Literature DB >> 23504576

Quasi-Likelihood Techniques in a Logistic Regression Equation for Identifying Simulium damnosum s.l. Larval Habitats Intra-cluster Covariates in Togo.

Benjamin G Jacob1, Robert J Novak, Laurent Toe, Moussa S Sanfo, Abena N Afriyie, Mohammed A Ibrahim, Daniel A Griffith, Thomas R Unnasch.   

Abstract

The standard methods for regression analyses of clustered riverine larval habitat data of Simulium damnosum s.l. a major black-fly vector of Onchoceriasis, postulate models relating observational ecological-sampled parameter estimators to prolific habitats without accounting for residual intra-cluster error correlation effects. Generally, this correlation comes from two sources: (1) the design of the random effects and their assumed covariance from the multiple levels within the regression model; and, (2) the correlation structure of the residuals. Unfortunately, inconspicuous errors in residual intra-cluster correlation estimates can overstate precision in forecasted S.damnosum s.l. riverine larval habitat explanatory attributes regardless how they are treated (e.g., independent, autoregressive, Toeplitz, etc). In this research, the geographical locations for multiple riverine-based S. damnosum s.l. larval ecosystem habitats sampled from 2 pre-established epidemiological sites in Togo were identified and recorded from July 2009 to June 2010. Initially the data was aggregated into proc genmod. An agglomerative hierarchical residual cluster-based analysis was then performed. The sampled clustered study site data was then analyzed for statistical correlations using Monthly Biting Rates (MBR). Euclidean distance measurements and terrain-related geomorphological statistics were then generated in ArcGIS. A digital overlay was then performed also in ArcGIS using the georeferenced ground coordinates of high and low density clusters stratified by Annual Biting Rates (ABR). This data was overlain onto multitemporal sub-meter pixel resolution satellite data (i.e., QuickBird 0.61m wavbands ). Orthogonal spatial filter eigenvectors were then generated in SAS/GIS. Univariate and non-linear regression-based models (i.e., Logistic, Poisson and Negative Binomial) were also employed to determine probability distributions and to identify statistically significant parameter estimators from the sampled data. Thereafter, Durbin-Watson test statistics were used to test the null hypothesis that the regression residuals were not autocorrelated against the alternative that the residuals followed an autoregressive process in AUTOREG. Bayesian uncertainty matrices were also constructed employing normal priors for each of the sampled estimators in PROC MCMC. The residuals revealed both spatially structured and unstructured error effects in the high and low ABR-stratified clusters. The analyses also revealed that the estimators, levels of turbidity and presence of rocks were statistically significant for the high-ABR-stratified clusters, while the estimators distance between habitats and floating vegetation were important for the low-ABR-stratified cluster. Varying and constant coefficient regression models, ABR- stratified GIS-generated clusters, sub-meter resolution satellite imagery, a robust residual intra-cluster diagnostic test, MBR-based histograms, eigendecomposition spatial filter algorithms and Bayesian matrices can enable accurate autoregressive estimation of latent uncertainity affects and other residual error probabilities (i.e., heteroskedasticity) for testing correlations between georeferenced S. damnosum s.l. riverine larval habitat estimators. The asymptotic distribution of the resulting residual adjusted intra-cluster predictor error autocovariate coefficients can thereafter be established while estimates of the asymptotic variance can lead to the construction of approximate confidence intervals for accurately targeting productive S. damnosum s.l habitats based on spatiotemporal field-sampled count data.

Entities:  

Keywords:  Bayesian; QuickBird; Simulium damnosum s.l.; Togo; annual biting rates; cluster covariates; onchoceriasis

Year:  2012        PMID: 23504576      PMCID: PMC3595116          DOI: 10.1080/10095020.2012.714663

Source DB:  PubMed          Journal:  Geo Spat Inf Sci        ISSN: 1009-5020


  6 in total

1.  Habitat-based modeling of impacts of mosquito larval interventions on entomological inoculation rates, incidence, and prevalence of malaria.

Authors:  Weidong Gu; Robert J Novak
Journal:  Am J Trop Med Hyg       Date:  2005-09       Impact factor: 2.345

2.  Patterns of epidemiology and control of onchocerciasis in west Africa.

Authors:  B Boatin; D H Molyneux; J M Hougard; O W Christensen; E S Alley; L Yameogo; A Seketeli; K Y Dadzie
Journal:  J Helminthol       Date:  1997-06       Impact factor: 2.170

3.  The reinvasion of the onchocerciasis control programme area in the Volta River Basin by Simulium damnosum S.L., the involvement of the different cytospecies and epidemiological implications.

Authors:  R Garms
Journal:  Ann Soc Belg Med Trop       Date:  1981-06

4.  Vector-parasite transmission complexes for onchocerciasis in West Africa.

Authors:  L Toé; J Tang; C Back; C R Katholi; T R Unnasch
Journal:  Lancet       Date:  1997-01-18       Impact factor: 79.321

5.  DNA probe-based classification of Simulium damnosum s. l.-borne and human-derived filarial parasites in the onchocerciasis control program area.

Authors:  L Toe; A Merriweather; T R Unnasch
Journal:  Am J Trop Med Hyg       Date:  1994-11       Impact factor: 2.345

6.  A heteroskedastic error covariance matrix estimator using a first-order conditional autoregressive Markov simulation for deriving asympotical efficient estimates from ecological sampled Anopheles arabiensis aquatic habitat covariates.

Authors:  Benjamin G Jacob; Daniel A Griffith; Ephantus J Muturi; Erick X Caamano; John I Githure; Robert J Novak
Journal:  Malar J       Date:  2009-09-21       Impact factor: 2.979

  6 in total
  2 in total

1.  Hypo-endemic onchocerciasis hotspots: defining areas of high risk through micro-mapping and environmental delineation.

Authors:  Louise A Kelly-Hope; Thomas R Unnasch; Michelle C Stanton; David H Molyneux
Journal:  Infect Dis Poverty       Date:  2015-08-16       Impact factor: 4.520

2.  Validation of a remote sensing model to identify Simulium damnosum s.l. breeding sites in Sub-Saharan Africa.

Authors:  Benjamin G Jacob; Robert J Novak; Laurent D Toe; Moussa Sanfo; Daniel A Griffith; Thomson L Lakwo; Peace Habomugisha; Moses N Katabarwa; Thomas R Unnasch
Journal:  PLoS Negl Trop Dis       Date:  2013-07-25
  2 in total

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