Exposure patterns driving Ebola transmission in West Africa: A retrospective observational study.
<h4>Background</h4> <p>The ongoing West African Ebola epidemic began in December 2013 in Guinea, probably from a single zoonotic introduction. As a result of ineffective initial control efforts, an Ebola outbreak of unprecedented scale emerged. As of 4 May 2015, it had resulted in...
Main Authors: | , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , |
---|---|
Format: | Journal article |
Language: | English |
Published: |
Public Library of Sciences
2016
|
Subjects: |
_version_ | 1826294349019742208 |
---|---|
author | International Ebola Response Team Agua-Agum, J Ariyarajah, A Aylward, B Bawo, L Bilivogui, P Blake, I Brennan, R Cawthorne, A Cleary, E Clement, P Conteh, R Cori, A Dafae, F Dahl, B Dangou, J Diallo, B Donnelly, C Dorigatti, I Dye, C Eckmanns, T Fallah, M Ferguson, N Fiebig, L Fraser, C Garske, T Gonzalez, L Hamblion, E Hamid, N Hersey, S Hinsley, W Jambei, A Jombart, T Kargbo, D Keita, S Kinzer, M George, F Godefroy, B Gutierrez, G Kannangarage, N Mills, H Moller, T Meijers, S Mohamed, Y Morgan, O Nedjati-Gilani, G Newton, E Nouvellet, P Nyenswah, T Perea, W Perkins, D Riley, S Rodier, G Rondy, M Sagrado, M Savulescu, C Schafer, I Schumacher, D Seyler, T Shah, A Van Kerkhove, M Wesseh, C Yoti, Z |
author_facet | International Ebola Response Team Agua-Agum, J Ariyarajah, A Aylward, B Bawo, L Bilivogui, P Blake, I Brennan, R Cawthorne, A Cleary, E Clement, P Conteh, R Cori, A Dafae, F Dahl, B Dangou, J Diallo, B Donnelly, C Dorigatti, I Dye, C Eckmanns, T Fallah, M Ferguson, N Fiebig, L Fraser, C Garske, T Gonzalez, L Hamblion, E Hamid, N Hersey, S Hinsley, W Jambei, A Jombart, T Kargbo, D Keita, S Kinzer, M George, F Godefroy, B Gutierrez, G Kannangarage, N Mills, H Moller, T Meijers, S Mohamed, Y Morgan, O Nedjati-Gilani, G Newton, E Nouvellet, P Nyenswah, T Perea, W Perkins, D Riley, S Rodier, G Rondy, M Sagrado, M Savulescu, C Schafer, I Schumacher, D Seyler, T Shah, A Van Kerkhove, M Wesseh, C Yoti, Z |
author_sort | International Ebola Response Team |
collection | OXFORD |
description | <h4>Background</h4> <p>The ongoing West African Ebola epidemic began in December 2013 in Guinea, probably from a single zoonotic introduction. As a result of ineffective initial control efforts, an Ebola outbreak of unprecedented scale emerged. As of 4 May 2015, it had resulted in more than 19,000 probable and confirmed Ebola cases, mainly in Guinea (3,529), Liberia (5,343), and Sierra Leone (10,746). Here, we present analyses of data collected during the outbreak identifying drivers of transmission and highlighting areas where control could be improved.</p> <h4>Methods and Findings</h4> <p>Over 19,000 confirmed and probable Ebola cases were reported in West Africa by 4 May 2015. Individuals with confirmed or probable Ebola ("cases") were asked if they had exposure to other potential Ebola cases ("potential source contacts") in a funeral or non-funeral context prior to becoming ill. We performed retrospective analyses of a case line-list, collated from national databases of case investigation forms that have been reported to WHO. These analyses were initially performed to assist WHO's response during the epidemic, and have been updated for publication.</p> <br/> <p>We analysed data from 3,529 cases in Guinea, 5,343 in Liberia, and 10,746 in Sierra Leone; exposures were reported by 33% of cases. The proportion of cases reporting a funeral exposure decreased over time. We found a positive correlation (r = 0.35, p < 0.001) between this proportion in a given district for a given month and the within-district transmission intensity, quantified by the estimated reproduction number (R). We also found a negative correlation (r = −0.37, p < 0.001) between R and the district proportion of hospitalised cases admitted within ≤4 days of symptom onset. These two proportions were not correlated, suggesting that reduced funeral attendance and faster hospitalisation independently influenced local transmission intensity. We were able to identify 14% of potential source contacts as cases in the case line-list. Linking cases to the contacts who potentially infected them provided information on the transmission network. This revealed a high degree of heterogeneity in inferred transmissions, with only 20% of cases accounting for at least 73% of new infections, a phenomenon often called super-spreading. Multivariable regression models allowed us to identify predictors of being named as a potential source contact. These were similar for funeral and non-funeral contacts: severe symptoms, death, non-hospitalisation, older age, and travelling prior to symptom onset. Non-funeral exposures were strongly peaked around the death of the contact. There was evidence that hospitalisation reduced but did not eliminate onward exposures. We found that Ebola treatment units were betterthan other health care facilities at preventing exposure from hospitalised and deceased individuals. The principal limitation of our analysis is limited data quality, with cases not being entered into the database, cases not reporting exposures, or data being entered incorrectly (especially dates, and possible misclassifications).</p> <h4>Conclusions</h4> <p>Achieving elimination of Ebola is challenging, partly because of super-spreading. Safe funeral practices and fast hospitalisation contributed to the containment of this Ebola epidemic. Continued real-time data capture, reporting, and analysis are vital to track transmission patterns, inform resource deployment, and thus hasten and maintain elimination of the virus from the human population.</p> |
