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3d experimental detection and discrimina-tion of malignant and benign breast tumor using nn-based uwb imaging system

机译:基于cnn的uwb成像系统对恶性和良性乳腺肿瘤进行3d实验检测和判别

摘要

This paper presents both simulation and experimental study to detect and locate breast tumors along with their classi¯cationudas malignant and/or benign in three dimensional (3D) breast model.The contrast between the dielectric properties of these two tumor types is the main key. These dielectric properties are mainly controlled by the water and blood content of tumors. For simulation, electromagnetic simulator software is used. The experiment is conducted using commercial Ultrawide-Band (UWB) transceivers, Neural Network (NN) based Pattern Recognition (PR) software for imaging and homogenous breast phantom. The 3D homogeneous breast phantom and tumors are fabricated using pure petroleum jelly and a mixture of wheat °our and water respectively. The simulation and experimental setups are performed by transmitting the UWB signals from one side of the breast model and receiving from opposite side diagonally. Using discrete cosine transform (DCT) of received signals, we have trainedudand tested the developed experimental Neural Network model. In 3D breast model, the achieved detection accuracy of tumor existence is around 100%, while the locating accuracy in terms of (x, y, z) position of a tumor within the breast reached approximately 89.2% and 86.6% in simulation and experimental works respectively. For classi¯cation,the permittivity and conductivity detection accuracy are 98.0% and 99.1% in simulation, and 98.6% and 99.5% in experimental works respectively. Tumor detection and type speci¯cation 3D may lead to successful clinical implementation followed by saving of precious humanudlives in the near future.
机译:本文介绍了在三维(3D)乳腺模型中检测和定位乳腺肿瘤及其分类,恶性和/或良性的模拟和实验研究,这两种肿瘤的介电特性之间的对比是主要的键。这些介电特性主要受肿瘤中水和血液含量的控制。对于仿真,使用电磁仿真器软件。该实验使用商用超宽带(UWB)收发器,基于神经网络(NN)的模式识别(PR)软件进行成像和均质的乳房幻像进行。分别使用纯凡士林,小麦粉和水的混合物制作3D均匀的乳房幻像和肿瘤。通过从乳房模型的一侧发送UWB信号并从对角的另一侧接收UWB信号来执行仿真和实验设置。使用接收信号的离散余弦变换(DCT),我们已经训练 udand测试了开发的实验神经网络模型。在3D乳房模型中,已实现的肿瘤存在检测精度约为100%,而在模拟和实验工作中,在乳房内的肿瘤在(x,y,z)位置方面的定位精度分别达到了约89.2%和86.6%。分别。对于分类,在模拟中介电常数和电导率检测精度分别为98.0%和99.1%,在实验工作中分别为98.6%和99.5%。肿瘤检测和3D类型规范可能会导致成功的临床实施,并在不久的将来挽救宝贵的人类遗体。

著录项

  • 作者

    Sabira Khatun;

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  • 年度 2011
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