Department of Anesthesiology, Perioperative Medicine and Intensive Care Medicine, Paracelsus Medical University Salzburg, Salzburg, Austria.
Department of Internal Medicine, General Hospital Oberndorf, Teaching Hospital of the Paracelsus Medical University Salzburg, Oberndorf, Austria.
Sci Data. 2024 Mar 28;11(1):320. doi: 10.1038/s41597-024-03164-9.
Freely available datasets have become an invaluable tool to propel data-driven research, especially in the field of critical care medicine. However, the number of datasets available is limited. This leads to the repeated reuse of datasets, inherently increasing the risk of selection bias. Additionally, the need arose to validate insights derived from one dataset with another. In 2023, the Salzburg Intensive Care database (SICdb) was introduced. SICdb offers insights in currently 27,386 intensive care admissions from 21,583 patients. It contains cases of general and surgical intensive care from all disciplines. Amongst others SICdb contains information about: diagnosis, therapies (including data on preceding surgeries), scoring, laboratory values, respiratory and vital signals, and configuration data. Data for SICdb (1.0.6) was collected at one single tertiary care institution of the Department of Anesthesiology and Intensive Care Medicine at the Salzburger Landesklinik (SALK) and Paracelsus Medical University (PMU) between 2013 and 2021. This article aims to elucidate on the characteristics of the dataset, the technical implementation, and provides analysis of its strengths and limitations.
免费可用的数据集已成为推动数据驱动研究的宝贵工具,特别是在重症监护医学领域。然而,可用数据集的数量有限。这导致数据集的重复使用,固有地增加了选择偏差的风险。此外,还需要用另一个数据集来验证从一个数据集得出的见解。2023 年,引入了萨尔茨堡重症监护数据库(SICdb)。SICdb 提供了目前来自 21583 名患者的 27386 例重症监护入院的见解。它包含来自所有学科的普通和外科重症监护的病例。除其他外,SICdb 包含有关:诊断、治疗(包括先前手术的数据)、评分、实验室值、呼吸和生命信号以及配置数据的信息。SICdb(1.0.6)的数据是在 2013 年至 2021 年期间在萨尔茨堡州立医院(SALK)和帕拉塞尔苏斯医科大学(PMU)的麻醉学和重症监护医学系的一家三级保健机构中收集的。本文旨在阐明数据集的特征、技术实现,并对其优势和局限性进行分析。