Literature DB >> 26583831

Use of Capture-Recapture to Estimate Underreporting of Ebola Virus Disease, Montserrado County, Liberia.

Etienne Gignoux, Rachel Idowu, Luke Bawo, Lindis Hurum, Armand Sprecher, Mathieu Bastard, Klaudia Porten.   

Abstract

Entities:  

Keywords:  Ebola; Ebola virus disease; Liberia; data interpretation; disease notification; disease outbreaks; epidemiologic monitoring; epidemiology; statistical methods; viruses

Mesh:

Year:  2015        PMID: 26583831      PMCID: PMC4672419          DOI: 10.3201/eid2112.150756

Source DB:  PubMed          Journal:  Emerg Infect Dis        ISSN: 1080-6040            Impact factor:   6.883


× No keyword cloud information.
To the Editor: Underreporting of cases during a large outbreak of disease is not without precedent (–). Health systems in West Africa were ill-prepared for the arrival of Ebola virus disease (Ebola) (). The Ebola outbreak in Liberia was declared on March 31, 2014, and peaked in September 2014. However, by mid-June, the outbreak had reached Montserrado County, where the capital, Monrovia, is located. In response, the Liberia Ministry of Health and Social Welfare (MOHSW) created a National Ebola Hotline: upon receipt of a call, a MOHSW case investigation team was dispatched to the site of the possible case. Additionally, persons could seek care at an Ebola Treatment Unit (ETU) or be referred to an ETU by another health care facility. During June 1–August 14, 2014, MOHSW, Médecins Sans Frontières, and the US nongovernment organization Samaritan’s Purse managed 3 ETUs in Montserrado County, including 2 in Monrovia operated by Eternal Love Winning Africa (ELWA). In August 2014, to assess the extent of underreporting in the midst of the Ebola outbreak, we analyzed 2 sources of data collected during June 1–August 14. The first comprised data collected by MOHSW case investigation teams. These data were collected on MOHSW case forms and entered into a database emulating these forms using Epi Info version 7 software (Centers for Disease Control and Prevention, Atlanta, GA, USA). The second data source (designed on Excel 2003; Microsoft, Redmond, WA, USA) comprised data on all patients admitted to the 2 ELWA ETUs (ELWA1 and ELWA2). We used a capture–recapture (CRC) approach. CRC can evaluate the completeness of reporting and thereby be used to correct for underreporting (). CRC methods use data from overlapping databases to estimate the number of unreported cases and thus more closely derive the true number of Ebola cases. Both databases were populated and managed separately, although the included Ebola cases are assumed to reflect the same patient population in Montserrado County. These 2 databases enabled us to use CRC to estimate the true number of Ebola cases in Montserrado County. To be included in either database, a case must have been classified as suspected, probable, or confirmed Ebola. The case definitions, following the official MOHSW definition for Ebola, were identical in both databases. Eventually, after laboratory confirmation, cases could be reclassified as “not a case” and thus be excluded from the analysis. To estimate the total number of Ebola cases during the study period, we used Chapman’s 2-sample CRC population estimate (); we calculated the 95% CI as proposed by Wittes et al. (). We performed a sensitivity analysis measuring impact of error in matching cases during record linkage. A total of 227 Ebola cases were recorded in the MOHSW database and 99 Ebola cases in the Montserrado County ETUs database (Table). Of these, 25 were found in both databases, 202 in the MOHSW database only, and 74 in the Montserrado County ETU database only. We estimated that the cumulative number of Ebola cases for Montserrado County during the study period was 876 (95% CI 608–1,143). A sensitivity analysis performed with ±5 cases showed that, with 5 additional cases in common between databases, the cumulative number of cases would decrease to 734 (95% CI 537–931); with 5 additional discordant cases, the estimate would increase to 1,085 (95% CI 700–1,469). Our analysis shows that the number of cases in Montserrado Country was at least 3-fold higher than that reported during the study period. Our study had several limitations. According to the doctor in charge of data collection up to August 4, some forms (<10) completed at the beginning of June 2014 might have been misplaced. Additionally, some patients who entered the ETU were not recorded in the registry book (˂5). CRC assumes a closed population. In Montserrado County, persons can move freely. In both databases, we included only cases that occurred in or were reported in Montserrado County. CRC assumes that links between the 2 sources based on identifying case information are error free. The sensitivity analysis suggested that even if up to 5 case matches were not detected, our conclusion was relatively robust. CRC assumes homogeneity in the likelihood of being captured and recaptured and that data sources are independent. In our analysis, homogeneity is unlikely. For example, the MOHSW database was more likely to capture cases in persons more likely to seek care; the ETU database was more likely to detect cases in persons referred by health workers. Similar behaviors might have resulted in positive dependency in each data source. Both heterogeneity and positive dependency with data sources leads to underestimation. Despite these limitations, we estimated more Ebola cases than were reported through official channels during the beginning of the outbreak in Montserrado County. Routine studies similar to ours can rapidly provide public health officials managing the outbreak response with estimates of underreporting and enable timely mobilization of appropriate resources. However, we believe that further exploration of this technique to better understand the possible difference of capture preference of each source may help improve the technique and benefit future outbreaks.
  6 in total

