Department of Computer Science, University of Cyprus, P.O. Box 20537, 1678 Nicosia, Cyprus.
Department of Computer Science, University of Nicosia, P.O. Box 24005, 1700 Nicosia, Cyprus.
Artif Intell Med. 2014 Mar;60(3):133-49. doi: 10.1016/j.artmed.2013.12.007. Epub 2014 Jan 17.
Temporal abstraction (TA) of clinical data aims to abstract and interpret clinical data into meaningful higher-level interval concepts. Abstracted concepts are used for diagnostic, prediction and therapy planning purposes. On the other hand, temporal Bayesian networks (TBNs) are temporal extensions of the known probabilistic graphical models, Bayesian networks. TBNs can represent temporal relationships between events and their state changes, or the evolution of a process, through time. This paper offers a survey on techniques/methods from these two areas that were used independently in many clinical domains (e.g. diabetes, hepatitis, cancer) for various clinical tasks (e.g. diagnosis, prognosis). A main objective of this survey, in addition to presenting the key aspects of TA and TBNs, is to point out important benefits from a potential integration of TA and TBNs in medical domains and tasks. The motivation for integrating these two areas is their complementary function: TA provides clinicians with high level views of data while TBNs serve as a knowledge representation and reasoning tool under uncertainty, which is inherent in all clinical tasks.
Key publications from these two areas of relevance to clinical systems, mainly circumscribed to the latest two decades, are reviewed and classified. TA techniques are compared on the basis of: (a) knowledge acquisition and representation for deriving TA concepts and (b) methodology for deriving basic and complex temporal abstractions. TBNs are compared on the basis of: (a) representation of time, (b) knowledge representation and acquisition, (c) inference methods and the computational demands of the network, and (d) their applications in medicine.
The survey performs an extensive comparative analysis to illustrate the separate merits and limitations of various TA and TBN techniques used in clinical systems with the purpose of anticipating potential gains through an integration of the two techniques, thus leading to a unified methodology for clinical systems. The surveyed contributions are evaluated using frameworks of respective key features. In addition, for the evaluation of TBN methods, a unifying clinical domain (diabetes) is used.
The main conclusion transpiring from this review is that techniques/methods from these two areas, that so far are being largely used independently of each other in clinical domains, could be effectively integrated in the context of medical decision-support systems. The anticipated key benefits of the perceived integration are: (a) during problem solving, the reasoning can be directed at different levels of temporal and/or conceptual abstractions since the nodes of the TBNs can be complex entities, temporally and structurally and (b) during model building, knowledge generated in the form of basic and/or complex abstractions, can be deployed in a TBN.
临床数据的时间抽象(TA)旨在将临床数据抽象并解释为有意义的更高层次的间隔概念。抽象概念用于诊断、预测和治疗计划目的。另一方面,时间贝叶斯网络(TBN)是已知概率图形模型、贝叶斯网络的时间扩展。TBN 可以通过时间表示事件及其状态变化或过程演变之间的时间关系。本文对这两个领域的技术/方法进行了调查,这些技术/方法在许多临床领域(如糖尿病、肝炎、癌症)中独立用于各种临床任务(如诊断、预后)。除了介绍 TA 和 TBN 的关键方面外,本调查的主要目的是指出在医学领域和任务中潜在地集成 TA 和 TBN 的重要好处。集成这两个领域的动机是它们的互补功能:TA 为临床医生提供数据的高级视图,而 TBN 作为不确定性下的知识表示和推理工具,这是所有临床任务固有的。
对这些与临床系统相关的两个领域的主要出版物进行了回顾和分类,主要限于最近二十年。TA 技术是基于以下方面进行比较的:(a)用于推导出 TA 概念的知识获取和表示,以及(b)用于推导出基本和复杂时间抽象的方法。TBN 是基于以下方面进行比较的:(a)时间表示,(b)知识表示和获取,(c)推理方法和网络的计算需求,以及(d)它们在医学中的应用。
该调查进行了广泛的比较分析,以说明在临床系统中使用的各种 TA 和 TBN 技术的单独优点和局限性,以期通过集成这两种技术获得潜在收益,从而为临床系统提供统一的方法。使用各自关键特征的框架评估了调查的贡献。此外,为了评估 TBN 方法,使用了一个统一的临床领域(糖尿病)。
从本次审查中得出的主要结论是,这两个领域的技术/方法,迄今为止在临床领域中彼此独立地大量使用,在医疗决策支持系统的背景下可以有效地集成。预期的集成关键收益是:(a)在解决问题时,推理可以针对不同的时间和/或概念抽象级别进行,因为 TBN 的节点可以是复杂的实体,具有时间和结构上的复杂性,(b)在模型构建过程中,可以将以基本和/或复杂抽象形式生成的知识部署在 TBN 中。