Deep Learning for Describing Breast Ultrasound Images with BI-RADS Terms.

Mikel Carrilero-Mardones, Manuela Parras-Jurado, Alberto Nogales, Jorge Pérez-Martín, Francisco Javier Díez
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Abstract

Breast cancer is the most common cancer in women. Ultrasound is one of the most used techniques for diagnosis, but an expert in the field is necessary to interpret the test. Computer-aided diagnosis (CAD) systems aim to help physicians during this process. Experts use the Breast Imaging-Reporting and Data System (BI-RADS) to describe tumors according to several features (shape, margin, orientation...) and estimate their malignancy, with a common language. To aid in tumor diagnosis with BI-RADS explanations, this paper presents a deep neural network for tumor detection, description, and classification. An expert radiologist described with BI-RADS terms 749 nodules taken from public datasets. The YOLO detection algorithm is used to obtain Regions of Interest (ROIs), and then a model, based on a multi-class classification architecture, receives as input each ROI and outputs the BI-RADS descriptors, the BI-RADS classification (with 6 categories), and a Boolean classification of malignancy. Six hundred of the nodules were used for 10-fold cross-validation (CV) and 149 for testing. The accuracy of this model was compared with state-of-the-art CNNs for the same task. This model outperforms plain classifiers in the agreement with the expert (Cohen's kappa), with a mean over the descriptors of 0.58 in CV and 0.64 in testing, while the second best model yielded kappas of 0.55 and 0.59, respectively. Adding YOLO to the model significantly enhances the performance (0.16 in CV and 0.09 in testing). More importantly, training the model with BI-RADS descriptors enables the explainability of the Boolean malignancy classification without reducing accuracy.

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用 BI-RADS 术语描述乳腺超声图像的深度学习。
乳腺癌是女性最常见的癌症。超声波是最常用的诊断技术之一,但需要该领域的专家来解读检测结果。计算机辅助诊断(CAD)系统旨在帮助医生完成这一过程。专家们使用乳腺成像报告和数据系统(BI-RADS),根据多种特征(形状、边缘、方向......)对肿瘤进行描述,并使用通用语言对肿瘤的恶性程度进行评估。为了利用 BI-RADS 的解释帮助诊断肿瘤,本文提出了一种用于肿瘤检测、描述和分类的深度神经网络。一位放射科专家用 BI-RADS 术语描述了公共数据集中的 749 个结节。利用 YOLO 检测算法获得感兴趣区(ROI),然后基于多类分类架构的模型接收每个 ROI 作为输入,并输出 BI-RADS 描述符、BI-RADS 分类(6 个类别)和恶性程度的布尔分类。其中 600 个结节用于 10 倍交叉验证(CV),149 个用于测试。该模型的准确性与执行相同任务的最先进 CNN 进行了比较。该模型在与专家的一致性(Cohen's kappa)方面优于普通分类器,在 CV 和测试中,描述符的平均值分别为 0.58 和 0.64,而第二好的模型的 kappa 值分别为 0.55 和 0.59。将 YOLO 添加到模型中可显著提高模型的性能(CV 值为 0.16,测试值为 0.09)。更重要的是,使用 BI-RADS 描述符训练模型可以在不降低准确性的情况下解释布尔恶性肿瘤分类。
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