first_indexed | 2024-03-07T03:44:16Z |
format | Journal article |
id | oxford-uuid:beeaa01f-8f35-4b7d-8bd6-1dccfcd3b5f0 |
institution | University of Oxford |
language | English |
last_indexed | 2024-03-07T03:44:16Z |
publishDate | 2016 |
publisher | Public Library of Sciences |
record_format | dspace |
spelling | oxford-uuid:beeaa01f-8f35-4b7d-8bd6-1dccfcd3b5f02022-03-27T05:43:41ZExposure patterns driving Ebola transmission in West Africa: A retrospective observational study.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:beeaa01f-8f35-4b7d-8bd6-1dccfcd3b5f0*subject*EnglishSymplectic Elements at OxfordPublic Library of Sciences2016International Ebola Response TeamAgua-Agum, JAriyarajah, AAylward, BBawo, LBilivogui, PBlake, IBrennan, RCawthorne, ACleary, EClement, PConteh, RCori, ADafae, FDahl, BDangou, JDiallo, BDonnelly, CDorigatti, IDye, CEckmanns, TFallah, MFerguson, NFiebig, LFraser, CGarske, TGonzalez, LHamblion, EHamid, NHersey, SHinsley, WJambei, AJombart, TKargbo, DKeita, SKinzer, MGeorge, FGodefroy, BGutierrez, GKannangarage, NMills, HMoller, TMeijers, SMohamed, YMorgan, ONedjati-Gilani, GNewton, ENouvellet, PNyenswah, TPerea, WPerkins, DRiley, SRodier, GRondy, MSagrado, MSavulescu, CSchafer, ISchumacher, DSeyler, TShah, AVan Kerkhove, MWesseh, CYoti, Z <h4>Background</h4> <p>The ongoing West African Ebola epidemic began in December 2013 in Guinea, probably from a single zoonotic introduction. As a result of ineffective initial control efforts, an Ebola outbreak of unprecedented scale emerged. As of 4 May 2015, it had resulted in more than 19,000 probable and confirmed Ebola cases, mainly in Guinea (3,529), Liberia (5,343), and Sierra Leone (10,746). Here, we present analyses of data collected during the outbreak identifying drivers of transmission and highlighting areas where control could be improved.</p> <h4>Methods and Findings</h4> <p>Over 19,000 confirmed and probable Ebola cases were reported in West Africa by 4 May 2015. Individuals with confirmed or probable Ebola ("cases") were asked if they had exposure to other potential Ebola cases ("potential source contacts") in a funeral or non-funeral context prior to becoming ill. We performed retrospective analyses of a case line-list, collated from national databases of case investigation forms that have been reported to WHO. These analyses were initially performed to assist WHO's response during the epidemic, and have been updated for publication.</p> <br/> <p>We analysed data from 3,529 cases in Guinea, 5,343 in Liberia, and 10,746 in Sierra Leone; exposures were reported by 33% of cases. The proportion of cases reporting a funeral exposure decreased over time. We found a positive correlation (r = 0.35, p < 0.001) between this proportion in a given district for a given month and the within-district transmission intensity, quantified by the estimated reproduction number (R). We also found a negative correlation (r = −0.37, p < 0.001) between R and the district proportion of hospitalised cases admitted within ≤4 days of symptom onset. These two proportions were not correlated, suggesting that reduced funeral attendance and faster hospitalisation independently influenced local transmission intensity. We were able to identify 14% of potential source contacts as cases in the case line-list. Linking cases to the contacts who potentially infected them provided information on the transmission network. This revealed a high degree of heterogeneity in inferred transmissions, with only 20% of cases accounting for at least 73% of new infections, a phenomenon often called super-spreading. Multivariable regression models allowed us to identify predictors of being named as a potential source contact. These were similar for funeral and non-funeral contacts: severe symptoms, death, non-hospitalisation, older age, and travelling prior to symptom onset. Non-funeral exposures were strongly peaked around the death of the contact. There was evidence that hospitalisation reduced but did not eliminate onward exposures. We found that Ebola treatment units were betterthan other health care facilities at preventing exposure from hospitalised and deceased individuals. The principal limitation of our analysis is limited data quality, with cases not being entered into the database, cases not reporting exposures, or data being entered incorrectly (especially dates, and possible misclassifications).</p> <h4>Conclusions</h4> <p>Achieving elimination of Ebola is challenging, partly because of super-spreading. Safe funeral practices and fast hospitalisation contributed to the containment of this Ebola epidemic. Continued real-time data capture, reporting, and analysis are vital to track transmission patterns, inform resource deployment, and thus hasten and maintain elimination of the virus from the human population.</p> |
