As the COVID-19 pandemic continues to put a significant burden on healthcare systems worldwide, there has been growing interest in finding inexpensive symptom pre-screening and recommendation methods to assist in efficiently using available medical resources such as PCR tests. In this study, we introduce the design of COVID-Net Assistant, an efficient virtual assistant designed to provide symptom prediction and recommendations for COVID-19 by analyzing users' cough recordings through deep convolutional neural networks. We explore a variety of highly customized, lightweight convolutional neural network architectures generated via machine-driven design exploration (which we refer to as COVID-Net Assistant neural networks) on the Covid19-Cough benchmark dataset. The Covid19-Cough dataset comprises 682 cough recordings from a COVID-19 positive cohort and 642 from a COVID-19 negative cohort. Among the 682 cough recordings labeled positive, 382 recordings were verified by PCR test. Our experimental results show promising, with the COVID-Net Assistant neural networks demonstrating robust predictive performance, achieving AUC scores of over 0.93, with the best score over 0.95 while being fast and efficient in inference. The COVID-Net Assistant models are made available in an open source manner through the COVID-Net open initiative and, while not a production-ready solution, we hope their availability acts as a good resource for clinical scientists, machine learning researchers, as well as citizen scientists to develop innovative solutions.
翻译:由于COVID-19大流行继续对全世界的保健系统造成沉重负担,人们越来越有兴趣寻找廉价的症状预检和建议方法,以便有效地利用PCR测试等现有医疗资源,在这项研究中,我们引进了COVID-Net助理这一高效虚拟助理的设计,旨在通过深层神经神经网络分析用户的咳嗽记录,为COVID-19提供症状预测和建议;我们探索了通过机器驱动的设计探索(我们称之为COVID-Net助理神经网络)产生的各种高度定制的轻量级神经网络结构,以便在Covid19-Cough基准数据集中找到廉价的症状预检检查和建议方法,以便协助高效率地使用PCOCR;我们探索了通过机器驱动的设计探索(我们称之为COVI-Net-Net助理神经网络网络网络网络网络网络网络)产生的各种高度定制的轻度神经网络结构,以便帮助有效利用CVD系统;Covid19-Cough数据集包括COVI19正数组的682个咳嗽记录和建议;在682个记录中,382个记录通过PCR测试得到核实;我们的实验结果显示很有希望,由于COVI网络的公开模型显示,AUCUCS-Net模型的可可靠,我们获得了最佳的成绩。