Using Probabilistic Graphical Models to Enhance the Prognosis of Health-Related Quality of Life in Adult Survivors of Critical Illness

C. Dias, C. Granja, A. Pereira, João Gama, P. Rodrigues
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引用次数: 4

Abstract

Health-related quality of life (HR-QoL) is a subjective concept, reflecting the overall mental and physical state of the patient, and their own sense of well-being. Estimating current and future QoL has become a major outcome in the evaluation of critically ill patients. The aim of this study is to enhance the inference process of 6 weeks and 6 months prognosis of QoL after intensive care unit (ICU) stay, using the EQ-5D questionnaire. The main outcomes of the study were the EQ-5D five main dimensions: mobility, self-care, usual activities, pain and anxiety depression. For each outcome, three Bayesian classifiers were built and validated with 10-fold cross-validation. Sixty and 473 patients (6 weeks and 6 months, respectively) were included. Overall, 6 months QoL is higher than 6 weeks, with the probability of absence of problems ranging from 31% (6 weeks mobility) to 72% (6 months self-care). Bayesian models achieved prognosis accuracies of 56% (6 months, anxiety depression) up to 80% (6 weeks, mobility). The prognosis inference process for an individual patient was enhanced with the visual analysis of the models, showing that women, elderly, or people with longer ICU stay have higher risk of QoL problems at 6 weeks. Likewise, for the 6 months prognosis, a higher APACHE II severity score also leads to a higher risk of problems, except for anxiety depression where the youngest and active have increased risk. Bayesian networks are competitive with less descriptive strategies, improve the inference process by incorporating domain knowledge and present a more interpretable model. The relationships among different factors extracted by the Bayesian models are in accordance with those collected by previous state-of-the-art literature, hence showing their usability as inference model.
使用概率图形模型提高危重疾病成年幸存者健康相关生活质量的预后
健康相关生活质量(HR-QoL)是一个主观概念,反映了患者整体的精神和身体状态,以及患者自身的幸福感。估计当前和未来的生活质量已成为评估危重患者的主要结果。本研究旨在运用EQ-5D问卷加强对重症监护病房(ICU)住院后6周和6个月生活质量预后的推断过程。这项研究的主要结果是EQ-5D的五个主要方面:行动能力、自我护理、日常活动、疼痛和焦虑抑郁。对于每个结果,构建了三个贝叶斯分类器,并进行了10倍交叉验证。纳入60例和473例患者(分别为6周和6个月)。总体而言,6个月的生活质量高于6周,没有问题的概率从31%(6周的活动能力)到72%(6个月的自我护理)不等。贝叶斯模型的预后准确率为56%(6个月,焦虑抑郁)至80%(6周,活动能力)。模型的可视化分析增强了个体患者的预后推断过程,显示女性、老年人或ICU住院时间较长的患者在6周时出现生活质量问题的风险更高。同样,对于6个月的预后,较高的APACHE II严重程度评分也会导致更高的问题风险,除了焦虑抑郁,其中最年轻和活跃的风险增加。贝叶斯网络具有较少描述性策略的优势,通过结合领域知识改进了推理过程,并提供了一个更可解释的模型。贝叶斯模型所提取的各因素之间的关系与以往文献中所收集的关系一致,显示了贝叶斯模型作为推理模型的可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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