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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Regularized autoregressive analysis of intravascular ultrasound backscatter: improvement in spatial accuracy of tissue maps
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Regularized autoregressive analysis of intravascular ultrasound backscatter: improvement in spatial accuracy of tissue maps

机译:血管内超声反向散射的正则自回归分析:提高组织图的空间准确性

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摘要

Autoregressive (AR) models are qualified for analysis of stochastic, short-time data, such as intravascular ultrasound (IVUS) backscatter. Regularization is required for AR analysis of short data lengths with an aim to increase spatial accuracy of predicted plaque composition and was achieved by determining suitable AR orders for short data records. Conventional methods of determining order were compared to the use of trend in the mean square error for determining order. Radio-frequency data from 101 fibrous, 56 fibro-lipidic, 50 calcified, and 70 lipid-core regions of interest (ROIs) were collected ex vivo from 51 human coronary arteries with 30 MHz unfocused IVUS transducers. Spectra were computed for AR model orders between 3-20 for data representing ROIs of two sizes (32 and 16 samples at 100 MHz sampling frequency) and were analyzed in the 17-42 MHz bandwidth. These spectra were characterized based on eight previously identified parameters. Statistical classification schemes were computed from 75% of the data and cross-validated with the remaining 25% using matched histology. The results determined the suitable AR order numbers for the two ROI sizes. Conventional methods of determining order did not perform well. Trend in the mean square error was identified as the most suitable factor for regularization of short record lengths.
机译:自回归(AR)模型适合分析随机,短时数据,例如血管内超声(IVUS)反向散射。短数据长度的AR分析需要进行正则化,目的是提高预测斑块组成的空间准确性,这是通过为短数据记录确定合适的AR顺序来实现的。将确定顺序的常规方法与使用均方误差趋势确定顺序的方法进行了比较。使用30 MHz非聚焦IVUS换能器从51个人冠状动脉离体收集了101个纤维,56个纤维脂质,50个钙化和70个脂质核心感兴趣区域(ROI)的射频数据。针对代表两种大小的ROI(在100 MHz采样频率下为32和16个样本)的数据,计算了3-20之间的AR模型阶数的频谱,并在17-42 MHz带宽中进行了分析。这些光谱基于八个先前确定的参数进行了表征。从75%的数据中计算出统计分类方案,并使用匹配的组织学与其余25%进行交叉验证。结果确定了两种ROI大小的合适AR订单号。确定订单的常规方法效果不佳。均方误差趋势被确定为最短记录长度正则化的最合适因素。

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