University of Portsmouth, UK; Arab Academy for Science and Technology, Egypt.
University of Portsmouth, UK.
Health Informatics J. 2020 Jun;26(2):1043-1059. doi: 10.1177/1460458219850323. Epub 2019 Jul 26.
Current mortality prediction models and scoring systems for intensive care unit patients are generally usable only after at least 24 or 48 h of admission, as some parameters are unclear at admission. However, some of the most relevant measurements are available shortly following admission. It is hypothesized that outcome prediction may be made using information available in the earliest phase of intensive care unit admission. This study aims to investigate how early hospital mortality can be predicted for intensive care unit patients. We conducted a thorough time-series analysis on the performance of different data mining methods during the first 48 h of intensive care unit admission. The results showed that the discrimination power of the machine-learning classification methods after 6 h of admission outperformed the main scoring systems used in intensive care medicine (Acute Physiology and Chronic Health Evaluation, Simplified Acute Physiology Score and Sequential Organ Failure Assessment) after 48 h of admission.
目前,重症监护病房患者的死亡率预测模型和评分系统通常需要在入院至少 24 或 48 小时后才能使用,因为有些参数在入院时还不清楚。然而,有些最相关的测量值在入院后不久就可以获得。有人假设,可以使用重症监护病房入院早期可用的信息来进行预后预测。本研究旨在探讨如何尽早预测重症监护病房患者的院内死亡率。我们对重症监护病房入院后前 48 小时内不同数据挖掘方法的性能进行了全面的时间序列分析。结果表明,入院后 6 小时的机器学习分类方法的判别能力优于重症监护医学中使用的主要评分系统(急性生理学和慢性健康评估、简化急性生理学评分和序贯器官衰竭评估)在入院后 48 小时的表现。