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Prediction of IDH and TERT promoter mutations in low-grade glioma from magnetic resonance images using a convolutional neural network
by
Fukuma, Ryohei
, Terakawa, Yuzo
, Kanemura, Yonehiro
, Nonaka, Masahiro
, Kishima, Haruhiko
, Kinoshita, Manabu
, Ishibashi, Kenichi
, Arita, Hideyuki
, Kanematsu, Daisuke
, Narita, Yoshitaka
, Mori, Kanji
, Takahashi, Masamichi
, Shofuda, Tomoko
, Fujimoto, Yasunori
, Tsuyuguchi, Naohiro
, Yoshioka, Ema
, Kodama, Yoshinori
, Moriuchi, Shusuke
, Mano, Masayuki
, Izumoto, Shuichi
, Shinozaki, Takashi
, Kawaguchi, Atsushi
, Nakajima, Yoshikazu
, Fukai, Junya
, Takagaki, Masatoshi
, Ichimura, Koichi
, Okita, Yoshiko
, Yanagisawa, Takufumi
in
631/114
/ 631/208
/ 631/378
/ 631/61
/ 631/67
/ 692/308
/ 692/617
/ 692/699
/ Accuracy
/ Age
/ Biomarkers, Tumor
/ Female
/ Genotypes
/ Glioma
/ Glioma - diagnosis
/ Glioma - genetics
/ Humanities and Social Sciences
/ Humans
/ Image Processing, Computer-Assisted
/ Isocitrate Dehydrogenase - genetics
/ Magnetic resonance imaging
/ Magnetic Resonance Imaging - methods
/ Male
/ multidisciplinary
/ Mutation
/ Neoplasm Grading
/ Neoplasm Staging
/ Neural networks
/ Neural Networks, Computer
/ Promoter Regions, Genetic
/ Radiomics
/ Reproducibility of Results
/ Science
/ Science (multidisciplinary)
/ Telomerase - genetics
2019
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Prediction of IDH and TERT promoter mutations in low-grade glioma from magnetic resonance images using a convolutional neural network
by
Fukuma, Ryohei
, Terakawa, Yuzo
, Kanemura, Yonehiro
, Nonaka, Masahiro
, Kishima, Haruhiko
, Kinoshita, Manabu
, Ishibashi, Kenichi
, Arita, Hideyuki
, Kanematsu, Daisuke
, Narita, Yoshitaka
, Mori, Kanji
, Takahashi, Masamichi
, Shofuda, Tomoko
, Fujimoto, Yasunori
, Tsuyuguchi, Naohiro
, Yoshioka, Ema
, Kodama, Yoshinori
, Moriuchi, Shusuke
, Mano, Masayuki
, Izumoto, Shuichi
, Shinozaki, Takashi
, Kawaguchi, Atsushi
, Nakajima, Yoshikazu
, Fukai, Junya
, Takagaki, Masatoshi
, Ichimura, Koichi
, Okita, Yoshiko
, Yanagisawa, Takufumi
in
631/114
/ 631/208
/ 631/378
/ 631/61
/ 631/67
/ 692/308
/ 692/617
/ 692/699
/ Accuracy
/ Age
/ Biomarkers, Tumor
/ Female
/ Genotypes
/ Glioma
/ Glioma - diagnosis
/ Glioma - genetics
/ Humanities and Social Sciences
/ Humans
/ Image Processing, Computer-Assisted
/ Isocitrate Dehydrogenase - genetics
/ Magnetic resonance imaging
/ Magnetic Resonance Imaging - methods
/ Male
/ multidisciplinary
/ Mutation
/ Neoplasm Grading
/ Neoplasm Staging
/ Neural networks
/ Neural Networks, Computer
/ Promoter Regions, Genetic
/ Radiomics
/ Reproducibility of Results
/ Science
/ Science (multidisciplinary)
/ Telomerase - genetics
2019
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Prediction of IDH and TERT promoter mutations in low-grade glioma from magnetic resonance images using a convolutional neural network
by
Fukuma, Ryohei
, Terakawa, Yuzo
, Kanemura, Yonehiro
, Nonaka, Masahiro
, Kishima, Haruhiko
, Kinoshita, Manabu
, Ishibashi, Kenichi
, Arita, Hideyuki
, Kanematsu, Daisuke
, Narita, Yoshitaka
, Mori, Kanji
, Takahashi, Masamichi
, Shofuda, Tomoko
, Fujimoto, Yasunori
, Tsuyuguchi, Naohiro
, Yoshioka, Ema
, Kodama, Yoshinori
, Moriuchi, Shusuke
, Mano, Masayuki
, Izumoto, Shuichi
, Shinozaki, Takashi
, Kawaguchi, Atsushi
, Nakajima, Yoshikazu
, Fukai, Junya
, Takagaki, Masatoshi
, Ichimura, Koichi
, Okita, Yoshiko
, Yanagisawa, Takufumi
in
631/114
/ 631/208
/ 631/378
/ 631/61
/ 631/67
/ 692/308
/ 692/617
/ 692/699
/ Accuracy
/ Age
/ Biomarkers, Tumor
/ Female
/ Genotypes
/ Glioma
/ Glioma - diagnosis
/ Glioma - genetics
/ Humanities and Social Sciences
/ Humans
/ Image Processing, Computer-Assisted
/ Isocitrate Dehydrogenase - genetics
/ Magnetic resonance imaging
/ Magnetic Resonance Imaging - methods
/ Male
/ multidisciplinary
/ Mutation
/ Neoplasm Grading
/ Neoplasm Staging
/ Neural networks
/ Neural Networks, Computer
/ Promoter Regions, Genetic
/ Radiomics
/ Reproducibility of Results
/ Science
/ Science (multidisciplinary)
/ Telomerase - genetics
2019
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Prediction of IDH and TERT promoter mutations in low-grade glioma from magnetic resonance images using a convolutional neural network
Journal Article
Prediction of IDH and TERT promoter mutations in low-grade glioma from magnetic resonance images using a convolutional neural network
2019
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Overview
Identification of genotypes is crucial for treatment of glioma. Here, we developed a method to predict tumor genotypes using a pretrained convolutional neural network (CNN) from magnetic resonance (MR) images and compared the accuracy to that of a diagnosis based on conventional radiomic features and patient age. Multisite preoperative MR images of 164 patients with grade II/III glioma were grouped by IDH and TERT promoter (pTERT) mutations as follows: (1) IDH wild type, (2) IDH and pTERT co-mutations, (3) IDH mutant and pTERT wild type. We applied a CNN (AlexNet) to four types of MR sequence and obtained the CNN texture features to classify the groups with a linear support vector machine. The classification was also performed using conventional radiomic features and/or patient age. Using all features, we succeeded in classifying patients with an accuracy of 63.1%, which was significantly higher than the accuracy obtained from using either the radiomic features or patient age alone. In particular, prediction of the pTERT mutation was significantly improved by the CNN texture features. In conclusion, the pretrained CNN texture features capture the information of IDH and TERT genotypes in grade II/III gliomas better than the conventional radiomic features.
Publisher
Nature Publishing Group UK,Nature Publishing Group
Subject
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