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      Deep learning with convolutional neural network in radiology

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          Abstract

          Deep learning with a convolutional neural network (CNN) is gaining attention recently for its high performance in image recognition. Images themselves can be utilized in a learning process with this technique, and feature extraction in advance of the learning process is not required. Important features can be automatically learned. Thanks to the development of hardware and software in addition to techniques regarding deep learning, application of this technique to radiological images for predicting clinically useful information, such as the detection and the evaluation of lesions, etc., are beginning to be investigated. This article illustrates basic technical knowledge regarding deep learning with CNNs along the actual course (collecting data, implementing CNNs, and training and testing phases). Pitfalls regarding this technique and how to manage them are also illustrated. We also described some advanced topics of deep learning, results of recent clinical studies, and the future directions of clinical application of deep learning techniques.

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          Author and article information

          Journal
          Japanese Journal of Radiology
          Jpn J Radiol
          Springer Science and Business Media LLC
          1867-1071
          1867-108X
          April 2018
          March 1 2018
          April 2018
          : 36
          : 4
          : 257-272
          Article
          10.1007/s11604-018-0726-3
          29498017
          b5902e27-4bae-4a9e-b26d-ab02ad9a10d6
          © 2018

          http://www.springer.com/tdm

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