Cargando…
An aberration detection-based approach for sentinel syndromic surveillance of COVID-19 and other novel influenza-like illnesses
Coronavirus Disease 2019 has emerged as a significant global concern, triggering harsh public health restrictions in a successful bid to curb its exponential growth. As discussion shifts towards relaxation of these restrictions, there is significant concern of second-wave resurgence. The key to mana...
Autores principales: | , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Elsevier Inc.
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7832634/ https://www.ncbi.nlm.nih.gov/pubmed/33321199 http://dx.doi.org/10.1016/j.jbi.2020.103660 |
_version_ | 1783641880197595136 |
---|---|
author | Wen, Andrew Wang, Liwei He, Huan Liu, Sijia Fu, Sunyang Sohn, Sunghwan Kugel, Jacob A. Kaggal, Vinod C. Huang, Ming Wang, Yanshan Shen, Feichen Fan, Jungwei Liu, Hongfang |
author_facet | Wen, Andrew Wang, Liwei He, Huan Liu, Sijia Fu, Sunyang Sohn, Sunghwan Kugel, Jacob A. Kaggal, Vinod C. Huang, Ming Wang, Yanshan Shen, Feichen Fan, Jungwei Liu, Hongfang |
author_sort | Wen, Andrew |
collection | PubMed |
description | Coronavirus Disease 2019 has emerged as a significant global concern, triggering harsh public health restrictions in a successful bid to curb its exponential growth. As discussion shifts towards relaxation of these restrictions, there is significant concern of second-wave resurgence. The key to managing these outbreaks is early detection and intervention, and yet there is a significant lag time associated with usage of laboratory confirmed cases for surveillance purposes. To address this, syndromic surveillance can be considered to provide a timelier alternative for first-line screening. Existing syndromic surveillance solutions are however typically focused around a known disease and have limited capability to distinguish between outbreaks of individual diseases sharing similar syndromes. This poses a challenge for surveillance of COVID-19 as its active periods tend to overlap temporally with other influenza-like illnesses. In this study we explore performing sentinel syndromic surveillance for COVID-19 and other influenza-like illnesses using a deep learning-based approach. Our methods are based on aberration detection utilizing autoencoders that leverages symptom prevalence distributions to distinguish outbreaks of two ongoing diseases that share similar syndromes, even if they occur concurrently. We first demonstrate that this approach works for detection of outbreaks of influenza, which has known temporal boundaries. We then demonstrate that the autoencoder can be trained to not alert on known and well-managed influenza-like illnesses such as the common cold and influenza. Finally, we applied our approach to 2019–2020 data in the context of a COVID-19 syndromic surveillance task to demonstrate how implementation of such a system could have provided early warning of an outbreak of a novel influenza-like illness that did not match the symptom prevalence profile of influenza and other known influenza-like illnesses. |
format | Online Article Text |
id | pubmed-7832634 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | Elsevier Inc. |
record_format | MEDLINE/PubMed |
spelling | pubmed-78326342021-01-26 An aberration detection-based approach for sentinel syndromic surveillance of COVID-19 and other novel influenza-like illnesses Wen, Andrew Wang, Liwei He, Huan Liu, Sijia Fu, Sunyang Sohn, Sunghwan Kugel, Jacob A. Kaggal, Vinod C. Huang, Ming Wang, Yanshan Shen, Feichen Fan, Jungwei Liu, Hongfang J Biomed Inform Article Coronavirus Disease 2019 has emerged as a significant global concern, triggering harsh public health restrictions in a successful bid to curb its exponential growth. As discussion shifts towards relaxation of these restrictions, there is significant concern of second-wave resurgence. The key to managing these outbreaks is early detection and intervention, and yet there is a significant lag time associated with usage of laboratory confirmed cases for surveillance purposes. To address this, syndromic surveillance can be considered to provide a timelier alternative for first-line screening. Existing syndromic surveillance solutions are however typically focused around a known disease and have limited capability to distinguish between outbreaks of individual diseases sharing similar syndromes. This poses a challenge for surveillance of COVID-19 as its active periods tend to overlap temporally with other influenza-like illnesses. In this study we explore performing sentinel syndromic surveillance for COVID-19 and other influenza-like illnesses using a deep learning-based approach. Our methods are based on aberration detection utilizing autoencoders that leverages symptom prevalence distributions to