论文标题

在2021年BARDA数据挑战中设定的大特征的小儿Covid-19患者的严重健康风险的深度学习预测

Deep Learning Prediction of Severe Health Risks for Pediatric COVID-19 Patients with a Large Feature Set in 2021 BARDA Data Challenge

论文作者

Mahmud, Sajid, Soltanikazemi, Elham, Boadu, Frimpong, Dhakal, Ashwin, Cheng, Jianlin

论文摘要

大多数感染Covid-19的儿童没有或轻度的症状,可以自动自动康复,但是一些小儿Covid-19患者需要住院,甚至需要接受强化医疗(例如,侵入性的机械通气或心血管支持)才能从疾病中康复。因此,至关重要的是,预测Covid-19的严重健康风险是为儿童带来的,以为脆弱的小儿Covid-19患者提供精确,及时的医疗服务。但是,预测包括儿童在内的199名患者的严重健康风险仍然是一个重大挑战,因为许多影响风险的医疗因素仍然在很大程度上是未知的。在这项工作中,我们设计了一个新颖的大型单词袋(例如方法)来代表各种医疗条件和COVID-19患者的测量,而不是寻找少数最有用的功能来进行预测。经过基于后勤回归的一些简单特征过滤后,大量特征与深度学习方法一起使用,以预测COVID-19受感染儿童的住院风险和住院儿科Covid-19患者的严重并发症风险。该方法经过培训并测试了生物医学高级研发局(BARDA)的数据集(BARDA)COVID-19从9月15日至2021年12月17日举行的数据挑战。结果表明,该方法可以准确地预测住院的风险和严重的儿童Covid-19患者的严重并发症,而深度学习和深度学习更为准确。

Most children infected with COVID-19 have no or mild symptoms and can recover automatically by themselves, but some pediatric COVID-19 patients need to be hospitalized or even to receive intensive medical care (e.g., invasive mechanical ventilation or cardiovascular support) to recover from the illnesses. Therefore, it is critical to predict the severe health risk that COVID-19 infection poses to children to provide precise and timely medical care for vulnerable pediatric COVID-19 patients. However, predicting the severe health risk for COVID-19 patients including children remains a significant challenge because many underlying medical factors affecting the risk are still largely unknown. In this work, instead of searching for a small number of most useful features to make prediction, we design a novel large-scale bag-of-words like method to represent various medical conditions and measurements of COVID-19 patients. After some simple feature filtering based on logistical regression, the large set of features is used with a deep learning method to predict both the hospitalization risk for COVID-19 infected children and the severe complication risk for the hospitalized pediatric COVID-19 patients. The method was trained and tested the datasets of the Biomedical Advanced Research and Development Authority (BARDA) Pediatric COVID-19 Data Challenge held from Sept. 15 to Dec. 17, 2021. The results show that the approach can rather accurately predict the risk of hospitalization and severe complication for pediatric COVID-19 patients and deep learning is more accurate than other machine learning methods.

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