Indywidualne sieci mózgu w stanie spoczynku przewidują dominację języka u pacjentów z epilepsją opornąną na leki
PubMedEpilepsia
Individual-specific resting-state networks predict language dominance in drug-resistant epilepsy
W skrócie
Naukowcy opracowali zaawansowaną metodę analizy mózgu, która na podstawie krótkiego badania MRI (6-24 minuty) potrafi dokładnie określić, która półkula mózgu odpowiada za zdolność mówienia u pacjentów z trudną do leczenia epilepsją. Metoda ta była bardziej dokładna niż tradycyjne podejścia i pozwoliła przewidzieć dominację języka (lewostronna, prawostronna lub obustronna) z wysoką celowością, co jest ważne dla planowania operacji mózgu. Wyniki wskazują, że badanie indywidualnych sieci mózgu pacjenta jest bardziej przydatne do planowania zabiegów chirurgicznych niż porównywanie go ze średnimi danymi z grupy zdrowych ludzi.
Oryginalny abstract (angielski)
OBJECTIVE: This study was undertaken to reliably estimate individual-specific resting-state cortical networks and determine whether language network topography can predict task-based language dominance in drug-resistant epilepsy. METHODS: We utilized a multisession hierarchical Bayesian model (MS-HBM) trained on drug-resistant epilepsy patients to map high-quality individual-specific cortical networks in this population (n = 65) with only 6-24 min of resting-state functional magnetic resonance imaging (fMRI). We compared the quality of networks to MS-HBM models trained on healthy participants from the human connectome project (n = 40) and tested the generalizability of the model in an independent cohort of drug-resistant epilepsy participants (n = 26). Resting-state language network topography was then used to predict task-based language dominance. RESULTS: Ninety-one participants with drug-resistant epilepsy (National Institutes of Health, n = 65; University of Iowa, n = 26) were included: 61 (67.0%) temporal lobe epilepsy, 29 (31.9%) extratemporal lobe epilepsy, and one (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. MS-HBM trained on drug-resistant epilepsy estimated individual-specific networks that more accurately capture cortical functional organization than group-average networks or MS-HBM trained on healthy participants. The trained MS-HBM model generalized to an independent cohort of drug-resistant epilepsy participants with concurrent intracranial electrical stimulation and fMRI. Critically, cortical evoked fMRI activity aligned more closely with individual-specific networks than with group-average networks. Furthermore, individual-specific language network topography significantly predicted task-based language dominance, achieving high accuracy for left (area under the curve [AUC] = .82), bilateral (AUC = .72), and right (AUC = .83) dominance. SIGNIFICANCE: These results demonstrate that MS-HBM captures functionally meaningful network reorganization in drug-resistant epilepsy and enables accurate, individual-level prediction of language lateralization, with direct implications for presurgical functional mapping.
Metadane publikacji
Journal
Epilepsia
Data publikacji
08.06.2026
PMID
42257618
DOI
10.1002/epi.70323
Autorzy
Lim MJR, Zhang S, Pande S, Xue A, Kong R, Zaghloul K, Inati S, Yeo BTT
Słowa kluczowe
functional magnetic resonance imaging, language lateralization, multisession hierarchical Bayesian model, precision functional mapping