| Literature DB >> 31494719 |
Andrea Haberson1, Christoph Rinner2, Alexander Schöberl2, Walter Gall2.
Abstract
The Main Association of Austrian Social Security Institutions collects pseudonymized claims data from Austrian social security institutions and information about hospital stays in a database for research purposes. For new studies the same data are repeatedly reprocessed and it is difficult to compare different study results even though the data is already preprocessed and prepared in a proprietary data model. Based on a study on adverse drug events in relation to inappropriate medication in geriatric patients the suitability of the Observational Medical Outcomes Partnership (OMOP) common data model (CDM) is analyzed and data is transformed into the OMOP CDM. 1,023 (99.7%) of drug codes and 3,812 (99.2%) of diagnoses codes coincide with the OMOP vocabularies. The biggest obstacles are missing mappings for the Local Vocabularies like the Austrian pharmaceutical registration numbers and the Socio-Economic Index to the OMOP vocabularies. OMOP CDM is a promising approach for the standardization of Austrian claims data. In the long run, the benefits of standardization and reproducibility of research should outweigh this initial drawback.Entities:
Keywords: Claims data; Common data model; Drug safety; OMOP; Secondary use; Standardized health data
Mesh:
Year: 2019 PMID: 31494719 PMCID: PMC6732152 DOI: 10.1007/s10916-019-1436-9
Source DB: PubMed Journal: J Med Syst ISSN: 0148-5598 Impact factor: 4.460
Identified relevant medical terms of the ADE-PIM study and the results of the vocabulary mapping
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| State of ADE-PIM | ||
|---|---|---|---|---|
| Medical term | Public code system |
| Domain | |
| Diagnoses | ICD10-BMSG | ICD10-WHO ICD10-CM | Condition/Procedure/Measurement/Observation | S1/S2 |
| Drugs | ||||
| active ingredient | ATC | ATC-WHO | Drug | S1/S2 |
| medicinal product | PRN | RxNorm RxNorm Extension | S2/S3 | |
| Professional Groups | NUCC Medicare Specialty | Provider Specialty | S2/S3 | |
| SEI | SNOMED-CT | Observation | S3 | |
Fig. 1Data table mapping and number of rows per table before and after the ETL process. Duplicate records of hospitalizations and diagnoses were removed during ETL