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Nova · Professor Researcher · re-ranking top 20…

Linda Kinkel

Verified

University of Minnesota · Plant Pathology

Active 1987–2024

h-index50
Citations11.2k
Papers19834 last 5y
Funding$2.3M
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Research topics

  • Computer Science
  • Bioinformatics
  • Biology
  • Data science
  • World Wide Web
  • Archaeology
  • Geography
  • Ecology

Selected publications

  • Microbiome Metadata Standards: Report of the National Microbiome Data Collaborative’s Workshop and Follow-On Activities

    mSystems · 2021 · 72 citations

    • Computer Science
    • Computer Science
    • Data science

    Microbiome samples are inherently defined by the environment in which they are found. Therefore, data that provide context and enable interpretation of measurements produced from biological samples, often referred to as metadata, are critical. Important contributions have been made in the development of community-driven metadata standards; however, these standards have not been uniformly embraced by the microbiome research community. To understand how these standards are being adopted, or the barriers to adoption, across research domains, institutions, and funding agencies, the National Microbiome Data Collaborative (NMDC) hosted a workshop in October 2019. This report provides a summary of discussions that took place throughout the workshop, as well as outcomes of the working groups initiated at the workshop.

  • Community-Driven Metadata Standards for Agricultural Microbiome Research

    Phytobiomes Journal · 2020 · 31 citations

    Senior authorCorresponding
    • Computer Science
    • Computer Science
    • Data science

    Accelerating the pace of microbiome science to enhance crop productivity and agroecosystem health will require transdisciplinary studies, comparisons among datasets, and synthetic analyses of research from diverse crop management contexts. However, despite the widespread availability of crop-associated microbiome data, variation in field sampling and laboratory processing methodologies, as well as metadata collection and reporting, significantly constrains the potential for integrative and comparative analyses. Here we discuss the need for agriculture-specific metadata standards for microbiome research, and propose a list of “required” and “desirable” metadata categories and ontologies essential to be included in a future minimum information metadata standards checklist for describing agricultural microbiome studies. We begin by briefly reviewing existing metadata standards relevant to agricultural microbiome research, and describe ongoing efforts to enhance the potential for integration of data across research studies. Our goal is not to delineate a fixed list of metadata requirements. Instead, we hope to advance the field by providing a starting point for discussion, and inspire researchers to adopt standardized procedures for collecting and reporting consistent and well-annotated metadata for agricultural microbiome research.

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