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Machine Learning Approaches for Automated Lesion Detection in Microwave Breast Imaging Clinical Data

机译:用于微波乳房成像临床数据中病灶自动检测的机器学习方法

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摘要

Breast lesion detection employing state of the art microwave systems provide a safe, non-ionizing technique that can differentiate healthy and non-healthy tissues by exploiting their dielectric properties. In this paper, a microwave apparatus for breast lesion detection is used to accumulate clinical data from subjects undergoing breast examinations at the Department of Diagnostic Imaging, Perugia Hospital, Perugia, Italy. This paper presents the first ever clinical demonstration and comparison of a microwave ultra-wideband (UWB) device augmented by machine learning with subjects who are simultaneously undergoing conventional breast examinations. Non-ionizing microwave signals are transmitted through the breast tissue and the scattering parameters (S-parameter) are received via a dedicated moving transmitting and receiving antenna set-up. The output of a parallel radiologist study for the same subjects, performed using conventional techniques, is taken to pre-process microwave data and create suitable data for the machine intelligence system. These data are used to train and investigate several suitable supervised machine learning algorithms nearest neighbour (NN), multi-layer perceptron (MLP) neural network, and support vector machine (SVM) to create an intelligent classification system towards supporting clinicians to recognise breasts with lesions. The results are rigorously analysed, validated through statistical measurements, and found the quadratic kernel of SVM can classify the breast data with 98% accuracy.
机译:采用最先进的微波系统的乳房病变检测提供了一种安全,非电离的技术,可以通过利用它们的介电特性来区分健康组织和非健康组织。在本文中,一种用于乳腺病变检测的微波设备被用于收集意大利佩鲁贾佩鲁贾医院诊断影像学部门接受乳房检查的受试者的临床数据。本文介绍了通过机器学习增强的微波超宽带(UWB)设备与同时接受常规乳房检查的受试者的首次临床演示和比较。非电离微波信号通过乳房组织传输,散射参数(S参数)通过专用的移动发射和接收天线装置接收。使用常规技术执行的,针对相同主题的并行放射线研究的输出,用于预处理微波数据并为机器智能系统创建合适的数据。这些数据用于训练和研究几种合适的监督式机器学习算法,即最近邻居(NN),多层感知器(MLP)神经网络和支持向量机(SVM),以创建一个智能分类系统,以支持临床医生识别具有以下特征的乳房病变。对结果进行了严格的分析,并通过统计测量进行了验证,发现SVM的二次核可以以98%的准确度对乳房数据进行分类。

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