Developing an ETL tool for converting the PCORnet CDM into the OMOP CDM to facilitate the COVID-19 data integration

[Display omitted] •We an open-source ETL tool to facilitate the data conversion between the PCORnet CDM and the OMOP CDM.•We conduct several analyses to evaluate the feasibility of our ETL tool.•We identify the gaps between the PCORnet CDM and the OMOP CDM.•We assess the capacity of data collection...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:Journal of biomedical informatics 2022-03, Vol.127, p.104002-104002, Article 104002
Hauptverfasser: Yu, Yue, Zong, Nansu, Wen, Andrew, Liu, Sijia, Stone, Daniel J., Knaack, David, Chamberlain, Alanna M., Pfaff, Emily, Gabriel, Davera, Chute, Christopher G., Shah, Nilay, Jiang, Guoqian
Format: Artikel
Sprache:eng
Schlagworte:
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
Beschreibung
Zusammenfassung:[Display omitted] •We an open-source ETL tool to facilitate the data conversion between the PCORnet CDM and the OMOP CDM.•We conduct several analyses to evaluate the feasibility of our ETL tool.•We identify the gaps between the PCORnet CDM and the OMOP CDM.•We assess the capacity of data collection for COVID-19 surveillance in both the PCORnet CDM and the OMOP CDM. The large-scale collection of observational data and digital technologies could help curb the COVID-19 pandemic. However, the coexistence of multiple Common Data Models (CDMs) and the lack of data extract, transform, and load (ETL) tool between different CDMs causes potential interoperability issue between different data systems. The objective of this study is to design, develop, and evaluate an ETL tool that transforms the PCORnet CDM format data into the OMOP CDM. We developed an open-source ETL tool to facilitate the data conversion from the PCORnet CDM and the OMOP CDM. The ETL tool was evaluated using a dataset with 1000 patients randomly selected from the PCORnet CDM at Mayo Clinic. Information loss, data mapping accuracy, and gap analysis approaches were conducted to assess the performance of the ETL tool. We designed an experiment to conduct a real-world COVID-19 surveillance task to assess the feasibility of the ETL tool. We also assessed the capacity of the ETL tool for the COVID-19 data surveillance using data collection criteria of the MN EHR Consortium COVID-19 project. After the ETL process, all the records of 1000 patients from 18 PCORnet CDM tables were successfully transformed into 12 OMOP CDM tables. The information loss for all the concept mapping was less than 0.61%. The string mapping process for the unit concepts lost 2.84% records. Almost all the fields in the manual mapping process achieved 0% information loss, except the specialty concept mapping. Moreover, the mapping accuracy for all the fields were 100%. The COVID-19 surveillance task collected almost the same set of cases (99.3% overlaps) from the original PCORnet CDM and target OMOP CDM separately. Finally, all the data elements for MN EHR Consortium COVID-19 project could be captured from both the PCORnet CDM and the OMOP CDM. We demonstrated that our ETL tool could satisfy the data conversion requirements between the PCORnet CDM and the OMOP CDM. The outcome of the work would facilitate the data retrieval, communication, sharing, and analysis between different institutions for not only COVID-19 related project, bu
ISSN:1532-0464
1532-0480
DOI:10.1016/j.jbi.2022.104002