Litcius/Paper detail

Interpretative Labor and the Bane of Nonstandardized Metadata in Public Health Surveillance and Food Safety

James Pettengill, Jennifer Beal, Maria Balkey, Marc Allard, Hugh Rand, Ruth Timme

2021Clinical Infectious Diseases29 citationsDOIOpen Access PDF

Abstract

Open-source DNA sequence databases have long been touted as beneficial to public health, including the facilitation of earlier detection and response to infectious disease outbreaks. Of critical importance to harnessing these benefits is the metadata that describe general and other domain-specific attributes (eg, collection location, isolate type) of a sample. Unlike the sequence data, metadata are often incomplete and lack adherence to an international standard. Here, we describe the problem posed by such variable and incomplete metadata in terms of interpretative labor costs (the time and energy necessary to make sense of the signal in the genetic data) and the impact such metadata have on foodborne outbreak detection and response. Improving the quality of sequence-associated metadata would allow for earlier detection of emerging food safety hazards and allow faster response to foodborne outbreaks.

Topics & Concepts

MetadataPublic healthOutbreakFood safetyData scienceComputer scienceMedicineInformation retrievalWorld Wide WebVirologyPathologyNursingIdentification and Quantification in FoodMolecular Biology Techniques and ApplicationsEnvironmental DNA in Biodiversity Studies