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Machine learning decision tree models for multiclass classification of common malignant brain tumors using perfusion and spectroscopy MRI data

BACKGROUND: To investigate the contribution of machine learning decision tree models applied to perfusion and spectroscopy MRI for multiclass classification of lymphomas, glioblastomas, and metastases, and then to bring out the underlying key pathophysiological processes involved in the hierarchizat...

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Autores principales: Vallée, Rodolphe, Vallée, Jean-Noël, Guillevin, Carole, Lallouette, Athéna, Thomas, Clément, Rittano, Guillaume, Wager, Michel, Guillevin, Rémy, Vallée, Alexandre
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10442801/
https://www.ncbi.nlm.nih.gov/pubmed/37614505
http://dx.doi.org/10.3389/fonc.2023.1089998
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author Vallée, Rodolphe
Vallée, Jean-Noël
Guillevin, Carole
Lallouette, Athéna
Thomas, Clément
Rittano, Guillaume
Wager, Michel
Guillevin, Rémy
Vallée, Alexandre
author_facet Vallée, Rodolphe
Vallée, Jean-Noël
Guillevin, Carole
Lallouette, Athéna
Thomas, Clément
Rittano, Guillaume
Wager, Michel
Guillevin, Rémy
Vallée, Alexandre
author_sort Vallée, Rodolphe
collection PubMed
description BACKGROUND: To investigate the contribution of machine learning decision tree models applied to perfusion and spectroscopy MRI for multiclass classification of lymphomas, glioblastomas, and metastases, and then to bring out the underlying key pathophysiological processes involved in the hierarchization of the decision-making algorithms of the models METHODS: From 2013 to 2020, 180 consecutive patients with histopathologically proved lymphomas (n = 77), glioblastomas (n = 45), and metastases (n = 58) were included in machine learning analysis after undergoing MRI. The perfusion parameters (rCBV(max), PSR(max)) and spectroscopic concentration ratios (lac/Cr, Cho/NAA, Cho/Cr, and lip/Cr) were applied to construct Classification and Regression Tree (CART) models for multiclass classification of these brain tumors. A 5-fold random cross validation was performed on the dataset. RESULTS: The decision tree model thus constructed successfully classified all 3 tumor types with a performance (AUC) of 0.98 for PCNSLs, 0.98 for GBM and 1.00 for METs. The model accuracy was 0.96 with a RSquare of 0.887. Five rules of classifier combinations were extracted with a predicted probability from 0.907 to 0.989 for that end nodes of the decision tree for tumor multiclass classification. In hierarchical order of importance, the root node (Cho/NAA) in the decision tree algorithm was primarily based on the proliferative, infiltrative, and neuronal destructive characteristics of the tumor, the internal node (PSRmax), on tumor tissue capillary permeability characteristics, and the end node (Lac/Cr or Cho/Cr), on tumor energy glycolytic (Warburg effect), or on membrane lipid tumor metabolism. CONCLUSION: Our study shows potential implementation of machine learning decision tree model algorithms based on a hierarchical, convenient, and personalized use of perfusion and spectroscopy MRI data for multiclass classification of these brain tumors.
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spelling pubmed-104428012023-08-23 Machine learning decision tree models for multiclass classification of common malignant brain tumors using perfusion and spectroscopy MRI data Vallée, Rodolphe Vallée, Jean-Noël Guillevin, Carole Lallouette, Athéna Thomas, Clément Rittano, Guillaume Wager, Michel Guillevin, Rémy Vallée, Alexandre Front Oncol Oncology BACKGROUND: To investigate the contribution of machine learning decision tree models applied to perfusion and spectroscopy MRI for multiclass classification of lymphomas, glioblastomas, and metastases, and then to bring out the underlying key pathophysiological processes involved in the hierarchization of the decision-making algorithms of the models METHODS: From 2013 to 2020, 180 consecutive patients with histopathologically proved lymphomas (n = 77), glioblastomas (n = 45), and metastases (n = 58) were included in machine learning analysis after undergoing MRI. The perfusion parameters (rCBV(max), PSR(max)) and spectroscopic concentration ratios (lac/Cr, Cho/NAA, Cho/Cr, and lip/Cr) were applied to construct Classification and Regression Tree (CART) models for multiclass classification of these brain tumors. A 5-fold random cross validation was performed on the dataset. RESULTS: The decision tree model thus constructed successfully classified all 3 tumor types with a performance (AUC) of 0.98 for PCNSLs, 0.98 for GBM and 1.00 for METs. The model accuracy was 0.96 with a RSquare of 0.887. Five rules of classifier combinations were extracted with a predicted probability from 0.907 to 0.989 for that end nodes of the decision tree for tumor multiclass classification. In hierarchical order of importance, the root node (Cho/NAA) in the decision tree algorithm was primarily based on the proliferative, infiltrative, and neuronal destructive characteristics of the tumor, the internal node (PSRmax), on tumor tissue capillary permeability characteristics, and the end node (Lac/Cr or Cho/Cr), on tumor energy glycolytic (Warburg effect), or on membrane lipid tumor metabolism. CONCLUSION: Our study shows potential implementation of machine learning decision tree model algorithms based on a hierarchical, convenient, and personalized use of perfusion and spectroscopy MRI data for multiclass classification of these brain tumors. Frontiers Media S.A. 2023-08-08 /pmc/articles/PMC10442801/ /pubmed/37614505 http://dx.doi.org/10.3389/fonc.2023.1089998 Text en Copyright © 2023 Vallée, Vallée, Guillevin, Lallouette, Thomas, Rittano, Wager, Guillevin and Vallée https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Oncology
Vallée, Rodolphe
Vallée, Jean-Noël
Guillevin, Carole
Lallouette, Athéna
Thomas, Clément
Rittano, Guillaume
Wager, Michel
Guillevin, Rémy
Vallée, Alexandre
Machine learning decision tree models for multiclass classification of common malignant brain tumors using perfusion and spectroscopy MRI data
title Machine learning decision tree models for multiclass classification of common malignant brain tumors using perfusion and spectroscopy MRI data
title_full Machine learning decision tree models for multiclass classification of common malignant brain tumors using perfusion and spectroscopy MRI data
title_fullStr Machine learning decision tree models for multiclass classification of common malignant brain tumors using perfusion and spectroscopy MRI data
title_full_unstemmed Machine learning decision tree models for multiclass classification of common malignant brain tumors using perfusion and spectroscopy MRI data
title_short Machine learning decision tree models for multiclass classification of common malignant brain tumors using perfusion and spectroscopy MRI data
title_sort machine learning decision tree models for multiclass classification of common malignant brain tumors using perfusion and spectroscopy mri data
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10442801/
https://www.ncbi.nlm.nih.gov/pubmed/37614505
http://dx.doi.org/10.3389/fonc.2023.1089998
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