Estimation of bone age from hand radiographs is essential to determine skeletal age in diagnosing endocrine disorders and depicting the growth status of children. However, existing automatic methods only apply their models to test images without considering the discrepancy between training samples and test samples, which will lead to a lower generalization ability. In this paper, we propose an adversarial regression learning network (ARLNet) for bone age estimation. Specifically, we first extract bone features from a fine-tuned Inception V3 neural network and propose regression percentage loss for training. To reduce the discrepancy between training and test data, we then propose adversarial regression loss and feature reconstruction loss to guarantee the transition from training data to test data and vice versa, preserving invariant features from both training and test data. Experimental results show that the proposed model outperforms state-of-the-art methods.
翻译:手射线仪对骨龄的估计对于在诊断内分泌紊乱和描述儿童成长状况时确定骨骼年龄至关重要,但是,现有的自动方法只应用模型来测试图像,而不考虑培训样品和测试样品之间的差异,这将导致较低的概括性能力。在本文中,我们提议为估计骨骼年龄建立一个对抗回归学习网络(ARLNet)。具体地说,我们首先从微调的受孕V3神经网络中提取骨骼特征,并提出培训的回归百分比损失。为了减少培训和测试数据之间的差异,我们然后提出对抗回归损失和特征重建损失,以保证从培训数据过渡到测试数据,从培训和测试数据中保留差异性特征。实验结果显示,拟议的模型优于最先进的方法。