首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >An automated neural-fuzzy approach to malignant tumor localization in 2D ultrasonic images of the prostate.
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An automated neural-fuzzy approach to malignant tumor localization in 2D ultrasonic images of the prostate.

机译:在前列腺的二维超声图像中对恶性肿瘤定位的自动神经模糊方法。

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In this paper, a new neural-fuzzy approach is proposed for automated region segmentation in transrectal ultrasound images of the prostate. The goal of region segmentation is to identify suspicious regions in the prostate in order to provide decision support for the diagnosis of prostate cancer. The new automated region segmentation system uses expert knowledge as well as both textural and spatial features in the image to accomplish the segmentation. The textural information is extracted by two recurrent random pulsed neural networks trained by two sets of data (a suspicious tissues' data set and a normal tissues' data set). Spatial information is captured by the atlas-based reference approach and is represented as fuzzy membership functions. The textural and spatial features are synthesized by a fuzzy inference system, which provides a binary classification of the region to be evaluated.
机译:在本文中,提出了一种新的神经模糊方法,用于前列腺直肠超声图像中的自动区域分割。区域分割的目的是识别前列腺中的可疑区域,以便为诊断前列腺癌提供决策支持。新的自动区域分割系统使用专家知识以及图像中的纹理和空间特征来完成分割。纹理信息是通过两个递归随机脉冲神经网络提取的,该神经网络由两组数据(可疑组织的数据集和正常组织的数据集)训练而成。空间信息由基于图集的参考方法捕获,并表示为模糊隶属度函数。纹理和空间特征由模糊推理系统合成,该系统提供要评估区域的二进制分类。

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