Spatial Variable Selection and An Application to Virginia Lyme Disease Emergence

09/17/2018
by   Yimeng Xie, et al.
0

Lyme disease is an infectious disease that is caused by a bacterium called Borrelia burgdorferi sensu stricto. In the United States, Lyme disease is one of the most common infectious diseases. The major endemic areas of the disease are New England, Mid-Atlantic, East-North Central, South Atlantic, and West North-Central. Virginia is on the front-line of the disease's diffusion from the northeast to the south. One of the research objectives for the infectious disease community is to identify environmental and economic variables that are associated with the emergence of Lyme disease. In this paper, we use a spatial Poisson regression model to link the spatial disease counts and environmental and economic variables, and develop a spatial variable selection procedure to effectively identify important factors by using an adaptive elastic net penalty. The proposed methods can automatically select important covariates, while adjusting for possible spatial correlations of disease counts. The performance of the proposed method is studied and compared with existing methods via a comprehensive simulation study. We apply the developed variable selection methods to the Virginia Lyme disease data and identify important variables that are new to the literature. Supplementary materials for this paper are available online.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/28/2019

Variable Selection with Copula Entropy

Variable selection is of significant importance for classification and r...
research
10/15/2019

New Development of Bayesian Variable Selection Criteria for Spatial Point Process with Applications

Selecting important spatial-dependent variables under the nonhomogeneous...
research
06/16/2018

A nonparametric spatial test to identify factors that shape a microbiome

The advent of high-throughput sequencing technologies has made data from...
research
10/20/2022

Adaptive greedy forward variable selection for linear regression models with incomplete data using multiple imputation

Variable selection is crucial for sparse modeling in this age of big dat...
research
05/08/2018

Multivariate Spatial-Temporal Variable Selection with Applications to Seasonal Tropical Cyclone Modeling

Tropical cyclone and sea surface temperature data have been used in seve...
research
09/27/2018

Auto-Encoding Knockoff Generator for FDR Controlled Variable Selection

A new statistical procedure (Model-X candes2018) has provided a way to i...
research
08/14/2018

Discrete versus continuous domain models for disease mapping

Disease mapping aims to assess variation of disease risk over space and ...

Please sign up or login with your details

Forgot password? Click here to reset