Charoenchai Lueang-on, C. Tantibundhit, S. Muengtaweepongsa
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引用次数: 6
Abstract
Transcranial Doppler (TCD), a non-invasive approach to measure blood flow velocities in brain arteries, can be used to detect emboli in cerebral circulation. Classification of a measured TCD as an embolic signal (ES) or artifact is usually performed by a well-trained physician referred to as a gold standard. However, human error and inter-rater reliability among physicians are unavoidable issues. Therefore, an automatic ES detection system is useful as a medical support system especially for the countries where a number of well-trained physicians are limited. However, in clinical application, the computation complexity of the automatic ES detection algorithm should have been considered. As an example, our previous work, the automatic embolic signal detection algorithm using adaptive wavelet packet transform (AWPT) and adaptive neuro-fuzzy inference system (ANFIS) (Lueang-on et al., Proc. of ISC, 2013), could provide impressive sensitivity and specificity, the algorithm is considerable complicated. In this study, we aim to develop further the algorithm that still provides high detection accuracy yet significantly reduces the processing time. To do so, a number of fuzzy rules in the ANFIS model are optimized. Two data sets, training and validation sets composed of 176 ESs and 484 artifacts were used to evaluate the algorithm resulting in a sensitivity of 95.5% and specificity of 95.4%. The processing time for classification can be reduced by 63% compared with our previous algorithm. The results suggested that the algorithm could be used as a medical support system more efficiently.
经颅多普勒(TCD)是一种测量脑动脉血流速度的无创方法,可用于检测脑循环中的栓塞。将测量的TCD分类为栓塞信号(ES)或伪信号通常由训练有素的医生执行,称为金标准。然而,医生之间的人为错误和评估者之间的可靠性是不可避免的问题。因此,自动ES检测系统作为一种医疗支持系统是有用的,特别是对于那些训练有素的医生数量有限的国家。但在临床应用中,应考虑ES自动检测算法的计算复杂度。例如,我们之前的工作,使用自适应小波包变换(AWPT)和自适应神经模糊推理系统(ANFIS)的栓塞信号自动检测算法(luang -on et al., Proc. of ISC, 2013)可以提供令人满意的灵敏度和特异性,但算法相当复杂。在本研究中,我们的目标是进一步开发算法,在提供高检测精度的同时显著缩短处理时间。为此,对ANFIS模型中的一些模糊规则进行了优化。使用176个ESs和484个伪影组成的训练集和验证集对算法进行评估,结果表明该算法的灵敏度为95.5%,特异性为95.4%。与之前的算法相比,分类处理时间减少了63%。结果表明,该算法可以更有效地作为医疗支持系统使用。