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Automated Real-Time Collection of Pathogen-Specific Diagnostic Data: Syndromic Infectious Disease Epidemiology

BACKGROUND: 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 comprehensive and specific with respect to the pathogen but are rapid in reportin...

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Autores principales: Meyers, Lindsay, Ginocchio, Christine C, Faucett, Aimie N, Nolte, Frederick S, Gesteland, Per H, Leber, Amy, Janowiak, Diane, Donovan, Virginia, Dien Bard, Jennifer, Spitzer, Silvia, Stellrecht, Kathleen A, Salimnia, Hossein, Selvarangan, Rangaraj, Juretschko, Stefan, Daly, Judy A, Wallentine, Jeremy C, Lindsey, Kristy, Moore, Franklin, Reed, Sharon L, Aguero-Rosenfeld, Maria, Fey, Paul D, Storch, Gregory A, Melnick, Steve J, Robinson, Christine C, Meredith, Jennifer F, Cook, Camille V, Nelson, Robert K, Jones, Jay D, Scarpino, Samuel V, Althouse, Benjamin M, Ririe, Kirk M, Malin, Bradley A, Poritz, Mark A
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6054708/
https://www.ncbi.nlm.nih.gov/pubmed/29980501
http://dx.doi.org/10.2196/publichealth.9876
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author Meyers, Lindsay
Ginocchio, Christine C
Faucett, Aimie N
Nolte, Frederick S
Gesteland, Per H
Leber, Amy
Janowiak, Diane
Donovan, Virginia
Dien Bard, Jennifer
Spitzer, Silvia
Stellrecht, Kathleen A
Salimnia, Hossein
Selvarangan, Rangaraj
Juretschko, Stefan
Daly, Judy A
Wallentine, Jeremy C
Lindsey, Kristy
Moore, Franklin
Reed, Sharon L
Aguero-Rosenfeld, Maria
Fey, Paul D
Storch, Gregory A
Melnick, Steve J
Robinson, Christine C
Meredith, Jennifer F
Cook, Camille V
Nelson, Robert K
Jones, Jay D
Scarpino, Samuel V
Althouse, Benjamin M
Ririe, Kirk M
Malin, Bradley A
Poritz, Mark A
author_facet Meyers, Lindsay
Ginocchio, Christine C
Faucett, Aimie N
Nolte, Frederick S
Gesteland, Per H
Leber, Amy
Janowiak, Diane
Donovan, Virginia
Dien Bard, Jennifer
Spitzer, Silvia
Stellrecht, Kathleen A
Salimnia, Hossein
Selvarangan, Rangaraj
Juretschko, Stefan
Daly, Judy A
Wallentine, Jeremy C
Lindsey, Kristy
Moore, Franklin
Reed, Sharon L
Aguero-Rosenfeld, Maria
Fey, Paul D
Storch, Gregory A
Melnick, Steve J
Robinson, Christine C
Meredith, Jennifer F
Cook, Camille V
Nelson, Robert K
Jones, Jay D
Scarpino, Samuel V
Althouse, Benjamin M
Ririe, Kirk M
Malin, Bradley A
Poritz, Mark A
author_sort Meyers, Lindsay
collection PubMed
description BACKGROUND: 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 comprehensive and specific with respect to the pathogen but are rapid in reporting the data. It has proven difficult to implement these requirements on a large scale while maintaining patient privacy. OBJECTIVE: The aim of this study was to demonstrate the automated export, aggregation, and analysis of infectious disease diagnostic test results from clinical laboratories across the United States in a manner that protects patient confidentiality. We hypothesized that such a system could aid in monitoring the seasonal occurrence of respiratory pathogens and may have advantages with regard to scope and ease of reporting compared with existing surveillance systems. METHODS: We describe a system, BioFire Syndromic Trends, for rapid disease reporting that is syndrome-based but pathogen-specific. Deidentified patient test results from the BioFire FilmArray multiplex molecular diagnostic system are sent directly to a cloud database. Summaries of these data are displayed in near real time on the Syndromic Trends public website. We studied this dataset for the prevalence, seasonality, and coinfections of the 20 respiratory pathogens detected in over 362,000 patient samples acquired as a standard-of-care testing over the last 4 years from 20 clinical laboratories in the United States. RESULTS: The majority of pathogens show influenza-like seasonality, rhinovirus has fall and spring peaks, and adenovirus and the bacterial pathogens show constant detection over the year. The dataset can also be considered in an ecological framework; the viruses and bacteria detected by this test are parasites of a host (the human patient). Interestingly, the rate of pathogen codetections, on average 7.94% (28,741/362,101), matches predictions based on the relative abundance of organisms present. CONCLUSIONS: Syndromic Trends preserves patient privacy by removing or obfuscating patient identifiers while still collecting much useful information about the bacterial and viral pathogens that they harbor. Test results are uploaded to the database within a few hours of completion compared with delays of up to 10 days for other diagnostic-based reporting systems. This work shows that the barriers to establishing epidemiology systems are no longer scientific and technical but rather administrative, involving questions of patient privacy and data ownership. We have demonstrated here that these barriers can be overcome. This first look at the resulting data stream suggests that Syndromic Trends will be able to provide high-resolution analysis of circulating respiratory pathogens and may aid in the detection of new outbreaks.
