| Literature DB >> 22463370 |
Diana M Prieto1, Tapas K Das, Alex A Savachkin, Andres Uribe, Ricardo Izurieta, Sharad Malavade.
Abstract
BACKGROUND: In recent years, computer simulation models have supported development of pandemic influenza preparedness policies. However, U.S. policymakers have raised several concerns about the practical use of these models. In this review paper, we examine the extent to which the current literature already addresses these concerns and identify means of enhancing the current models for higher operational use.Entities:
Mesh:
Year: 2012 PMID: 22463370 PMCID: PMC3350431 DOI: 10.1186/1471-2458-12-251
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
A summary of the survey results on the challenges of practical use of PI models, as perceived by public health practitioners
| Challenge | Description of the challenge |
|---|---|
| Model parameters need to be derived from updated demographical and epidemiological data | |
| Models need to use credible and valid assumptions | |
| Models need to incorporate human behavior | |
| Models need to be easily accessible and run on personal computers | |
| Models need to be scalable to population specific data from regions of all sizes | |
| Available models and best practices need to be disseminated among the practitioners | |
| Need to translate models into uniform preparedness and response action plans | |
| Need to fund staff allocation and specialized training for model implementation | |
| Models need to consider second and third tier social implications of containment strategies | |
| State and federal agencies need to develop mandates for use of model-based strategies | |
Plan for examination of the design and implementation challenges of the existing PI models
| Design and implementation challenges | Plan of examination |
|---|---|
| Validity of data support (A1) for model parameters | For each PI model and for each of the major model parameters (e.g., reproduction number, illness attack rate) examine: |
| A1a. Data source for parameter values (actual, simulated, assumed) | |
| A1b. Age of data | |
| A1c. Type of interface for data access and retrieval (manual, automatic) | |
| A1d. Technique to translate raw data into model parameter values (e.g., arithmetic conversion, Bayesian estimation) | |
| Credibility and validity of model assumptions (A2) | For each of the reviewed PI models, examine assumptions concerning contact probability and frequency of new infection updates |
| Represent human behavior (A3) | For each of the PI models: |
| - identify the human behavioral aspects addressed, | |
| - examine data support using criteria A1a through A1d, and | |
| - assess the reasons for inadequacy of human behavioral considerations | |
| Accessibility and scalability (A4, A5) | For each PI model, examine: |
| - if the model software is available to general public (open source or closed source code), | |
| - presence of end user support (user manuals, e-mail/phone technical support), | |
| - information on the number of replicates needed for valid output, | |
| - information on the running time, | |
| - information on the ways to manage the computational load for implementing large-scale scenarios (e.g., the use of distributed and parallel computing), | |
| - use of replicate minimization techniques, and | |
| - type of interface for data access and retrieval (A1c), and data translation (A1d) | |
Figure 1Selection criteria for PI models for systematic review.
Clustering of selected review articles based on model type
| Model cluster | Selected articles for review |
|---|---|
| Imperial-Pitt | Ferguson et al. 2005 [ |
| Wu | |
| Ciofi | |
| Arino | |
| UW - LANL | Longini et al. 2004 [ |
| Gojovic | |
| LOKI - INFECT | |
| Nuno - Gumel | |
| Roberts | |
| Influsim | |
| USF | Das et al. 2008 [ |
Factors that influence contact probabilities within mixing groups
| Mixing group | Factors that influence contact probabilities | |
|---|---|---|
| Imperial-Pitt (Ferguson, 2006) | UW-LANL (Germann, 2007) | |
| Household | Contact probabilities are constant | Contact probabilities vary with age |
| Neighborhood | Mixing group is not considered | Contact probabilities vary with age |
| Workplace | 75% percent of all workplace contacts occur within a workgroup of close colleagues and the remaining 25% of contacts occur outside the workgroup. Contact probabilities in both cases are constant. | Contact probabilities are constant |
| School (pre-school, elementary, middle, high, university) | As in workplace | Contact probabilities are constant |
| Community places, e.g., churches, banks, supermarkets, afterschool | Contact probability between two members varies according to proximity | Contact probabilities vary with age |