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Published in: Journal of Digital Imaging 5/2017

01-10-2017

Machine Learning Interface for Medical Image Analysis

Authors: Yi C. Zhang, Alexander C. Kagen

Published in: Journal of Imaging Informatics in Medicine | Issue 5/2017

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Abstract

TensorFlow is a second-generation open-source machine learning software library with a built-in framework for implementing neural networks in wide variety of perceptual tasks. Although TensorFlow usage is well established with computer vision datasets, the TensorFlow interface with DICOM formats for medical imaging remains to be established. Our goal is to extend the TensorFlow API to accept raw DICOM images as input; 1513 DaTscan DICOM images were obtained from the Parkinson’s Progression Markers Initiative (PPMI) database. DICOM pixel intensities were extracted and shaped into tensors, or n-dimensional arrays, to populate the training, validation, and test input datasets for machine learning. A simple neural network was constructed in TensorFlow to classify images into normal or Parkinson’s disease groups. Training was executed over 1000 iterations for each cross-validation set. The gradient descent optimization and Adagrad optimization algorithms were used to minimize cross-entropy between the predicted and ground-truth labels. Cross-validation was performed ten times to produce a mean accuracy of 0.938 ± 0.047 (95 % CI 0.908–0.967). The mean sensitivity was 0.974 ± 0.043 (95 % CI 0.947–1.00) and mean specificity was 0.822 ± 0.207 (95 % CI 0.694–0.950). We extended the TensorFlow API to enable DICOM compatibility in the context of DaTscan image analysis. We implemented a neural network classifier that produces diagnostic accuracies on par with excellent results from previous machine learning models. These results indicate the potential role of TensorFlow as a useful adjunct diagnostic tool in the clinical setting.
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Metadata
Title
Machine Learning Interface for Medical Image Analysis
Authors
Yi C. Zhang
Alexander C. Kagen
Publication date
01-10-2017
Publisher
Springer International Publishing
Published in
Journal of Imaging Informatics in Medicine / Issue 5/2017
Print ISSN: 2948-2925
Electronic ISSN: 2948-2933
DOI
https://doi.org/10.1007/s10278-016-9910-0

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