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.

Highlights

  • The term in-hospital mortality defines the death of a patient during their stay at the hospital

  • We propose to use associative classification (AC) models to estimate the risk for in-hospital mortality risk estimation in critical and intensive care

  • The mean AUC values on the test set range from 0.977 to 0.980, which shows that the filtering step has a minor impact on the predictive performance

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Summary

Introduction

The term in-hospital mortality defines the death of a patient during their stay at the hospital. In-hospital mortality rates have been used in the assessment of hospital care quality, as is the case in the United Kingdom [2]. Manual scoring systems are built upon expert knowledge and have gone through significant development time. Another approach is Machine Learning (ML), which uses data and statistical methods to build a predictive model [4]. Several methods for ML-based methods have been developed in recent years [5,6,7] While these approaches offer data-based evidence that is independent of expert knowledge, they face two challenges

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