Literature DB >> 15081074

Understanding tuberculosis epidemiology using structured statistical models.

Lise Getoor1, Jeanne T Rhee, Daphne Koller, Peter Small.   

Abstract

Molecular epidemiological studies can provide novel insights into the transmission of infectious diseases such as tuberculosis. Typically, risk factors for transmission are identified using traditional hypothesis-driven statistical methods such as logistic regression. However, limitations become apparent in these approaches as the scope of these studies expand to include additional epidemiological and bacterial genomic data. Here we examine the use of Bayesian models to analyze tuberculosis epidemiology. We begin by exploring the use of Bayesian networks (BNs) to identify the distribution of tuberculosis patient attributes (including demographic and clinical attributes). Using existing algorithms for constructing BNs from observational data, we learned a BN from data about tuberculosis patients collected in San Francisco from 1991 to 1999. We verified that the resulting probabilistic models did in fact capture known statistical relationships. Next, we examine the use of newly introduced methods for representing and automatically constructing probabilistic models in structured domains. We use statistical relational models (SRMs) to model distributions over relational domains. SRMs are ideally suited to richly structured epidemiological data. We use a data-driven method to construct a statistical relational model directly from data stored in a relational database. The resulting model reveals the relationships between variables in the data and describes their distribution. We applied this procedure to the data on tuberculosis patients in San Francisco from 1991 to 1999, their Mycobacterium tuberculosis strains, and data on contact investigations. The resulting statistical relational model corroborated previously reported findings and revealed several novel associations. These models illustrate the potential for this approach to reveal relationships within richly structured data that may not be apparent using conventional statistical approaches. We show that Bayesian methods, in particular statistical relational models, are an important tool for understanding infectious disease epidemiology.

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Year:  2004        PMID: 15081074     DOI: 10.1016/j.artmed.2003.11.003

Source DB:  PubMed          Journal:  Artif Intell Med        ISSN: 0933-3657            Impact factor:   5.326


  4 in total

1.  Identifying patient-level risk factors associated with non-β-lactam resistance outcomes in invasive MRSA infections in the United States using chain graphs.

Authors:  William J Love; C Annie Wang; Cristina Lanzas
Journal:  JAC Antimicrob Resist       Date:  2022-07-05

2.  Conditional independence relations among biological markers may improve clinical decision as in the case of triple negative breast cancers.

Authors:  Federico M Stefanini; Danila Coradini; Elia Biganzoli
Journal:  BMC Bioinformatics       Date:  2009-10-15       Impact factor: 3.169

3.  Bayesian generalized linear mixed modeling of Tuberculosis using informative priors.

Authors:  Oluwatobi Blessing Ojo; Siaka Lougue; Woldegebriel Assefa Woldegerima
Journal:  PLoS One       Date:  2017-03-03       Impact factor: 3.240

4.  Systems Modelling of the Socio-Technical Aspects of Residential Electricity Use and Network Peak Demand.

Authors:  Jim Lewis; Kerrie Mengersen; Laurie Buys; Desley Vine; John Bell; Peter Morris; Gerard Ledwich
Journal:  PLoS One       Date:  2015-07-30       Impact factor: 3.240

  4 in total

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