医学图像分析的深度学习:在计算机断层扫描和磁共振成像中的应用

Kyu-Hwan Jung, Hyunho Park, Woochan Hwang
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引用次数: 17

摘要

随着人工智能的发展,深度学习已经成为主要的方法,医学图像分析的范式正在从以前的基于临床经验和知识的特征工程转向数据驱动的深度学习的客观特征分析。特别是,随着各种自然图像技术在医学图像中的应用加速,我们不再简单地将自然图像模型应用于医学图像,而是开发新的方法,这些方法包含了医学图像领域的独特特征。此外,随着对深度学习模型所做决策的可解释性以及将临床知识纳入模型的方法的研究进展,我们已经开始获得有希望的结果,这将允许深度学习的临床实施。在各种深度学习模型中,卷积神经网络(CNN)已成为视觉识别问题的首选方法。CNN是一种前馈人工神经网络,它通过迭代卷积和池化层来学习分层特征,直到到达输出预测层。卷积层通过局部连接的共享权重学习输入或中间特征映射中的特定模式,池化层通过空间聚合激活来减少特征映射。在模型的输出与输入或去噪版本相同的特殊情况下,我们称该模型为卷积自动编码器(CAE)。在医学图像分析中,机器学习方法已应用于检测和分类等各个领域。通讯作者:kyyu - hwan Jung VUNO Inc.,韩国首尔瑞choo区江南路507号6F电话:+82-2-515-6646传真:+82-2-515-6647 E-mail: kyuhwanjung@gmail.com
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for Medical Image Analysis: Applications to Computed Tomography and Magnetic Resonance Imaging
Following the recent development in artificial intelligence, where deep learning has become the main methodology, the paradigm of medical image analysis is shifting from the previous clinical experience and knowledge-based feature engineering to the data-driven objective feature analysis of deep learning. Especially, as the application of various techniques developed for natural images to medical images is being accelerated, we are no longer simply adapting the natural image models to medical images but developing new methods, which encompasses the unique characteristics of the medical image domain. Furthermore, as the research on interpretability of decisions made by deep learning models and the way of incorporating clinical knowledge into the model progresses, we have started to obtain promising results that will allow clinical implementation of deep learning. Among various deep learning models, convolutional neural networks (CNN) have become methodology of choice for visual recognition problems. CNN is a type of feed-forward artificial neural network, which learns hierarchical features by iterating convolution and pooling layers until the output prediction layer is reached. While the convolution layers learn specific patterns in the input or intermediate feature map with locally-connected shared weights, pooling layers reduce the feature map by spatially aggregating activations. In special cases where the output of the model is same as the input or its denoised version, we call the model as convolutional auto-enconder (CAE). In medical image analysis, machine learning methods have been used in various fields such as detection and classification Corresponding Author: Kyu-Hwan Jung VUNO Inc., 6F, 507, Gangnamdae-ro, Seocho-gu, Seoul, Korea Tel: +82-2-515-6646 Fax: +82-2-515-6647 E-mail: kyuhwanjung@gmail.com
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