Radiodiagnostics Department, Istanbul University, Istanbul Faculty of Medicine, Istanbul, Turkey.
Institute of Natural and Applied Sciences, Dokuz Eylul University, İzmir, Turkey.
Int J Numer Method Biomed Eng. 2024 Jun;40(6):e3823. doi: 10.1002/cnm.3823. Epub 2024 Apr 8.
Several data sets have been collected and various artificial intelligence models have been developed for COVID-19 classification and detection from both chest radiography (CXR) and thorax computed tomography (CTX) images. However, the pitfalls and shortcomings of these systems significantly limit their clinical use. In this respect, improving the weaknesses of advanced models can be very effective besides developing new ones. The inability to diagnose ground-glass opacities by conventional CXR has limited the use of this modality in the diagnostic work-up of COVID-19. In our study, we investigated whether we could increase the diagnostic efficiency by collecting a novel CXR data set, which contains pneumonic regions that are not visible to the experts and can only be annotated under CTX guidance. We develop an ensemble methodology of well-established deep CXR models for this new data set and develop a machine learning-based non-maximum suppression strategy to boost the performance for challenging CXR images. CTX and CXR images of 379 patients who applied to our hospital with suspected COVID-19 were evaluated with consensus by seven radiologists. Among these, CXR images of 161 patients who also have had a CTX examination on the same day or until the day before or after and whose CTX findings are compatible with COVID-19 pneumonia, are selected for annotating. CTX images are arranged in the main section passing through the anterior, middle, and posterior according to the sagittal plane with the reformed maximum intensity projection (MIP) method in the coronal plane. Based on the analysis of coronal MIP reconstructed CTX images, the regions corresponding to the pneumonia foci are annotated manually in CXR images. Radiologically classified posterior to anterior (PA) CXR of 218 patients with negative thorax CTX imaging were classified as COVID-19 pneumonia negative group. Accordingly, we have collected a new data set using anonymized CXR (JPEG) and CT (DICOM) images, where the PA CXRs contain pneumonic regions that are hidden or not easily recognized and annotated under CTX guidance. The reference finding was the presence of pneumonic infiltration consistent with COVID-19 on chest CTX examination. COVID-Net, a specially designed convolutional neural network, was used to detect cases of COVID-19 among CXRs. Diagnostic performances were evaluated by ROC analysis by applying six COVID-Net variants (COVIDNet-CXR3-A, -B, -C/COVIDNet-CXR4-A, -B, -C) to the defined data set and combining these models in various ways via ensemble strategies. Finally, a convex optimization strategy is carried out to find the outperforming weighted ensemble of individual models. The mean age of 161 patients with pneumonia was 49.31 ± 15.12, and the median age was 48 years. The mean age of 218 patients without signs of pneumonia in thorax CTX examination was 40.04 ± 14.46, and the median was 38. When working with different combinations of COVID-Net's six variants, the area under the curve (AUC) using the ensemble COVID-Net CXR 4A-4B-3C was .78, sensitivity 67%, specificity 95%; COVID-Net CXR 4a-3b-3c was .79, sensitivity 69% and specificity 94%. When diverse and complementary COVID-Net models are used together through an ensemble, it has been determined that the AUC values are close to other studies, and the specificity is significantly higher than other studies in the literature.
已经收集了多个数据集,并开发了各种人工智能模型,用于从胸部 X 光(CXR)和胸部计算机断层扫描(CTX)图像中对 COVID-19 进行分类和检测。然而,这些系统的缺陷和不足之处极大地限制了它们的临床应用。在这方面,除了开发新模型之外,改进先进模型的弱点也非常有效。传统 CXR 无法诊断磨玻璃混浊,这限制了该模态在 COVID-19 诊断中的应用。在我们的研究中,我们研究了通过收集新的 CXR 数据集是否可以提高诊断效率,该数据集包含专家看不见的肺区,只能在 CTX 指导下进行注释。我们为这个新数据集开发了一种成熟的深度学习 CXR 模型的集成方法,并开发了一种基于机器学习的非最大抑制策略,以提高对具有挑战性的 CXR 图像的性能。评估了 379 名因疑似 COVID-19 而到我院就诊的患者的 CTX 和 CXR 图像,由七名放射科医生进行共识评估。其中,选择了 161 名患者的 CXR 图像进行评估,这些患者也在同一天或前一天或后一天进行了 CTX 检查,并且 CTX 结果与 COVID-19 肺炎相符。将 CTX 图像按照矢状面从前到后排列在主部分中,并用冠状面的最大强度投影(MIP)方法对其进行重建。根据冠状面 MIP 重建 CTX 图像的分析,手动在 CXR 图像中注释对应于肺炎焦点的区域。将 218 名后前位(PA)CXR 无胸 CTX 成像的患者分类为 COVID-19 肺炎阴性组。相应地,我们使用匿名的 CXR(JPEG)和 CT(DICOM)图像收集了一个新数据集,其中 PA CXR 包含隐藏或不易识别的肺区,并在 CTX 指导下进行注释。参考发现是在胸部 CTX 检查中存在与 COVID-19 一致的肺炎浸润。专门设计的卷积神经网络 COVID-Net 用于在 CXR 中检测 COVID-19 病例。通过将六个 COVID-Net 变体(COVIDNet-CXR3-A、-B、-C/COVIDNet-CXR4-A、-B、-C)应用于定义的数据集中,并通过各种方式将这些模型结合在通过集合策略,通过 ROC 分析评估诊断性能。最后,通过凸优化策略找到表现更好的个体模型加权集合。有肺炎的 161 名患者的平均年龄为 49.31±15.12 岁,中位数年龄为 48 岁。218 名无胸 CTX 检查肺炎迹象的患者的平均年龄为 40.04±14.46 岁,中位数为 38 岁。在使用 COVID-Net 的六个变体的不同组合工作时,使用集合 COVID-Net CXR 4A-4B-3C 的曲线下面积(AUC)为.78,灵敏度为 67%,特异性为 95%;COVID-Net CXR 4a-3b-3c 的 AUC 为.79,灵敏度为 69%,特异性为 94%。当使用不同的 COVID-Net 模型并通过集合一起使用时,确定 AUC 值接近其他研究,特异性明显高于文献中的其他研究。