首页> 外文会议>2013 20th Iranian Conference on Biomedical Engineering >Time series analysis of the Twinkling Artifact in color Doppler sonography for surface roughness differentiation: An in vitro feasibility study
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Time series analysis of the Twinkling Artifact in color Doppler sonography for surface roughness differentiation: An in vitro feasibility study

机译:彩色多普勒超声中闪烁工件的时间序列分析,用于区分表面粗糙度:一项体外可行性研究

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摘要

Color Doppler Twinkling Artifact (TA) images acquired from the internal body stones contain coded information about the roughness level of the tissue calculi which can be used for treatment management. The TA time series however have never been mathematically studied for roughness identification. This paper investigates the feasibility of estimating the roughness level of a surface by analyzing its TA time series. The TA data of a roughness phantom was used in this study in 2 classes and 1000 TA time series were extracted for each of the classes. Then, three subsets of temporal, spectral, and wavelet features were extracted from each time series. Next, the Bayesian and Support Vector Machines (SVM) classifiers were employed for roughness differentiations. The performance of the proposed method was investigated for cross-comparison of feature subsets, classifiers, and dimension reduction efficiency. Results showed that with only first two principle components projected from the extracted features, an accuracy of 96.06% was obtained which proves the feasibility of roughness recognition by time series analysis of the TA data.
机译:从内部身体结石获取的彩色多普勒闪烁伪影(TA)图像包含有关组织结石粗糙度水平的编码信息,可用于治疗管理。但是,从未对TA时间序列进行过数学研究来识别粗糙度。本文研究了通过分析TA时间序列估算表面粗糙度的可行性。在本研究中,使用了粗糙模型的TA数据分为2个类别,并为每个类别提取了1000个TA时间序列。然后,从每个时间序列中提取时间,频谱和小波特征的三个子集。接下来,使用贝叶斯和支持向量机(SVM)分类器进行粗糙度区分。研究了该方法的性能,以进行特征子集,分类器和降维效率的交叉比较。结果表明,仅从提取的特征中投影出前两个主成分,就可以达到96.06%的精度,证明了通过时间序列分析TA数据进行粗糙度识别的可行性。

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