spellingShingle | *subject* International Ebola Response Team Agua-Agum, J Ariyarajah, A Aylward, B Bawo, L Bilivogui, P Blake, I Brennan, R Cawthorne, A Cleary, E Clement, P Conteh, R Cori, A Dafae, F Dahl, B Dangou, J Diallo, B Donnelly, C Dorigatti, I Dye, C Eckmanns, T Fallah, M Ferguson, N Fiebig, L Fraser, C Garske, T Gonzalez, L Hamblion, E Hamid, N Hersey, S Hinsley, W Jambei, A Jombart, T Kargbo, D Keita, S Kinzer, M George, F Godefroy, B Gutierrez, G Kannangarage, N Mills, H Moller, T Meijers, S Mohamed, Y Morgan, O Nedjati-Gilani, G Newton, E Nouvellet, P Nyenswah, T Perea, W Perkins, D Riley, S Rodier, G Rondy, M Sagrado, M Savulescu, C Schafer, I Schumacher, D Seyler, T Shah, A Van Kerkhove, M Wesseh, C Yoti, Z Exposure patterns driving Ebola transmission in West Africa: A retrospective observational study. |
title | Exposure patterns driving Ebola transmission in West Africa: A retrospective observational study. |
title_full | Exposure patterns driving Ebola transmission in West Africa: A retrospective observational study. |
title_fullStr | Exposure patterns driving Ebola transmission in West Africa: A retrospective observational study. |
title_full_unstemmed | Exposure patterns driving Ebola transmission in West Africa: A retrospective observational study. |
title_short | Exposure patterns driving Ebola transmission in West Africa: A retrospective observational study. |
title_sort | exposure patterns driving ebola transmission in west africa a retrospective observational study |
topic | *subject* |
work_keys_str_mv | AT internationalebolaresponseteam exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT aguaagumj exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT ariyarajaha exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT aylwardb exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT bawol exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT bilivoguip exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT blakei exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT brennanr exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT cawthornea exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT clearye exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT clementp exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT contehr exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT coria exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT dafaef exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT dahlb exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT dangouj exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT diallob exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT donnellyc exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT dorigattii exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT dyec exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT eckmannst exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT fallahm exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT fergusonn exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT fiebigl exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT fraserc exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT garsket exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT gonzalezl exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT hamblione exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT hamidn exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT herseys exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT hinsleyw exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT jambeia exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT jombartt exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT kargbod exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT keitas exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT kinzerm exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT georgef exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT godefroyb exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT gutierrezg exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT kannangaragen exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT millsh exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT mollert exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT meijerss exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT mohamedy exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT morgano exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT nedjatigilanig exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT newtone exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT nouvelletp exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT nyenswaht exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT pereaw exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT perkinsd exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT rileys exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT rodierg exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT rondym exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT sagradom exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT savulescuc exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT schaferi exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT schumacherd exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT seylert exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT shaha exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT vankerkhovem exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT wessehc exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy AT yotiz exposurepatternsdrivingebolatransmissioninwestafricaaretrospectiveobservationalstudy |