OMOP: It is an acronym for Observational Medical Outcomes Partnership. The OMOP research program was initially established under Foundation for
NIH) and created first version of OMOP
common data model. The common data model was able to accommodate observational data of different types (both claims and
electronic health records). It has a single common infrastructure that can accommodate both of the types from different sources around the world. It has successfully developed and executed large-scale statistical analyses capable of enabling active drug safety surveillance across prescription medications.
OHDSI: It stands for
Observational Health Data Sciences and Informatics and was initiated in 2013. It is a multi-stakeholder, interdisciplinary collaborative that is striving to bring out the value of observational health data through large-scale analytics. The main objective of OHDSI is to establish a research community for observational health data sciences that enables active engagement across multiple disciplines spanning multiple stakeholder groups.
OpenClinica: It is the world's most widely used,
open-source software for clinical research. First released in 2005, OpenClinica is designed to meet the diverse needs of modern research environments. It is built as a lightweight, extensible, and modular application. The software is web based and users can access it with a standard web browser and internet connection.
OpenEHR: It is an open standard specification in
health informatics that describes the management and storage, retrieval and exchange of health data in electronic health records. In OpenEHR, all health data for a person is stored in a "one lifetime", vendor-independent, person-centered EHR.
Clinical3PO: clinical3po is an open source big data environment for the Veteran Affairs informatics and computing infrastructure, enables scalable markup of electronic health record events to be used for predictive analysis. == Open Source tools for Genetic Data ==