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Image Embedding and Model Ensembling for Automated Chest X-Ray Interpretation

机译:用于胸部X射线自动判读的图像嵌入和模型置乱

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Chest X-ray (CXR) is perhaps the most frequently-performed radiological investigation globally. In this work, we present and study several machine learning approaches to develop automated CXR diagnostic models. In particular, we trained several Convolutional Neural Networks (CNN) on the CheXpert dataset, a large collection of more than 200k CXR labeled images. Then, we used the trained CNNs to compute embeddings of the CXR images, in order to train two sets of tree-based classifiers from them. Finally, wed escribed and compared three ensembling strategies to combine together the classifiers trained. Rather than expecting some performance-wise benefits, o ur goal i n this work iss howing that t he above two methodologies, i.e., the extraction of image embeddings and models ensembling, can be effective and viable to solve tasks that require medical imaging understanding. Our results in that perspective are encouraging and worthy of further investigation.
机译:胸部X射线(CXR)可能是全球最常进行的放射学检查。在这项工作中,我们提出并研究了几种机器学习方法来开发自动化的CXR诊断模型。特别是,我们在CheXpert数据集上训练了几个卷积神经网络(CNN),这是一个包含超过200k个CXR标记图像的大型集合。然后,我们使用经过训练的CNN计算CXR图像的嵌入,以便从中训练两组基于树的分类器。最后,我们描述并比较了三种融合策略,以将训练的分类器结合起来。我们在这项工作中的目标不是期望从性能方面获得一些好处,而是展示上述两种方法,即图像嵌入提取和模型融合,能够有效且可行地解决需要医学影像理解的任务。我们在这方面的结果令人鼓舞,值得进一步调查。

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