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Breast Tumor Characterization Based on Ultrawideband Microwave Backscatter

机译:基于超宽带微波反向散射的乳腺肿瘤表征

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Characterization of architectural tissue features such as the shape, margin, and size of a suspicious lesion is commonly performed in conjunction with medical imaging to provide clues about the nature of an abnormality. In this paper, we numerically investigate the feasibility of using multichannel microwave backscatter in the 1–11 GHz band to classify the salient features of a dielectric target. We consider targets with three shape characteristics: smooth, microlobulated, and spiculated; and four size categories ranging from 0.5 to 2 cm in diameter. The numerical target constructs are based on Gaussian random spheres allowing for moderate shape irregularities. We perform shape and size classification for a range of signal-to-noise ratios (SNRs) to demonstrate the potential for tumor characterization based on ultrawideband (UWB) microwave backscatter. We approach classification with two basis selection methods from the literature: local discriminant bases and principal component analysis. Using these methods, we construct linear classifiers where a subset of the bases expansion vectors are the input features and we evaluate the average rate of correct classification as a performance measure. We demonstrate that for 10 dB SNR, the target size is very reliably classified with over 97% accuracy averaged over 360 targets; target shape is classified with over 70% accuracy. The relationship between the SNR of the test data and classifier performance is also explored. The results of this study are very encouraging and suggest that both shape and size characteristics of a dielectric target can be classified directly from its UWB backscatter. Hence, characterization can easily be performed in conjunction with UWB radar-based breast cancer detection without requiring any special hardware or additional data collection.
机译:通常结合医学成像对建筑组织特征(如可疑病变的形状,边缘和大小)进行表征,以提供有关异常性质的线索。在本文中,我们通过数值研究了在1-11 GHz频带中使用多通道微波反向散射对电介质靶标的显着特征进行分类的可行性。我们考虑具有三种形状特征的目标:光滑,微叶状和尖刺;四个尺寸类别,直径范围从0.5到2厘米。数值目标构造基于高斯随机球体,允许中等形状的不规则性。我们对一系列信噪比(SNR)进行形状和尺寸分类,以证明基于超宽带(UWB)微波反向散射的肿瘤表征潜力。我们从文献中采用两种基础选择方法进行分类:局部判别基础和主成分分析。使用这些方法,我们构造了线性分类器,其中碱基扩展向量的子集是输入特征,并且我们评估了正确分类的平均比率作为性能指标。我们证明,对于10 dB的SNR,目标大小可以非常可靠地分类,在360个目标上的平均准确率超过97%;目标形状的分类精度超过70%。还探讨了测试数据的信噪比与分类器性能之间的关系。这项研究的结果令人鼓舞,表明可以直接从UWB背向散射对电介质靶的形状和尺寸特征进行分类。因此,可以轻松地结合基于UWB雷达的乳腺癌检测进行表征,而无需任何特殊硬件或额外的数据收集。

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