人工神经网络预测 COVID-19 每日感染数。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Ning Jiang, Charles Kolozsvary, Yao Li
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引用次数: 0

摘要

本研究将 COVID-19 检测作为一个非线性抽样问题进行研究,旨在揭示人群中的真实感染人数与 COVID-19 检测指标(如检测量和阳性率)之间的关系。我们利用人工神经网络探索了每日确诊病例数、检测数据、人群统计数据和每日实际病例数之间的关系。经过训练的人工神经网络在样本内、样本外和几种假设情况下进行了测试。本文的主要重点在于估算每日真实病例数,它是我们训练过程的输出集。为了实现这一目标,我们采用了一种正则化的反向预测技术,利用死亡人数和感染死亡率(IFR),因为死亡统计数据和血清学调查(提供 IFR)是更可靠的 COVID-19 数据源。解决年龄分布、疫苗接种和新出现的变种等因素对 IFR 时间序列的影响是我们分析的一个关键方面。我们希望我们的研究能够加深我们对 COVID-19 大流行真正影响的理解,从而有利于制定缓解策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Neural Network Prediction of COVID-19 Daily Infection Count.

This study addresses COVID-19 testing as a nonlinear sampling problem, aiming to uncover the dependence of the true infection count in the population on COVID-19 testing metrics such as testing volume and positivity rates. Employing an artificial neural network, we explore the relationship among daily confirmed case counts, testing data, population statistics, and the actual daily case count. The trained artificial neural network undergoes testing in in-sample, out-of-sample, and several hypothetical scenarios. A substantial focus of this paper lies in the estimation of the daily true case count, which serves as the output set of our training process. To achieve this, we implement a regularized backcasting technique that utilize death counts and the infection fatality ratio (IFR), as the death statistics and serological surveys (providing the IFR) as more reliable COVID-19 data sources. Addressing the impact of factors such as age distribution, vaccination, and emerging variants on the IFR time series is a pivotal aspect of our analysis. We expect our study to enhance our understanding of the genuine implications of the COVID-19 pandemic, subsequently benefiting mitigation strategies.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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