HantaNet: A New MicrobeTrace Application for Hantavirus Classification, Genomic Surveillance, Epidemiology and Outbreak Investigations.
Roxana CintronShannon L M WhitmerEvan MoscosoEllsworth M CampbellReagan KellyEmir TalundzicMelissa MobleyKuo Wei ChiuElizabeth ShedroffAnupama ShankarJoel M MontgomeryJohn D KlenaWilliam M SwitzerPublished in: Viruses (2023)
Hantaviruses zoonotically infect humans worldwide with pathogenic consequences and are mainly spread by rodents that shed aerosolized virus particles in urine and feces. Bioinformatics methods for hantavirus diagnostics, genomic surveillance and epidemiology are currently lacking a comprehensive approach for data sharing, integration, visualization, analytics and reporting. With the possibility of hantavirus cases going undetected and spreading over international borders, a significant reporting delay can miss linked transmission events and impedes timely, targeted public health interventions. To overcome these challenges, we built HantaNet, a standalone visualization engine for hantavirus genomes that facilitates viral surveillance and classification for early outbreak detection and response. HantaNet is powered by MicrobeTrace, a browser-based multitool originally developed at the Centers for Disease Control and Prevention (CDC) to visualize HIV clusters and transmission networks. HantaNet integrates coding gene sequences and standardized metadata from hantavirus reference genomes into three separate gene modules for dashboard visualization of phylogenetic trees, viral strain clusters for classification, epidemiological networks and spatiotemporal analysis. We used 85 hantavirus reference datasets from GenBank to validate HantaNet as a classification and enhanced visualization tool, and as a public repository to download standardized sequence data and metadata for building analytic datasets. HantaNet is a model on how to deploy MicrobeTrace-specific tools to advance pathogen surveillance, epidemiology and public health globally.
Keyphrases
- public health
- machine learning
- deep learning
- big data
- copy number
- global health
- risk factors
- electronic health record
- genome wide
- adverse drug
- antiretroviral therapy
- artificial intelligence
- human immunodeficiency virus
- healthcare
- physical activity
- hiv positive
- hiv infected
- dna methylation
- gene expression
- candida albicans
- hiv aids
- hiv testing
- cell cycle
- genetic diversity
- single cell