基于频谱分析和非线性分类器的前列腺二维和三维超声组织型成像研究进展。

Molecular urology Pub Date : 1999-01-01
Feleppa, Fair, Tsai, Porter, Balaji, Liu, Kalisz, Lizzi, Rosado, Manolakis, Gnadt, Reuter, Miltner
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引用次数: 0

摘要

频谱分析的射频(RF)超声回波信号往往可以感知组织的差异是不可见的常规超声图像。结合其他变量,如血清前列腺特异性抗原(PSA)浓度,谱分析参数值可以通过神经网络进行分类,从而有效区分癌性和非癌性前列腺组织。基于光谱参数和临床变量的神经网络分类的图像对活检指导、分期、治疗计划和监测都是有利的。一项基于137例患者644例活检的研究表明,这些方法在区分癌性和非癌性前列腺组织方面明显优于b型图像解释。以组织类型的组织学判断为金标准,644例活检基于频谱分析和PSA值的神经网络分类的接受者-操作者特征(ROC)曲线下面积为0.87 +/- 0.04,基于b模式成像的怀疑水平(LOS)分配的ROC曲线下面积为0.64 +/- 0.04。彩色编码和灰度图像来源于神经网络在每个像素位置对癌症的怀疑分配,显示出显著的细节,并建议使用实时二维(2D)图像指导活检,分期,治疗计划和使用三维(3D)图像监测的潜在临床价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Progress in Two-Dimensional and Three-Dimensional Ultrasonic Tissue-Type Imaging of the Prostate Based on Spectrum Analysis and Nonlinear Classifiers.

Spectrum analysis of radiofrequency (RF) ultrasonic echo signals often can sense tissue differences that are not visible on conventional ultrasonic images. Spectrum-analysis parameter values combined with other variables, such as serum prostate specific antigen (PSA) concentration, can be classified by neural networks to distinguish effectively between cancerous and noncancerous prostate tissues. Images based on neural network classification of spectral parameters and clinical variables can be advantageous for biopsy guidance, staging, and treatment planning and monitoring. A study based on 644 biopsies from 137 patients showed that these methods are significantly superior to B-mode image interpretation for differentiating cancerous from noncancerous prostate tissues. Using the histologic determination of tissue types as the gold standard, the area under the receiver-operator characteristic (ROC) curve for neural network classification based on spectrum analysis and PSA value for the 644 biopsies was 0.87 +/- 0.04, and the ROC curve are for a level-of-suspicion (LOS) assignment based on B-mode imaging was 0.64 +/- 0.04. Color-encoded and gray-scale images derived from neural network assignment of suspicion for cancer at each pixel location showed remarkable detail and suggested potential clinical value for biopsy guidance using real-time two-dimensional (2D) images and staging, treatment planning, and monitoring using three-dimensional (3D) images.

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