Influence of augmentation on the performance of the double ResNet-based model for chest X-ray classification.

IF 0.9 Q4 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Anna Kloska, Martyna Tarczewska, Agata Giełczyk, Sylwester Michał Kloska, Adrian Michalski, Zbigniew Serafin, Marcin Woźniak
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Abstract

Purpose: A pandemic disease elicited by the SARS-CoV-2 virus has become a serious health issue due to infecting millions of people all over the world. Recent publications prove that artificial intelligence (AI) can be used for medical diagnosis purposes, including interpretation of X-ray images. X-ray scanning is relatively cheap, and scan processing is not computationally demanding.

Material and methods: In our experiment a baseline transfer learning schema of processing of lung X-ray images, including augmentation, in order to detect COVID-19 symptoms was implemented. Seven different scenarios of augmentation were proposed. The model was trained on a dataset consisting of more than 30,000 X-ray images.

Results: The obtained model was evaluated using real images from a Polish hospital, with the use of standard metrics, and it achieved accuracy = 0.9839, precision = 0.9697, recall = 1.0000, and F1-score = 0.9846.

Conclusions: Our experiment proved that augmentations and masking could be important steps of data pre-processing and could contribute to improvement of the evaluation metrics. Because medical professionals often tend to lack confidence in AI-based tools, we have designed the proposed model so that its results would be explainable and could play a supporting role for radiology specialists in their work.

Abstract Image

Abstract Image

Abstract Image

增强对双重resnet胸片分类模型性能的影响。
目的:由SARS-CoV-2病毒引发的大流行疾病已成为全球数百万人感染的严重健康问题。最近的出版物证明,人工智能(AI)可用于医学诊断目的,包括解释x射线图像。x射线扫描相对便宜,扫描处理对计算的要求也不高。材料和方法:在我们的实验中,实施了一种基线迁移学习模式,用于处理肺部x射线图像,包括增强,以检测COVID-19症状。提出了七种不同的增强方案。该模型是在一个由3万多张x射线图像组成的数据集上训练的。结果:采用波兰某医院的真实影像,采用标准指标对模型进行评价,准确率为0.9839,精密度为0.9697,召回率为1.0000,f1评分为0.9846。结论:我们的实验证明,增强和屏蔽是数据预处理的重要步骤,有助于改进评估指标。由于医疗专业人员往往对基于人工智能的工具缺乏信心,我们设计了拟议的模型,以便其结果可以解释,并可以在放射学专家的工作中发挥辅助作用。
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来源期刊
Polish Journal of Radiology
Polish Journal of Radiology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
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2.10
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