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Featured researches published by Clark C. Freifeld.


The New England Journal of Medicine | 2009

Digital Disease Detection — Harnessing the Web for Public Health Surveillance

John S. Brownstein; Clark C. Freifeld; Lawrence C. Madoff

John Brownstein, Clark Freifeld, and Lawrence Madoff write that a new generation of disease-surveillance “mashups” can mine, categorize, filter, and visualize online intelligence about epidemics in real time.


Journal of the American Medical Informatics Association | 2008

HealthMap: Global Infectious Disease Monitoring through Automated Classification and Visualization of Internet Media Reports

Clark C. Freifeld; Kenneth D. Mandl; Ben Y. Reis; John S. Brownstein

Abstract Objective Unstructured electronic information sources, such as news reports, are proving to be valuable inputs for public health surveillance. However, staying abreast of current disease outbreaks requires scouring a continually growing number of disparate news sources and alert services, resulting in information overload. Our objective is to address this challenge through the HealthMap.org Web application, an automated system for querying, filtering, integrating and visualizing unstructured reports on disease outbreaks. Design This report describes the design principles, software architecture and implementation of HealthMap and discusses key challenges and future plans. Measurements We describe the process by which HealthMap collects and integrates outbreak data from a variety of sources, including news media (e.g., Google News), expert-curated accounts (e.g., ProMED Mail), and validated official alerts. Through the use of text processing algorithms, the system classifies alerts by location and disease and then overlays them on an interactive geographic map. We measure the accuracy of the classification algorithms based on the level of human curation necessary to correct misclassifications, and examine geographic coverage. Results As part of the evaluation of the system, we analyzed 778 reports with HealthMap, representing 87 disease categories and 89 countries. The automated classifier performed with 84% accuracy, demonstrating significant usefulness in managing the large volume of information processed by the system. Accuracy for ProMED alerts is 91% compared to Google News reports at 81%, as ProMED messages follow a more regular structure. Conclusion HealthMap is a useful free and open resource employing text-processing algorithms to identify important disease outbreak information through a user-friendly interface.


PLOS Medicine | 2008

Surveillance Sans Frontières: Internet-Based Emerging Infectious Disease Intelligence and the HealthMap Project

John S. Brownstein; Clark C. Freifeld; Ben Y. Reis; Kenneth D. Mandl

John Brownstein and colleagues discuss HealthMap, an automated real-time system that monitors and disseminates online information about emerging infectious diseases.


PLOS Medicine | 2010

Participatory Epidemiology: Use of Mobile Phones for Community-Based Health Reporting

Clark C. Freifeld; Rumi Chunara; Sumiko R. Mekaru; Emily H. Chan; Taha Kass-Hout; Anahi Ayala Iacucci; John S. Brownstein

Clark Freifeld and colleagues discuss mobile applications, including their own smartphone application, that show promise for health monitoring and information sharing.


Emerging Infectious Diseases | 2009

Use of Unstructured Event-Based Reports for Global Infectious Disease Surveillance

Mikaela Keller; Michael Blench; Herman D. Tolentino; Clark C. Freifeld; Kenneth D. Mandl; Abla Mawudeku; Gunther Eysenbach; John S. Brownstein

Free or low-cost unstructured reports offer an alternative to traditional indicator-based outbreak reporting.


Proceedings of the National Academy of Sciences of the United States of America | 2010

Global capacity for emerging infectious disease detection

Emily H. Chan; Timothy F. Brewer; Lawrence C. Madoff; Marjorie P. Pollack; Amy L. Sonricker; Mikaela Keller; Clark C. Freifeld; Michael Blench; Abla Mawudeku; John S. Brownstein

The increasing number of emerging infectious disease events that have spread internationally, such as severe acute respiratory syndrome (SARS) and the 2009 pandemic A/H1N1, highlight the need for improvements in global outbreak surveillance. It is expected that the proliferation of Internet-based reports has resulted in greater communication and improved surveillance and reporting frameworks, especially with the revision of the World Health Organizations (WHO) International Health Regulations (IHR 2005), which went into force in 2007. However, there has been no global quantitative assessment of whether and how outbreak detection and communication processes have actually changed over time. In this study, we analyzed the entire WHO public record of Disease Outbreak News reports from 1996 to 2009 to characterize spatial-temporal trends in the timeliness of outbreak discovery and public communication about the outbreak relative to the estimated outbreak start date. Cox proportional hazards regression analyses show that overall, the timeliness of outbreak discovery improved by 7.3% [hazard ratio (HR) = 1.073, 95% CI (1.038; 1.110)] per year, and public communication improved by 6.2% [HR = 1.062, 95% CI (1.028; 1.096)] per year. However, the degree of improvement varied by geographic region; the only WHO region with statistically significant (α = 0.05) improvement in outbreak discovery was the Western Pacific region [HR = 1.102 per year, 95% CI (1.008; 1.205)], whereas the Eastern Mediterranean [HR = 1.201 per year, 95% CI (1.066; 1.353)] and Western Pacific regions [HR = 1.119 per year, 95% CI (1.025; 1.221)] showed improvement in public communication. These findings provide quantitative historical assessment of timeliness in infectious disease detection and public reporting of outbreaks.


