We describe a novel, two-stage computer assistance system for lung anomaly detection using ultrasound imaging in the intensive care setting to improve operator performance and patient stratification during coronavirus pandemics. The proposed system consists of two deep-learning-based models: a quality assessment module that automates predictions of image quality, and a diagnosis assistance module that determines the likelihood-oh-anomaly in ultrasound images of sufficient quality. Our two-stage strategy uses a novelty detection algorithm to address the lack of control cases available for training the quality assessment classifier. The diagnosis assistance module can then be trained with data that are deemed of sufficient quality, guaranteed by the closed-loop feedback mechanism from the quality assessment module. Using more than 25000 ultrasound images from 37 COVID-19-positive patients scanned at two hospitals, plus 12 control cases, this study demonstrates the feasibility of using the proposed machine learning approach. We report an accuracy of 86% when classifying between sufficient and insufficient quality images by the quality assessment module. For data of sufficient quality - as determined by the quality assessment module - the mean classification accuracy, sensitivity, and specificity in detecting COVID-19-positive cases were 0.95, 0.91, and 0.97, respectively, across five holdout test data sets unseen during the training of any networks within the proposed system. Overall, the integration of the two modules yields accurate, fast, and practical acquisition guidance and diagnostic assistance for patients with suspected respiratory conditions at point-of-care.
翻译:我们描述一个新型的、两阶段的计算机援助系统,用于在强化护理环境中使用超声波成像来检测肺部异常现象,在冠状病毒流行期间使用超声波成像,改进操作员的性能和病人的分层。拟议系统由两个深层学习模式组成:一个质量评估模块,自动预测图像质量,以及一个诊断援助模块,确定超声波图像具有足够质量的可能性。我们的两阶段战略使用一种新型检测算法,解决质量评估分类师培训现有控制案例不足的问题。然后,对诊断援助模块进行培训,其数据被认为质量足够,由质量评估模块的封闭循环反馈机制保证。使用来自37个COVID-19阳性病人在两家医院扫描的25,000多张超声图像,加上12个控制案例。本研究显示了使用拟议机器学习方法的可行性。我们报告,在对质量评估模块中足够和不足的质量图像进行分类时,86%的准确度。对于质量评估模块所确定的足够质量数据----在质量评估模块中得到保证,质量评估的分类平均条件、敏感度和精确度,由封闭式反馈反馈反馈反馈反馈反馈反馈反馈机制的反馈,用于检测CVID-1919-19型病人在0.9号的系统内分别持有0.95的0.9的样本中的任何数据。