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Application and Construction of Deep Learning Networks in Medical Imaging

机译:深度学习网络在医学成像中的应用与构建

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摘要

Deep learning (DL) approaches are part of the machine learning (ML) subfield concerned with the development of computational models to train artificial intelligence systems. DL models are characterized by automatically extracting high-level features from the input data to learn the relationship between matching datasets. Thus, its implementation offers an advantage over common ML methods that often require the practitioner to have some domain knowledge of the input data to select the best latent representation. As a result of this advantage, DL has been successfully applied within the medical imaging field to address problems, such as disease classification and tumor segmentation for which it is difficult or impossible to determine which image features are relevant. Therefore, taking into consideration the positive impact of DL on the medical imaging field, this article reviews the key concepts associated with its evolution and implementation. The sections of this review summarize the milestones related to the development of the DL field, followed by a description of the elements of deep neural network and an overview of its application within the medical imaging field. Subsequently, the key steps necessary to implement a supervised DL application are defined, and associated limitations are discussed.
机译:深度学习(DL)方法是机器学习(ML)子领域的一部分,涉及培养人工智能系统的计算模型的发展。 DL模型的特点是自动从输入数据中提取高级功能,以了解匹配数据集之间的关系。因此,其实现提供了在常见的ML方法上提供的优势,这些方法通常要求从业者具有输入数据的一些域知识来选择最佳的潜在表示。由于这一优势,DL已成功应用于医学成像领域以解决问题,例如疾病分类和肿瘤分割,难以或不可能确定哪些图像特征是相关的。因此,考虑到DL对医学成像领域的积极影响,本文审查了与其进化和实施相关的关键概念。本综述部分总结了与DL领域的开发相关的里程碑,其次是深度神经网络的元素的描述以及其在医学成像领域内的应用概述。随后,定义了实现监督DL应用程序所需的关键步骤,并且讨论了相关限制。

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