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Published in: Japanese Journal of Radiology 12/2018

01-12-2018 | Original Article

Artificial intelligence using neural network architecture for radiology (AINNAR): classification of MR imaging sequences

Authors: Tomoyuki Noguchi, Daichi Higa, Takashi Asada, Yusuke Kawata, Akihiro Machitori, Yoshitaka Shida, Takashi Okafuji, Kota Yokoyama, Fumiya Uchiyama, Tsuyoshi Tajima

Published in: Japanese Journal of Radiology | Issue 12/2018

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Abstract

Purpose

The confusion of MRI sequence names could be solved if MR images were automatically identified after image data acquisition. We revealed the ability of deep learning to classify head MRI sequences.

Materials and methods

Seventy-eight patients with mild cognitive impairment (MCI) having apparently normal head MR images and 78 intracranial hemorrhage (ICH) patients with morphologically deformed head MR images were enrolled. Six imaging protocols were selected to be performed: T2-weighted imaging, fluid attenuated inversion recovery imaging, T2-star-weighted imaging, diffusion-weighted imaging, apparent diffusion coefficient mapping, and source images of time-of-flight magnetic resonance angiography. The proximal first image slices and middle image slices having ambiguous and distinctive contrast patterns, respectively, were classified by two deep learning imaging classifiers, AlexNet and GoogLeNet.

Results

AlexNet had accuracies of 73.3%, 73.6%, 73.1%, and 60.7% in the middle slices of MCI group, middle slices of ICH group, first slices of MCI group, and first slices of ICH group, while GoogLeNet had accuracies of 100%, 98.1%, 93.1%, and 94.8%, respectively. AlexNet significantly had lower classification ability than GoogLeNet for all datasets.

Conclusions

GoogLeNet could judge the types of head MRI sequences with a small amount of training data, irrespective of morphological or contrast conditions.
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Metadata
Title
Artificial intelligence using neural network architecture for radiology (AINNAR): classification of MR imaging sequences
Authors
Tomoyuki Noguchi
Daichi Higa
Takashi Asada
Yusuke Kawata
Akihiro Machitori
Yoshitaka Shida
Takashi Okafuji
Kota Yokoyama
Fumiya Uchiyama
Tsuyoshi Tajima
Publication date
01-12-2018
Publisher
Springer Japan
Published in
Japanese Journal of Radiology / Issue 12/2018
Print ISSN: 1867-1071
Electronic ISSN: 1867-108X
DOI
https://doi.org/10.1007/s11604-018-0779-3

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