Suppr超能文献

在重症监护病房中通过数据挖掘利用不良事件对器官衰竭进行评级。

Rating organ failure via adverse events using data mining in the intensive care unit.

作者信息

Silva Alvaro, Cortez Paulo, Santos Manuel Filipe, Gomes Lopes, Neves José

机构信息

Serviço de Cuidados Intensivos, Hospital Geral de Santo António, Porto, Portugal.

出版信息

Artif Intell Med. 2008 Jul;43(3):179-93. doi: 10.1016/j.artmed.2008.03.010. Epub 2008 May 16.

Abstract

OBJECTIVE

The main intensive care unit (ICU) goal is to avoid or reverse the organ failure process by adopting a timely intervention. Within this context, early identification of organ impairment is a key issue. The sequential organ failure assessment (SOFA) is an expert-driven score that is widely used in European ICUs to quantify organ disorder. This work proposes a complementary data-driven approach based on adverse events, defined from commonly monitored biometrics. The aim is to study the impact of these events when predicting the risk of ICU organ failure.

MATERIALS AND METHODS

A large database was considered, with a total of 25,215 daily records taken from 4425 patients and 42 European ICUs. The input variables include the case mix (i.e. age, diagnosis, admission type and admission from) and adverse events defined from four bedside physiologic variables (i.e. systolic blood pressure, heart rate, pulse oximeter oxygen saturation and urine output). The output target is the organ status (i.e. normal, dysfunction or failure) of six organ systems (respiratory, coagulation, hepatic, cardiovascular, neurological and renal), as measured by the SOFA score. Two data mining (DM) methods were compared: multinomial logistic regression (MLR) and artificial neural networks (ANNs). These methods were tested in the R statistical environment, using 20 runs of a 5-fold cross-validation scheme. The area under the receiver operator characteristic (ROC) curve and Brier score were used as the discrimination and calibration measures.

RESULTS

The best performance was obtained by the ANNs, outperforming the MLR in both discrimination and calibration criteria. The ANNs obtained an average (over all organs) area under the ROC curve of 64, 69 and 74% and Brier scores of 0.18, 0.16 and 0.09 for the dysfunction, normal and failure organ conditions, respectively. In particular, very good results were achieved when predicting renal failure (ROC curve area of 76% and Brier score of 0.06).

CONCLUSION

Adverse events, taken from bedside monitored data, are important intermediate outcomes, contributing to a timely recognition of organ dysfunction and failure during ICU length of stay. The obtained results show that it is possible to use DM methods to get knowledge from easy obtainable data, thus making room for the development of intelligent clinical alarm monitoring.

摘要

目的

重症监护病房(ICU)的主要目标是通过及时干预避免或逆转器官衰竭进程。在此背景下,早期识别器官损伤是一个关键问题。序贯器官衰竭评估(SOFA)是一种由专家制定的评分系统,在欧洲的重症监护病房中广泛用于量化器官功能紊乱。本研究基于常见监测生物特征定义的不良事件,提出了一种互补的数据驱动方法。目的是研究这些事件在预测ICU器官衰竭风险时的影响。

材料与方法

研究使用了一个大型数据库,共包含来自4425例患者和42个欧洲重症监护病房的25215条每日记录。输入变量包括病例组合(即年龄、诊断、入院类型和入院来源)以及由四个床边生理变量(即收缩压、心率、脉搏血氧饱和度和尿量)定义的不良事件。输出目标是通过SOFA评分衡量的六个器官系统(呼吸、凝血、肝脏、心血管、神经和肾脏)的器官状态(即正常、功能障碍或衰竭)。比较了两种数据挖掘(DM)方法:多项逻辑回归(MLR)和人工神经网络(ANN)。这些方法在R统计环境中进行测试,采用20次运行的5折交叉验证方案。采用受试者工作特征(ROC)曲线下面积和Brier评分作为判别和校准指标。

结果

人工神经网络表现最佳,在判别和校准标准方面均优于多项逻辑回归。人工神经网络在功能障碍、正常和衰竭器官状态下,ROC曲线下面积的平均值(所有器官)分别为64%、69%和74%,Brier评分分别为0.18、0.16和0.09。特别是在预测肾衰竭时取得了非常好的结果(ROC曲线面积为76%,Brier评分为0.06)。

结论

从床边监测数据中获取的不良事件是重要的中间结果,有助于在ICU住院期间及时识别器官功能障碍和衰竭。研究结果表明,可以使用数据挖掘方法从容易获得的数据中获取知识,从而为智能临床警报监测的发展提供空间。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验