To maintain a standard in a medical imaging study, images should have necessary image quality for potential diagnostic use. Although CNN-based approaches are used to assess the image quality, their performance can still be improved in terms of accuracy. In this work, we approach this problem by using Swin Transformer, which improves the poor-quality image classification performance that causes the degradation in medical image quality. We test our approach on Foreign Object Classification problem on Chest X-Rays (Object-CXR) and Left Ventricular Outflow Tract Classification problem on Cardiac MRI with a four-chamber view (LVOT). While we obtain a classification accuracy of 87.1% and 95.48% on the Object-CXR and LVOT datasets, our experimental results suggest that the use of Swin Transformer improves the Object-CXR classification performance while obtaining a comparable performance for the LVOT dataset. To the best of our knowledge, our study is the first vision transformer application for medical image quality assessment.
翻译:为了保持医学成像研究的标准,图像应具有必要的图像质量,以便进行可能的诊断。尽管使用CNN方法来评估图像质量,但其性能仍然可以提高准确性。在这项工作中,我们通过使用Swin变换器来解决这一问题,Swin变换器提高了导致医学成像质量退化的低质量图像分类性能。我们测试了我们在胸前X-射线(Object-CXR)和心肺外流分解左侧分解问题方面的做法。根据我们的知识,我们的研究是用四组视图(LOT)对心血管MRI(心电图)进行医学成像质量评估的第一个愿景变换应用。