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基于变分模态分解与多尺度排列熵的生物组织变性识别
引用本文:刘备,胡伟鹏,邹孝,丁亚军,钱盛友. 基于变分模态分解与多尺度排列熵的生物组织变性识别[J]. 物理学报, 2019, 68(2): 28702-028702. DOI: 10.7498/aps.68.20181772
作者姓名:刘备  胡伟鹏  邹孝  丁亚军  钱盛友
作者单位:湖南师范大学物理与电子科学学院, 长沙 410081
基金项目:国家自然科学基金(批准号:11474090,11774088,61502164)和湖南省自然科学基金(批准号:2016JJ3090)资助的课题.
摘    要:根据高强度聚焦超声(HIFU)治疗中超声散射回波信号的特点,本文利用变分模态分解(VMD)与多尺度排列熵(MPE)对生物组织变性识别进行了研究.首先对生物组织中的超声散射回波信号进行变分模态分解,根据各阶模态的功率谱信息熵值分离出噪声分量和有用分量;对分离出的有用信号进行重构并提取其多尺度排列熵;然后通过Gustafson-Kessel (GK)模糊聚类确定聚类中心,采用欧氏贴近度与择近原则对生物组织进行变性识别.将所提方法应用于HIFU治疗中超声散射回波信号实验数据,用遗传算法对多尺度排列熵的参数优化后,对293例未变性组织和变性组织的超声散射回波信号数据进行了多尺度排列熵分析,发现变性组织的超声散射回波信号的多尺度排列熵值要高于未变性组织;多尺度排列熵可以较好地识别生物组织是否变性.相对于EMD-MPE-GK模糊聚类以及VMD-小波熵(WE)-GK模糊聚类变性识别方法,本文所提方法中变性与未变性组织特征交叠区域数据点更少,聚类效果和分类性能更好;本实验环境下生物组织变性识别结果表明,该方法的识别率更高,高达93.81%.

关 键 词:高强度聚焦超声  变分模态分解  功率谱信息熵  多尺度排列熵
收稿时间:2018-09-26

Recognition of denatured biological tissue based on variational mode decomposition and multi-scale permutation entropy
Liu Bei,Hu Wei-Peng,Zou Xiao,Ding Ya-Jun,Qian Sheng-You. Recognition of denatured biological tissue based on variational mode decomposition and multi-scale permutation entropy[J]. Acta Physica Sinica, 2019, 68(2): 28702-028702. DOI: 10.7498/aps.68.20181772
Authors:Liu Bei  Hu Wei-Peng  Zou Xiao  Ding Ya-Jun  Qian Sheng-You
Affiliation:School of Physics and Electronics, Hunan Normal University, Changsha 410081, China
Abstract:It is an important practical problem to accurately recognize whether biological tissue is denatured during high intensity focused ultrasound (HIFU) treatment. Ultrasonic scattering echo signals are related to some physical properties of biological tissues. According to the characteristics of ultrasonic scattering echo signals, the recognition of denatured biological tissues is studied based on the variational mode decomposition (VMD) and multi-scale permutation entropy (MPE) in this paper. The ultrasonic echo signals are decomposed into various modal components by the VMD. The noise components and the useful components are separated according to the power spectrum information entropy of various modal components. The separated useful signals are reconstructed and the MPE are extracted. Furthermore, Gustafson-Kessel (GK) fuzzy clustering analysis is employed to obtain the standard clustering center, and the recognition of denatured biological tissues is carried out by Euclid approach degree and principle of proximity. The proposed method is applied to ultrasonic scattering echo signal during HIFU treatment. In order to determine the parameters of MPE algorithm for ultrasonic scattering echo signals, the embedding dimension of the MPE is discussed, and the scale factor of the MPE algorithm is optimized by genetic algorithm. When the delay time and the embedding dimension are 2 and 7 respectively, the MPE values decrease with scale factor increasing. Assuming that the scale factor is 12 from optimization results, the 293 ultrasonic scattering echo signals from normal tissues and denatured tissues are analyzed by the MPE. It is found that the MPE values of the denatured tissues are higher than those of the normal tissues. The MPE can be used to distinguish normal tissues and denatured tissues. Comparing with the recognition methods of the EMD-MPE-GK fuzzy clustering method and the VMD-WE-GK fuzzy clustering, the proposed method has good clustering performance and separability. Its partition coefficient (PC) is close to 1 and the Xie-Beni (XB) index is smaller. There are fewer feature points in the overlap region between MPE features of denatured tissues and normal tissues. The recognition results of denatured biological tissues in this experimental environment show that the recognition rate based on this method is higher, reaching up to 93.81%.
Keywords:high intensity focused ultrasound  variational mode decomposition  power spectrum information entropy  multi-scale permutation entropy
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