jannahastings / addiction-ontology

Repository for the addiction ontology

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Overview

The Addiction Ontology (AddictO) is an ontology for representing entities relevant to all aspects of addiction research and clinical practice. It includes the E-Cigarette Ontology (E-CigO) which covers all substantive entities that may be referred to in research reports and commentaries relating to e-cigarettes.

The project is being developed using the BFO upper level ontology and following best practices as set out by the OBO Foundry.

It is funded by the Society for the Study of Addiction with the E-Cigarette Ontology supported by Cancer Research UK and is expected to underpin a new tool for semantically annotating research reports that are submitted to the journal Addiction, the Addiction Paper Authoring Tool.

The ontology content can be browsed at http://addictovocab.org, and a downloadable version of the ontology is available at http://addictovocab.org/addicto.owl.

Persons involved

Contributors to the Addiction Ontology (current and past) include: Robert West, Simon Christmas, Janna Hastings, Ildiko Tombor, Susan Michie, Sharon Cox, Caitlin Notley, Michael Lynskey, Paul Toner, Kirstie Soar.

Publications

Robert West, John Marsden and Janna Hastings (2019) Addiction Theories and Constructs: a new series. Editorial in Addiction, 14 January 2019.

Sharon Cox, Janna Hastings, Robert West and Caitlin Notley (2020) The case for development of an E-cigarette Ontology (E-CigO) to improve quality, efficiency and clarity in the conduct and interpretation of research. Qeios. https://www.qeios.com/read/5YYRPJ

Janna Hastings, Sharon Cox, Robert West and Caitlin Notley (2020) Addiction Ontology: Applying Basic Formal Ontology in the Addiction Domain. Qeios. https://www.qeios.com/read/HZHJIP

Related Projects

The Addiction Ontology project relies on ontologies developed in the context of the Human Behaviour-Change Project such as the the Behaviour Change Intervention Ontology (BCIO). It furthermore harnesses content from the Mental Functioning (MF) and Emotion (EM) ontologies.

About

Repository for the addiction ontology


Languages

Language:Python 100.0%