4.5 Article

Deep Learning: A Primer for Radiologists

期刊

RADIOGRAPHICS
卷 37, 期 7, 页码 2113-2131

出版社

RADIOLOGICAL SOC NORTH AMERICA (RSNA)
DOI: 10.1148/rg.2017170077

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资金

  1. Consortium for Research and Innovation in Medical Technologies in Quebec
  2. MITACS-Cluster Accelerate [IT05356]
  3. Centre de Recherche du Centre Hospitalier de l'Universite de Montreal
  4. Polytechnique Montreal
  5. Imagia Cybernetics
  6. Fonds de Recherche du Quebec en Sante
  7. Fondation de l'Association des Radiologistes du Quebec [26993]

向作者/读者索取更多资源

Deep learning is a class of machine learning methods that are gaining success and attracting interest in many domains, including computer vision, speech recognition, natural language processing, and playing games. Deep learning methods produce a mapping from raw inputs to desired outputs (eg, image classes). Unlike traditional machine learning methods, which require hand-engineered feature extraction from inputs, deep learning methods learn these features directly from data. With the advent of large datasets and increased computing power, these methods can produce models with exceptional performance. These models are multilayer artificial neural networks, loosely inspired by biologic neural systems. Weighted connections between nodes (neurons) in the network are iteratively adjusted based on example pairs of inputs and target outputs by back-propagating a corrective error signal through the network. For computer vision tasks, convolutional neural networks (CNNs) have proven to be effective. Recently, several clinical applications of CNNs have been proposed and studied in radiology for classification, detection, and segmentation tasks. This article reviews the key concepts of deep learning for clinical radiologists, discusses technical requirements, describes emerging applications in clinical radiology, and outlines limitations and future directions in this field. Radiologists should become familiar with the principles and potential applications of deep learning in medical imaging. (C) RSNA, 2017

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