Literature DB >> 31499663

Comparative assessment of parameter estimation methods in the presence of overdispersion: a simulation study.

Kimberlyn Roosa1, Ruiyan Luo1, Gerardo Chowell1,2.   

Abstract

The Poisson distribution is commonly assumed as the error structure for count data; however, empirical data may exhibit greater variability than expected based on a given statistical model. Greater variability could point to model misspecification, such as missing crucial information about the epidemiology of the disease or changes in population behavior. When the mechanism producing the apparent overdispersion is unknown, it is typically assumed that the variance in the data exceeds the mean (by some scaling factor). Thus, a probability distribution that allows for overdispersion (negative binomial, for example) may better represent the data. Here, we utilize simulation studies to assess how misspecifying the error structure affects parameter estimation results, specifically bias and uncertainty, as a function of the level of random noise in the data. We compare results for two parameter estimation methods: nonlinear least squares and maximum likelihood estimation with Poisson error structure. We analyze two phenomenological models the generalized growth model and generalized logistic growth model to assess how results of parameter estimation are affected by the level of overdispersion underlying in the data. We use simulation to obtain confidence intervals and mean squared error of parameter estimates. We also analyze the impact of the amount of data, or ascending phase length, on the results of the generalized growth model for increasing levels of overdispersion. The results show a clear pattern of increasing uncertainty, or confidence interval width, as the overdispersion in the data increases. While maximum likelihood estimation consistently yields narrower confidence intervals and smaller mean squared error, differences between the two methods were minimal and not practically significant. At moderate levels of overdispersion, both estimation methods yielded similar performance. Importantly, it is shown that issues of parameter uncertainty and bias in the presence of overdispersion can be mitigated with the inclusion of more data.

Keywords:  epidemiological models; generalized growth model; overdispersion; parameter estimation; parameter uncertainty; phenomenological models

Mesh:

Year:  2019        PMID: 31499663     DOI: 10.3934/mbe.2019214

Source DB:  PubMed          Journal:  Math Biosci Eng        ISSN: 1547-1063            Impact factor:   2.080


  6 in total

1.  An ensemble n -sub-epidemic modeling framework for short-term forecasting epidemic trajectories: Application to the COVID-19 pandemic in the USA.

Authors:  Gerardo Chowell; Sushma Dahal; Amna Tariq; Kimberlyn Roosa; James M Hyman; Ruiyan Luo
Journal:  medRxiv       Date:  2022-06-21

2.  Ensemble bootstrap methodology for forecasting dynamic growth processes using differential equations: application to epidemic outbreaks.

Authors:  Gerardo Chowell; Ruiyan Luo
Journal:  BMC Med Res Methodol       Date:  2021-02-14       Impact factor: 4.615

3.  An ensemble n-sub-epidemic modeling framework for short-term forecasting epidemic trajectories: Application to the COVID-19 pandemic in the USA.

Authors:  Gerardo Chowell; Sushma Dahal; Amna Tariq; Kimberlyn Roosa; James M Hyman; Ruiyan Luo
Journal:  PLoS Comput Biol       Date:  2022-10-06       Impact factor: 4.779

4.  Short-term Forecasts of the COVID-19 Epidemic in Guangdong and Zhejiang, China: February 13-23, 2020.

Authors:  Kimberlyn Roosa; Yiseul Lee; Ruiyan Luo; Alexander Kirpich; Richard Rothenberg; James M Hyman; Ping Yan; Gerardo Chowell
Journal:  J Clin Med       Date:  2020-02-22       Impact factor: 4.241

5.  Multi-model forecasts of the ongoing Ebola epidemic in the Democratic Republic of Congo, March-October 2019.

Authors:  Kimberlyn Roosa; Amna Tariq; Ping Yan; James M Hyman; Gerardo Chowell
Journal:  J R Soc Interface       Date:  2020-08-26       Impact factor: 4.118

6.  Transmission dynamics and forecasts of the COVID-19 pandemic in Mexico, March-December 2020.

Authors:  Amna Tariq; Juan M Banda; Pavel Skums; Sushma Dahal; Carlos Castillo-Garsow; Baltazar Espinoza; Noel G Brizuela; Roberto A Saenz; Alexander Kirpich; Ruiyan Luo; Anuj Srivastava; Humberto Gutierrez; Nestor Garcia Chan; Ana I Bento; Maria-Eugenia Jimenez-Corona; Gerardo Chowell
Journal:  PLoS One       Date:  2021-07-21       Impact factor: 3.240

  6 in total

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