A Deep Learning Framework for Breast Tumor Detection and Localization from Microwave Imaging Data

Salwa K. Al Khatib, Tarek Naous, R. Shubair, H. M. E. Misilmani
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引用次数: 4

Abstract

Breast Microwave Imaging (BMI) has emerged as a viable alternative to conventional breast cancer screening techniques due to its favorable features and a higher rate of detection. This paper presents a deep learning framework consisting of deep neural networks with convolutional layers to facilitate the process of tumor detection, localization, and characterization from scattering parameter measurements and metadata features. The developed deep learning framework outperforms other techniques in the literature in terms of detection accuracy, tumor localization, and characterization. The promising results of this paper demonstrate the potential and benefits of performing BMI via deep neural networks trained on practical scattering parameter measurements.
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基于微波成像数据的乳腺肿瘤检测与定位的深度学习框架
乳房微波成像(BMI)已成为一种可行的替代传统的乳腺癌筛查技术,由于其有利的特点和更高的检出率。本文提出了一个由具有卷积层的深度神经网络组成的深度学习框架,以促进从散射参数测量和元数据特征中进行肿瘤检测、定位和表征的过程。所开发的深度学习框架在检测精度、肿瘤定位和表征方面优于文献中的其他技术。本文的结果表明,通过实际散射参数测量训练的深度神经网络进行BMI的潜力和好处。
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