基于深度学习的COVID-19住院病例多标签预测

C. Leung, Thanh Huy Daniel Mai, N. D. Tran
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引用次数: 2

摘要

健康信息学是一个跨学科领域,计算机科学和相关学科满足解决问题和支持医疗保健和医学。特别是,计算机在医学中发挥了重要作用。许多现有的基于计算机的医疗保健应用系统(例如,机器学习模型)产生二元预测(例如,患者是否患病)。然而,在某些情况下,需要非二元预测(例如,病人的住院情况如何)。作为一个具体的例子,在过去两年中,世界各地的人们都受到了2019年冠状病毒病(COVID-19)大流行的影响。已经有了二元预测的研究,以确定患者是否为COVID-19阳性。有了可用的替代方法(例如,快速测试),这种二元预测已经变得不那么重要了。此外,随着疾病的演变(如近期新出现的COVID-19 Omicron变体),与确诊病例的二元预测相比,住院状态的多标签预测变得更加重要。因此,在本文中,我们提出了一个基于计算机的医学应用的多标签预测系统。我们的系统利用自动编码器(由编码器和解码器组成)和少量学习来预测住院状态(例如,ICU,半ICU,普通病房或不住院)。这一预测对于医疗资源(例如医院设施和医务人员)的分配很重要,而医疗资源的分配反过来又会影响患者的生命。在现实开放数据集上的实验结果表明,当只使用少量数据进行训练时,我们的多标签预测系统在预测COVID-19病例住院情况时给出了很高的f1分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Based Multi-Label Prediction of Hospitalization for COVID-19 Cases
Health informatics is an interdisciplinary area where computer science and related disciplines meet to address problems and support healthcare and medicine. In particular, computer has played an important role in medicine. Many existing computer-based systems (e.g., machine learning models) for healthcare applications produce binary prediction (e.g., whether a patient catches a disease or not). However, there are situations in which a non-binary prediction (e.g., what is hospitalization status of a patient) is needed. As a concrete example, over the past two years, people around the world have been affected by the coronavirus disease 2019 (COVID-19) pandemic. There have been works on binary prediction to determine whether a patient is COVID-19 positive or not. With availability of alternative methods (e.g., rapid test), such a binary prediction has become less important. Moreover, with the evolution of the disease (e.g., recent development of COVID-19 Omicron variant), multi-label prediction of the hospitalization status has become more important when compared with binary prediction on the confirmation of cases. Hence, in this paper, we present a multi-label prediction system for computer-based medical applications. Our system makes use of autoencoders (consisting of encoders and decoders) and few-shot learning to predict the hospitalization status (e.g., ICU, semi-ICU, regular wards, or no hospitalization). The prediction is important for allocation of medical resources (e.g., hospital facilities and medical staff), which in turn affect patient lives. Experimental results on real-life open datasets show that, when training with only a few data, our multilabel prediction system gave a high F1-score when predicting hospitalization status of COVID-19 cases.
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