The status of causality in biological databases: data resources and data retrieval possibilities to support logical modeling

Author:

Touré Vasundra1ORCID,Flobak Åsmund2ORCID,Niarakis Anna3ORCID,Vercruysse Steven4ORCID,Kuiper Martin5ORCID

Affiliation:

1. Department of Biology of the Norwegian University of Science and Technology

2. Residential Oncologist and an Associate Professor

3. Department of Biology, Univ Evry, University of Paris-Saclay, affiliated with the laboratory GenHotel in Genopole campus, and a delegate at the Lifeware Group, INRIA Saclay

4. Researcher in computer science and computational biology and focuses on building a bridge between human and computer understanding

5. systems biology at the Department of Biology of the Norwegian University of Science and Technology

Abstract

Abstract Causal molecular interactions represent key building blocks used in computational modeling, where they facilitate the assembly of regulatory networks. Logical regulatory networks can be used to predict biological and cellular behaviors by system perturbations and in silico simulations. Today, broad sets of causal interactions are available in a variety of biological knowledge resources. However, different visions, based on distinct biological interests, have led to the development of multiple ways to describe and annotate causal molecular interactions. It can therefore be challenging to efficiently explore various resources of causal interaction and maintain an overview of recorded contextual information that ensures valid use of the data. This review lists the different types of public resources with causal interactions, the different views on biological processes that they represent, the various data formats they use for data representation and storage, and the data exchange and conversion procedures that are available to extract and download these interactions. This may further raise awareness among the targeted audience, i.e. logical modelers and other scientists interested in molecular causal interactions, but also database managers and curators, about the abundance and variety of causal molecular interaction data, and the variety of tools and approaches to convert them into one interoperable resource.

Funder

Regulation Ensemble Effort for the Knowledge Commons

ERACoSysMed

The Norwegian University of Science and Technology’s Strategic Research Area ‘NTNU Health’

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

Reference104 articles.

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