1.  Estimation of under-reporting of visceral leishmaniasis cases in Bihar, India.

Authors:  Vijay P Singh; Alok Ranjan; Roshan K Topno; Rakesh B Verma; Niyamat A Siddique; Vidya N Ravidas; Narendra Kumar; Krishna Pandey; Pradeep Das
Journal:  Am J Trop Med Hyg       Date:  2010-01       Impact factor: 2.345

2.  High mortality in a cholera outbreak in western Kenya after post-election violence in 2008.

Authors:  O-Tipo Shikanga; David Mutonga; Mohammed Abade; Samuel Amwayi; Maurice Ope; Hillary Limo; Eric D Mintz; Robert E Quick; Robert F Breiman; Daniel R Feikin
Journal:  Am J Trop Med Hyg       Date:  2009-12       Impact factor: 2.345

3.  Dynamics and control of Ebola virus transmission in Montserrado, Liberia: a mathematical modelling analysis.

Authors:  Joseph A Lewnard; Martial L Ndeffo Mbah; Jorge A Alfaro-Murillo; Frederick L Altice; Luke Bawo; Tolbert G Nyenswah; Alison P Galvani
Journal:  Lancet Infect Dis       Date:  2014-10-23       Impact factor: 25.071

4.  Cutaneous leishmaniasis in the Jordanian side of the Jordan Valley: severe under-reporting and consequences on public health management.

Authors:  Ibrahim M Mosleh; Eid Geith; Lina Natsheh; Muna Abdul-Dayem; Nabil Abotteen
Journal:  Trop Med Int Health       Date:  2008-03-24       Impact factor: 2.622

5.  Crimean-Congo hemorrhagic fever: prevention and control limitations in a resource-poor country.

Authors:  Raymond A Smego; Arif R Sarwari; Amna Rehana Siddiqui
Journal:  Clin Infect Dis       Date:  2004-05-24       Impact factor: 9.079

6.  Estimating the burden of rhodesiense sleeping sickness during an outbreak in Serere, eastern Uganda.

Authors:  Eric M Fèvre; Martin Odiit; Paul G Coleman; Mark E J Woolhouse; Susan C Welburn
Journal:  BMC Public Health       Date:  2008-03-26       Impact factor: 3.295

  6 in total
  17 in total

1.  Coccidioidomycosis: An underreported cause of death-Arizona, 2008-2013.

Authors:  Jefferson M Jones; Lia Koski; Mohammed Khan; Shane Brady; Rebecca Sunenshine; Ken K Komatsu
Journal:  Med Mycol       Date:  2018-02-01       Impact factor: 4.076

2.  A Quantitative Framework for Defining the End of an Infectious Disease Outbreak: Application to Ebola Virus Disease.

Authors:  Bimandra A Djaafara; Natsuko Imai; Esther Hamblion; Benido Impouma; Christl A Donnelly; Anne Cori
Journal:  Am J Epidemiol       Date:  2021-04-06       Impact factor: 4.897

3.  Use of Capture-Recapture Analysis to Assess Reporting Completeness of Births to Hepatitis B-Positive Women in New York City, 2013-2014.

