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Non-Invasive Prediction of IDH Mutation in Patients with Glioma WHO II/III/IV Based on F-18-FET PET-Guided In Vivo (1)H-Magnetic Resonance Spectroscopy and Machine Learning

SIMPLE SUMMARY: Approximately 75–80% of according to the classification of world health organization (WHO) grade II and III gliomas are characterized by a mutation of the isocitrate dehydrogenase (IDH) enzymes, which are very important in glioma cell metabolism. Patients with IDH mutated glioma have...

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Autores principales: Bumes, Elisabeth, Wirtz, Fro-Philip, Fellner, Claudia, Grosse, Jirka, Hellwig, Dirk, Oefner, Peter J., Häckl, Martina, Linker, Ralf, Proescholdt, Martin, Schmidt, Nils Ole, Riemenschneider, Markus J., Samol, Claudia, Rosengarth, Katharina, Wendl, Christina, Hau, Peter, Gronwald, Wolfram, Hutterer, Markus
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7698334/
https://www.ncbi.nlm.nih.gov/pubmed/33212941
http://dx.doi.org/10.3390/cancers12113406
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author Bumes, Elisabeth
Wirtz, Fro-Philip
Fellner, Claudia
Grosse, Jirka
Hellwig, Dirk
Oefner, Peter J.
Häckl, Martina
Linker, Ralf
Proescholdt, Martin
Schmidt, Nils Ole
Riemenschneider, Markus J.
Samol, Claudia
Rosengarth, Katharina
Wendl, Christina
Hau, Peter
Gronwald, Wolfram
Hutterer, Markus
author_facet Bumes, Elisabeth
Wirtz, Fro-Philip
Fellner, Claudia
Grosse, Jirka
Hellwig, Dirk
Oefner, Peter J.
Häckl, Martina
Linker, Ralf
Proescholdt, Martin
Schmidt, Nils Ole
Riemenschneider, Markus J.
Samol, Claudia
Rosengarth, Katharina
Wendl, Christina
Hau, Peter
Gronwald, Wolfram
Hutterer, Markus
author_sort Bumes, Elisabeth
collection PubMed
description SIMPLE SUMMARY: Approximately 75–80% of according to the classification of world health organization (WHO) grade II and III gliomas are characterized by a mutation of the isocitrate dehydrogenase (IDH) enzymes, which are very important in glioma cell metabolism. Patients with IDH mutated glioma have a significantly better prognosis than patients with IDH wildtype status, typically seen in glioblastoma WHO grade IV. Here we used a prospective O-(2-(18)F-fluoroethyl)-L-tyrosine ((18)F-FET) positron emission tomography guided single-voxel (1)H-magnetic resonance spectroscopy approach to predict the IDH status before surgery. Finally, 34 patients were included in this neuroimaging study, of whom eight had additionally tissue analysis. Using a machine learning technique, we predicted IDH status with an accuracy of 88.2%, a sensitivity of 95.5% and a specificity of 75.0%. It was newly recognized, that two metabolites (myo-inositol and glycine) have a particularly important role in the determination of the IDH status. ABSTRACT: Isocitrate dehydrogenase (IDH)-1 mutation is an important prognostic factor and a potential therapeutic target in glioma. Immunohistological and molecular diagnosis of IDH mutation status is invasive. To avoid tumor biopsy, dedicated spectroscopic techniques have been proposed to detect D-2-hydroxyglutarate (2-HG), the main metabolite of IDH, directly in vivo. However, these methods are technically challenging and not broadly available. Therefore, we explored the use of machine learning for the non-invasive, inexpensive and fast diagnosis of IDH status in standard (1)H-magnetic resonance spectroscopy ((1)H-MRS). To this end, 30 of 34 consecutive patients with known or suspected glioma WHO grade II-IV were subjected to metabolic positron emission tomography (PET) imaging with O-(2-(18)F-fluoroethyl)-L-tyrosine ((18)F-FET) for optimized voxel placement in (1)H-MRS. Routine (1)H-magnetic resonance ((1)H-MR) spectra of tumor and contralateral healthy brain regions were acquired on a 3 Tesla magnetic resonance (3T-MR) scanner, prior to surgical tumor resection and molecular analysis of IDH status. Since 2-HG spectral signals were too overlapped for reliable discrimination of IDH mutated (IDHmut) and IDH wild-type (IDHwt) glioma, we used a nested cross-validation approach, whereby we trained a linear support vector machine (SVM) on the complete spectral information of the (1)H-MRS data to predict IDH status. Using this approach, we predicted IDH status with an accuracy of 88.2%, a sensitivity of 95.5% (95% CI, 77.2–99.9%) and a specificity of 75.0% (95% CI, 42.9–94.5%), respectively. The area under the curve (AUC) amounted to 0.83. Subsequent ex vivo (1)H-nuclear magnetic resonance ((1)H-NMR) measurements performed on metabolite extracts of resected tumor material (eight specimens) revealed myo-inositol (M-ins) and glycine (Gly) to be the major discriminators of IDH status. We conclude that our approach allows a reliable, non-invasive, fast and cost-effective prediction of IDH status in a standard clinical setting.
