| Literature DB >> 26625118 |
Oumar Faye1, Alessio Andronico2, Ousmane Faye1, Henrik Salje2,3, Pierre-Yves Boëlle4,5, N'Faly Magassouba6, Elhadj Ibrahima Bah7, Lamine Koivogui8, Boubacar Diallo9, Alpha Amadou Diallo10, Sakoba Keita10, Mandy Kader Konde11, Robert Fowler12, Gamou Fall1, Simon Cauchemez2, Amadou Alpha Sall1.
Abstract
BACKGROUND: The case fatality ratio (CFR) of Ebola virus disease (EVD) can vary over time and space for reasons that are not fully understood. This makes it difficult to define the baseline CFRs needed to evaluate treatments in the absence of randomized controls. Here, we investigate whether viremia in EVD patients may be used to evaluate baseline EVD CFRs. METHODS ANDEntities:
Mesh:
Year: 2015 PMID: 26625118 PMCID: PMC4666644 DOI: 10.1371/journal.pmed.1001908
Source DB: PubMed Journal: PLoS Med ISSN: 1549-1277 Impact factor: 11.069
Fig 1The Ebola virus disease epidemic in the Conakry area, Guinea, March 2014 to February 2015.
(A) Map of the study area, which consists of Conakry and the surrounding prefectures of Boffa, Coyah, Dubreka, Forecariah, Fria, Kindia, and Telimele (for which diagnoses were mostly performed by the IPD-LFHP laboratory) (the administrative boundaries were taken from the GADM database; http://www.gadm.org/). (B) Number of cases by month of symptom onset. The total number of probable and confirmed cases in the study area that were hospitalized is indicated in grey. The number of those that were diagnosed by reverse transcription PCR (RT-PCR) by the IPD-LFHP laboratory is in blue.
Fig 2STROBE figure of patients included in this study.
Characteristics of patients included in the study.
| Characteristic | Value |
|---|---|
| Number of patients | 699 |
| Age (years), mean (IQR) | 31.3 (20.0–42.0) |
| Female, | 332 (0.47) |
| Dead, | 332 (0.47) |
| Time from symptom onset to hospitalization (days), mean (IQR) | 4.8 (2.0–6.0) |
| Time from symptom onset to sample collection (days), mean (IQR) | 5.6 (3.0–7.0) |
| Time from symptom onset to death for those who died (days), mean (IQR) | 9.3 (6.5–11.0) |
Fig 3Viremia and the probability of death.
(A) Mean viremia as a function of the time from symptom onset to sample collection. (B) Mean viremia by gender. (C) Mean viremia by age group. (D) Probability of death as a function of viremia, when viremia was measured in the week following symptom onset. Three viremia groups are defined: low (V < 104.4 copies/ml), intermediate (104.4 ≤ V < 105.2 copies/ml), and high (V ≥ 105.2 copies/ml) viremia. The probability of death according to viremia group is represented as dotted line. The grey line corresponds to the predictions of the univariable logistic regression model. (E) Probability of death (dot: observed mean; thick line: 95% CI) as a function of the time from symptom onset to sample collection and the viremia group. Mean predicted values obtained with the multivariable logistic regression (triangle) and the bootstrap prediction intervals (thin lines) are also provided.
Odds ratios for death in a multivariate logistic regression performed on all of the 699 cases included in the study.
| Variable | Estimated OR (95% CI) |
|
|---|---|---|
|
| 1.12 (1.10–1.14) | <0.001 |
|
| ||
| <4 d | Reference | — |
| 4–7 d | 1.52 (1.01–2.29) | 0.043 |
| >7 d | 3.04 (1.78–5.20) | <0.001 |
|
| ||
| Young children (0–4 y) | 2.44 (1.02–5.86) | 0.046 |
| Children (5–14 y) | 0.46 (0.24–0.86) | 0.016 |
| Adults (15–44 y) | Reference | — |
| Older adults (≥45 y) | 2.84 (1.81–4.46) | <0.001 |
Fig 4Variation of CFR and viremia over time.
(A) Observed CFR by month (black) and predictions obtained from multivariable logistic regression (orange) and from the simple univariable logistic regression model that relies only on viremia (violet). Lines provide 95% CI. The shaded area indicates the bootstrap prediction interval. (B) Mean viremia by month. (C) Proportion of patients in the low (red; V < 104.4 copies/ml), intermediate (green; 104.4 ≤ V < 105.2 copies/ml), and high (blue; V ≥ 105.2 copies/ml) viremia groups by month.