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Evaluation of the impact of deep learning architectural components selection and dataset size on a medical imaging task

机译:评估深度学习架构组件选择和数据集大小对医学成像任务的影响

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Deep Learning (DL) has been successfully applied in numerous fields fueled by increasing computational power and access to data. However, for medical imaging tasks, limited training set size is a common challenge when applying DL. This paper explores the applicability of DL to the task of classifying a single axial slice from a CT exam into one of six anatomy regions. A total of ~29000 images selected from 223 CT exams were manually labeled for ground truth. An additional 54 exams were labeled and used as an independent test set. The network architecture developed for this application is composed of 6 convolutional layers and 2 fully connected layers with RELU non-linear activations between each layer. Max-pooling was used after every second convolutional layer, and a softmax layer was used at the end. Given this base architecture, the effect of inclusion of network architecture components such as Dropout and Batch Normalization on network performance and training is explored. The network performance as a function of training and validation set size is characterized by training each network architecture variation using 5,10,20,40,50 and 100% of the available training data. The performance comparison of the various network architectures was done for anatomy classification as well as two computer vision datasets. The anatomy classifier accuracy varied from 74.1% to 92.3% in this study depending on the training size and network layout used. Dropout layers improved the model accuracy for all training sizes.
机译:深度学习(DL)已成功应用于众多领域,这些领域的发展是计算能力的提高和对数据的访问的增强。但是,对于医学成像任务,使用DL时,有限的训练集大小是一个普遍的挑战。本文探讨了DL在将CT检查中的单个轴向切片分类为六个解剖区域之一的任务中的适用性。手动标记了从223次CT检查中选择的大约29000张图像作为地面真相。另有54项考试被标记并用作独立的测试集。为此应用开发的网络体系结构由6个卷积层和2个完全连接的层组成,每层之间具有RELU非线性激活。每第二个卷积层后使用最大池,最后使用softmax层。在此基础架构的基础上,探讨了包含诸如Dropout和Batch Normalization的网络架构组件对网络性能和培训的影响。网络性能是训练和验证集大小的函数,其特征在于,使用5、10、20、40、50和100%的可用训练数据来训练每个网络体系结构的变化。进行了各种网络体系结构的性能比较,以进行解剖分类以及两个计算机视觉数据集。在这项研究中,解剖学分类器的准确性从74.1%到92.3%不等,具体取决于训练规模和所使用的网络布局。辍学层提高了所有训练规模的模型准确性。

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