Detection and Segmentation of Lesion Areas in Chest CT Scans For The Prediction of COVID-19

Aram Ter-Sarkisov
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引用次数: 13

Abstract

In this paper we compare the models for the detection and segmentation of Ground Glass Opacity and Consolidation in chest CT scans. These lesion areas are often associated both with common pneumonia and COVID-19. We train a Mask R-CNN model to segment these areas with high accuracy using three approaches: merging masks for these lesions into one, deleting the mask for Consolidation, and using both masks separately. The best model achieves the mean average precision of 44.68% using MS COCO criterion for instance segmentation across all accuracy thresholds. The classification model, COVID-CT-Mask-Net, which learns to predict the presence of COVID-19 vs common pneumonia vs control, achieves the 93.88% COVID-19 sensitivity, 95.64% overall accuracy, 95.06% common pneumonia sensitivity and 96.91% true negative rate on the COVIDx-CT test split (21192 CT scans) using a small fraction of the training data. We also analyze the effect of Non-Maximum Suppression of overlapping object predictions, both on the segmentation and classification accuracy. The full source code, models and pretrained weights are available on https://github.com/AlexTS1980/COVID-CT-Mask-Net.
胸部CT扫描中病灶区域的检测与分割对COVID-19的预测
本文比较了胸部CT扫描中磨玻璃不透明和实变的检测和分割模型。这些病变区域通常与普通肺炎和COVID-19有关。我们训练了一个Mask R-CNN模型,使用三种方法对这些区域进行高精度分割:将这些病变的掩模合并为一个,删除掩模进行巩固,以及分别使用两个掩模。在所有精度阈值上使用MS COCO准则进行实例分割,最佳模型的平均精度达到44.68%。该分类模型COVID-CT-Mask-Net学习预测COVID-19与普通肺炎与对照组的存在,使用一小部分训练数据在covid -CT测试分割(21192个CT扫描)上实现了93.88%的COVID-19敏感性,95.64%的总体准确性,95.06%的普通肺炎敏感性和96.91%的真阴性率。我们还分析了重叠目标预测的非最大抑制对分割和分类精度的影响。完整的源代码,模型和预训练的权重可以在https://github.com/AlexTS1980/COVID-CT-Mask-Net上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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