P6C-7超声射频时间序列检测前列腺癌:特征选择和帧率分析

Mehdi Moradi, P. Abolmaesumi, R. Siemens, E. Sauerbrei, P. Isotalo, A. Boag, P. Mousavi
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引用次数: 4

摘要

本文提供了体外临床研究的最新结果,以评估基于超声射频时间序列的组织分型方法的性能,用于检测前列腺癌。在我们的方法中,我们连续记录来自组织的反向散射射频回波信号,而成像探针和组织处于固定位置。连续记录的帧为RF信号的每个空间样本生成回波值的时间序列。我们从射频时间序列中提取分形维数和六个光谱特征,并将它们与神经网络结合使用进行组织分型。我们分析了该方法在16例前列腺癌患者中检测的性能,并证明从所提出的特征中选择的五个参数的子集是诊断的最佳参数。我们还研究了在不同帧速率下提取的特征的性能,并表明每秒22帧足以进行有效的癌症检测,ROC曲线下面积为0.89。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
P6C-7 Ultrasound RF Time Series for Detection of Prostate Cancer: Feature Selection and Frame Rate Analysis
This paper provides the recent results of in-vitro clinical studies to evaluate the performance of a tissue typing method, based on ultrasound RF time series, for detection of prostate cancer. In our approach, we continuously record RF echo signals backscattered from tissue, while the imaging probe and the tissue are stationary in position. The continuously recorded frames generate a time series of echo values for each spatial sample of RF signals. We extract the fractal dimension, and six spectral features from the RF time series and use them with neural networks for tissue typing. We analyze the performance of this method in detecting prostate cancer in 16 patients and demonstrate that a subset of five parameters selected from the proposed features is optimal for the diagnosis. We also study the performance of the extracted features at various frame rates and show that 22 frames per second is sufficient for efficient cancer detection with an area under ROC curve of 0.89.
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