As the Coronavirus Disease 2019 (COVID-19) continues to impact many aspects of life and the global healthcare systems, the adoption of rapid and effective screening methods to prevent further spread of the virus and lessen the burden on healthcare providers is a necessity. As a cheap and widely accessible medical image modality, point-of-care ultrasound (POCUS) imaging allows radiologists to identify symptoms and assess severity through visual inspection of the chest ultrasound images. Combined with the recent advancements in computer science, applications of deep learning techniques in medical image analysis have shown promising results, demonstrating that artificial intelligence-based solutions can accelerate the diagnosis of COVID-19 and lower the burden on healthcare professionals. However, the lack of a huge amount of well-annotated data poses a challenge in building effective deep neural networks in the case of novel diseases and pandemics. Motivated by this, we present COVID-Net USPro, an explainable few-shot deep prototypical network, that monitors and detects COVID-19 positive cases with high precision and recall from minimal ultrasound images. COVID-Net USPro achieves 99.65% overall accuracy, 99.7% recall and 99.67% precision for COVID-19 positive cases when trained with only 5 shots. The analytic pipeline and results were verified by our contributing clinician with extensive experience in POCUS interpretation, ensuring that the network makes decisions based on actual patterns.
翻译:2019年科罗纳病毒疾病(COVID-19)继续影响生命和全球保健系统的许多方面,因此,有必要采用迅速有效的筛选方法,防止病毒进一步传播,减轻保健提供者的负担。作为一种廉价和广泛获得的医疗形象模式,护理点超声波成像使放射学家能够通过对胸腔超声图像进行直观检查来辨别症状和评估严重程度。结合最近计算机科学的进步,医疗图像分析中的深学习技术的应用已显示出令人乐观的结果,表明人工智能解决方案能够加速诊断COVID-19,减轻保健专业人员的负担。然而,大量附有良好说明的数据的缺乏对在新疾病和流行病的情况下建立有效的深神经网络构成挑战。我们为此介绍了COVID-Net USPro,这是一个鲜有可查的深孔的原型网络,它以高度精确的方式监测和检测COVID-19的正面案例,并且从微小超声图像中回顾。 COVID-Net USProNet能够加速诊断COVI-19的实际模式,在经过全面核实的情况下,只有99.65%的准确性诊断结果。