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Hybrid intelligent diagnosis approach based on soft computing from signal and image knowledge representations for a biomedical application

机译:基于信号和图像知识表示的软计算的混合智能诊断方法,用于生物医学应用

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Abstract Fault diagnosis is a complex and fuzzy cognitive process, and soft computing methods as neural networks and fuzzy logic, have shown great potential in the development of decision support systems. Dealing with expert (human) knowledge consideration, Computer-Aided Diagnosis (CAD) dilemma is one of the most interesting, but also one of the most difficult problems. Among difficulties contributing to challenging nature of this problem, one can mention the need of fine classification and decision-making. In this paper, a brief survey on fault diagnosis systems is given first. Then, from a fault diagnosis system analysis of the classification and decision-making problem, a global diagnosis synopsis is deduced. Afterwards, a hybrid intelligent diagnosis approach, based on soft computing implying modular neural networks for classification and fuzzy logic for decision-making, is suggested from signal and image representations. The suggested approach is developed in biomedicine for a CAD, from Auditory Brainstem Response test, and the prototype design and experimental results are presented. In fact, a double classification is exploited in a primary fuzzy diagnosis, to ensure a satisfactory reliability. Then, this reliability is reinforced using a confidence parameter with the primary diagnosis result, exploited in a final fuzzy diagnosis giving the appropriate diagnosis with a confidence index. Indeed, experimental results demonstrate the efficiency and reliability of CAD for three classes: two auditory pathologies Retro-cochlear Class (RC) and Endo-cochlear Class (EC), and Normal auditory Class (NC). The generalization rate of NC is clearly higher for primary fuzzy diagnosis and final fuzzy diagnosis than that of the two classifications. The obtained rates for RC and EC are higher than obtained by image classification but quite similar than those obtained by signal classification. An important contribution of the final fuzzy diagnosis is the fact that a confidence index is associated with each fault diagnosis. Finally, a discussion is given with regard to the reliability and large application field of the suggested approach.
机译:摘要故障诊断是一个复杂而模糊的认知过程,神经网络和模糊逻辑等软计算方法在决策支持系统的开发中具有巨大的潜力。在处理专家(人类)知识时,计算机辅助诊断(CAD)的困境是最有趣的问题之一,但也是最困难的问题之一。在使这一问题具有挑战性的困难之中,可以提到需要精细分类和决策的困难。本文首先简要介绍了故障诊断系统。然后,从故障诊断系统对分类和决策问题的分析中,得出了全局诊断概要。然后,从信号和图像表示中提出了一种基于软计算的混合智能诊断方法,该方法隐含用于分类的模块化神经网络和用于决策的模糊逻辑。通过听觉脑干反应测试,在CAD的生物医学中开发了建议的方法,并提供了原型设计和实验结果。实际上,在主要的模糊诊断中采用了双重分类,以确保令人满意的可靠性。然后,使用具有主要诊断结果的置信度参数来增强此可靠性,并在最终的模糊诊断中加以利用,从而给出具有置信度指标的适当诊断。确实,实验结果证明了以下三种类别的CAD的效率和可靠性:两种听觉病理学:耳蜗后级(RC)和耳蜗内级(EC),以及正常听觉级(NC)。初级模糊诊断和最终模糊诊断的NC泛化率明显高于两个分类。 RC和EC的获得率高于通过图像分类获得的率,但与通过信号分类获得的率非常相似。最终模糊诊断的重要贡献在于,每个故障诊断都与置信度指标相关联。最后,讨论了所提出方法的可靠性和广泛的应用领域。

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