IEEE Trans Ultrason Ferroelectr Freq Control. 2021 Jul;68(7):2507-2515. doi: 10.1109/TUFFC.2021.3070696. Epub 2021 Jun 29.
As being radiation-free, portable, and capable of repetitive use, ultrasonography is playing an important role in diagnosing and evaluating the COVID-19 Pneumonia (PN) in this epidemic. By virtue of lung ultrasound scores (LUSS), lung ultrasound (LUS) was used to estimate the excessive lung fluid that is an important clinical manifestation of COVID-19 PN, with high sensitivity and specificity. However, as a qualitative method, LUSS suffered from large interobserver variations and requirement for experienced clinicians. Considering this limitation, we developed a quantitative and automatic lung ultrasound scoring system for evaluating the COVID-19 PN. A total of 1527 ultrasound images prospectively collected from 31 COVID-19 PN patients with different clinical conditions were evaluated and scored with LUSS by experienced clinicians. All images were processed via a series of computer-aided analysis, including curve-to-linear conversion, pleural line detection, region-of-interest (ROI) selection, and feature extraction. A collection of 28 features extracted from the ROI was specifically defined for mimicking the LUSS. Multilayer fully connected neural networks, support vector machines, and decision trees were developed for scoring LUS images using the fivefold cross validation. The model with 128×256 two fully connected layers gave the best accuracy of 87%. It is concluded that the proposed method could assess the ultrasound images by assigning LUSS automatically with high accuracy, potentially applicable to the clinics.
由于超声检查无辐射、便携且可重复使用,因此在本次疫情中,它在 COVID-19 肺炎(PN)的诊断和评估中发挥了重要作用。通过肺超声评分(LUSS),超声检查(LUS)用于评估 COVID-19 PN 的重要临床表现——过多的肺液,具有较高的灵敏度和特异性。然而,作为一种定性方法,LUSS 存在观察者间差异较大且需要经验丰富的临床医生的局限性。考虑到这一局限性,我们开发了一种定量和自动的肺超声评分系统来评估 COVID-19 PN。共从 31 名具有不同临床特征的 COVID-19 PN 患者前瞻性收集了 1527 个超声图像,并由经验丰富的临床医生使用 LUSS 进行评估和评分。所有图像均通过一系列计算机辅助分析进行处理,包括曲线到直线的转换、胸膜线检测、感兴趣区域(ROI)选择和特征提取。从 ROI 中提取了一组 28 个专门定义的特征来模拟 LUSS。使用五重交叉验证,开发了多层全连接神经网络、支持向量机和决策树来对 LUS 图像进行评分。具有 128×256 两个全连接层的模型的准确率最高,为 87%。研究结果表明,该方法能够通过自动分配 LUSS 对超声图像进行评估,具有较高的准确性,可能适用于临床。