| Literature DB >> 27449387 |
Kyeongah Nah1,2,3, Shiori Otsuki2,4, Gerardo Chowell5,6, Hiroshi Nishiura7,8,9.
Abstract
BACKGROUND: The Middle East respiratory syndrome (MERS) associated coronavirus has been imported via travelers into multiple countries around the world. In order to support risk assessment practice, the present study aimed to devise a novel statistical model to quantify the country-level risk of experiencing an importation of MERS case.Entities:
Keywords: Airline transportation network; Importation; Infectious disease; Middle East respiratory syndrome; Risk assessment
Mesh:
Year: 2016 PMID: 27449387 PMCID: PMC4957429 DOI: 10.1186/s12879-016-1675-z
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.090
Timing of documented case importations of Middle East respiratory syndrome (MERS) around the world
| Country | Date of arrival | Days since 3 September 2012 |
|---|---|---|
| United Kingdom | 2012/9/11 | 8 |
| Germany | 2012/10/24 | 51 |
| United Arab Emiratesa | 2013/3/8 | 186 |
| France | 2013/4/17 | 226 |
| Tunisia | 2013/5/3 | 242 |
| Italy | 2013/5/25 | 264 |
| Omana | 2013/10/26 | 418 |
| Kuwaitb | 2013/11/7 | 430 |
| Yemena | 2014/3/17 | 560 |
| Malaysia | 2014/4/7 | 581 |
| Philippines | 2014/4/15 | 589 |
| Greece | 2014/4/17 | 591 |
| Jordan | 2014/4/19 | 593 |
| Lebanona | 2014/4/22 | 596 |
| United States | 2014/4/24 | 598 |
| Egypt | 2014/4/25 | 599 |
| Irana | 2014/5/1 | 605 |
| Netherlands | 2014/5/10 | 614 |
| Algeria | 2014/5/28 | 632 |
| Austria | 2014/9/22 | 749 |
| Turkey | 2014/10/6 | 763 |
| South Korea | 2015/5/4 | 973 |
| China | 2015/5/26 | 995 |
| Thailand | 2015/6/15 | 1015 |
The date at which an infected individual has initially entered is shown
aFor these Middle East countries, illness onset date of first identified case was used as the arrival date; bThere were two cases in the first instance among which the second identified case had a history of travel to the Kingdom of Saudi Arabia. The second case was thus defined as the imported case
Fig. 1Global distribution of the effective distance from Saudi Arabia. Effective distance from Saudi Arabia. Quartiles of effective distance are differentiated by color density. Dark brown represents countries with the short distance from Saudi Arabia. Orange represents the second shortest quartile, followed by brownish yellow and light brownish yellow. The map was drawn by the authors using statistical language R (https://cran.r-project.org/)
Goodness-of-fit and diagnostic performance of risk models for predicting importation of the Middle East respiratory syndrome (MERS)
| ID | Model | Number of parameters | AIC1 | AUC2 | Sensitivity (%) | Specificity (%) |
|---|---|---|---|---|---|---|
| 1 | Effective distance only | 1 | 464.1 | 0.95 (0.54,1.00) | 100.0 (88.3, 100.0) | 79.6 (74.0, 85.2) |
| 2 | Effective distance + religion | 2 | 461.2 | 0.87 (0.46, 1.00) | 100.0 (88.3, 100.0) | 69.2 (62.8, 75.5) |
| 3 | Effective distance + incidence | 1 | 357.2 | 0.95 (0.54, 1.00) | 100.0 (88.3, 100.0) | 79.6 (74.0, 85.2) |
| 4 | All pieces of information | 2 | 354.7 | 0.87 (0.46, 1.00) | 100.0 (88.3, 100.0) | 69.2 (62.8, 75.5) |
95 % confidence intervals (CI) are given in parenthesis. 1. AIC, Akaike information criterion [30]. Note that the data used for parameterizing models 1 and 2 were different from those used for models 3 and 4, and thus, the comparison can be made only between models 1 and 2 and between models 3 and 4, respectively; 2. AUC, area under the curve, derived from the receiver operator characteristic (ROC) curve [31] to predict the risk of importing a MERS case
Fig. 2Predicted risk of experiencing a case importation of Middle East respiratory syndrome (MERS). a and b Distribution of estimated risks of importation by country based on a the risk model that used effective distance only and b model that used the effective distance as well as religion and incidence data of MERS in the Kingdom of Saudi Arabia. Optimal threshold probability was 11.2 % for panel A and 6.9 % for panel b. c and d Receiver operator characteristic curves of predicted risk of importing MERS cases. Panel c shows the evaluation results of the risk model that used effective distance only, while d shows those of the model that used the effective distance as well as religion and incidence data of MERS in the Kingdom of Saudi Arabia
Fig. 3Countries at high risk of case importations of Middle East respiratory syndrome (MERS). List of the 30 countries with the estimated highest importation risks by 3 September 2015. The panel a shows the prediction that used the effective distance only with the best predictive value as assessed by the area under the curve (AUC; model 1). The panel b shows the prediction using a model that used the effective distance as well as religion and incidence data of MERS in the Kingdom of Saudi Arabia (model 4). The model 4 yielded a smaller value of Akaike Information Criterion (AIC) as compared with the model without incorporating religion information, and was regarded as a model with good fit. Bars filled with black are used to denote those countries that have already experienced at least one MERS importation by 26 June 2015
Fig. 4Real-time assessment of the predictive performance of MERS importation. Area Under the Curve (AUC) is compared as a function of time of prediction. Two different models (i.e., effective distance only and the model with all pieces of information) were used, and prediction was performed every six months. Whiskers extend to lower and upper 95 % confidence intervals