| Literature DB >> 23249562 |
Thomas Obadia1, Romana Haneef, Pierre-Yves Boëlle.
Abstract
BACKGROUND: Several generic methods have been proposed to estimate transmission parameters during an outbreak, especially the reproduction number. However, as of today, no dedicated software exists that implements these methods and allow comparisons.Entities:
Mesh:
Year: 2012 PMID: 23249562 PMCID: PMC3582628 DOI: 10.1186/1472-6947-12-147
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Estimation of initial reproduction number by four different methods over the same dataset
| EG | 1.34 | 1.56 |
| (optimal time window: 7:22) | [ 1.33 ; 1.36 ] | [ 1.50 ; 1.62 ] |
| ML | 1.21 | 1.54 |
| (optimal time window: 11:22) | [ 1.16 ; 1.27 ] | [ 1.42 ; 1.66 ] |
| SB | 1.20 | 1.38 |
| [ 1.11 ; 1.28 ] | [ 1.25 ; 1.51 ] | |
| TD | 1.40 | 1.40 |
| [ 1.09 ; 1.73 ] | [ 1.09 ; 1.73 ] |
See text for details regarding the methods. All estimates were obtained using the first 32 days of data (default column) or the best fitting time window (“optimal” column). For the SB method, the optimal reported estimate was obtained on day 22, as this date best fits the end of the exponential growth period. For the TD method, daily estimates were averaged over the 32 first days.
Figure 1Estimates of the reproduction ratio and goodness of fit. A) Estimates of the reproduction ratio by four different methods (see text for details). B) Observed incidence (step function) and model predicted incidence for each method.
Figure 2Sensitivity of the reproduction ratio to the choice of the time period for estimation. A) Maximum deviance R-squared statistic for time periods of increasing duration. The red dot corresponds with the best value. B) Estimates of the reproduction ratio according to various begin and end dates for the time period. The value corresponding to the best fit is shown as a dot, and the solid black lines show the limits of the corresponding 95%CI. In other words, an estimate that falls within the 95%CI of the value showing the best fit can be achieved by using a wide range of begin and end dates. These dates are the ones producing values between the solid black lines.
Figure 3Sensitivity of the reproduction number to the choice of the generation time distribution. Reproduction ratio estimates were computed using different mean generation times. Confidence intervals are shown as vertical bars.
Bias and MSE of initial reproduction number estimation methods
| | | ||||
|---|---|---|---|---|---|
| 1.5 | 1 | 0.12 (0.0467) | 0.02 (0.0164) | 0.04 (0.0336) | −0.15 (0.0745) |
| 3 | 0.07 (0.0386) | −0.38 (0.1429) | −0.4 (0.16) | −0.1 (0.0277) | |
| 6 | 0.07 (0.0431) | −0.49 (0.2408) | −0.79 (0.6281) | −0.09 (0.0371) | |
| 2 | 1 | 0.11 (0.0589) | −0.17 (0.0571) | −0.11 (0.0736) | −0.4 (0.1814) |
| 3 | 0 (0.0496) | −0.84 (0.7041) | −0.87 (0.7573) | −0.32 (0.1222) | |
| 6 | −0.03 (0.0618) | −0.99 (0.9789) | −1.33 (1.781) | −0.31 (0.1306) | |
| 3 | 1 | −0.07 (0.1449) | −0.67 (0.5547) | −0.47 (0.317) | −1.1 (1.2532) |
| 3 | −0.3 (0.2492) | −1.8 (3.2396) | −1.86 (3.4432) | −0.92 (0.8585) | |
| 6 | −0.33 (0.2872) | −1.99 (3.9521) | −2.45 (5.9935) | −0.89 (0.8277) | |
| 1.5 | 1 | 0.28 (0.1609) | 0.16 (0.0679) | 0.33 (0.1913) | −0.05 (0.0881) |
| 3 | 0.11 (0.0715) | −0.38 (0.1444) | −0.42 (0.1816) | −0.06 (0.035) | |
| 6 | 0.08 (0.0694) | −0.49 (0.2415) | −0.83 (0.6906) | −0.04 (0.0574) | |
| 2 | 1 | 0.13 (0.1109) | −0.15 (0.0696) | 0.05 (0.1238) | −0.4 (0.197) |
| 3 | 0 (0.086) | −0.84 (0.7108) | −0.89 (0.8007) | −0.32 (0.1328) | |
| 6 | −0.03 (0.0988) | −0.99 (0.9792) | −1.36 (1.8686) | −0.3 (0.1517) | |
| 3 | 1 | −0.07 (0.2157) | −0.65 (0.5699) | −0.45 (0.3457) | −1.11 (1.2745) |
| 3 | −0.3 (0.3035) | −1.8 (3.2337) | −1.86 (3.4698) | −0.93 (0.898) | |
| 6 | −0.36 (0.366) | −1.99 (3.9527) | −2.43 (5.9218) | −0.94 (0.9421) | |
For each fixed value of R0, 4.000 epidemics were simulated at an individual-based level. A first index case is set at the initial time, and contaminated descendants are sampled in a negative binomial distribution. For each case, we sample a latency period dlat during which the individual is infected, but not contagious, and an infectious period dinf, both from Gamma distributions of parameters already described for influenza (gamma distributions with mean+/−sd 1.6+/−0.3 days for latency and 1+/−1 days for infectious period [19]). Incidence data are computed as class of time of infection, defined as t(o) = t(p) + dlat(p) + runif(1) * dinf (p), where p is the parent case and 0 the offspring case.
Epidemics that didn’t start due to too few cases were discarded, and estimations were run by batch. For each batch of simulations, we report the bias between the value used to generate the epidemics and the average of all estimates, along with the Mean Square Estimator (MSE) of the simulation series.