TY - JOUR
T1 - Infectious Disease Surveillance in the Big Data Era
T2 - Towards Faster and Locally Relevant Systems
AU - Simonsen, Lone
AU - Gog, Julia
AU - Olson, Don
AU - Viboud, Cecile
PY - 2016
Y1 - 2016
N2 - While big data have proven immensely useful in fields such as marketing and earth sciences, public health is still relying on more traditional surveillance systems and awaiting the fruits of a big data revolution. A new generation of big data surveillance systems is needed to achieve rapid, flexible, and local tracking of infectious diseases, especially for emerging pathogens. In this opinion piece, we reflect on the long and distinguished history of disease surveillance and discuss recent developments related to use of big data. We start with a brief review of traditional systems relying on clinical and laboratory reports. We then examine how large-volume medical claims data can, with great spatiotemporal resolution, help elucidate local disease patterns. Finally, we review efforts to develop surveillance systems based on digital and social data streams, including the recent rise and fall of Google Flu Trends. We conclude by advocating for increased use of hybrid systems combining information from traditional surveillance and big data sources, which seems the most promising option moving forward. Throughout the article, we use influenza as an exemplar of an emerging and reemerging infection which has traditionally been considered a model system for surveillance and modeling.
AB - While big data have proven immensely useful in fields such as marketing and earth sciences, public health is still relying on more traditional surveillance systems and awaiting the fruits of a big data revolution. A new generation of big data surveillance systems is needed to achieve rapid, flexible, and local tracking of infectious diseases, especially for emerging pathogens. In this opinion piece, we reflect on the long and distinguished history of disease surveillance and discuss recent developments related to use of big data. We start with a brief review of traditional systems relying on clinical and laboratory reports. We then examine how large-volume medical claims data can, with great spatiotemporal resolution, help elucidate local disease patterns. Finally, we review efforts to develop surveillance systems based on digital and social data streams, including the recent rise and fall of Google Flu Trends. We conclude by advocating for increased use of hybrid systems combining information from traditional surveillance and big data sources, which seems the most promising option moving forward. Throughout the article, we use influenza as an exemplar of an emerging and reemerging infection which has traditionally been considered a model system for surveillance and modeling.
KW - Big data
KW - Death certifcates
KW - Electronic patient records
KW - Infectious diseases surveillance
KW - Influenza
KW - Internet search queries
KW - Medical claims
KW - Real-time monitoring
KW - Syndromic data
U2 - 10.1093/infdis/jiw376
DO - 10.1093/infdis/jiw376
M3 - Journal article
SN - 0022-1899
VL - 214
SP - S380–S385
JO - Journal of Infectious Diseases
JF - Journal of Infectious Diseases
IS - suppl.4
ER -