GIM, a dataset for predicting patient deterioration in the General Internal Medicine ward
收藏DataCite Commons2023-03-17 更新2024-07-13 收录
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The Data Science and Advanced Analytics (DSAA) team at Unity Health Toronto
has developed and evaluated advanced patient monitoring and decision support
systems to improve the efficiency, accuracy, and timeliness of clinical
decision-making on the General Internal Medicine (GIM) inpatient ward at St.
Michael's Hospital. The GIM dataset was created through this work, and is
comprised of de-identified health related data associated with over 22,000
patient encounters for 14,000 unique patients who were admitted under the GIM
service at St. Michael's Hospital between 2011 and 2019. The dataset was
sourced from three distinct systems (Electronic Health Records, the Admit
Discharge Transfer System and the Medication Administration Check System).
Pre-processed datasets aggregating observations into fixed time windows are
provided for convenience. A raw untransformed data set is also provided for
researchers who wish to apply their own data transformations and includes
demographics and outcome tables from the processed data. Patient outcomes
available include ICU transfer, death, palliative entry, palliative discharge,
and hospital discharge.
提供机构:
healthdatanexus.ai
创建时间:
2022-10-05



