for determining rotation on the lateral projection of the chest radiographs. All created models have diagnostic accuracy metrics above 95%, which allows them to be used in clinical practice. Based on the developed models, a web-based quality control tool of the chest radiographs was created, which allows analyzing the quality of X-ray datasets. Conclusion. The active use of this quality control tool will optimize the process of assessing the quality of diagnostic studies and facilitate the processes of classification of studies and the formation of datasets. Also, this tool can be used to support the decision-making of an X-ray technician and assess the quality of the study before sending the study for processing to artificial intelligence-based services.
利用人工智能技术作为保证胸片质量的一种方式。
在进行放射学研究时,可能会出现错误,从而降低x光片的诊断价值,并使放射科医生和基于人工智能技术的诊断软件对其进行解释复杂化。自动质量评估系统的创建将优化这一过程,特别是在医务人员工作量增加的情况下。目的:开发一种用于胸部x线片的自动质量控制工具,该工具可以对患者的体位进行质量控制,并正确填写有关研究的元信息。材料和方法。为了训练和测试自动化质量控制模型,使用了61505张胸片,这些胸片来自莫斯科市统一医疗信息分析系统的开放数据集和统一放射信息服务。为了创建模型,我们使用了深度神经网络架构VGG19和ResNet152V2的迁移训练。结果:创建了7个模型:一个用于确定研究的解剖区域的模型,一个用于确定投影的模型,一个用于确定光度解释的模型,一个用于确定胸片正面和侧面投影上解剖区域不完全可视化的模型,一个用于确定胸片侧面投影上旋转的模型。所有创建的模型的诊断准确率指标都在95%以上,这使得它们可以用于临床实践。基于开发的模型,创建了基于网络的胸片质量控制工具,可以分析x射线数据集的质量。结论。积极使用该质量控制工具将优化评估诊断研究质量的过程,并促进研究分类和数据集形成的过程。此外,该工具可用于支持x射线技术人员的决策,并在将研究发送给基于人工智能的服务进行处理之前评估研究的质量。
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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