Chest X-rays become one of the most common medical diagnoses due to its noninvasiveness. The number of chest X-ray images has skyrocketed, but reading chest X-rays still have been manually performed by radiologists, which creates huge burnouts and delays. Traditionally, radiomics, as a subfield of radiology that can extract a large number of quantitative features from medical images, demonstrates its potential to facilitate medical imaging diagnosis before the deep learning era. In this paper, we develop an algorithm that can utilize the radiomics features to improve the abnormality classification performance. Our algorithm, ChexRadiNet, applies a light-weight but efficient triplet-attention mechanism for highlighting the meaningful image regions to improve localization accuracy. We first apply ChexRadiNet to classify the chest X-rays by using only image features. Then we use the generated heatmaps of chest X-rays to extract radiomics features. Finally, the extracted radiomics features could be used to guide our model to learn more robust accurate image features. After a number of iterations, our model could focus on more accurate image regions and extract more robust features. The empirical evaluation of our method supports our intuition and outperforms other state-of-the-art methods.
翻译:切斯特X射线因其非侵入性而成为最常见的医学诊断之一。胸部X射线图像的数量急剧上升,但阅读胸部X射线仍由放射学家手工操作,造成大量烧伤和延误。传统上,放射作为放射学的子领域,能够从医学图像中提取大量数量特征,展示其潜力,在深层次学习时代之前促进医学成像诊断。在本文中,我们开发了一种算法,可以利用放射特征改进异常分类性能。我们的算法ChexRadiNet应用了轻量但有效的三重注意机制来突出有意义的图像区域,以提高本地化的准确性。我们首先使用ChexRadiNet对胸部X射线进行分类,仅使用图像特征即可。然后,我们利用生成的胸部X射线热分布图来提取放射特征。最后,提取的放射特征可以用来指导我们的模型学习更可靠的准确图像特征。经过一系列的测算,我们的模型可以侧重于更准确的图像区域,并提取我们其他更可靠的直观的特征。