Analysis of X-ray images is one of the main tools to diagnose breast cancer. The ability to quickly and accurately detect the location of masses from the huge amount of image data is the key to reducing the morbidity and mortality of breast cancer. Currently, the main factor limiting the accuracy of breast mass detection is the unequal focus on the mass boxes, leading the network to focus too much on larger masses at the expense of smaller ones. In the paper, we propose the multi-head feature pyramid module (MHFPN) to solve the problem of unbalanced focus of target boxes during feature map fusion and design a multi-head breast mass detection network (MBMDnet). Experimental studies show that, comparing to the SOTA detection baselines, our method improves by 6.58% (in AP@50) and 5.4% (in TPR@50) on the commonly used INbreast dataset, while about 6-8% improvements (in AP@20) are also observed on the public MIAS and BCS-DBT datasets.
翻译:X射线图像分析是诊断乳腺癌的主要工具之一。从大量图像数据中快速准确地检测质量位置的能力是降低乳腺癌发病率和死亡率的关键。目前,限制乳癌检测准确性的主要因素是,对质量箱的重视程度不平等,导致网络过于关注较大质量,而忽略较小质量。在论文中,我们建议多头特征金字塔模块(MHFPN)解决地貌图集聚期间目标箱偏重问题,并设计多头乳腺癌检测网络(MBMMDnet)。实验研究表明,与SOTA检测基线相比,我们的方法在常见的乳房数据集上改进了6.58%(AP@50)和5.4%(TPR@50),同时在公共的多头特征图集和BCS-DB数据集上也观察到了大约6%-8%的改进(AP@20)。