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迈向重症监护出院决策支持工具:使用 MIMIC-III 和英国布里斯托尔的电子医疗保健数据开发机器学习算法。

Towards a decision support tool for intensive care discharge: machine learning algorithm development using electronic healthcare data from MIMIC-III and Bristol, UK.

机构信息

Engineering Mathematics, University of Bristol, Bristol, UK.

Integrative Epidemiology Unit, Population Health Sciences, University of Bristol, Bristol, UK.

出版信息

BMJ Open. 2019 Mar 7;9(3):e025925. doi: 10.1136/bmjopen-2018-025925.

DOI:10.1136/bmjopen-2018-025925
PMID:30850412
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6429919/
Abstract

OBJECTIVE

The primary objective is to develop an automated method for detecting patients that are ready for discharge from intensive care.

DESIGN

We used two datasets of routinely collected patient data to test and improve on a set of previously proposed discharge criteria.

SETTING

Bristol Royal Infirmary general intensive care unit (GICU).

PATIENTS

Two cohorts derived from historical datasets: 1870 intensive care patients from GICU in Bristol, and 7592 from Medical Information Mart for Intensive Care (MIMIC)-III.

RESULTS

In both cohorts few successfully discharged patients met all of the discharge criteria. Both a random forest and a logistic classifier, trained using multiple-source cross-validation, demonstrated improved performance over the original criteria and generalised well between the cohorts. The classifiers showed good agreement on which features were most predictive of readiness-for-discharge, and these were generally consistent with clinical experience. By weighting the discharge criteria according to feature importance from the logistic model we showed improved performance over the original criteria, while retaining good interpretability.

CONCLUSIONS

Our findings indicate the feasibility of the proposed approach to ready-for-discharge classification, which could complement other risk models of specific adverse outcomes in a future decision support system. Avenues for improvement to produce a clinically useful tool are identified.

摘要

目的

主要目标是开发一种自动方法,以检测即将从重症监护病房出院的患者。

设计

我们使用了两个常规收集的患者数据数据集来测试和改进一组先前提出的出院标准。

设置

布里斯托尔皇家医院普通重症监护病房(GICU)。

患者

两个队列来自历史数据集:来自布里斯托尔 GICU 的 1870 名重症监护患者和来自医疗信息市场重症监护 III (MIMIC-III)的 7592 名患者。

结果

在两个队列中,很少有成功出院的患者符合所有出院标准。随机森林和逻辑分类器,使用多源交叉验证进行训练,在原始标准上表现出更好的性能,并且在队列之间很好地推广。分类器显示了对出院准备情况最具预测性的特征,这些特征通常与临床经验一致。通过根据逻辑模型中的特征重要性对出院标准进行加权,我们在保留良好可解释性的同时,显示出比原始标准更好的性能。

结论

我们的发现表明了提出的出院分类方法的可行性,该方法可以在未来的决策支持系统中补充特定不良结局的其他风险模型。确定了改进以产生临床有用工具的途径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/55f4/6429919/4055b248764a/bmjopen-2018-025925f01.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/55f4/6429919/4055b248764a/bmjopen-2018-025925f01.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/55f4/6429919/4055b248764a/bmjopen-2018-025925f01.jpg

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