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A systematic review of early modelling studies of Ebola virus disease in West Africa

Published online by Cambridge University Press:  07 February 2017

Z. S. Y. WONG*
Affiliation:
Centre for Clinical Epidemiology St. Luke's International University, Chuo-ku, Tokyo, Japan School of Public Health and Community Medicine, The University of New South Wales, Sydney, NSW, Australia
C. M. BUI
Affiliation:
School of Public Health and Community Medicine, The University of New South Wales, Sydney, NSW, Australia
A. A. CHUGHTAI
Affiliation:
School of Public Health and Community Medicine, The University of New South Wales, Sydney, NSW, Australia
C. R. MACINTYRE
Affiliation:
College of Public Service and Community Solutions, Arizona State University, Tempe, AZ, 85287, United States
*
*Author for correspondence: Z. S. Y. Wong, Centre for Clinical Epidemiology St. Luke's International University, OMURA Susumu & Mieko Memorial St. Luke's Center for Clinical Academia, 5/F, 3-6-2 Tsukiji, Chuo-ku, Tokyo, 104-0045, Japan. (Email: zoiesywong@gmail.com)
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Summary

Phenomenological and mechanistic models are widely used to assist resource planning for pandemics and emerging infections. We conducted a systematic review, to compare methods and outputs of published phenomenological and mechanistic modelling studies pertaining to the 2013–2016 Ebola virus disease (EVD) epidemics in four West African countries – Sierra Leone, Liberia, Guinea and Nigeria. We searched Pubmed, Embase and Scopus databases for relevant English language publications up to December 2015. Of the 874 articles identified, 41 met our inclusion criteria. We evaluated these selected studies based on: the sources of the case data used, and modelling approaches, compartments used, population mixing assumptions, model fitting and calibration approaches, sensitivity analysis used and data bias considerations. We synthesised results of the estimated epidemiological parameters: basic reproductive number (R 0), serial interval, latent period, infectious period and case fatality rate, and examined their relationships. The median of the estimated mean R 0 values were between 1·30 and 1·84 in Sierra Leone, Liberia and Guinea. Much higher R 0 value of 9·01 was described for Nigeria. We investigated several issues with uncertainty around EVD modes of transmission, and unknown observation biases from early reported case data. We found that epidemic models offered R 0 mean estimates which are country-specific, but these estimates are not associating with the use of several key disease parameters within the plausible ranges. We find simple models generally yielded similar estimates of R 0 compared with more complex models. Models that accounted for data uncertainty issues have offered a higher case forecast compared with actual case observation. Simple model which offers transparency to public health policy makers could play a critical role for advising rapid policy decisions under an epidemic emergency.

Information

Type
Review
Copyright
Copyright © Cambridge University Press 2017 
Figure 0

Table 1. Modelling terms definitions

Figure 1

Fig. 1. PRISMA flow diagram of the selection process for including studies in review.

Figure 2

Table 2. An overview of modelling studies of Ebola and study designs (Research aim: Parameter estimation)

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Table 3. An overview of modelling studies of Ebola and study designs (Research aim: Trajectory prediction)

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Table 4. An overview of modelling studies of Ebola and study designs (Research aims: Parameter estimation and Trajectory prediction)

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Fig. 2. Summary of estimated basic reproduction numbers (topleft) by West African countries (G, Guinea; L, Liberia; N, Nigeria; O, Overall; and SL, Sierra Leone), (topright) by account for underreporting, (bottomleft) consideration of compartment (F, funeral; H, hospitalisation; H+F, both hospitalisation and funeral; N, not considered), (bottomright) last updated data used (with trend line of R0 estimation). Kruskal–Wallis non-parametric test result showed that the differences between the medians of the estimated R0 mean by country (excluding Nigeria) are statistically insignificant (P value > 0·05). Furthermore, we cannot find any significant relationship to reject the null hypotheses for those accounting for underreporting and different compartments used (by both Kruskal–Wallis and Mood's median tests).

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Fig. 3. Summary of estimated epidemiology parameters by country (G, Guinea; L, Liberia; N, Nigeria; O, Overall; SL, Sierra Leone) for (topleft) serial interval, (topright) incubation period, (bottomleft) infectious period, (bottomright) fatality rate. Kruskal–Wallis non-parametric test results showed that we cannot reject the null hypotheses – i.e. the mean values of these epidemiology parameters have identical data distributions from the included countries.

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Fig. 4. Relationship between estimated R0 and epidemiology parameters. (topleft) serial interval, (topright) incubation period, (bottomleft) infectious period, (bottomright) fatality rate. (G, Guinea; L, Liberia; N, Nigeria; O, Overall; SL, Sierra Leone) (Spearman tests among these pairs (for pairwise complete observations) are all insignificant). Only complete pairs between R0 and epidemiology parameters are shown in this figure.

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Fig. 5. Summary of ratio between predicted cases and WHO reported cases (matched with forecast target date). (topleft) forecast target date, (topright) by West African countries (G, Guinea; L, Liberia; N, Nigeria; O, Overall; and SL, Sierra Leone), (bottomleft) by account for underreporting, (bottomright) consideration of compartment (F, funeral; H, hospitalisation; H + F, both hospitalisation and funeral; N, not considered). The Mood's two sample median test from the pair between do and do not account for underreporting shows that the median values of ratio between prediction and observation are significantly different (P value ⩽ 0·1). We cannot reject the null hypotheses of the pairs of different compartments used (by both Kruskal–Wallis and Mood's tests).

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