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Robust Principal Component Analysis and Clustering Methods for Automated Classification of Tissue Response to ARFI Excitation

机译:鲁棒的主成分分析和聚类方法用于对ARFI激发的组织反应进行自动分类

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摘要

We introduce a new method for automatic classification of Acoustic Radiation Force Impulse (ARFI) displacement profiles using what have been termed ‘robust’ methods for principal component analysis (PCA) and clustering. Unlike classical approaches, the robust methods are less sensitive to high variance outlier profiles and require no a priori information regarding expected tissue response to ARFI excitation. We first validate our methods using synthetic data with additive noise and/or outlier curves. Second, the robust techniques are applied to classifying ARFI displacement profiles acquired in an atherosclerotic familial hypercholesterolemic (FH) pig iliac artery in vivo. The in vivo classification results are compared to parametric ARFI images showing peak induced displacement and time to 67% recovery and to spatially correlated immunohistochemistry. Our results support that robust techniques outperform conventional PCA and clustering approaches to classification when ARFI data is inclusive of low to relatively high noise levels (up to 5dB average SNR to amplitude) but no outliers: for example, 99.53% correct for robust techniques versus 97.75% correct for the classical approach. The robust techniques also perform better than conventional approaches when ARFI data is inclusive of moderately high noise levels (10dB average SNR to amplitude) in addition to a high concentration of outlier displacement profiles (10% outlier content): for example, 99.87% correct for robust techniques versus 33.33% correct for the classical approach. This work suggests that automatic identification of tissue structures exhibiting similar displacement responses to ARFI excitation is possible, even in the context of outlier profiles. Moreover, this work represents an important first step toward automatic correlation of ARFI data to spatially matched immunohistochemistry.
机译:我们介绍了一种新的方法,该方法使用所谓的“主成分分析(PCA)和聚类的”稳健”方法对声辐射力脉冲(ARFI)位移轮廓进行自动分类。与经典方法不同,鲁棒方法对高方差离群曲线不敏感,并且不需要有关预期组织对ARFI激发的预期反应的先验信息。我们首先使用具有加性噪声和/或离群曲线的合成数据来验证我们的方法。其次,将鲁棒性技术应用于对在动脉粥样硬化家族性高胆固醇血症(FH)猪动脉中获得的ARFI位移进行分类。将体内分类结果与显示峰值诱导的位移和达到67%恢复的时间的参量ARFI图像以及与空间相关的免疫组织化学相比较。我们的结果支持当ARFI数据包括低至相对较高的噪声水平(幅度的平均SNR高达5dB)但没有异常值时,鲁棒技术优于常规PCA和聚类方法,例如,没有异常值:例如,鲁棒技术的正确率是99.53%,而97.75 %对于经典方法是正确的。当ARFI数据包括较高的离群位移曲线(离群含量为10%)以及适度的高噪声水平(平均SNR至幅度为10dB)时,鲁棒技术的性能也比常规方法更好:例如,对于99.87%的校正值,健壮的技术,而采用传统方法的正确率为33.33%。这项工作表明,即使在异常情况下,也可以自动识别对ARFI激发表现出相似位移响应的组织结构。此外,这项工作代表了ARFI数据与空间匹配的免疫组织化学自动相关的重要的第一步。

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