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Predictors of cognition after glioma surgery: connectotomy, structure-function phenotype, plasticity.

Authors :
Herbet, Guillaume
Duffau, Hugues
Mandonnet, Emmanuel
Source :
Brain: A Journal of Neurology. Aug2024, Vol. 147 Issue 8, p2621-2635. 15p.
Publication Year :
2024

Abstract

Determining preoperatively the maximal extent of resection that would preserve cognitive functions is the core challenge of brain tumour surgery. Over the past decade, the methodological framework to achieve this goal has been thoroughly renewed: the population-level topographically-focused voxel-based lesion-symptom mapping has been progressively overshadowed by machine learning (ML) algorithmics, in which the problem is framed as predicting cognitive outcomes in a patient-specific manner from a typically large set of variables. However, the choice of these predictors is of utmost importance, as they should be both informative and parsimonious. In this perspective, we first introduce the concept of connectotomy: instead of parameterizing resection topography through the status (intact/resected) of a huge number of voxels (or parcels) paving the whole brain in the Cartesian 3D-space, the connectotomy models the resection in the connectivity space, by computing a handful number of networks disconnection indices, measuring how the structural connectivity sustaining each network of interest was hit by the resection. This connectivity-informed reduction of dimensionality is a necessary step for efficiently implementing ML tools, given the relatively small number of patient-examples in available training datasets. We further argue that two other major sources of interindividual variability must be considered to improve the accuracy with which outcomes are predicted: the underlying structure-function phenotype and neuroplasticity, for which we provide an in-depth review and propose new ways of determining relevant predictors. We finally discuss the benefits of our approach for precision surgery of glioma. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00068950
Volume :
147
Issue :
8
Database :
Academic Search Index
Journal :
Brain: A Journal of Neurology
Publication Type :
Academic Journal
Accession number :
178887931
Full Text :
https://doi.org/10.1093/brain/awae093