Lung ultrasound (LUS) is possibly the only medical imaging modality which could be used for continuous and periodic monitoring of the lung. This is extremely useful in tracking the lung manifestations either during the onset of lung infection or to track the effect of vaccination on lung as in pandemics such as COVID-19. There have been many attempts in automating the classification of severity of lung into various classes or automatic segmentation of various LUS landmarks and manifestations. However, all these approaches are based on training static machine learning models which require a significantly clinically annotated large dataset and are computationally heavy and most of the time non-real time. In this work, a real-time light weight active learning-based approach is presented for faster triaging in COVID-19 subjects in resource constrained settings. The tool, based on the you look only once (YOLO) network, has the capability of providing the quality of images based on the identification of various LUS landmarks, artefacts and manifestations, prediction of severity of lung infection, possibility of active learning based on the feedback from clinicians or on the image quality and a summarization of the significant frames which are having high severity of infection and high image quality for further analysis. The results show that the proposed tool has a mean average precision (mAP) of 66% at an Intersection over Union (IoU) threshold of 0.5 for the prediction of LUS landmarks. The 14MB lightweight YOLOv5s network achieves 123 FPS while running in a Quadro P4000 GPU. The tool is available for usage and analysis upon request from the authors.
翻译:肺部超声波(LUS)可能是用于连续和定期监测肺部的唯一医疗成像模式,在肺部感染开始期间跟踪肺部表现,或跟踪肺部接种对肺部的影响,如COVID-19(COVID-19)等传染病。许多尝试都试图将肺部严重性分类到不同类别,或自动分解各种LUS的标志和表现。然而,所有这些方法都基于培训静态机器学习模型,这些模型需要大量临床附加说明的大型数据集,并且计算在非实时时间的大部分时间非常繁忙。在这项工作中,实时轻度体重积极学习法是用来在资源受限的情况下更快地对COVID-19(COVID-19)主题进行三角分析的。根据你只看一次(YOLO)网络,该工具能够提供各种LUS里程碑、工艺和表现的高质量,根据临床医生的反馈或图像质量进行积极学习的可能性。在资源受限限制的情况下,以实时轻度框架为基础,在资源受限环境下,对COVID-19(LMU)进行高比例分析。