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Using a Fuzzy Neural Network in Clinical Decision Support for Patients with Advanced Heart Failure

机译:在晚期心力衰竭患者的临床决策支持中使用模糊神经网络

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Determining the appropriate timing of mechanical circulatory support (MCS) or heart transplantation (HT) for patients with advanced heart failure is essential as there may be a mortality cost to delayed care. An automated decision-making system that can identify patients eligible for a HT/MCS would facilitate primary care physicians or general cardiologists referring those patients for consideration of advanced therapies. In this study, a novel fuzzy neural network was built by integrating fuzzy set theory, neural network, and genetic algorithm techniques. The overall architecture of the proposed fuzzy neural network was inspired by clinical practice guidelines. Clinical variables were encoded using fuzzy concepts and rules were calculated in a fully-connected layer with constraints in weights. From the experiments, the proposed fuzzy neural network achieved an average AUC of 0.838 and an F1 score of 0.462. The rules from the trained network were further analyzed. Our results show that the proposed fuzzy neural network can not only achieve good classification performance, but also provides transparency with respect to knowledge extraction and interpretation.
机译:为晚期心力衰竭患者确定机械循环支持(MCS)或心脏移植(HT)的适当时机至关重要,因为延迟护理可能会导致死亡成本。可以识别出符合HT / MCS资格的患者的自动决策系统将有助于基层医疗医生或普通心脏病医生将这些患者转诊考虑采用先进疗法。在这项研究中,通过整合模糊集理论,神经网络和遗传算法技术,构建了一种新颖的模糊神经网络。所提出的模糊神经网络的整体架构受到临床实践指南的启发。使用模糊概念对临床变量进行编码,并在具有权重约束的完全连接的层中计算规则。从实验中,提出的模糊神经网络的平均AUC为0.838,F1分数为0.462。来自受过训练的网络的规则得到了进一步的分析。我们的结果表明,所提出的模糊神经网络不仅可以实现良好的分类性能,而且在知识提取和解释方面也具有透明性。

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