基于变压器的胸部ct自动诊断框架

Lei Zhang, Yan-mao Wen
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引用次数: 26

摘要

2019冠状病毒病胸部ct自动诊断正在成为支持精确、高效诊断和治疗计划的临床重要技术。利用cnn自动诊断ct中的COVID-19已经做了一些努力,但这项任务仍然是一个挑战。在本文中,我们提出了一个基于变压器的covid - 19分类框架。我们尝试将视觉转换器作为鲁棒特征学习器扩展到3D ct诊断COVID-19。该框架包括两个主要阶段:使用UNet进行肺分割,然后进行分类,其中在CT扫描中使用Swin变压器从每个CT切片中提取的特征聚合为三维体积级特征。我们还研究了在框架中使用鲁棒cnn (BiT和EfficientNetV2)作为主干的性能。我们的实验使用了ICCV研讨会的数据集:MIA-COV19D。评价结果表明,基于Swin变压器主干网的方法在验证数据集上F1得分最高,为0.935,而基于CNN的effentnetv2主干网具有较好的分类性能,准确率最高,为93.7%。使用Swin变压器的最终预测模型在测试数据集上的F1得分为0.84,不需要额外的后处理阶段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A transformer-based framework for automatic COVID19 diagnosis in chest CTs
Automated diagnosis of covid19 in chest CTs is becoming a clinically important technique to support precision and efficient diagnosis and treatment planning. A few efforts have been made to automatically diagnose the COVID-19 in CTs using CNNs, and the task still remains a challenge. In this paper, we present a transformer-based framework for COVID19 classification. We attempt to expand the adaption of vision transformer as a robust feature learner to the 3D CTs to diagnose the COVID-19. The framework consists of two main stages: lung segmentation using UNet followed by the classification, in which the features extracted from each CT slice using Swin transformer in a CT scan are aggregated into 3D volume level feature. We also investigated the performance of using the robust CNNs (BiT and EfficientNetV2) as backbones in the framework. The dataset from the ICCV workshop: MIA-COV19D, is used in our experiments. The evaluation results show that the method with the backbone of Swin transformer gain the best F1 score of 0.935 on the validation dataset, while the CNN based backbone of EfficientNetV2 has the competitive classification performance with the best precision of 93.7%. The final prediction model with Swin transformer achieves the F1 score of 0.84 on the test dataset, which doesn’t require an additional post-processing stage.
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