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spelling pubmed-60547082018-07-27 Automated Real-Time Collection of Pathogen-Specific Diagnostic Data: Syndromic Infectious Disease Epidemiology Meyers, Lindsay Ginocchio, Christine C Faucett, Aimie N Nolte, Frederick S Gesteland, Per H Leber, Amy Janowiak, Diane Donovan, Virginia Dien Bard, Jennifer Spitzer, Silvia Stellrecht, Kathleen A Salimnia, Hossein Selvarangan, Rangaraj Juretschko, Stefan Daly, Judy A Wallentine, Jeremy C Lindsey, Kristy Moore, Franklin Reed, Sharon L Aguero-Rosenfeld, Maria Fey, Paul D Storch, Gregory A Melnick, Steve J Robinson, Christine C Meredith, Jennifer F Cook, Camille V Nelson, Robert K Jones, Jay D Scarpino, Samuel V Althouse, Benjamin M Ririe, Kirk M Malin, Bradley A Poritz, Mark A JMIR Public Health Surveill Original Paper BACKGROUND: 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 comprehensive and specific with respect to the pathogen but are rapid in reporting the data. It has proven difficult to implement these requirements on a large scale while maintaining patient privacy. OBJECTIVE: The aim of this study was to demonstrate the automated export, aggregation, and analysis of infectious disease diagnostic test results from clinical laboratories across the United States in a manner that protects patient confidentiality. We hypothesized that such a system could aid in monitoring the seasonal occurrence of respiratory pathogens and may have advantages with regard to scope and ease of reporting compared with existing surveillance systems. METHODS: We describe a system, BioFire Syndromic Trends, for rapid disease reporting that is syndrome-based but pathogen-specific. Deidentified patient test results from the BioFire FilmArray multiplex molecular diagnostic system are sent directly to a cloud database. Summaries of these data are displayed in near real time on the Syndromic Trends public website. We studied this dataset for the prevalence, seasonality, and coinfections of the 20 respiratory pathogens detected in over 362,000 patient samples acquired as a standard-of-care testing over the last 4 years from 20 clinical laboratories in the United States. RESULTS: The majority of pathogens show influenza-like seasonality, rhinovirus has fall and spring peaks, and adenovirus and the bacterial pathogens show constant detection over the year. The dataset can also be considered in an ecological framework; the viruses and bacteria detected by this test are parasites of a host (the human patient). Interestingly, the rate of pathogen codetections, on average 7.94% (28,741/362,101), matches predictions based on the relative abundance of organisms present. CONCLUSIONS: Syndromic Trends preserves patient privacy by removing or obfuscating patient identifiers while still collecting much useful information about the bacterial and viral pathogens that they harbor. Test results are uploaded to the database within a few hours of completion compared with delays of up to 10 days for other diagnostic-based reporting systems. This work shows that the barriers to establishing epidemiology systems are no longer scientific and technical but rather administrative, involving questions of patient privacy and data ownership. We have demonstrated here that these barriers can be overcome. This first look at the resulting data stream suggests that Syndromic Trends will be able to provide high-resolution analysis of circulating respiratory pathogens and may aid in the detection of new outbreaks. JMIR Publications 2018-07-06 /pmc/articles/PMC6054708/ /pubmed/29980501 http://dx.doi.org/10.2196/publichealth.9876 Text en ©Lindsay Meyers, Christine C Ginocchio, Aimie N Faucett, Frederick S Nolte, Per H Gesteland, Amy Leber, Diane Janowiak, Virginia Donovan, Jennifer Dien Bard, Silvia Spitzer, Kathleen A Stellrecht, Hossein Salimnia, Rangaraj Selvarangan, Stefan Juretschko, Judy A Daly, Jeremy C Wallentine, Kristy Lindsey, Franklin Moore, Sharon L Reed, Maria Aguero-Rosenfeld, Paul D Fey, Gregory A Storch, Steve J Melnick, Christine C Robinson, Jennifer F Meredith, Camille V Cook, Robert K Nelson, Jay D Jones, Samuel V Scarpino, Benjamin M Althouse, Kirk M Ririe, Bradley A Malin, Mark A Poritz. Originally published in JMIR Public Health and Surveillance (http://publichealth.jmir.org), 06.07.2018. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Public Health and Surveillance, is properly cited. The complete bibliographic information, a link to the original publication on http://publichealth.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Meyers, Lindsay
Ginocchio, Christine C
Faucett, Aimie N
Nolte, Frederick S
Gesteland, Per H
Leber, Amy
Janowiak, Diane
Donovan, Virginia
Dien Bard, Jennifer
Spitzer, Silvia
Stellrecht, Kathleen A
Salimnia, Hossein
Selvarangan, Rangaraj
Juretschko, Stefan
Daly, Judy A
Wallentine, Jeremy C
Lindsey, Kristy
Moore, Franklin
Reed, Sharon L
Aguero-Rosenfeld, Maria
Fey, Paul D
Storch, Gregory A
Melnick, Steve J
Robinson, Christine C
Meredith, Jennifer F
Cook, Camille V
Nelson, Robert K
Jones, Jay D
Scarpino, Samuel V
Althouse, Benjamin M
Ririe, Kirk M
Malin, Bradley A
Poritz, Mark A
Automated Real-Time Collection of Pathogen-Specific Diagnostic Data: Syndromic Infectious Disease Epidemiology
title Automated Real-Time Collection of Pathogen-Specific Diagnostic Data: Syndromic Infectious Disease Epidemiology
title_full Automated Real-Time Collection of Pathogen-Specific Diagnostic Data: Syndromic Infectious Disease Epidemiology
title_fullStr Automated Real-Time Collection of Pathogen-Specific Diagnostic Data: Syndromic Infectious Disease Epidemiology
title_full_unstemmed Automated Real-Time Collection of Pathogen-Specific Diagnostic Data: Syndromic Infectious Disease Epidemiology
title_short Automated Real-Time Collection of Pathogen-Specific Diagnostic Data: Syndromic Infectious Disease Epidemiology
title_sort automated real-time collection of pathogen-specific diagnostic data: syndromic infectious disease epidemiology
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6054708/
https://www.ncbi.nlm.nih.gov/pubmed/29980501
http://dx.doi.org/10.2196/publichealth.9876
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