Since the pandemic of COVID-19, several deep learning methods were proposed to analyze the chest Computed Tomography (CT) for diagnosis. In the current situation, the disease course classification is significant for medical personnel to decide the treatment. Most previous deep-learning-based methods extract features observed from the lung window. However, it has been proved that some appearances related to diagnosis can be observed better from the mediastinal window rather than the lung window, e.g., the pulmonary consolidation happens more in severe symptoms. In this paper, we propose a novel Dual Window RCNN Network (DWRNet), which mainly learns the distinctive features from the successive mediastinal window. Regarding the features extracted from the lung window, we introduce the Lung Window Attention Block (LWA Block) to pay additional attention to them for enhancing the mediastinal-window features. Moreover, instead of picking up specific slices from the whole CT slices, we use a Recurrent CNN and analyze successive slices as videos. Experimental results show that the fused and representative features improve the predictions of disease course by reaching the accuracy of 90.57%, against the baseline with an accuracy of 84.86%. Ablation studies demonstrate that combined dual window features are more efficient than lung-window features alone, while paying attention to lung-window features can improve the model's stability.
翻译:自COVID-19大流行以来,提出了几种深层次的学习方法来分析用于诊断的胸腔成像仪(CT),在目前情况下,疾病课程分类对于医务人员决定治疗很重要,以前大多数基于深层次的学习方法从肺窗中提取了观察到的特征,然而,事实证明,与诊断有关的一些外观可以从介质窗口而不是肺窗中观察得更好,例如,肺部整合在严重的症状中发生得更多。在本文中,我们提出了一个新的双窗口RCNN网络(DWRNet),主要从连续的中间窗口中了解不同的特征。关于从肺窗中提取的特征,我们引入了肺窗口注意区(LWA Block),以更多地关注这些特征,加强介质窗口窗口的特征。此外,我们没有从整个CT切片中采集具体的切片,而是使用一个经常的CNN模型,分析连续的切片作为视频。实验结果表明,整合和有代表性的疾病预测特征通过联合达到90.57 %的准确度,而仅通过双向窗口展示了双向循环的精确度,同时展示了循环的精确度。