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Integration of Temporal Abstraction and Dynamic Bayesian Networks for Coronary Heart Diagnosis

机译:临时抽象与动态贝叶斯网络的集成冠心病诊断

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Temporal data abstraction (TA) is a set of techniques aiming to abstract time-points into higher-level interval concepts and to detect significant trends in both low-level data and abstract concepts. Dynamic Bayesian networks (DBNs) are temporal probabilistic graphical models that model temporal processes, temporal relationships between events and state changes through time. In this paper, we propose the integration of TA methods with DBNs in the context of medical decision-support systems, by presenting an extended DBN model. More specifically, we demonstrate the derivation of temporal abstractions which are used for building the network structure. We also apply machine learning algorithms to learn the parameters of the model through data. The model is applied for diagnosis of coronary heart disease using as testbed a longitudinal dataset. The classification accuracy of our model evaluated using the evaluation metrics of Precision, Recall and Fl-score, shows the effectiveness of our proposed system.
机译:时间数据抽象(TA)是一个关于抽象时间点进入更高级别的间隔概念的技术,并检测低级数据和抽象概念的重要趋势。动态贝叶斯网络(DBNS)是模型过程,事件与状态之间的时间关系改变时间的时间概率图形模型。在本文中,我们通过呈现扩展DBN模型,提出在医学决策支持系统的背景下与DBN的集成。更具体地,我们展示了用于构建网络结构的时间抽象的推导。我们还应用机器学习算法来通过数据学习模型的参数。该模型用于诊断冠心病的纵向数据集的诊断。我们模型的分类准确性使用精度,召回和流量分数的评估度量评估,显示了我们所提出的系统的有效性。

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