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Investigating the Effects of Transfer Learning on ROI-based Classification of Chest CT Images: A Case Study on Diffuse Lung Diseases

机译:研究转移学习对基于ROI的胸部CT图像分类的影响:以弥漫性肺部疾病为例

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Research on Computer-Aided Diagnosis (CAD) of medical images has been actively conducted to support decisions of radiologists. Since deep learning has shown distinguished abilities in classification, detection, segmentation, etc. in various problems, many studies on CAD have been using deep learning. One of the reasons behind the success of deep learning is the availability of large application-specific annotated datasets. However, it is quite tough work for radiologists to annotate hundreds or thousands of medical images for deep learning, and thus it is difficult to obtain large scale annotated datasets for various organs and diseases. Therefore, many techniques that effectively train deep neural networks have been proposed, and one of the techniques is transfer learning. This paper focuses on transfer learning and especially conducts a case study on ROI-based opacity classification of diffuse lung diseases in chest CT images. The aim of this paper is to clarify what characteristics of the datasets for pre-training and what kinds of structures of deep neural networks for fine-tuning contribute to enhance the effectiveness of transfer learning. In addition, the numbers of training data are set at various values and the effectiveness of transfer learning is evaluated. In the experiments, nine conditions of transfer learning and a method without transfer learning are compared to analyze the appropriate conditions. From the experimental results, it is clarified that the pre-training dataset with more (various) classes and the compact structure for fine-tuning show the best accuracy in this work.
机译:积极开展了医学图像计算机辅助诊断(CAD)研究,以支持放射科医生的决策。由于深度学习在各种问题上表现出出色的分类,检测,分割等能力,因此许多关于CAD的研究都在使用深度学习。深度学习成功的原因之一是大型的特定于应用程序的带注释的数据集的可用性。但是,放射线医师要对成百上千的医学图像进行深度学习进行注解是一项艰巨的工作,因此很难获得各种器官和疾病的大规模注解数据集。因此,已经提出了许多有效训练深度神经网络的技术,其中一种技术是转移学习。本文侧重于转移学习,尤其是对胸部CT图像中基于ROI的弥漫性肺部疾病的不透明度分类进行案例研究。本文的目的是弄清预训练数据集的哪些特征以及用于微调的深度神经网络的哪种结构有助于提高转移学习的有效性。此外,将训练数据的数量设置为各种值,并评估迁移学习的有效性。在实验中,比较了九种转移学习的条件和一种没有转移学习的方法,以分析适当的条件。从实验结果可以看出,具有更多(各种)类的预训练数据集和用于微调的紧凑结构在这项工作中显示出最佳的准确性。

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