论文标题
ICU入院在Covid-19患者的X射线图像中的潜在特征
Potential Features of ICU Admission in X-ray Images of COVID-19 Patients
论文作者
论文摘要
X射线图像可能会带来非平凡的特征,并具有患者患者的预测信息,这些信息会出现COVID-19的严重症状。如果是的,则该假设在使用相对便宜的成像技术的同时,将资源分配给特定患者可能具有实际价值。检验这种假设的困难来自对大量标记数据的需求,这些数据需要被宣布良好,应该考虑到后成像的严重性结果。本文介绍了一种用于提取语义特征的原始方法,该方法与通过可解释模型的患者ICU入学标签的数据集相关联。该方法采用了一个训练有素的神经网络来识别肺部病理以提取语义特征,然后使用低复杂模型对其进行分析,以限制过度拟合的同时提高可解释性。该分析指出,只有一些特征解释了出现严重症状的患者之间的大多数差异。当应用于与病理相关的临床注释无关的较大数据集时,该方法已证明能够为学习特征选择图像,这可以转化有关其肺部常见位置的一些信息。除了证明最终出现严重症状的患者的可分离性外,提出的方法代表了一种统计方法,强调了与ICU入院有关的特征的重要性,而ICU入院的特征可能仅在定性上报道。在处理有限的数据集的同时,采用了显着的方法论方面,例如呈现最新的肺部分割网络以及使用低复杂模型以避免过度拟合。还提供了方法论和实验的代码。
X-ray images may present non-trivial features with predictive information of patients that develop severe symptoms of COVID-19. If true, this hypothesis may have practical value in allocating resources to particular patients while using a relatively inexpensive imaging technique. The difficulty of testing such a hypothesis comes from the need for large sets of labelled data, which need to be well-annotated and should contemplate the post-imaging severity outcome. This paper presents an original methodology for extracting semantic features that correlate to severity from a data set with patient ICU admission labels through interpretable models. The methodology employs a neural network trained to recognise lung pathologies to extract the semantic features, which are then analysed with low-complexity models to limit overfitting while increasing interpretability. This analysis points out that only a few features explain most of the variance between patients that developed severe symptoms. When applied to an unrelated larger data set with pathology-related clinical notes, the method has shown to be capable of selecting images for the learned features, which could translate some information about their common locations in the lung. Besides attesting separability on patients that eventually develop severe symptoms, the proposed methods represent a statistical approach highlighting the importance of features related to ICU admission that may have been only qualitatively reported. While handling limited data sets, notable methodological aspects are adopted, such as presenting a state-of-the-art lung segmentation network and the use of low-complexity models to avoid overfitting. The code for methodology and experiments is also available.