Transfer learning (TL) with deep convolutional neural networks (DCNNs) has proved successful in medical image classification (MIC). However, the current practice is puzzling, as MIC typically relies only on low- and/or mid-level features that are learned in the bottom layers of DCNNs. Following this intuition, we question the current strategies of TL in MIC. In this paper, we perform careful experimental comparisons between shallow and deep networks for classification on two chest x-ray datasets, using different TL strategies. We find that deep models are not always favorable, and finetuning truncated deep models almost always yields the best performance, especially in data-poor regimes. Project webpage: https://github.com/sun-umn/Transfer-Learning-in-Medical-Imaging Keywords: Transfer learning, Medical image classification, Feature hierarchy, Medical imaging, Evaluation metrics, Imbalanced data
翻译:然而,目前的做法令人费解,因为军事工业部通常只依赖在军事工业部底层学习的低层和/或中层特征。根据这种直觉,我们对军事工业部目前技术产业的战略提出质疑。在本文中,我们利用不同的技术部战略,对两个胸前X射线数据集的浅层和深层分类网络进行仔细的实验性比较。我们发现深层模型并非总是有利的,而细微的深层模型几乎总是产生最佳的绩效,特别是在数据贫乏的制度下。项目网页:https://github.com/sun-umn/Transfer-Learch-in-Medical-image Keywords:传输学习、医学图像分类、地貌等级、医学成像、评价指标、均衡数据。