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基于规则的急诊与重症监护病房院内死亡率风险评估及分析模型

Rule-Based Models for Risk Estimation and Analysis of In-hospital Mortality in Emergency and Critical Care.

作者信息

Haas Oliver, Maier Andreas, Rothgang Eva

机构信息

Department of Industrial Engineering and Health, Institute of Medical Engineering, Technical University Amberg-Weiden, Weiden, Germany.

Pattern Recognition Lab, Department of Computer Science, Technical Faculty, Friedrich-Alexander University, Erlangen, Germany.

出版信息

Front Med (Lausanne). 2021 Nov 8;8:785711. doi: 10.3389/fmed.2021.785711. eCollection 2021.

Abstract

We propose a novel method that uses associative classification and odds ratios to predict in-hospital mortality in emergency and critical care. Manual mortality risk scores have previously been used to assess the care needed for each patient and their need for palliative measures. Automated approaches allow providers to get a quick and objective estimation based on electronic health records. We use association rule mining to find relevant patterns in the dataset. The odds ratio is used instead of classical association rule mining metrics as a quality measure to analyze association instead of frequency. The resulting measures are used to estimate the in-hospital mortality risk. We compare two prediction models: one minimal model with socio-demographic factors that are available at the time of admission and can be provided by the patients themselves, namely gender, ethnicity, type of insurance, language, and marital status, and a full model that additionally includes clinical information like diagnoses, medication, and procedures. The method was tested and validated on MIMIC-IV, a publicly available clinical dataset. The minimal prediction model achieved an area under the receiver operating characteristic curve value of 0.69, while the full prediction model achieved a value of 0.98. The models serve different purposes. The minimal model can be used as a first risk assessment based on patient-reported information. The full model expands on this and provides an updated risk assessment each time a new variable occurs in the clinical case. In addition, the rules in the models allow us to analyze the dataset based on data-backed rules. We provide several examples of interesting rules, including rules that hint at errors in the underlying data, rules that correspond to existing epidemiological research, and rules that were previously unknown and can serve as starting points for future studies.

摘要

我们提出了一种新颖的方法,该方法使用关联分类和优势比来预测急诊和重症监护中的院内死亡率。以前,人工死亡率风险评分被用于评估每个患者所需的护理及其姑息治疗需求。自动化方法使医疗服务提供者能够基于电子健康记录进行快速、客观的估计。我们使用关联规则挖掘在数据集中找到相关模式。使用优势比代替经典的关联规则挖掘指标作为质量度量,以分析关联性而非频率。所得度量用于估计院内死亡风险。我们比较了两种预测模型:一种是最小模型,包含入院时可获得且可由患者自身提供的社会人口统计学因素,即性别、种族、保险类型、语言和婚姻状况;另一种是完整模型,额外包含诊断、用药和手术等临床信息。该方法在公开可用的临床数据集MIMIC-IV上进行了测试和验证。最小预测模型的受试者工作特征曲线下面积值为0.69,而完整预测模型的值为0.98。这些模型有不同的用途。最小模型可作为基于患者报告信息的初步风险评估。完整模型在此基础上进行扩展,每次临床病例中出现新变量时提供更新的风险评估。此外,模型中的规则使我们能够基于数据支持的规则分析数据集。我们提供了几个有趣规则的示例,包括暗示基础数据存在错误的规则、与现有流行病学研究相符的规则,以及以前未知且可作为未来研究起点的规则。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/78b1/8606583/6418a6545635/fmed-08-785711-g0001.jpg

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