VIOLIN 2.0: Vaccine Information and Ontology LInked kNowledgebase
- Funded by National Institutes of Health (NIH)
- Total publications:0 publications
Grant number: 5U24AI171008-02
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Key facts
Disease
Disease XStart & end year
20222027Known Financial Commitments (USD)
$743,543Funder
National Institutes of Health (NIH)Principal Investigator
DR. Yongqun HeResearch Location
United States of AmericaLead Research Institution
UNIVERSITY OF MICHIGAN AT ANN ARBORResearch Priority Alignment
N/A
Research Category
Vaccines research, development and implementation
Research Subcategory
N/A
Special Interest Tags
Data Management and Data Sharing
Study Type
Non-Clinical
Clinical Trial Details
N/A
Broad Policy Alignment
Pending
Age Group
Not Applicable
Vulnerable Population
Not applicable
Occupations of Interest
Not applicable
Abstract
Project Summary: Vaccination is one of the most successful innovations in the fight against infectious disease. However, we still lack effective and safe vaccines against many major infectious diseases (e.g., HIV, tuberculosis, and malaria). We also lack a comprehensive and interoperable vaccine knowledgebase to accelerate vaccine development and better understand vaccine safety. Based on the preliminary version of our current VIOLIN vaccine knowledgebase, we propose to develop VIOLIN 2.0, a new generation Vaccine Information and Ontology LInked kNowledgebase. Strong preliminary data were generated: Originally funded by an NIH-NIAID R01, our VIOLIN has grown to include information on >4,000 vaccines for >200 pathogens. In addition, we have led the development of the community-based Vaccine Ontology (VO) and Ontology of Adverse Events (OAE) for vaccine and adverse event representation. We have also developed the widely used Vaxign and Vaxign-ML vaccine design programs and applied them to predict vaccines for many diseases including COVID-19. Many ontology- and bioinformatics-based methods and tools, including natural language processing (NLP) tools, have also been developed to analyze vaccine information and identify new scientific insights. However, the existing VIOLIN also faces new challenges in areas such as knowledge integration, interoperability, and analysis. In this proposal, we aim to systematically develop VIOLIN 2.0, which will be a community-based comprehensive vaccine knowledgebase (KB) with data FAIRness. Basic science, clinical, and public health (safety, epidemiology, vaccine coverage) knowledge will be included with robust linkage and analysis. Four specific aims are proposed: Aim 1: Implement a pipeline for automatic knowledge harvest, standardization, and integration using advanced ontology and natural language processing technologies. Aim 2: Expand the vaccine KB and management. Three specific knowledge aspects will be included: (i) vaccine formulation and development, (ii) protective responses, and (iii) vaccine safety. Aim 3: Provide VIOLIN 2.0 knowledge browser, query, and showcases. For showcase demonstration, three use cases will be built up, including pattern detection of vaccine components (including protective antigens and vaccine adjuvants), vaccine-induced host immune signatures, and vaccine adverse events. The patterns identified will be utilized with statistical and machine learning methods to support rational vaccine design and immune signature prediction. Aim 4: Community engagement and outreach. Many events such as hackathons and workshops will be held to support the development and applications of community-based ontologies, standards, and tools. VIOLIN 2.0 will significantly enhance the VIOLIN with breadth and depth of vaccine information, include knowledge not available in the current VIOLIN (e.g., vaccine adverse events), and develop new methods for efficient and scalable knowledge extraction and analysis. Our study will advance the understanding of vaccine mechanisms, and support rational vaccine design against COVID-19 and other infectious diseases.