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Fuzzy Preprocessing and Artificial Neural Network Classification for the Diagnostic Interpretation of the Resting ECG

机译:模糊预处理和人工神经网络分类对静息心电图的诊断解释

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An hybrid system for the interpretation of the 12 leads resting ECG has been designed and tested. A preprocessor based on fuzzy set theory has been embedded in an artificial neural network classifier. A well documented ECG database, produced at the University of Leuven and used for evaluating other ECG diagnostic programs, has been chosen for training and testing the hybrid system. It contains 3266 12 lead ECG records clinically tested. A layer of Radial Basis Functions, used as fuzzy activation functions, are embedded in a neural network architecture for fuzzy preprocessing every input pattern. Several networks have been implemented and tested by varying learning rules, system architecture, and the various parameters of the hybrid system. A pruning technique is also applied to reduce the system size. Several classification strategies have been generated by varying the roles of the network output units, and have been evaluated as well. The results show that this combination of fuzzy and neural techniques is effective even for small structures. The best system reached the 69% of average sensitivity and 94% of average specificity on the test set. Thus it shows very promising performances, since they are comparable with those of traditional, elaborated systems. This hybrid architecture has a further interesting feature to be deeply investigated, since in principle it allows the interpretation/explanation of the results obtained from a neural network.
机译:已经设计并测试了用于解释12根静息ECG的混合系统。基于模糊集理论的预处理器已嵌入到人工神经网络分类器中。已选择鲁汶大学生产的,有据可查的ECG数据库,用于评估其他ECG诊断程序,用于训练和测试混合动力系统。它包含3266条经过临床测试的12条主要心电图记录。在神经网络体系结构中嵌入了一层用作模糊激活函数的径向基函数,用于对每个输入模式进行模糊预处理。通过改变学习规则,系统架构和混合系统的各种参数,已经实现并测试了多个网络。修剪技术也适用于减小系统大小。通过改变网络输出单元的角色,已经产生了几种分类策略,并且已经对其进行了评估。结果表明,模糊和神经技术的这种结合即使对于小型结构也是有效的。最好的系统在测试集上达到了69%的平均灵敏度和94%的平均特异性。因此,它表现出非常有希望的性能,因为它们可以与传统的,精心设计的系统相媲美。这种混合体系结构还具有进一步研究的有趣特征,因为从原理上讲,它允许对从神经网络获得的结果进行解释/解释。

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