ricu: R's interface to intensive care data

Gigascience. 2022 Dec 28:12:giad041. doi: 10.1093/gigascience/giad041. Epub 2023 Jun 15.

Abstract

Objective: To develop a unified framework for analyzing data from 5 large publicly available intensive care unit (ICU) datasets.

Findings: Using 3 American (Medical Information Mart for Intensive Care III, Medical Information Mart for Intensive Care IV, electronic ICU) and 2 European (Amsterdam University Medical Center Database, High Time Resolution ICU Dataset) databases, we constructed a mapping for each database to a set of clinically relevant concepts, which are grounded in the Observational Medical Outcomes Partnership Vocabulary wherever possible. Furthermore, we performed synchronization in the units of measurement and data type representation. On top of this, we built functionality, which allows the user to download, set up, and load data from all of the 5 databases, through a unified Application Programming Interface. The resulting ricu R-package represents the computational infrastructure for handling publicly available ICU datasets, and its latest release allows the user to load 119 existing clinical concepts from the 5 data sources.

Conclusion: The ricu R-package (available on GitHub and CRAN) is the first tool that enables users to analyze publicly available ICU datasets simultaneously (datasets are available upon request from respective owners). Such an interface saves researchers time when analyzing ICU data and helps reproducibility. We hope that ricu can become a community-wide effort, so that data harmonization is not repeated by each research group separately. One current limitation is that concepts were added on a case-to-case basis, and therefore the resulting dictionary of concepts is not comprehensive. Further work is needed to make the dictionary comprehensive.

Keywords: computational methods; electronic health records; intensive care medicine.

MeSH terms

  • Critical Care* / methods
  • Data Management
  • Databases, Factual
  • Humans
  • Intensive Care Units*
  • Reproducibility of Results