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首页> 外文期刊>Ultrasonic Imaging: An International Journal >Recent developments in tissue-type imaging (TTI) for planning and monitoring treatment of prostate cancer.
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Recent developments in tissue-type imaging (TTI) for planning and monitoring treatment of prostate cancer.

机译:组织类型成像(TTI)的最新发展,用于规划和监测前列腺癌的治疗。

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Because current methods of imaging prostate cancer are inadequate, biopsies cannot be effectively guided and treatment cannot be effectively planned and targeted. Therefore, our research is aimed at ultrasonically characterizing cancerous prostate tissue so that we can image it more effectively and thereby provide improved means of detecting, treating and monitoring prostate cancer. We base our characterization methods on spectrum analysis of radiofrequency (rf) echo signals combined with clinical variables such as prostate-specific antigen (PSA). Tissue typing using these parameters is performed by artificial neural networks. We employed and evaluated different approaches to data partitioning into training, validation, and test sets and different neural network configuration options. In this manner, we sought to determine what neural network configuration is optimal for these data and also to assess possible bias that might exist due to correlations among different data entries among the data for a given patient. The classification efficacy of each neural network configuration and data-partitioning method was measured using relative-operating-characteristic (ROC) methods. Neural network classification based on spectral parameters combined with clinical data generally produced ROC-curve areas of 0.80 compared to curve areas of 0.64 for conventional transrectal ultrasound imaging combined with clinical data. We then used the optimal neural network configuration to generate lookup tables that translate local spectral parameter values and global clinical-variable values into pixel values in tissue-type images (TTIs). TTIs continue to show cancerous regions successfully, and may prove to be particularly useful clinically in combination with other ultrasonic and nonultrasonic methods, e.g., magnetic-resonance spectroscopy.
机译:由于当前对前列腺癌进行成像的方法不足,因此无法有效地指导活检,并且无法有效地规划和靶向治疗。因此,我们的研究旨在超声表征癌性前列腺组织,以便我们可以对其进行更有效的成像,从而提供检测,治疗和监测前列腺癌的改进方法。我们的表征方法基于射频(rf)回波信号与临床变量(例如前列腺特异性抗原(PSA))相结合的频谱分析。使用这些参数的组织分型是通过人工神经网络进行的。我们采用并评估了将数据划分为训练,验证和测试集以及不同神经网络配置选项的不同方法。以这种方式,我们试图确定哪种神经网络配置对于这些数据是最佳的,并且还评估由于给定患者的数据中不同数据条目之间的相关性而可能存在的可能偏差。使用相对操作特征(ROC)方法测量每种神经网络配置和数据划分方法的分类功效。基于光谱参数与临床数据相结合的神经网络分类通常会产生0.80的ROC曲线面积,而常规经直肠超声成像与临床数据相结合的曲线面积仅为0.64。然后,我们使用最佳的神经网络配置来生成查找表,该表将局部光谱参数值和全局临床变量值转换为组织类型图像(TTI)中的像素值。 TTI继续成功地显示出癌变区域,并且结合其他超声和非超声方法(例如磁共振波谱法)在临床上可能被证明特别有用。

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