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Adaptive AR and Neurofuzzy Approaches: Access to Cerebral Particle Signatures

机译:自适应AR和Neurofuzzy方法:访问脑粒子签名

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In recent years, a relationship has been suggested between the occurrence of cerebral embolism and stroke. Ultrasound has therefore become essential in the detection of emboli when monitoring cerebral vascular disorders and forms part of ultrasound brain-imaging techniques. Such detection is based on investigating the middle cerebral artery using a TransCranial Doppler (TCD) system, and analyzing the Doppler signal of the embolism. Most of the emboli detected in practical experiments are large emboli because their signatures are easy to recognize in the TCD signal. However, detection of small emboli remains a challenge. Various approaches have been proposed to solve the problem, ranging from the exclusive use of expert human knowledge to automated collection of signal parameters. Many studies have recently been performed using time-frequency distributions and classical parameter modeling for automatic detection of emboli. It has been shown that autoregressive (AR) modeling associated with an abrupt change detection technique is one of the best methods for detection of microemboli. One alternative to this is a technique based on taking expert knowledge into account. This paper aims to unite these two approaches using AR modeling and expert knowledge through a neurofuzzy approach. The originality of this approach lies in combining these two techniques and then proposing a parameter referred to as score ranging from 0 to 1. Unlike classical techniques, this score is not only a measure of confidence of detection but also a tool enabling the final detection of the presence or absence of microemboli to be performed by the practitioner. Finally, this paper provides performance evaluation and comparison with an automated technique, i.e., AR modeling used in vitro.
机译:近年来,已经提出脑栓塞的发生与中风之间的关系。因此,在监测脑血管疾病时,超声波已成为检测栓子的必不可少的手段,并成为超声脑成像技术的一部分。这种检测是基于使用TransCranial Doppler(TCD)系统调查大脑中动脉,并分析栓塞的多普勒信号。在实际实验中检测到的大多数栓子是大栓子,因为它们的特征很容易在TCD信号中识别。然而,检测小栓子仍然是一个挑战。已经提出了各种方法来解决该问题,从专有的人类知识的使用到信号参数的自动收集。最近使用时频分布和经典参数建模进行栓塞自动检测的许多研究。已经表明,与突变检测技术相关的自回归(AR)建模是检测微栓子的最佳方法之一。一种替代方法是基于专家知识的技术。本文旨在通过神经模糊方法将使用AR建模和专家知识的这两种方法结合起来。这种方法的独创性在于将这两种技术结合起来,然后提出一个参数,该分数称为0到1范围内的分数。与传统技术不同,该分数不仅是检测置信度的量度,而且是最终检测可信度的工具。从业者是否进行微栓塞。最后,本文提供了性能评估和自动技术比较,即体外使用的AR建模。

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