Individual-specific resting-state networks predict language dominance in drug-resistant epilepsy
Abstract
Importance
Identifying language dominance is a crucial step in epilepsy surgery planning. We applied a precision functional brain mapping approach to estimate individual-specific cortical resting-state networks in drug-resistant epilepsy and predict language dominance.
Objective
To determine whether individual-specific cortical network topography can predict task-based language dominance in drug-resistant epilepsy.
Design
Retrospective case-control study conducted between January 2024 and August 2025.
Setting
Multicentre population-based study including healthy participants from the Human Connectome Project, and participants with drug-resistant epilepsy from the National Institutes of Health (NIH) and the University of Iowa.
Participants
Eligible participants had drug-resistant epilepsy defined by International League Against Epilepsy criteria and were undergoing pre-surgical evaluation. All participants underwent neuroimaging, with a subset receiving concurrent intracranial electrical stimulation during fMRI.
Main Outcomes and Measures
Individual-specific cortical network topography and prediction of task functional magnetic resonance imaging language dominance.
Results
Ninety-one participants with drug-resistant epilepsy were included: 61 (67.0%) temporal lobe epilepsy, 29 (31.9%) extra-temporal lobe epilepsy, and 1 (1.1%) undetermined seizure onset zone. The mean age was 33.0 ± 11.4 years and 50 (54.9%) were male. There were 40 healthy participants with a mean age of 29.0 ± 4.0 years, and 16 (40.0%) were male. We developed a multi-session hierarchical Bayesian model (MS-HBM) trained on NIH data to estimate individual-specific networks in drug-resistant epilepsy. MS-HBM trained on epilepsy data outperformed group-average networks or MS-HBM trained on healthy participants and generalized well to an independent dataset. During concurrent intracranial electrical stimulation, cortical activation and deactivation aligned more closely to individual-specific networks than group-average networks. Individual-specific language network topography significantly differed across left (mean lateralization index (LI) = 0.165 ± 0.106; area-under-the-curve (AUC) = 0.82), bilateral (LI = 0.056 ± 0.074; AUC = 0.72), and right (LI = 0.023 ± 0.055; AUC = 0.83) language dominance groups (p = 0.002).
Conclusions and Relevance
Our model is publicly available (github link), which may be used to predict language dominance from approximately 10 minutes of resting-state fMRI. This provides a practical, non-invasive tool for presurgical evaluation of drug-resistant epilepsy.
Key Points
Question
Can individual-specific network topography from resting-state functional magnetic resonance imaging (fMRI) predict task-based language dominance in drug-resistant epilepsy?
Findings
In this multi-centre case-control study of 91 participants with drug-resistant epilepsy and 40 healthy controls, individual-specific networks outperformed group-average networks and generalized well to an independent cohort. Language network topography differed significantly across left (mean lateralization index (LI) = 0.165 ± 0.106), bilateral (LI = 0.056 ± 0.074), and right (LI = 0.023 ± 0.055) dominance groups (p = 0.002).
Meaning
Resting-state fMRI can estimate high-quality individual-specific cortical networks that predict language dominance, providing a non-invasive tool for presurgical evaluation.
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