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Using machine learning to evaluate large-scale brain networks in patients with brain tumors: Traditional and non-traditional eloquent areas

BACKGROUND: Large-scale brain networks and higher cognitive functions are frequently altered in neuro-oncology patients, but comprehensive non-invasive brain mapping is difficult to achieve in the clinical setting. The objective of our study is to evaluate traditional and non-traditional eloquent ar...

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Autores principales: Morell, Alexis A, Eichberg, Daniel G, Shah, Ashish H, Luther, Evan, Lu, Victor M, Kader, Michael, Higgins, Dominique M O, Merenzon, Martin, Patel, Nitesh V, Komotar, Ricardo J, Ivan, Michael E
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9586213/
https://www.ncbi.nlm.nih.gov/pubmed/36299797
http://dx.doi.org/10.1093/noajnl/vdac142
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author Morell, Alexis A
Eichberg, Daniel G
Shah, Ashish H
Luther, Evan
Lu, Victor M
Kader, Michael
Higgins, Dominique M O
Merenzon, Martin
Patel, Nitesh V
Komotar, Ricardo J
Ivan, Michael E
author_facet Morell, Alexis A
Eichberg, Daniel G
Shah, Ashish H
Luther, Evan
Lu, Victor M
Kader, Michael
Higgins, Dominique M O
Merenzon, Martin
Patel, Nitesh V
Komotar, Ricardo J
Ivan, Michael E
author_sort Morell, Alexis A
collection PubMed
description BACKGROUND: Large-scale brain networks and higher cognitive functions are frequently altered in neuro-oncology patients, but comprehensive non-invasive brain mapping is difficult to achieve in the clinical setting. The objective of our study is to evaluate traditional and non-traditional eloquent areas in brain tumor patients using a machine-learning platform. METHODS: We retrospectively included patients who underwent surgery for brain tumor resection at our Institution. Preoperative MRI with T1-weighted and DTI sequences were uploaded into the Quicktome platform. We categorized the integrity of nine large-scale brain networks: language, sensorimotor, visual, ventral attention, central executive, default mode, dorsal attention, salience and limbic. Network integrity was correlated with preoperative clinical data. RESULTS: One-hundred patients were included in the study. The most affected network was the central executive network (49%), followed by the default mode network (43%) and dorsal attention network (32%). Patients with preoperative deficits showed a significantly higher number of altered networks before the surgery (3.42 vs 2.19, P < .001), compared to patients without deficits. Furthermore, we found that patients without neurologic deficits had an average 2.19 networks affected and 1.51 networks at-risk, with most of them being related to non-traditional eloquent areas (P < .001). CONCLUSION: Our results show that large-scale brain networks are frequently affected in patients with brain tumors, even when presenting without evident neurologic deficits. In our study, the most commonly affected brain networks were related to non-traditional eloquent areas. Integrating non-invasive brain mapping machine-learning techniques into the clinical setting may help elucidate how to preserve higher-order cognitive functions associated with those networks.
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spelling pubmed-95862132022-10-25 Using machine learning to evaluate large-scale brain networks in patients with brain tumors: Traditional and non-traditional eloquent areas Morell, Alexis A Eichberg, Daniel G Shah, Ashish H Luther, Evan Lu, Victor M Kader, Michael Higgins, Dominique M O Merenzon, Martin Patel, Nitesh V Komotar, Ricardo J Ivan, Michael E Neurooncol Adv Clinical Investigations BACKGROUND: Large-scale brain networks and higher cognitive functions are frequently altered in neuro-oncology patients, but comprehensive non-invasive brain mapping is difficult to achieve in the clinical setting. The objective of our study is to evaluate traditional and non-traditional eloquent areas in brain tumor patients using a machine-learning platform. METHODS: We retrospectively included patients who underwent surgery for brain tumor resection at our Institution. Preoperative MRI with T1-weighted and DTI sequences were uploaded into the Quicktome platform. We categorized the integrity of nine large-scale brain networks: language, sensorimotor, visual, ventral attention, central executive, default mode, dorsal attention, salience and limbic. Network integrity was correlated with preoperative clinical data. RESULTS: One-hundred patients were included in the study. The most affected network was the central executive network (49%), followed by the default mode network (43%) and dorsal attention network (32%). Patients with preoperative deficits showed a significantly higher number of altered networks before the surgery (3.42 vs 2.19, P < .001), compared to patients without deficits. Furthermore, we found that patients without neurologic deficits had an average 2.19 networks affected and 1.51 networks at-risk, with most of them being related to non-traditional eloquent areas (P < .001). CONCLUSION: Our results show that large-scale brain networks are frequently affected in patients with brain tumors, even when presenting without evident neurologic deficits. In our study, the most commonly affected brain networks were related to non-traditional eloquent areas. Integrating non-invasive brain mapping machine-learning techniques into the clinical setting may help elucidate how to preserve higher-order cognitive functions associated with those networks. Oxford University Press 2022-09-19 /pmc/articles/PMC9586213/ /pubmed/36299797 http://dx.doi.org/10.1093/noajnl/vdac142 Text en © The Author(s) 2022. Published by Oxford University Press, the Society for Neuro-Oncology and the European Association of Neuro-Oncology. https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Clinical Investigations
Morell, Alexis A
Eichberg, Daniel G
Shah, Ashish H
Luther, Evan
Lu, Victor M
Kader, Michael
Higgins, Dominique M O
Merenzon, Martin
Patel, Nitesh V
Komotar, Ricardo J
Ivan, Michael E
Using machine learning to evaluate large-scale brain networks in patients with brain tumors: Traditional and non-traditional eloquent areas
title Using machine learning to evaluate large-scale brain networks in patients with brain tumors: Traditional and non-traditional eloquent areas
title_full Using machine learning to evaluate large-scale brain networks in patients with brain tumors: Traditional and non-traditional eloquent areas
title_fullStr Using machine learning to evaluate large-scale brain networks in patients with brain tumors: Traditional and non-traditional eloquent areas
title_full_unstemmed Using machine learning to evaluate large-scale brain networks in patients with brain tumors: Traditional and non-traditional eloquent areas
title_short Using machine learning to evaluate large-scale brain networks in patients with brain tumors: Traditional and non-traditional eloquent areas
title_sort using machine learning to evaluate large-scale brain networks in patients with brain tumors: traditional and non-traditional eloquent areas
topic Clinical Investigations
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9586213/
https://www.ncbi.nlm.nih.gov/pubmed/36299797
http://dx.doi.org/10.1093/noajnl/vdac142
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