Artificial Intelligence and Democratization of the Use of Lung Ultrasound in COVID-19: On the Feasibility of Automatic Calculation of Lung Ultrasound Score

Jorge Camacho, M. Muñoz, V. Genovés, J. L. Herraiz, Ignacio Ortega, Adrián Belarra, Ricardo González, David Sánchez, R.C. Giacchetta, Á. Trueba-Vicente, Y. Tung-Chen
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引用次数: 6

Abstract

During the COVID-19 pandemic, lung ultrasound has been revealed as a powerful technique for diagnosis and follow-up of pneumonia, the principal complication of SARS-CoV-2 infection. Nevertheless, being a relatively new and unknown technique, the lack of trained personnel has limited its application worldwide. Computer-aided diagnosis could possibly help to reduce the learning curve for less experienced physicians, and to extend such a new technique such as lung ultrasound more quickly. This work presents the preliminary results of the ULTRACOV (Ultrasound in Coronavirus disease) study, aimed to explore the feasibility of a real-time image processing algorithm for automatic calculation of the lung ultrasound score (LUS). A total of 28 patients positive on COVID-19 were recruited and scanned in 12 thorax zones following the lung score protocol, saving a 3 s video at each probe position. Those videos were evaluated by an experienced physician and by a custom developed automated detection algorithm, looking for A-Lines, B-Lines, consolidations, and pleural effusions. The agreement between the findings of the expert and the algorithm was 88.0% for B-Lines, 93.4% for consolidations and 99.7% for pleural effusion detection, and 72.8% for the individual video score. The standard deviation of the patient lung score difference between the expert and the algorithm was ±2.2 points over 36. The exam average time with the ULTRACOV prototype was 5.3 min, while with a conventional scanner was 12.6 min. Conclusion: A good agreement between the algorithm output and an experienced physician was observed, which is a first step on the feasibility of developing a real-time aided-diagnosis lung ultrasound equipment. Additionally, the examination time was reduced to less than half with regard to a conventional ultrasound exam. Acquiring a complete lung ultrasound exam within a few minutes is possible using fairly simple ultrasound machines that are enhanced with artificial intelligence, such as the one we propose. This step is critical to democratize the use of lung ultrasound in these difficult times.
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人工智能与新型冠状病毒肺炎肺超声使用民主化——肺超声评分自动计算的可行性探讨
在COVID-19大流行期间,肺部超声已被证明是诊断和随访肺炎(SARS-CoV-2感染的主要并发症)的有力技术。然而,作为一种相对较新的和未知的技术,缺乏训练有素的人员限制了其在世界范围内的应用。计算机辅助诊断可能有助于减少经验不足的医生的学习曲线,并更快地推广肺部超声等新技术。本文介绍了ULTRACOV(超声诊断冠状病毒病)研究的初步结果,旨在探索一种实时图像处理算法自动计算肺部超声评分(LUS)的可行性。共招募28例COVID-19阳性患者,按照肺评分方案在12个胸腔区域进行扫描,每个探针位置保存3 s视频。这些视频由经验丰富的医生和定制开发的自动检测算法进行评估,寻找a线、b线、实变和胸腔积液。专家的结果与算法之间的一致性在b线为88.0%,实变为93.4%,胸腔积液检测为99.7%,个人视频评分为72.8%。专家与算法的患者肺评分差的标准差为±2.2分/ 36。ULTRACOV原型机的平均检查时间为5.3分钟,而传统扫描仪的平均检查时间为12.6分钟。结论:算法输出与经验丰富的医生之间的一致性很好,这是开发实时辅助诊断肺部超声设备可行性的第一步。此外,检查时间减少到不到传统超声检查的一半。在几分钟内获得一个完整的肺部超声检查是可能的,使用相当简单的超声机器,通过人工智能增强,就像我们建议的那样。在这些困难时期,这一步对于普及肺部超声的使用至关重要。
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来源期刊
Journal of International Translational Medicine
Journal of International Translational Medicine MEDICINE, RESEARCH & EXPERIMENTAL-
自引率
0.00%
发文量
317
审稿时长
8 weeks
期刊介绍: Journal of International Translational Medicine (JITM, ISSN 2227-6394), founded in 2012, is an English academic journal published by Journal of International Translational Medicine Co., Ltd and sponsored by International Fderation of Translational Medicine. JITM is an open access journal freely serving to submit, review, publish, read and download full text and quote. JITM is a quarterly publication with the first issue published in March, 2013, and all articles published in English are compiled and edited by professional graphic designers according to the international compiling and editing standard. All members of the JITM Editorial Board are the famous international specialists in the field of translational medicine who come from twenty different countries and areas such as USA, Britain, France, Germany and so on.
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