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Improving the Diagnostic Capability of Microwave Radar Imaging Systems using Machine Learning

机译:使用机器学习提高微波雷达成像系统的诊断能力

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Breast microwave sensing (BMS) is a potential breast cancer detection technique that uses low-power microwave radiation to detect the presence of cancerous lesions. This work presents the results of the application of a multilayer perceptron (MLP) and support vector machine with radial basis function (SVM RBF) to breast cancer detection for a portable BMS prototype. Numerical 2D phantoms belonging to either BI-RADS Class 1 or Class 2 classifications were used to produce simulated data as collected by the portable system using an array of twelve sensors operating at five frequencies between 2.3 GHz and 6.5 GHz. Five feature preprocessing pipelines and their impact on classification performance were evaluated. An area under the curve of the receiver operating curve (ROC AUC) as high as (95 ± 1)% for BI-RADS Class 1 and as high as (94 ± 1)% for BI-RADS Class 2 were obtained using the SVM RBF, and as high as (94 ± 1)% for Class 1 and (92 ± 2)% for Class 2 using the MLP.
机译:乳腺癌微波感测(BMS)是一种潜在的乳腺癌检测技术,该技术使用低功率微波辐射来检测癌性病变的存在。这项工作介绍了多层感知器(MLP)和具有径向基函数的支持向量机(SVM RBF)在便携式BMS原型的乳腺癌检测中的应用结果。属于BI-RADS 1类或2类分类的2D数字体模被用于生成由便携式系统收集的模拟数据,该便携式系统使用了十二个传感器阵列,工作于2.3 GHz和6.5 GHz之间的五个频率。评估了五个特征预处理管线及其对分类性能的影响。使用SVM获得的接收器工作曲线(ROC AUC)曲线下面积对于BI-RADS 1类高达(95±1)%,对于BI-RADS 2类高达(94±1)% RBF,使用MLP时,类别1高达(94±1)%,类别2高达(92±2)%。

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