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spelling pubmed-76983342020-11-29 Non-Invasive Prediction of IDH Mutation in Patients with Glioma WHO II/III/IV Based on F-18-FET PET-Guided In Vivo (1)H-Magnetic Resonance Spectroscopy and Machine Learning Bumes, Elisabeth Wirtz, Fro-Philip Fellner, Claudia Grosse, Jirka Hellwig, Dirk Oefner, Peter J. Häckl, Martina Linker, Ralf Proescholdt, Martin Schmidt, Nils Ole Riemenschneider, Markus J. Samol, Claudia Rosengarth, Katharina Wendl, Christina Hau, Peter Gronwald, Wolfram Hutterer, Markus Cancers (Basel) Article SIMPLE SUMMARY: Approximately 75–80% of according to the classification of world health organization (WHO) grade II and III gliomas are characterized by a mutation of the isocitrate dehydrogenase (IDH) enzymes, which are very important in glioma cell metabolism. Patients with IDH mutated glioma have a significantly better prognosis than patients with IDH wildtype status, typically seen in glioblastoma WHO grade IV. Here we used a prospective O-(2-(18)F-fluoroethyl)-L-tyrosine ((18)F-FET) positron emission tomography guided single-voxel (1)H-magnetic resonance spectroscopy approach to predict the IDH status before surgery. Finally, 34 patients were included in this neuroimaging study, of whom eight had additionally tissue analysis. Using a machine learning technique, we predicted IDH status with an accuracy of 88.2%, a sensitivity of 95.5% and a specificity of 75.0%. It was newly recognized, that two metabolites (myo-inositol and glycine) have a particularly important role in the determination of the IDH status. ABSTRACT: Isocitrate dehydrogenase (IDH)-1 mutation is an important prognostic factor and a potential therapeutic target in glioma. Immunohistological and molecular diagnosis of IDH mutation status is invasive. To avoid tumor biopsy, dedicated spectroscopic techniques have been proposed to detect D-2-hydroxyglutarate (2-HG), the main metabolite of IDH, directly in vivo. However, these methods are technically challenging and not broadly available. Therefore, we explored the use of machine learning for the non-invasive, inexpensive and fast diagnosis of IDH status in standard (1)H-magnetic resonance spectroscopy ((1)H-MRS). To this end, 30 of 34 consecutive patients with known or suspected glioma WHO grade II-IV were subjected to metabolic positron emission tomography (PET) imaging with O-(2-(18)F-fluoroethyl)-L-tyrosine ((18)F-FET) for optimized voxel placement in (1)H-MRS. Routine (1)H-magnetic resonance ((1)H-MR) spectra of tumor and contralateral healthy brain regions were acquired on a 3 Tesla magnetic resonance (3T-MR) scanner, prior to surgical tumor resection and molecular analysis of IDH status. Since 2-HG spectral signals were too overlapped for reliable discrimination of IDH mutated (IDHmut) and IDH wild-type (IDHwt) glioma, we used a nested cross-validation approach, whereby we trained a linear support vector machine (SVM) on the complete spectral information of the (1)H-MRS data to predict IDH status. Using this approach, we predicted IDH status with an accuracy of 88.2%, a sensitivity of 95.5% (95% CI, 77.2–99.9%) and a specificity of 75.0% (95% CI, 42.9–94.5%), respectively. The area under the curve (AUC) amounted to 0.83. Subsequent ex vivo (1)H-nuclear magnetic resonance ((1)H-NMR) measurements performed on metabolite extracts of resected tumor material (eight specimens) revealed myo-inositol (M-ins) and glycine (Gly) to be the major discriminators of IDH status. We conclude that our approach allows a reliable, non-invasive, fast and cost-effective prediction of IDH status in a standard clinical setting. MDPI 2020-11-17 /pmc/articles/PMC7698334/ /pubmed/33212941 http://dx.doi.org/10.3390/cancers12113406 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Bumes, Elisabeth
Wirtz, Fro-Philip
Fellner, Claudia
Grosse, Jirka
Hellwig, Dirk
Oefner, Peter J.
Häckl, Martina
Linker, Ralf
Proescholdt, Martin
Schmidt, Nils Ole
Riemenschneider, Markus J.
Samol, Claudia
Rosengarth, Katharina
Wendl, Christina
Hau, Peter
Gronwald, Wolfram
Hutterer, Markus
Non-Invasive Prediction of IDH Mutation in Patients with Glioma WHO II/III/IV Based on F-18-FET PET-Guided In Vivo (1)H-Magnetic Resonance Spectroscopy and Machine Learning
title Non-Invasive Prediction of IDH Mutation in Patients with Glioma WHO II/III/IV Based on F-18-FET PET-Guided In Vivo (1)H-Magnetic Resonance Spectroscopy and Machine Learning
title_full Non-Invasive Prediction of IDH Mutation in Patients with Glioma WHO II/III/IV Based on F-18-FET PET-Guided In Vivo (1)H-Magnetic Resonance Spectroscopy and Machine Learning
title_fullStr Non-Invasive Prediction of IDH Mutation in Patients with Glioma WHO II/III/IV Based on F-18-FET PET-Guided In Vivo (1)H-Magnetic Resonance Spectroscopy and Machine Learning
title_full_unstemmed Non-Invasive Prediction of IDH Mutation in Patients with Glioma WHO II/III/IV Based on F-18-FET PET-Guided In Vivo (1)H-Magnetic Resonance Spectroscopy and Machine Learning
title_short Non-Invasive Prediction of IDH Mutation in Patients with Glioma WHO II/III/IV Based on F-18-FET PET-Guided In Vivo (1)H-Magnetic Resonance Spectroscopy and Machine Learning
title_sort non-invasive prediction of idh mutation in patients with glioma who ii/iii/iv based on f-18-fet pet-guided in vivo (1)h-magnetic resonance spectroscopy and machine learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7698334/
https://www.ncbi.nlm.nih.gov/pubmed/33212941
http://dx.doi.org/10.3390/cancers12113406
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