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Classification of breast tumor models with a prototype microwave imaging system

机译:用原型微波成像系统分类乳腺肿瘤模型

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Purpose The assessment of the size and shape of breast tumors is of utter importance to the correct diagnosis and staging of breast cancer. In this paper, we classify breast tumor models of varying sizes and shapes using signals collected with a monostatic ultra‐wideband radar microwave imaging prototype system with machine learning algorithms specifically tailored to the collected data. Methods A database comprising 13 benign and 13 malignant tumor models with sizes between 13 and 40?mm was created using dielectrically representative tissue mimicking materials. These tumor models were placed inside two breast phantoms: a homogeneous breast phantom and a breast phantom with clusters of fibroglandular mimicking tissue, accounting for breast heterogeneity. The breast phantoms with tumors were imaged with a monostatic microwave imaging prototype system, over a 1–6?GHz frequency range. The classification of benign and malignant tumors embedded in the two breast phantoms was completed, and tumor classification was evaluated with Principal Component Analysis as a feature extraction method, and tuned Na?ve Bayes (NB), decision trees (DT), and k‐nearest neighbours ( k NN) as classifiers. We further study which antenna positions are better placed to classify tumors, discuss the feature extraction method and optimize classification algorithms, by tuning their hyperparameters, to improve sensitivity, specificity and the receiver operating characteristic curve, while ensuring maximum generalization and avoiding overfitting and data contamination. We also added a realistic synthetic skin response to the collected signals and examined its global effect on classification of benign vs malignant tumors. Results In terms of global classification performance, k NN outperformed DT and NB machine learning classifiers, achieving a classification accuracy of 96.2% when classifying between benign and malignant tumor phantoms in a homogeneous breast phantom (both when the skin artifact is and is not considered). Conclusions We experimentally classified tumor models as benign or malignant with a microwave imaging system, and we showed a methodology that can potentially assess the shape of breast tumors, which will give further insight into the correct diagnosis and staging of breast cancer.
机译:目的,评估乳腺肿瘤的大小和形状是对乳腺癌的正确诊断和分期来说是完全的。在本文中,我们使用与单声道超宽带雷达微波微波成像原型系统收集的信号分类不同尺寸和形状的乳房肿瘤模型,该信号具有专门针对收集的数据量身定制的机器学习算法。方法使用介电代表组织模拟材料产生包含13个良性和13个恶性肿瘤模型的数据库,其尺寸为13至40. mm。将这些肿瘤模型置于两个乳房幻影中:均匀的乳房幻影和乳腺幻影,纤维绿型模拟组织簇,占乳房异质性。用单体微波成像原型系统成像具有肿瘤的乳房幽灵,超过1-6个GHz频率范围。完成了嵌入在两个乳腺杂色中的良性和恶性肿瘤的分类,并用主要成分分析评估了肿瘤分类作为特征提取方法,并调整Naα贝雷斯(NB),决策树(DT)和K-最近的邻居(k nn)作为分类器。我们进一步研究了哪些天线位置更好地放置以对肿瘤进行分类,讨论特征提取方法,并通过调整其超公数来优化分类算法,提高灵敏度,特异性和接收器操作特性曲线,同时确保最大泛化和避免过度装备和数据污染。我们还为收集的信号添加了一种逼真的合成皮肤反应,并研究了其对良性与恶性肿瘤分类的全球影响。结果在全球分类性能方面,K NN优于DT和NB机器学习分类器,在均匀乳房幻影中的良性和恶性肿瘤幻影分类时,实现了96.2%的分类准确性(两者在皮肤伪影均未考虑) 。结论我们通过微波成像系统进行了实验分类的肿瘤模型,以及微波成像系统的良性或恶性,并且我们展示了一种可能评估乳腺肿瘤形状的方法,这将进一步了解乳腺癌的正确诊断和分期。

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