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Dynamic Network Approach to Health Surveillance. Prof. Kathleen M. Carley kathleen.carley@cs.cmu.edu. Early Warning and Disease Mapping. Understanding the general state of health in a community is critical for rapid and effective response Disaster Response Early Indicators Forecasting
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Dynamic Network Approach to Health Surveillance Prof. Kathleen M. Carley kathleen.carley@cs.cmu.edu
Early Warning and Disease Mapping • Understanding the general state of health in a community is critical for rapid and effective response • Disaster Response • Early Indicators • Forecasting • Various types of sensors are often used to provide early indications of medical conditions • water usage • OTC drug purchases
Bio-War Features Agents move in networks which influence what they do, where, with whom, and what they know, what diseases they get, when, how they respond to them, etc. Major difference in network and disease effects based on race, gender and age. • Input • Census data – social and organizational • School district data • Worksite and entertainment locations & size • Hospitals and clinics locations & size • Social Network characteristics from census • IT communication procedures & access • Wind characteristics • Spatial layout of city • Disease models • Influenza, small pox, anthrax, … • Illustrative Output • Over the counter drug sales • Insurance claim reports (Dr. visits) • Emergency room reports • Absenteeism (school and work) • Web access and medical phone calls • In-house questionnaires
Networks & Cyber networks Social Network Cyber Network
haiti.ushahidi.com • Earthquake Jan 12, 2010 • 2,471 reports posted as of Feb 7, 2010 • 6 categories of classification • Over 25 subcategories • Text, pictures, & video Where do first responders start? 12 Jan 2010 photo posted to http://haiti.ushahid.com
Influenza – The “Gold” Standard • Typical data sources • Viral Surveillance (specimens) • Mortallity • Influenza associated pediatric deaths • Influenza associated hospitalization • Outpatient illness (office/clinic visits) http://www.cdc.gov/flu/weekly/
Google Flu Trends • Typical data sources • Country provided data • Search term based hits http://www.google.org/projects.html http://www.google.com/publicdata
Key Lessons • Some medical information in social media – but inconsistent • Key challenges • Operate at the symptom level … and many things look like flu • Data cleaning to improve signal • Identifiers for other than flu and disaster related medical needs • Geospatial tracking • Integration across media • Volatile state of social media • Country specific social media technologies • Change in usage • Change in technology • Future direction • Linking demographics and medical information • Auto-instantiation of simulation for forecasting