5 research outputs found
An approach for collaborative development of a federated biomedical knowledge graph-based question-answering system: Question-of-the-Month challenges
Knowledge graphs have become a common approach for knowledge representation. Yet, the application of graph methodology is elusive due to the sheer number and complexity of knowledge sources. In addition, semantic incompatibilities hinder efforts to harmonize and integrate across these diverse sources. As part of The Biomedical Translator Consortium, we have developed a knowledge graph-based question-answering system designed to augment human reasoning and accelerate translational scientific discovery: the Translator system. We have applied the Translator system to answer biomedical questions in the context of a broad array of diseases and syndromes, including Fanconi anemia, primary ciliary dyskinesia, multiple sclerosis, and others. A variety of collaborative approaches have been used to research and develop the Translator system. One recent approach involved the establishment of a monthly "Question-of-the-Month (QotM) Challenge" series. Herein, we describe the structure of the QotM Challenge; the six challenges that have been conducted to date on drug-induced liver injury, cannabidiol toxicity, coronavirus infection, diabetes, psoriatic arthritis, and ATP1A3-related phenotypes; the scientific insights that have been gleaned during the challenges; and the technical issues that were identified over the course of the challenges and that can now be addressed to foster further development of the prototype Translator system. We close with a discussion on Large Language Models such as ChatGPT and highlight differences between those models and the Translator system
uab-cgds-worthey/rosalution: Rosalution 0.6.0 - Supporting data accessibility, integration, curation, interoperability, and reuse for precision animal modeling
Maintainers
@SeriousHorncat
@JmScherer
@fatimarabab
New Contributors
@jbarkley256 made their first contribution in https://github.com/uab-cgds-worthey/rosalution/pull/61
What's Changed
Importing cases for analysis, with support of automated configured annotations of genomic units with support at curating evidence for analysis review.
Attachment of supporting evidence as files or URLs
Support for researchers entering case relevant information to be disseminated to research team
Multi image attachment for curated figures for analyses
Attachment of visual annotations associated with genomic units
Viewing annotations for the genomic units in a case for analysis
CAS user login, enabling organizations to connect to their Center Authentication Service for user credentials
Filtering available analyses by data presented on analysis cards in the analysis feed
Workflows to change analyses from being in preparation to ready, active, approved, declined, on-hold
3rd party attachments to link Monday.com and Phenotips URL to the specific analysis
Full Changelog: https://github.com/uab-cgds-worthey/rosalution/compare/0.6.0-er...0.6.
Recommended from our members
An approach for collaborative development of a federated biomedical knowledge graph-based question-answering system: Question-of-the-Month challenges.
Knowledge graphs have become a common approach for knowledge representation. Yet, the application of graph methodology is elusive due to the sheer number and complexity of knowledge sources. In addition, semantic incompatibilities hinder efforts to harmonize and integrate across these diverse sources. As part of The Biomedical Translator Consortium, we have developed a knowledge graph-based question-answering system designed to augment human reasoning and accelerate translational scientific discovery: the Translator system. We have applied the Translator system to answer biomedical questions in the context of a broad array of diseases and syndromes, including Fanconi anemia, primary ciliary dyskinesia, multiple sclerosis, and others. A variety of collaborative approaches have been used to research and develop the Translator system. One recent approach involved the establishment of a monthly Question-of-the-Month (QotM) Challenge series. Herein, we describe the structure of the QotM Challenge; the six challenges that have been conducted to date on drug-induced liver injury, cannabidiol toxicity, coronavirus infection, diabetes, psoriatic arthritis, and ATP1A3-related phenotypes; the scientific insights that have been gleaned during the challenges; and the technical issues that were identified over the course of the challenges and that can now be addressed to foster further development of the prototype Translator system. We close with a discussion on Large Language Models such as ChatGPT and highlight differences between those models and the Translator system
An Approach for Collaborative Development of a Federated Biomedical Knowledge GraphâBased Question-Answering System: Question-of-the-Month Challenges
Knowledge graphs have become a common approach for knowledge representation. Yet, the application of graph methodology is elusive due to the sheer number and complexity of knowledge sources. In addition, semantic incompatibilities hinder efforts to harmonize and integrate across these diverse sources. As part of The Biomedical Translator Consortium, we have developed a knowledge graph-based question-answering system designed to augment human reasoning and accelerate translational scientific discovery: the Translator system. We have applied the Translator system to answer biomedical questions in the context of a broad array of diseases and syndromes, including Fanconi anemia, primary ciliary dyskinesia, multiple sclerosis, and others. A variety of collaborative approaches have been used to research and develop the Translator system. One recent approach involved the establishment of a monthly "Question-of-the-Month (QotM) Challenge" series. Herein, we describe the structure of the QotM Challenge; the six challenges that have been conducted to date on drug-induced liver injury, cannabidiol toxicity, coronavirus infection, diabetes, psoriatic arthritis, and ATP1A3-related phenotypes; the scientific insights that have been gleaned during the challenges; and the technical issues that were identified over the course of the challenges and that can now be addressed to foster further development of the prototype Translator system. We close with a discussion on Large Language Models such as ChatGPT and highlight differences between those models and the Translator system
Biolink Model: A universal schema for knowledge graphs in clinical, biomedical, and translational science
<h2>What's Changed</h2>
<ul>
<li>Documentation and repo hierarchy refactoring by @sierra-moxon in https://github.com/biolink/biolink-model/pull/1418</li>
</ul>
<p>Summary: 4.0.0 is a major release that includes many changes to the documentation for Biolink Model as well
as the reorganization of the repository to support the new documentation structure and comply with LinkML best
practices. The model itself has not changed significantly, but the documentation has been updated to reflect
the current state of the model, and includes new visualizations of the model, additional text-based documentation,
and a new gh-pages documentation layout.</p>
<p><strong>Full Changelog</strong>: https://github.com/biolink/biolink-model/compare/v3.6.0...v4.0.0</p>Please cite the following works when using this software