Using deep learning for triple-negative breast cancer classification in DCE-MRI

Joel Vidal, R. Martí
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引用次数: 1

Abstract

Triple-negative is one of the most aggressive type of breast cancer for which is also difficult to find an effective treatment. An early diagnosis and a fast and specific treatment are shown to be key aspects for a better prognosis. Current diagnosis of these cases are based on performing a biopsy. This study proposes a non-invasive medical imaging predication method, based on a deep learning architecture, to automatically classify triple-negative tumors in DCE-MRI images. Results are evaluated on an extensive public dataset for different normalizations, data augmentations, learning rates and batch sizes, reaching a state-of-the-art AUC of 0.68.
在DCE-MRI中应用深度学习进行三阴性乳腺癌分类
三阴性乳腺癌是最具侵袭性的乳腺癌之一,也很难找到有效的治疗方法。早期诊断和快速特异性治疗是获得更好预后的关键。目前对这些病例的诊断是基于活检。本研究提出了一种基于深度学习架构的无创医学影像预测方法,对DCE-MRI图像中的三阴性肿瘤进行自动分类。结果在一个广泛的公共数据集上进行评估,用于不同的归一化,数据增强,学习率和批大小,达到最先进的AUC为0.68。
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