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Neuro-fuzzy classification of transcranial Doppler signals with chaotic meaures and spectral parameters

机译:经颅多普勒信号的神经模糊分类及混沌参数

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Transcranial Doppler (TCD) is a non-invasive diagnosis method which is used in diagnosis of various brain diseases by measuring the blood flow velocities in brain arteries. In this study, chaos analysis of the TCD signals recorded from the middle arteries of the temporal region of brain of the 82 patients and 23 healthy people was investigated. Among 82 patients, 20 of them had cerebral aneurism, 10 had brain hemorrhage, 22 had cerebral oedema and the remaining 30 had brain tumor. Maximum Lyapunov exponent which is the strongest quantitative indicator of chaos was found to be positive for all TCD signals. The correlation dimension was found as greater than 2 and as fractional value for all TCD signals. These two features were used for training a NEFCLASS model. The NEFCLASS model had two input nodes for D2 and maximum Lyapunov exponent values and five output nodes representing the subject group to which the inputs belonged. In order to make k-fold cross-validation, the data set was randomly divided into 5 subsets of equal size. In an iterated manner, 4 of these subsets were used for training and the remaining 1 subset was used for testing. This operation was repeated for 3 times. The average accuracy for train and test set was found as %81 and %79, respectively. The performance of the NEFCLASS model was also assessed in the same manner with spectral parameters (i.e. resistivity index and pulsatility index) which were obtained from Doppler sonograms. The average accuracy was found as %67 and %63 for train and test set, respectively.
机译:经颅多普勒(TCD)是一种非侵入性诊断方法,可通过测量脑动脉的血流速度来诊断各种脑部疾病。在这项研究中,对从82位患者和23位健康人的大脑颞区中部动脉记录的TCD信号进行了混沌分析。在82例患者中,其中20例患有脑动脉瘤,10例患有脑出血,22例患有脑水肿,其余30例患有脑肿瘤。发现最大的Lyapunov指数是最强的混沌定量指标,对所有TCD信号都是正值。发现所有TCD信号的相关维数均大于2,且为分数值。这两个功能用于训练NEFCLASS模型。 NEFCLASS模型有两个D2输入节点和最大Lyapunov指数值,还有五个输出节点代表这些输入所属的主题组。为了进行k倍交叉验证,将数据集随机分为5个大小相等的子集。以迭代的方式,将这些子集中的4个用于训练,将其余1个子集用于测试。重复该操作3次。火车和测试仪的平均准确度分别为%81和%79。 NEFCLASS模型的性能也用从多普勒超声图获得的频谱参数(即电阻率指数和脉动指数)以相同的方式进行了评估。火车和测试装置的平均准确度分别为%67和%63。

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