distinguish outbreaks of two ongoing diseases that share similar syndromes, even if they occur concurrently. We first demonstrate that this approach works for detection of outbreaks of influenza, which has known temporal boundaries. We then demonstrate that the autoencoder can be trained to not alert on known and well-managed influenza-like illnesses such as the common cold and influenza. Finally, we applied our approach to 2019–2020 data in the context of a COVID-19 syndromic surveillance task to demonstrate how implementation of such a system could have provided early warning of an outbreak of a novel influenza-like illness that did not match the symptom prevalence profile of influenza and other known influenza-like illnesses. Elsevier Inc. 2021-01 2020-12-13 /pmc/articles/PMC7832634/ /pubmed/33321199 http://dx.doi.org/10.1016/j.jbi.2020.103660 Text en © 2020 Elsevier Inc. Since January 2020 Elsevier has created a COVID-19 resource centre with free information in English and Mandarin on the novel coronavirus COVID-19. The COVID-19 resource centre is hosted on Elsevier Connect, the company's public news and information website. Elsevier hereby grants permission to make all its COVID-19-related research that is available on the COVID-19 resource centre - including this research content - immediately available in PubMed Central and other publicly funded repositories, such as the WHO COVID database with rights for unrestricted research re-use and analyses in any form or by any means with acknowledgement of the original source. These permissions are granted for free by Elsevier for as long as the COVID-19 resource centre remains active. |
spellingShingle | Article Wen, Andrew Wang, Liwei He, Huan Liu, Sijia Fu, Sunyang Sohn, Sunghwan Kugel, Jacob A. Kaggal, Vinod C. Huang, Ming Wang, Yanshan Shen, Feichen Fan, Jungwei Liu, Hongfang An aberration detection-based approach for sentinel syndromic surveillance of COVID-19 and other novel influenza-like illnesses |
title | An aberration detection-based approach for sentinel syndromic surveillance of COVID-19 and other novel influenza-like illnesses |
title_full | An aberration detection-based approach for sentinel syndromic surveillance of COVID-19 and other novel influenza-like illnesses |
title_fullStr | An aberration detection-based approach for sentinel syndromic surveillance of COVID-19 and other novel influenza-like illnesses |
title_full_unstemmed | An aberration detection-based approach for sentinel syndromic surveillance of COVID-19 and other novel influenza-like illnesses |
title_short | An aberration detection-based approach for sentinel syndromic surveillance of COVID-19 and other novel influenza-like illnesses |
title_sort | aberration detection-based approach for sentinel syndromic surveillance of covid-19 and other novel influenza-like illnesses |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7832634/ https://www.ncbi.nlm.nih.gov/pubmed/33321199 http://dx.doi.org/10.1016/j.jbi.2020.103660 |
work_keys_str_mv | AT wenandrew anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT wangliwei anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT hehuan anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT liusijia anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT fusunyang anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT sohnsunghwan anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT kugeljacoba anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT kaggalvinodc anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT huangming anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT wangyanshan anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT shenfeichen anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT fanjungwei anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT liuhongfang anaberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT wenandrew aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT wangliwei aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT hehuan aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT liusijia aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT fusunyang aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT sohnsunghwan aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT kugeljacoba aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT kaggalvinodc aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT huangming aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT wangyanshan aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT shenfeichen aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT fanjungwei aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses AT liuhongfang aberrationdetectionbasedapproachforsentinelsyndromicsurveillanceofcovid19andothernovelinfluenzalikeillnesses |