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Nova · Professor Researcher · re-ranking top 20…

Mattia Prosperi

· Assistant Professor

University of Florida · Epidemiology

Active 1984–2024

h-index51
Citations8.6k
Papers367163 last 5y
Funding$6.3M1 active
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Research topics

  • Computer Science
  • Biology
  • Medicine
  • Artificial Intelligence
  • Machine Learning
  • Data Mining
  • Genetics
  • Evolutionary biology
  • Zoology
  • Data science
  • Computational biology
  • Database
  • Psychology
  • Environmental health
  • Risk analysis (engineering)
  • Virology

Selected publications

  • MEGARes and AMR++, v3.0: an updated comprehensive database of antimicrobial resistance determinants and an improved software pipeline for classification using high-throughput sequencing

    Nucleic Acids Research · 2022 · 185 citations

    • Data Mining
    • Computer Science
    • Biology

    Antimicrobial resistance (AMR) is considered a critical threat to public health, and genomic/metagenomic investigations featuring high-throughput analysis of sequence data are increasingly common and important. We previously introduced MEGARes, a comprehensive AMR database with an acyclic hierarchical annotation structure that facilitates high-throughput computational analysis, as well as AMR++, a customized bioinformatic pipeline specifically designed to use MEGARes in high-throughput analysis for characterizing AMR genes (ARGs) in metagenomic sequence data. Here, we present MEGARes v3.0, a comprehensive database of published ARG sequences for antimicrobial drugs, biocides, and metals, and AMR++ v3.0, an update to our customized bioinformatic pipeline for high-throughput analysis of metagenomic data (available at MEGLab.org). Database annotations have been expanded to include information regarding specific genomic locations for single-nucleotide polymorphisms (SNPs) and insertions and/or deletions (indels) when required by specific ARGs for resistance expression, and the updated AMR++ pipeline uses this information to check for presence of resistance-conferring genetic variants in metagenomic sequenced reads. This new information encompasses 337 ARGs, whose resistance-conferring variants could not previously be confirmed in such a manner. In MEGARes 3.0, the nodes of the acyclic hierarchical ontology include 4 antimicrobial compound types, 59 resistance classes, 233 mechanisms and 1448 gene groups that classify the 8733 accessions.

  • Causal inference and counterfactual prediction in machine learning for actionable healthcare

    Nature Machine Intelligence · 2020 · 405 citations

    1st authorCorresponding
    • Machine Learning
    • Computer Science
    • Artificial Intelligence
  • The global spread of 2019-nCoV: a molecular evolutionary analysis

    Pathogens and Global Health · 2020 · 218 citations

    • Biology
    • Evolutionary biology
    • Zoology

    of the bat family.

Recent grants

Frequent coauthors

  • Jiang Bian

    Microsoft Research (United Kingdom)

    123 shared
  • Andrea De Luca

    Campus Bio Medico University Hospital

    94 shared
  • Yi Guo

    UF Health Cancer Center

    67 shared
  • Marco Salemi

    University of Florida

    67 shared
  • Maurizio Zazzi

    University of Siena

    64 shared
  • Shannan N. Rich

    44 shared
  • Simone Marini

    University of Florida

    44 shared
  • Zhaoyi Chen

    Ottawa Hospital Research Institute

    39 shared

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