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首页> 外文期刊>Frontiers in Medicine >COVID-19 Chest Computed Tomography to Stratify Severity and Disease Extension by Artificial Neural Network Computer-Aided Diagnosis
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COVID-19 Chest Computed Tomography to Stratify Severity and Disease Extension by Artificial Neural Network Computer-Aided Diagnosis

机译:Covid-19胸部计算断层扫描通过人工神经网络计算机辅助诊断来分层严重程度和疾病延伸

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Purpose: This work aims to develop a computer-aided diagnosis (CAD) to quantify the extent of pulmonary involvement (PI) in COVID-19 as well as the radiological patterns referred to as lung opacities in chest computer tomography (CT). Methods: One hundred thirty subjects with COVID-19 pneumonia who underwent chest CT at hospital admission were retrospectively studied (141 sets of CT scan images). Eighty-eight healthy individuals without radiological evidence of acute lung disease served as controls. Two radiologists selected up to four regions of interest (ROI) per patient (totaling 1,475 ROIs) visually regarded as well-aerated regions (472), ground-glass opacity (GGO, 413), crazy paving and linear opacities (CP/LO, 340), and consolidation (250). After balancing with 250 ROIs for each class, the density quantiles (2.5, 25, 50, 75, and 97.5%) of 1,000 ROIs were used to train (700), validate (150), and test (150 ROIs) an artificial neural network (ANN) classifier (60 neurons in a single-hidden-layer architecture). Pulmonary involvement was defined as the sum of GGO, CP/LO, and consolidation volumes divided by total lung volume (TLV), and the cutoff of normality between controls and COVID-19 patients was determined with a receiver operator characteristic (ROC) curve. The severity of pulmonary involvement in COVID-19 patients was also assessed by calculating Z scores relative to the average volume of parenchymal opacities in controls. Thus, COVID-19 cases were classified as mild ( Z score 3), and severe pulmonary involvement ( Z score ≥3). Results: Cohen's kappa agreement between CAD and radiologist classification was 81% (79–84%, 95% CI). The ROC curve of PI by the ANN presented a threshold of 21.5%, sensitivity of 0.80, specificity of 0.86, AUC of 0.90, accuracy of 0.82, F score of 0.85, and 0.65 Matthews' correlation coefficient. Accordingly, 77 patients were classified as having severe pulmonary involvement reaching 55 ± 13% of the TLV ( Z score related to controls ≥3) and presented significantly higher lung weight, serum C-reactive protein concentration, proportion of hospitalization in intensive care units, instances of mechanical ventilation, and case fatality. Conclusion: The proposed CAD aided in detecting and quantifying the extent of pulmonary involvement, helping to phenotype patients with COVID-19 pneumonia.
机译:目的:这项工作旨在开发计算机辅助诊断(CAD),以量化Covid-19中的肺部受累(PI)的程度以及胸部计算机断层扫描(CT)中称为肺不透明度的放射线模式。方法:回顾性研究了一百三十个患有Covid-19肺炎的Covid-19肺炎,研究(141套CT扫描图像)。八十八个健康个体没有急性肺病的放射性证据作为对照。每个患者选择最多四个感兴趣区域(ROI)的放射科医生(总共1,475 rois)视觉被视为充足的地区(472),底玻璃不透明(GGO,413),疯狂的铺路和线性露关量(CP / LO, 340),并合并(250)。在每阶级进行250次ROI的平衡之后,使用1,000 roI的密度量数(2.5,25,50,75和97.5%)用于培训(700),验证(150),测试(150 rois)人工神经网络网络(ANN)分类器(单隐藏架构中的60个神经元)。肺部受累被定义为GGO,Cp / LO和固结体积除以总肺体积(TLV),并用接收器操作员特征(ROC)曲线测定对照和Covid-19患者之间的正常性截止。通过计算Z分数相对于对照中的实质不透明度的平均体积来评估Covid-19患者的肺部受累的严重程度。因此,Covid-19案例被归类为轻度(Z得分3),并且严重的肺部受累(Z分数≥3)。结果:CAD和放射科分类之间的Kappa协议为81%(79-84%,95%CI)。 PI的ROC曲线呈ANN呈现出21.5%的阈值,灵敏度为0.80,特异性0.86,AUC,精度为0.90,f得分为0.85,比得分为0.85,并为0.65个Matthews的相关系数。因此,77名患者被归类为具有严重的肺部受累,达到55±13%的TLV(Z分数与对照≥3相关),并呈现出显着更高的肺重量,血清C反应蛋白浓度,重症监护单位的住院比例,机械通气的情况,以及病例。结论:提出的CAD促进检测和量化肺部受累的程度,有助于对Covid-19肺炎患者的表型患者。

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