1. Automated collection of pathogen-specific diagnostic data for real-time syndromic epidemiological studies
- Author
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Hossein Salimnia, Mark A. Poritz, Paul D. Fey, Rangaraj Selvarangan, Sharon L. Reed, Jennifer Dien Bard, Per H. Gesteland, Donovan, Diane Janowiak, Robert K. Nelson, Steve J Melnick, Kristy Lindsey, Jay Jones, Franklin Moore, Stefan Juretschko, Christine C. Robinson, Jeremy C Wallentine, Amy Leber, Benjamin M. Althouse, Jennifer F. Meredith, Aimie Faucett, Camille V Cook, Gregory A. Storch, Kathleen A. Stellrecht, Lindsay Meyers, Samuel V. Scarpino, Christine C. Ginocchio, Bradley A. Malin, Maria E Aguero-Rosenfeld, Kirk M. Ririe, Judy Daly, Frederick S. Nolte, and Silvia Spitzer
- Subjects
0303 health sciences ,medicine.medical_specialty ,030306 microbiology ,business.industry ,Public health ,Respiratory pathogen ,Outbreak ,Bioinformatics ,3. Good health ,03 medical and health sciences ,0302 clinical medicine ,Preparedness ,Epidemiology ,Medicine ,Diagnostic data ,Multiplex ,030212 general & internal medicine ,business ,Intensive care medicine ,Pathogen - Abstract
Health-care and public health professionals rely on accurate, real-time monitoring of infectious diseases for outbreak preparedness and response. Early detection of outbreaks is improved by systems that are pathogen-specific. We describe a system, FilmArray®Trend, for rapid disease reporting that is syndrome-based but pathogen-specific. Results from a multiplex molecular diagnostic test are sent directly to a cloud database.www.syndromictrends.compresents these data in near real-time. Trend preserves patient privacy by removing or obfuscating patient identifiers. We summarize the respiratory pathogen results, for 20 organisms from 344,000 patient samples acquired as standard of care testing over the last four years from 20 clinical laboratories in the United States. The majority of pathogens show influenza-like seasonality, rhinovirus has fall and spring peaks and adenovirus and bacterial pathogens show constant detection over the year. Interestingly, the rate of pathogen co-detections, on average 7.7%, matches predictions based on the relative abundance of organisms present.
- Published
- 2017
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