Layout 1 ISDS Annual Conference Proceedings 2012. This is an Open Access article distributed under the terms of the Creative Commons Attribution- Noncommercial 3.0 Unported License (http://creativecommons.org/licenses/by-nc/3.0/), permitting all non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited. ISDS 2012 Conference Abstracts Evaluating a Social Network Analytic Tool to Support Outbreak Management and Contact Tracing in an Outbreak of Pertussis Esther Munene*, S. Mottice and J. Reid Utah Department of Health, Slc, UT, USA Objective To determine the feasibility and value of a social network analysis tool to support pertussis outbreak management and contact tracing in the state of Utah. Introduction Pertussis (i.e., whooping cough) is on the rise in the US. To im- plement effective prevention and treatment strategies, it is critical to conduct timely contact tracing and evaluate people who may have come into contact with an infected person. We describe a collabora- tive effort between epidemiologists and public health informaticists at the Utah Department of Health (UDOH) to determine the feasibil- ity and value of a network-analytic approach to pertussis outbreak management and contact tracing. Methods The partnership: In early 2012, epidemiologists from UDOH’s Vaccine Preventable Disease Program and UDOH’s public health in- formaticists formed a partnership to determine the feasibility and value of the Organizational Risk Analyzer (ORA) in pertussis out- break management and contact tracing (1). Both entities have a long- standing partnership. A characteristic that has made the collaboration particularly strong and mutually beneficial is that both partners have expertise in disease surveillance and outbreak management. In addi- tion, the informaticists have expertise in devising systems that help frontline healthcare providers. The Organizational Risk Analyzer (ORA): ORA is a computational tool that extends network analysis by using a meta-matrix model. A meta-matrix is defined as a network of connecting entities. The tool uses one or more matrices in an organization’s meta-matrix as input. From this input the tool calculates measures that describe the rela- tionships and ties among the entities. ORA contains over 50 network and node level measures which are categorized by the type of risk they detect (1). Procedures: Following approval from UDOH’s Institutional Re- view Board, we analyzed records from 629 deidentified pertussis pa- tients from the UT-NEDSS database from January 2011 to December 2011. The test data included demographics and epidemiological in- formation. We used Excel to create .csv data files, uploaded the data into ORA, and displayed the data in meta-matrices consisting of nodes (cases/contacts) and edges (relationships). We used ORA’s vi- sualizer to check for data-entry errors before performing the network analysis. Data Analysis: ORA’s centrality measures (degree, closeness, be- tweenness, hub, and eigenvector) were used to identify geographic locations with high infection rates and the patients who were central to sustaining the outbreak. Next, we applied a concor algorithm to find groups in the meta-network that might be hard to spot visually. Visualizations were used to supplement the metrics. Results The ORA analysis identified 5 individuals who were central to per- petuating the outbreak in that their centrality measures were higher than other patients in the network. The index patient (Fig 1) was traced back to Utah County and was linked to 6 direct contacts in the same county and several indirect ties in adjacent counties. The indi- vidual was highly connected to others within the network (hub cen- trality = 1.41 and eigenvector centrality = 1.00). Salt Lake County had the highest number of cases, followed by Utah County and Weber County. The concor analysis revealed hidden networks, including a cluster of patients grouped by age group and case status (Fig 2). Conclusions The ORA was found to be a valuable tool for supporting pertussis outbreak management and contact tracing. Although network analy- sis is relatively new to public health, it can increase public health’s understanding of how patterns of social relationships can aid or in- hibit the spread of communicable diseases and provide the informa- tion needed to target intervention efforts effectively. Fig. 1. The index case. Fig. 2. Concor cluster of patients, by age group and case status. Online Journal of Public Health Informatics * ISSN 1947-2579 * http://ojphi.org * 5(1):e72, 2013 ISDS Annual Conference Proceedings 2012. This is an Open Access article distributed under the terms of the Creative Commons Attribution- Noncommercial 3.0 Unported License (http://creativecommons.org/licenses/by-nc/3.0/), permitting all non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited. ISDS 2012 Conference Abstracts Keywords Surveillance; Informatics; Social Network Analysis Acknowledgments This study was supported in part by the CSTE Applied Public Health In- formatics Fellowship program and funded by the CDC. References 1. Organizational Risk Analyzer: Center for Analysis of Social and Or- ganizational Systems 2008. *Esther Munene E-mail: EMUNENE@utah.gov Online Journal of Public Health Informatics * ISSN 1947-2579 * http://ojphi.org * 5(1):e72, 2013