Computed Tomography (CT) scans provide a detailed image of the lungs, allowing clinicians to observe the extent of damage caused by COVID-19. The CT severity score (CTSS) based scoring method is used to identify the extent of lung involvement observed on a CT scan. This paper presents a domain knowledge-based pipeline for extracting regions of infection in COVID-19 patients using a combination of image-processing algorithms and a pre-trained UNET model. The severity of the infection is then classified into different categories using an ensemble of three machine-learning models: Extreme Gradient Boosting, Extremely Randomized Trees, and Support Vector Machine. The proposed system was evaluated on a validation dataset in the AI-Enabled Medical Image Analysis Workshop and COVID-19 Diagnosis Competition (AI-MIA-COV19D) and achieved a macro F1 score of 64%. These results demonstrate the potential of combining domain knowledge with machine learning techniques for accurate COVID-19 diagnosis using CT scans. The implementation of the proposed system for severity analysis is available at \textit{https://github.com/aanandt/Enhancing-COVID-19-Severity-Analysis-through-Ensemble-Methods.git }
翻译:计算机断层扫描(CT)提供了肺部的详细图像,使临床医生能够观察COVID-19引起的损伤程度。基于CT扫描的CT严重程度评分(CTSS)是用于识别CT扫描中观察到的肺部受累程度的评分方法。本文提出了一种基于领域知识的系统流程,通过图像处理算法和预训练的UNET模型的组合来提取COVID-19患者感染区域。然后,使用三种机器学习模型的集成方法:极端梯度提升,极端随机树和支持向量机将感染的严重程度分类为不同类别。所提议的系统在AI-Enabled Medical Image Analysis Workshop and COVID-19 Diagnosis Competition (AI-MIA-COV19D)的验证数据集上进行了评估,并取得了64%的宏F1得分。这些结果证明了将领域知识与机器学习技术相结合,可以通过CT扫描进行准确的COVID-19诊断的潜力。该应用程序的严重性分析实现可在\textit{https://github.com/aanandt/Enhancing-COVID-19-Severity-Analysis-through-Ensemble-Methods.git}中获得。