Top selected manuscripts will be invited for submitting paper for the special call at "Journal of Biomedical Semantics"
4th Workshop on Semantic Web solutions for large-scale biomedical data analytics (SeWeBMeDA-20)
Submission: July 20, 2020 September 15, 2020
Notification: October 15, 2020
Camera-ready: October 25, 2020
Free But Mandatory Registration (4th Nov): https://forms.gle/3K5kcmSTykzE11DCA
Workshop: 7th November 2020 3PM (CET)
This workshop invites papers for life sciences and biomedical data processing, as well as the amalgamation with Linked Data and Semantic Web technologies for better data analytics, knowledge discovery and user-targeted applications. This research contribution should provide useful information for the Knowledge Acquisition research community as well as the working Data Scientist.
This workshop seeks original contributions describing theoretical and practical methods and techniques that present the anatomy of large scale linked data infrastructure, which covers: the distributed infrastructure to consume, store and query large volumes of heterogeneous linked data; using indexes and graph aggregation to better understand large linked data graphs, query federation to mix internal and external data-sources, and linked data visualization tools for health care and life sciences. It will further cover topics around data integration, data profiling, data curation, querying, knowledge discovery, ontology mapping / matching / reconciliation and data / ontology visualization, applications / tools / technologies / techniques for life sciences and biomedical domain. SeWeBMeDA aims to provide researchers in biomedical and life science, an insight and awareness about large scale data technologies for linked data, which are becoming increasingly important for knowledge discovery in the life sciences domain.
Topics of interest include, but are not limited to Semantic Web and Linked Data technologies in the following areas:
Techniques for analyzing semantic data in the life sciences, medicine and health care
The description, integration, analysis and use of data in pursuit of challenges in the life sciences, medicine and health
Tools and applications for biomedical and life sciences
Large scale biomedical data curation and integration
Processing biomedical data at scale
Knowledge representation and knowledge discovery for biomedical data
Data and metadata publishing, profiling and new datasets in biomedical and life sciences
Question answering and dialogues over biomedical and life science Linked Data, Ontologies and Knowledge Graphs–Querying and federating data over heterogeneous datasources
FAIR (Findable, Accessible, Interoperable and Reusable) publishing, usage and analysis of biomedical/ life science data
Scalable integration and reproducible analysis of FAIR (Findable, Accessible, Interoperable and Reusable) data
Virtual and Augmented Reality in Biomedical/ Life Science education and applications
Cleaning, quality assurance, and provenance of Semantic Web data, services, and processes in Biomedical/ Life Science
Querying and federating data over heterogeneous datasources
Biomedical ontology creation, mapping/ matching/ translation and reconciliation
Biomedical Ontology and data visualization
Building and maintaining biomedical knowledge graphs
Machine learning with biomedical knowledge graphs
Knowledge Graphs and Relational Learning for Life Sciences
Intelligent Visualizations of Linked Life Science Data
Biomedical data quality assessment and improvement
From Semantics to Explanations in biomedicine and life science
Text analysis, text mining and reasoning using semantic technologies
New technologies and exploitation of existing ones in Linked Data and Semantic Web
Social, ethical and moral issues publishing and consuming biomedical and life sciences data.