论文标题

医疗保健中的贝叶斯网络:通过医疗条件分发

Bayesian Networks in Healthcare: Distribution by Medical Condition

论文作者

McLachlan, Scott, Dube, Kudakwashe, Hitman, Graham A, Fenton, Norman E, Kyrimi, Evangelia

论文摘要

贝叶斯网络(BNS)受到了越来越多的研究关注,这些关注与实践中的采用不符,但有可能使医疗保健受益。迄今为止,研究工作尚未研究以BNS建模的医疗状况类型,也没有在将它们应用于不同条件上是否存在任何差异。这项研究旨在识别和量化已提出与医疗保健相关的BN模型的医疗状况的范围,以及应用它们最常见的医疗条件之间的方法差异。我们发现,所有医疗保健BN的几乎三分之二都集中在四个疾病上:心脏,癌症,心理和肺部疾病。我们认为,缺乏对BNS的工作方式以及它们的能力的了解,并且只有更具理解和促进才能意识到BNS在日常医疗保健实践中的积极变化的全部潜力。

Bayesian networks (BNs) have received increasing research attention that is not matched by adoption in practice and yet have potential to significantly benefit healthcare. Hitherto, research works have not investigated the types of medical conditions being modelled with BNs, nor whether any differences exist in how and why they are applied to different conditions. This research seeks to identify and quantify the range of medical conditions for which healthcare-related BN models have been proposed, and the differences in approach between the most common medical conditions to which they have been applied. We found that almost two-thirds of all healthcare BNs are focused on four conditions: cardiac, cancer, psychological and lung disorders. We believe that a lack of understanding regarding how BNs work and what they are capable of exists, and that it is only with greater understanding and promotion that we may ever realise the full potential of BNs to effect positive change in daily healthcare practice.

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