Department of Diagnostic and Interventional Radiology, Osaka International Cancer Institute, 3-1-69 Otemae, Chuo-ku, Osaka, 541-8567, Japan.
Department of Artificial Intelligence Diagnostic Radiology, Osaka University Graduate School of Medicine, 2-2 Yamadaoka, Suita, Osaka, 565-0871, Japan.
Jpn J Radiol. 2020 Oct;38(10):907-921. doi: 10.1007/s11604-020-00998-2. Epub 2020 Jun 15.
In the present article, we provide an overview on the basics of deep learning in terms of technical aspects and steps required to launch a deep learning research. Deep learning is a branch of artificial intelligence, which has been attracting interest in many domains. The essence of deep learning can be compared to teaching an elementary school student how to differentiate magnetic resonance images, and we first explain the concept using this analogy. Deep learning models are composed of many layers including input, hidden, and output ones. Convolutional neural networks are suitable for image processing as convolutional and pooling layers allow successfully performing extraction of image features. The process of conducting a research work with deep learning can be divided into the nine following steps: computer preparation, software installation, specifying the function, data collection, data edits, dataset creation, programming, program execution, and verification of results. Concerning widespread expectations, deep learning cannot be applied to solve tasks other than those set in specification; moreover, it requires a large amount of data to train and has difficulties with recognizing unknown concepts. Deep learning cannot be considered as a universal tool, and researchers should have thorough understanding of the features of this technique.
在本文中,我们将概述深度学习的基础知识,包括启动深度学习研究所需的技术方面和步骤。深度学习是人工智能的一个分支,在许多领域引起了关注。深度学习的本质可以比作教小学生如何区分磁共振图像,我们首先使用这个类比来解释这个概念。深度学习模型由输入、隐藏和输出层等多个层组成。卷积神经网络适用于图像处理,因为卷积和池化层允许成功地提取图像特征。进行深度学习研究的过程可以分为以下九个步骤:计算机准备、软件安装、指定功能、数据收集、数据编辑、数据集创建、编程、程序执行和结果验证。关于广泛的期望,深度学习不能应用于解决规范中未设置的任务;此外,它需要大量数据进行训练,并且难以识别未知概念。深度学习不能被视为通用工具,研究人员应该对该技术的特点有透彻的了解。