A curated list of R packages for statistical analysis and machine learning in the OMOP CDM (Common Data Model) research setting. Contributions welcome!
- CohortMethod - Tools for new-user cohort designs and comparative effect estimation.
- FeatureExtraction - Create covariates from observational data in the OMOP CDM format.
- Characterization - Conduct cohort characterizations with standard and custom analyses.
- SelfControlledCaseSeries - Implements self-controlled case series designs for safety analysis.
- EmpiricalCalibration - Adjust effect size estimates using empirical calibration methods.
- PopulationLevelEstimation - Perform population-level effect estimation with large-scale observational data.
- MethodEvaluation - Tools for evaluating predictive and causal inference methods.
- PatientLevelPrediction - Develop and validate patient-level prediction models.
- CommonDataModel - Functions for handling and transforming OMOP CDM data.
- CohortDiagnostics - Diagnosing and visualizing cohort definitions.
- Eunomia - Simulate OMOP CDM data for development and testing.
- CDMConnector - Provides tools to connect to OMOP CDM databases.
- HADES - A collection of R packages for observational data analytics.
- CohortSurvival - Perform survival analysis for patient cohorts in the OMOP CDM.
- Andromeda - Efficient in-memory data storage and manipulation for OMOP CDM.
- allofus - Tools to work with All of Us OMOP CDM data.
- Hydra - Rapidly create study packages for observational research.
- DataSHIELD - Analyze distributed data securely without disclosing individual data points.
- dsOMOP - DataSHIELD implementation for OMOP CDM.
- DrugUtilisation - Analyze drug utilization patterns in observational healthcare data.
- OmopSketch - Generate compact data summaries for privacy-preserving analytics.
- IncidencePrevalence - Calculate incidence and prevalence rates from OMOP CDM data.
- omopgenerics - Simplified generic tools for working with OMOP CDM data.
- EvidenceSynthesis - Combine evidence from multiple studies or data sources.
- ROMOP - A flexible framework for research using OMOP CDM data.
- Strategus - Automation tools for executing large-scale observational studies.
- DeepPatientLevelPrediction - Deep learning approaches for patient-level prediction in the OMOP CDM.
Contributions to this list are welcome! If you'd like to add new packages or enhance descriptions, feel free to submit a pull request.
This list is inspired by the HADES project and similar curated lists.