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Avian_Influenza_North_America_2006_2011.zip application/zip 227.4 KB 10/16/2025 11:41:AM

Project Citation: 

USGS. Avian_Influenza_North_America_2006_2011. Ann Arbor, MI: Inter-university Consortium for Political and Social Research [distributor], 2025-10-16. https://doi.org/10.3886/E238940V1

Project Description

Project Title:  View help for Project Title Avian_Influenza_North_America_2006_2011
Summary:  View help for Summary Influenza A viruses are one of the most significant viral groups globally with substantial impacts on human, domestic animal and wildlife health. Wild birds are the natural reservoirs for these viruses, and active surveillance within wild bird populations provides critical information about viral evolution forming the basis of risk assessments and counter measure development. Unfortunately, active surveillance programs are often resource-intensive, and thus enhancing programs for increased efficiency is paramount. Machine learning, a branch of artificial intelligence applications, provides statistical learning procedures that can be used to gain novel insights into disease surveillance systems. We use a form of machine learning, gradient boosted trees, to estimate the probability of isolating avian influenza viruses (AIV) from wild bird samples collected during surveillance for AIVs from 2006–2011 in the United States. We examined several predictive features including age, sex, bird type, geographic location and matrix gene rrRT-PCR results. Our final model had high predictive power, and only included geographic location and rRT-PCR results as important predictors. The highest predicted viral isolation probability was for samples collected from the north-central states and the south-eastern region of Alaska. Lower rRT-PCR Ct-values are associated with increased likelihood of AIV isolation, and the model estimated 16% probability of isolating AIV from samples declared negative (i.e., ≥ 35 Ct-value) using the rRT-PCR screening test and standard protocols. Our model can be used to prioritize previously collected samples for isolation and rapidly evaluate AIV surveillance designs to maximize the probability of viral isolation given limited resources and laboratory capacity.
Original Distribution URL:  View help for Original Distribution URL https://www.sciencebase.gov/catalog/item/5cc0a4f2e4b09b8c0b72537d

Scope of Project

Subject Terms:  View help for Subject Terms bird flu; influenza; North America; DOI
Geographic Coverage:  View help for Geographic Coverage North America
Time Period(s):  View help for Time Period(s) 2006 – 2011
Collection Date(s):  View help for Collection Date(s) 4/17/2025 – 4/17/2025 (Data downloaded)


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