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A Review of Dynamic Bayesian Network Techniques with Applications in Healthcare Risk Modelling

机译:动态贝叶斯网络技术及其在医疗风险建模中的应用综述

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Coping with an ageing population is a major concern for healthcare organisations around the world. The average cost of hospital care is higher than social care for older and terminally ill patients. Moreover, the average cost of social care increases with the age of the patient. Therefore, it is important to make efficient and fair capacity planning which also incorporates patient centred outcomes. Predictive models can provide predictions which their accuracy can be understood and quantified. Predictive modelling can help patients and carers to get the appropriate support services, and allow clinical decision-makers to improve care quality and reduce the cost of inappropriate hospital and Accident and Emergency admissions. The aim of this study is to provide a review of modelling techniques and frameworks for predictive risk modelling of patients in hospital, based on routinely collected data such as the Hospital Episode Statistics database. A number of sub-problems can be considered such as Length-of-Stay and End-of-Life predictive modelling. The methodologies in the literature are mainly focused on addressing the problems using regression methods and Markov models, and the majority lack generalisability. In some cases, the robustness, accuracy and re-usability of predictive risk models have been shown to be improved using Machine Learning methods. Dynamic Bayesian Network techniques can represent complex correlations models and include small probabilities into the solution. The main focus of this study is to provide a review of major time-varying Dynamic Bayesian Network techniques with applications in healthcare predictive risk modelling.
机译:应对人口老龄化是世界各地医疗机构的主要关切。老年和绝症患者的平均住院治疗费用高于社会护理费用。而且,社会护理的平均成本随着患者的年龄而增加。因此,重要的是要制定有效且公平的容量计划,其中还要考虑以患者为中心的结果。预测模型可以提供可以理解和量化其准确性的预测。预测建模可以帮助患者和护理人员获得适当的支持服务,并允许临床决策者提高护理质量并减少不适当的医院以及急诊和急诊的费用。这项研究的目的是基于常规收集的数据(例如医院情节统计数据库),对用于医院患者的预测风险建模的建模技术和框架进行综述。可以考虑许多子问题,例如停留时间长度和寿命终止预测模型。文献中的方法主要集中在使用回归方法和马尔可夫模型解决问题上,并且大多数方法缺乏通用性。在某些情况下,已证明使用机器学习方法可以提高预测风险模型的鲁棒性,准确性和可重用性。动态贝叶斯网络技术可以表示复杂的关联模型,并将小概率包含在解决方案中。这项研究的主要重点是对主要时变动态贝叶斯网络技术及其在医疗保健预测风险建模中的应用进行综述。

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