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Adaptive Network-Based Fuzzy Inference System for Arteriovenous Shunt Stenosis Screening in Long-Term Hemodialysis Treatment of Patients

机译:基于自适应网络的基于网络模糊推理系统,用于患者长期血液透析治疗中的动静脉分流狭窄筛查

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This study proposed an adaptive network-based Fuzzy inference system (ANFIS) for evaluating arteriovenous shunt (AVS) stenos is in long-term hemodialysis treatment of patients. Due to the frequency spectral varies with the normal blood flow and turbulent flow. The power spectra appear changes in frequency and amplitude with the degrees of AVS stenos is. The proposed diagnosis system consists of signal preprocessing and stenos is degree identification. The Burg autoregressive (AR) method was used to estimate the frequency spectra of phonoangiographic signal and to find the peaky spectra in the region of 0Hz and 800Hz. The frequency spectra showed changes in characteristic frequencies with the degrees of AVS stenos is. The main characteristic frequencies distribute into different bands, overlap bands, or crossing bands. Ambiguous and uncertain information is not easy to identify by human-made decisions. Therefore, ANFIS is designed as an early decision-making model to evaluate the degrees of AVS stenos is. The degrees of stenos is (DOS) were divided into three classes by professional physicians. For 42 long-term follow-up patients, the experimental results show the proposed diagnosis system has greater efficiency for evaluating AVS stenosis.
机译:该研究提出了一种基于自适应的网络的模糊推理系统(ANFIS),用于评估动静脉分流器(AVS)STENOS是对患者的长期血液透析治疗。由于频谱随着正常的血流和湍流而变化。功率谱出现频率和幅度的变化,具有AVS STENOS的程度。所提出的诊断系统由信号预处理和STENOS是学位识别。 Burg自回归(AR)方法用于估计音素造影信号的频谱,并在0Hz和800Hz区域中找到峰值光谱。频谱显示出具有AVS STENOS程度的特征频率的变化。主要特征频率分配到不同的频带,重叠频段或交叉频带中。暧昧和不确定的信息不容易识别人为决策。因此,ANFIS被设计为早期决策模型,以评估AVS STENOS的程度。斯内纳斯的程度是(DOS)被专业医生分为三个班级。对于42例长期后续患者,实验结果表明,所提出的诊断系统具有更高的评估AVS狭窄的效率。

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