Lancet Infectious Diseases | 2013

Measuring vaccine confidence: analysis of data obtained by a media surveillance system used to analyse public concerns about vaccines

Heidi J. Larson; David Smith; Pauline Paterson; Melissa Cumming; Elisabeth Eckersberger; Clark C. Freifeld; Isaac Ghinai; Caitlin Jarrett; Louisa Paushter; John S. Brownstein; Lawrence C. Madoff

BACKGROUND The intensity, spread, and effects of public opinion about vaccines are growing as new modes of communication speed up information sharing, contributing to vaccine hesitancy, refusals, and disease outbreaks. We aimed to develop a new application of existing surveillance systems to detect and characterise early signs of vaccine issues. We also aimed to develop a typology of concerns and a way to assess the priority of each concern. METHODS Following preliminary research by The Vaccine Confidence Project, media reports (eg, online articles, blogs, government reports) were obtained using the HealthMap automated data collection system, adapted to monitor online reports about vaccines, vaccination programmes, and vaccine-preventable diseases. Any reports that did not meet the inclusion criteria--any reference to a human vaccine or vaccination campaign or programme that was accessible online--were removed from analysis. Reports were manually analysed for content and categorised by concerns, vaccine, disease, location, and source of report, and overall positive or negative sentiment towards vaccines. They were then given a priority level depending on the seriousness of the reported event and time of event occurrence. We used descriptive statistics to analyse the data collected during a period of 1 year, after refinements to the search terms and processes had been made. FINDINGS We analysed data from 10,380 reports (from 144 countries) obtained between May 1, 2011, and April 30, 2012. 7171 (69%) contained positive or neutral content and 3209 (31%) contained negative content. Of the negative reports, 1977 (24%) were associated with impacts on vaccine programmes and disease outbreaks; 1726 (21%) with beliefs, awareness, and perceptions; 1371 (16%) with vaccine safety; and 1336 (16%) with vaccine delivery programmes. We were able to disaggregate the data by country and vaccine type, and monitor evolution of events over time and location in specific regions where vaccine concerns were high. INTERPRETATION Real-time monitoring and analysis of vaccine concerns over time and location could help immunisation programmes to tailor more effective and timely strategies to address specific public concerns. FUNDING Bill & Melinda Gates Foundation.


The New England Journal of Medicine | 2013

Influenza A (H7N9) and the Importance of Digital Epidemiology

Marcel Salathé; Clark C. Freifeld; Sumiko R. Mekaru; Anna F. Tomasulo; John S. Brownstein

In recent outbreaks including that of novel H7N9 influenza, digital disease surveillance has supplemented laboratory studies and work by public health officials and epidemiologists, by leveraging widespread use of the Internet, mobile phones, and social media.


eLife | 2014

Global Distribution Maps of the Leishmaniases

David M Pigott; Samir Bhatt; Nick Golding; Kirsten A. Duda; Katherine E. Battle; Oliver J. Brady; Jane P. Messina; Yves Balard; Patrick Bastien; Francine Pratlong; John S. Brownstein; Clark C. Freifeld; Sumiko R. Mekaru; Peter W. Gething; Dylan B. George; Monica F. Myers; Richard Reithinger; Simon I. Hay

The leishmaniases are vector-borne diseases that have a broad global distribution throughout much of the Americas, Africa, and Asia. Despite representing a significant public health burden, our understanding of the global distribution of the leishmaniases remains vague, reliant upon expert opinion and limited to poor spatial resolution. A global assessment of the consensus of evidence for leishmaniasis was performed at a sub-national level by aggregating information from a variety of sources. A database of records of cutaneous and visceral leishmaniasis occurrence was compiled from published literature, online reports, strain archives, and GenBank accessions. These, with a suite of biologically relevant environmental covariates, were used in a boosted regression tree modelling framework to generate global environmental risk maps for the leishmaniases. These high-resolution evidence-based maps can help direct future surveillance activities, identify areas to target for disease control and inform future burden estimation efforts. DOI: http://dx.doi.org/10.7554/eLife.02851.001


The New England Journal of Medicine | 2010

Information Technology and Global Surveillance of Cases of 2009 H1N1 Influenza

John S. Brownstein; Clark C. Freifeld; Emily H. Chan; Mikaela Keller; Amy L. Sonricker; Sumiko R. Mekaru; David L. Buckeridge

Real-time forms of technology online are creating new ways to detect and track emerging disease threats, even weak signals from diverse areas.

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Sumiko R. Mekaru

Boston Children's Hospital

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Nabarun Dasgupta

University of North Carolina at Chapel Hill

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Emily H. Chan

Massachusetts Institute of Technology

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Lawrence C. Madoff

University of Massachusetts Medical School

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Kenneth D. Mandl

Boston Children's Hospital

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