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Featured researches published by Emily H. Chan.


PLOS Neglected Tropical Diseases | 2011

Using Web Search Query Data to Monitor Dengue Epidemics: A New Model for Neglected Tropical Disease Surveillance

Emily H. Chan; Vikram Sahai; Corrie Conrad; John S. Brownstein

Background A variety of obstacles including bureaucracy and lack of resources have interfered with timely detection and reporting of dengue cases in many endemic countries. Surveillance efforts have turned to modern data sources, such as Internet search queries, which have been shown to be effective for monitoring influenza-like illnesses. However, few have evaluated the utility of web search query data for other diseases, especially those of high morbidity and mortality or where a vaccine may not exist. In this study, we aimed to assess whether web search queries are a viable data source for the early detection and monitoring of dengue epidemics. Methodology/Principal Findings Bolivia, Brazil, India, Indonesia and Singapore were chosen for analysis based on available data and adequate search volume. For each country, a univariate linear model was then built by fitting a time series of the fraction of Google search query volume for specific dengue-related queries from that country against a time series of official dengue case counts for a time-frame within 2003–2010. The specific combination of queries used was chosen to maximize model fit. Spurious spikes in the data were also removed prior to model fitting. The final models, fit using a training subset of the data, were cross-validated against both the overall dataset and a holdout subset of the data. All models were found to fit the data quite well, with validation correlations ranging from 0.82 to 0.99. Conclusions/Significance Web search query data were found to be capable of tracking dengue activity in Bolivia, Brazil, India, Indonesia and Singapore. Whereas traditional dengue data from official sources are often not available until after some substantial delay, web search query data are available in near real-time. These data represent valuable complement to assist with traditional dengue surveillance.


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.


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.


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.


PLOS Medicine | 2012

Preventing pandemics via international development: a systems approach.

Tiffany L. Bogich; Rumi Chunara; David Scales; Emily H. Chan; Laura C. Pinheiro; Aleksei A. Chmura; Dennis Carroll; Peter Daszak; John S. Brownstein

Tiffany Bogich and colleagues find that breakdown or absence of public health infrastructure is most often the driver in pandemic outbreaks, whose prevention requires mainstream development funding rather than emergency funding.


Emerging Infectious Diseases | 2012

Timeliness of Nongovernmental versus Governmental Global Outbreak Communications

Luke Mondor; John S. Brownstein; Emily H. Chan; Lawrence C. Madoff; Marjorie P. Pollack; David L. Buckeridge; Timothy F. Brewer

To compare the timeliness of nongovernmental and governmental communications of infectious disease outbreaks and evaluate trends for each over time, we investigated the time elapsed from the beginning of an outbreak to public reporting of the event. We found that governmental sources improved the timeliness of public reporting of infectious disease outbreaks during the study period.


Clinical Infectious Diseases | 2013

Forecasting High-Priority Infectious Disease Surveillance Regions: A Socioeconomic Model

Emily H. Chan; David Scales; Timothy F. Brewer; Lawrence C. Madoff; Marjorie P. Pollack; Anne G. Hoen; Tenzin Choden; John S. Brownstein

BACKGROUND Few researchers have assessed the relationships between socioeconomic inequality and infectious disease outbreaks at the population level globally. We use a socioeconomic model to forecast national annual rates of infectious disease outbreaks. METHODS We constructed a multivariate mixed-effects Poisson model of the number of times a given country was the origin of an outbreak in a given year. The dataset included 389 outbreaks of international concern reported in the World Health Organizations Disease Outbreak News from 1996 to 2008. The initial full model included 9 socioeconomic variables related to education, poverty, population health, urbanization, health infrastructure, gender equality, communication, transportation, and democracy, and 1 composite index. Population, latitude, and elevation were included as potential confounders. The initial model was pared down to a final model by a backwards elimination procedure. The dependent and independent variables were lagged by 2 years to allow for forecasting future rates. RESULTS Among the socioeconomic variables tested, the final model included child measles immunization rate and telephone line density. The Democratic Republic of Congo, China, and Brazil were predicted to be at the highest risk for outbreaks in 2010, and Colombia and Indonesia were predicted to have the highest percentage of increase in their risk compared to their average over 1996-2008. CONCLUSIONS Understanding socioeconomic factors could help improve the understanding of outbreak risk. The inclusion of the measles immunization variable suggests that there is a fundamental basis in ensuring adequate public health capacity. Increased vigilance and expanding public health capacity should be prioritized in the projected high-risk regions.


BioMed Central Ltd | 2012

Online reporting for malaria surveillance using micro-monetary incentives, in urban India 2010-2011

Rumi Chunara; Vina Chhaya; Sunetra Bane; Sumiko R. Mekaru; Emily H. Chan; Clark C. Freifeld; John S. Brownstein


Emerging Health Threats Journal | 2011

Crowdout: when do other events hinder informal disease surveillance?

David Scales; Emily H. Chan; John S. Brownstein


Emerging Health Threats Journal | 2011

Web search query data to monitor dengue epidemics: a new model for dengue surveillance

Emily H. Chan; Vikram Sahai; Corrie Conrad; John S. Brownstein

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Clark C. Freifeld

Boston Children's Hospital

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David Scales

Boston Children's Hospital

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Lawrence C. Madoff

University of Massachusetts Medical School

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Sumiko R. Mekaru

Boston Children's Hospital

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