Age estimation has attracted attention for its various medical applications. There are many studies on human age estimation from biomedical images. However, there is no research done on mammograms for age estimation, as far as we know. The purpose of this study is to devise an AI-based model for estimating age from mammogram images. Due to lack of public mammography data sets that have the age attribute, we resort to using a web crawler to download thumbnail mammographic images and their age fields from the public data set; the Digital Database for Screening Mammography. The original images in this data set unfortunately can only be retrieved by a software which is broken. Subsequently, we extracted deep learning features from the collected data set, by which we built a model using Random Forests regressor to estimate the age automatically. The performance assessment was measured using the mean absolute error values. The average error value out of 10 tests on random selection of samples was around 8 years. In this paper, we show the merits of this approach to fill up missing age values. We ran logistic and linear regression models on another independent data set to further validate the advantage of our proposed work. This paper also introduces the free-access Mini-DDSM data set.
翻译:年龄估计吸引了人们对各种医学应用的关注。从生物医学图像中,对人的年龄估计进行了许多研究。然而,据我们所知,还没有对年龄估计的乳房X光照片进行研究。本研究的目的是设计一个基于AI的模型,从乳房X光照片中估计年龄。由于缺乏具有年龄属性的公共乳房X光摄影数据集,我们利用网络爬行器从公共数据集中下载乳房X光摄影图及其年龄领域;筛查乳房X光摄影的数字数据库。不幸的是,这一数据集中的原始图像只能用破损的软件检索。随后,我们从所收集的数据集中提取了深层学习特征,我们用随机森林反射仪来自动估计年龄。绩效评估是用平均绝对误差值来衡量的。随机选择样本的10次测试的平均误差值大约为8年。在本文中,我们展示了填补缺失年龄值的方法的优点。我们对另一个独立数据集进行了物流和线性回归模型,以进一步证实我们拟议工作的优势。本文还介绍了自由访问的MiniDDDSM数据集。