Authors:  Katelynn Devinney; Julie Lazaroff; Jennifer B Rosen; Christopher M Zimmerman; Jane R Zucker
Journal:  Public Health Rep       Date:  2020-04-08       Impact factor: 2.792

4.  Mortality, Morbidity and Health-Seeking Behaviour during the Ebola Epidemic 2014-2015 in Monrovia Results from a Mobile Phone Survey.

Authors:  Anna Kuehne; Emily Lynch; Esaie Marshall; Amanda Tiffany; Ian Alley; Luke Bawo; Moses Massaquoi; Claudia Lodesani; Philippe Le Vaillant; Klaudia Porten; Etienne Gignoux
Journal:  PLoS Negl Trop Dis       Date:  2016-08-23

5.  Risk factors for measles mortality and the importance of decentralized case management during an unusually large measles epidemic in eastern Democratic Republic of Congo in 2013.

Authors:  Etienne Gignoux; Jonathan Polonsky; Iza Ciglenecki; Mathieu Bichet; Matthew Coldiron; Enoch Thuambe Lwiyo; Innocent Akonda; Micaela Serafini; Klaudia Porten
Journal:  PLoS One       Date:  2018-03-14       Impact factor: 3.240

6.  Heterogeneities in the case fatality ratio in the West African Ebola outbreak 2013-2016.

Authors:  Tini Garske; Anne Cori; Archchun Ariyarajah; Isobel M Blake; Ilaria Dorigatti; Tim Eckmanns; Christophe Fraser; Wes Hinsley; Thibaut Jombart; Harriet L Mills; Gemma Nedjati-Gilani; Emily Newton; Pierre Nouvellet; Devin Perkins; Steven Riley; Dirk Schumacher; Anita Shah; Maria D Van Kerkhove; Christopher Dye; Neil M Ferguson; Christl A Donnelly
Journal:  Philos Trans R Soc Lond B Biol Sci       Date:  2017-05-26       Impact factor: 6.237

7.  Rigorous surveillance is necessary for high confidence in end-of-outbreak declarations for Ebola and other infectious diseases.

Authors:  Robin N Thompson; Oliver W Morgan; Katri Jalava
Journal:  Philos Trans R Soc Lond B Biol Sci       Date:  2019-07-08       Impact factor: 6.237

8.  Exposure-Specific and Age-Specific Attack Rates for Ebola Virus Disease in Ebola-Affected Households, Sierra Leone.

Authors:  Hilary Bower; Sembia Johnson; Mohamed S Bangura; Alie Joshua Kamara; Osman Kamara; Saidu H Mansaray; Daniel Sesay; Cecilia Turay; Francesco Checchi; Judith R Glynn
Journal:  Emerg Infect Dis       Date:  2016-08-15       Impact factor: 6.883

9.  Potential for broad-scale transmission of Ebola virus disease during the West Africa crisis: lessons for the Global Health security agenda.

Authors:  Eduardo A Undurraga; Cristina Carias; Martin I Meltzer; Emily B Kahn
Journal:  Infect Dis Poverty       Date:  2017-12-01       Impact factor: 4.520

10.  Characterizing the dynamics underlying global spread of epidemics.

Authors:  Lin Wang; Joseph T Wu
Journal:  Nat Commun       Date:  2018-01-15       Impact factor: 14.919

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.