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Published in: Journal of Digital Imaging 1/2017

Open Access 01-02-2017

High-Throughput Classification of Radiographs Using Deep Convolutional Neural Networks

Authors: Alvin Rajkomar, Sneha Lingam, Andrew G. Taylor, Michael Blum, John Mongan

Published in: Journal of Imaging Informatics in Medicine | Issue 1/2017

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Abstract

The study aimed to determine if computer vision techniques rooted in deep learning can use a small set of radiographs to perform clinically relevant image classification with high fidelity. One thousand eight hundred eighty-five chest radiographs on 909 patients obtained between January 2013 and July 2015 at our institution were retrieved and anonymized. The source images were manually annotated as frontal or lateral and randomly divided into training, validation, and test sets. Training and validation sets were augmented to over 150,000 images using standard image manipulations. We then pre-trained a series of deep convolutional networks based on the open-source GoogLeNet with various transformations of the open-source ImageNet (non-radiology) images. These trained networks were then fine-tuned using the original and augmented radiology images. The model with highest validation accuracy was applied to our institutional test set and a publicly available set. Accuracy was assessed by using the Youden Index to set a binary cutoff for frontal or lateral classification. This retrospective study was IRB approved prior to initiation. A network pre-trained on 1.2 million greyscale ImageNet images and fine-tuned on augmented radiographs was chosen. The binary classification method correctly classified 100 % (95 % CI 99.73–100 %) of both our test set and the publicly available images. Classification was rapid, at 38 images per second. A deep convolutional neural network created using non-radiological images, and an augmented set of radiographs is effective in highly accurate classification of chest radiograph view type and is a feasible, rapid method for high-throughput annotation.
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Metadata
Title
High-Throughput Classification of Radiographs Using Deep Convolutional Neural Networks
Authors
Alvin Rajkomar
Sneha Lingam
Andrew G. Taylor
Michael Blum
John Mongan
Publication date
01-02-2017
Publisher
Springer International Publishing
Published in
Journal of Imaging Informatics in Medicine / Issue 1/2017
Print ISSN: 2948-2925
Electronic ISSN: 2948-2933
DOI
https://doi.org/10.1007/s10278-016-9914-9

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