Abstract

We propose a novel knowledge extraction method based on Bayesian-inspired association rule mining to classify anxiety in heterogeneous, routinely collected data from 9,924 palliative patients. The method extracts association rules mined using lift and local support as selection criteria. The extracted rules are used to assess the maximum evidence supporting and rejecting anxiety for each patient in the test set. We evaluated the predictive accuracy by calculating the area under the receiver operating characteristic curve (AUC). The evaluation produced an AUC of 0.89 and a set of 55 atomic rules with one item in the premise and the conclusion, respectively. The selected rules include variables like pain, nausea, and various medications. Our method outperforms the previous state of the art (AUC = 0.72). We analyzed the relevance and novelty of the mined rules. Palliative experts were asked about the correlation between variables in the data set and anxiety. By comparing expert answers with the retrieved rules, we grouped rules into expected and unexpected ones and found several rules for which experts' opinions and the data-backed rules differ, most notably with the patients' sex. The proposed method offers a novel way to predict anxiety in palliative settings using routinely collected data with an explainable and effective model based on Bayesian-inspired association rule mining. The extracted rules give further insight into potential knowledge gaps in the palliative care field.

Highlights

  • A major focus of palliative care is the improvement of quality of life (QoL) of patients suffering from a life-threatening illness by managing their symptoms [1]

  • The aim of this work is to develop a novel prediction model for anxiety in palliative patients based on the HOspice and Palliative care Evaluation (HOPE) data set

  • The problem of detecting anxiety using Association rule mining (ARM) can be generalized to a binary classification problem, where the model provides evidence in favor a data record belonging to the class anxiety or the class no-anxiety

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Summary

Introduction

A major focus of palliative care is the improvement of quality of life (QoL) of patients suffering from a life-threatening illness by managing their symptoms [1]. A variety of different symptoms can have a diminishing effect on the QoL of those affected [2,3,4,5]. Psychological symptoms and their influence on the QoL of patients are intensively investigated [5,6,7]. These symptoms often remain underestimated, unrecognized or are not treated, contributing decisively to the patients’ suffering [8,9,10]. The presence of anxiety should be “actively and regularly assessed” and recorded within the framework of the basic palliative care assessment [12]

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