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A Bayesian Network Model for Spatio-Temporal Event Surveillance

Jiang, Xia (2009) A Bayesian Network Model for Spatio-Temporal Event Surveillance. Doctoral Dissertation, University of Pittsburgh. (Unpublished)

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Abstract

Event surveillance involves analyzing a region in order to detect patterns that are indicative of some event of interest. An example is the monitoring of information about emergency department visits to detect a disease outbreak. Spatial event surveillance involves analyzing spatial patterns of evidence that are indicative of the event of interest. A special case of spatial event surveillance is spatial cluster detection, which searches for subregions in which the count of an event of interest is higher than expected. Temporal event surveillance involves monitoring for emerging temporal patterns. Spatio-temporal event surveillance involves joint spatial and temporal monitoring.When the events observed are of direct interest, then analyzing counts of those events is generally the preferred approach. However, in event surveillance we often only observe events that are indirectly related to the events of interest. For example, during an influenza outbreak, we may only have information about the chief complaints of patients who visited emergency departments. In this situation, a better surveillance approach may be to model the relationships among the events of interest and those observed.I developed a high-level Bayesian network architecture that represents a class of spatial event surveillance models, which I call BayesNet-S. I also developed an architecture that represents a class of temporal event surveillance models called BayesNet-T. These Bayesian network architectures are combined into a single architecture that represents a class of spatio-temporal models called BayesNet-ST. Using these architectures, it is often possible to construct a temporal, spatial, or spatio-temporal model from an existing Bayesian network event-surveillance model that is non-spatial and non-temporal. My general hypothesis is that when an existing model is extended to incorporate space and time, event surveillance will be improved.PANDA-CDCA (PC) (Cooper et al., 2007) is a non-temporal, non-spatial disease outbreak detection system. I extended PC both spatially and temporally. My specific hypothesis is that each of the spatial and temporal extensions of PC will perform outbreak detection better than does PC, and that the combined use of the spatial and temporal extensions will perform better than either extension alone.The experimental results obtained in this research support this hypothesis.


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Details

Item Type: University of Pittsburgh ETD
Status: Unpublished
Creators/Authors:
CreatorsEmailPitt UsernameORCID
Jiang, Xiaxij6@pitt.eduXIJ6
ETD Committee:
TitleMemberEmail AddressPitt UsernameORCID
Committee ChairCooper, Gregory Fgfc@cbmi.pitt.eduGFC
Committee MemberNeill, Daniel Bneill@cs.cmu.edu
Committee MemberHauskrecht, Milosmilos@cs.pitt.eduMILOS
Committee MemberChapman, Wendy Wchapman@cbmi.pitt.edu
Date: 7 January 2009
Date Type: Completion
Defense Date: 28 August 2008
Approval Date: 7 January 2009
Submission Date: 10 November 2008
Access Restriction: No restriction; Release the ETD for access worldwide immediately.
Institution: University of Pittsburgh
Schools and Programs: School of Medicine > Biomedical Informatics
Degree: PhD - Doctor of Philosophy
Thesis Type: Doctoral Dissertation
Refereed: Yes
Uncontrolled Keywords: amoc-m curves; anomaly detection; biosurveillance; disease outbreak detection; spatial cluster detection; spatial scan
Other ID: http://etd.library.pitt.edu/ETD/available/etd-11102008-142102/, etd-11102008-142102
Date Deposited: 10 Nov 2011 20:04
Last Modified: 15 Nov 2016 13:51
URI: http://d-scholarship.pitt.edu/id/eprint/9622

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