TY - JOUR
T1 - The role of epidemic spreading in seizure dynamics and epilepsy surgery
AU - Millán, Ana P.
AU - van Straaten, Elisabeth C. W.
AU - Stam, Cornelis J.
AU - Nissen, Ida A.
AU - Idema, Sander
AU - Baayen, Johannes C.
AU - Van Mieghem, Piet
AU - Hillebrand, Arjan
PY - 2023
Y1 - 2023
N2 - Epilepsy surgery is the treatment of choice for drug-resistant epilepsy patients, but only leads to seizure freedom for roughly two in three patients. To address this problem, we designed a patient-specific epilepsy surgery model combining large-scale magnetoencephalography (MEG) brain networks with an epidemic spreading model. This simple model was enough to reproduce the stereo-tactical electroencephalography (SEEG) seizure propagation patterns of all patients (N = 15), when considering the resection areas (RA) as the epidemic seed. Moreover, the goodness of fit of the model predicted surgical outcome. Once adapted for each patient, the model can generate alternative hypothesis of the seizure onset zone and test different resection strategies in silico. Overall, our findings indicate that spreading models based on patient-specific MEG connectivity can be used to predict surgical outcomes, with better fit results and greater reduction on seizure propagation linked to higher likelihood of seizure freedom after surgery. Finally, we introduced a population model that can be individualized by considering only the patient-specific MEG network, and showed that it not only conserves but improves the group classification. Thus, it may pave the way to generalize this framework to patients without SEEG recordings, reduce the risk of overfitting and improve the stability of the analyses.
AB - Epilepsy surgery is the treatment of choice for drug-resistant epilepsy patients, but only leads to seizure freedom for roughly two in three patients. To address this problem, we designed a patient-specific epilepsy surgery model combining large-scale magnetoencephalography (MEG) brain networks with an epidemic spreading model. This simple model was enough to reproduce the stereo-tactical electroencephalography (SEEG) seizure propagation patterns of all patients (N = 15), when considering the resection areas (RA) as the epidemic seed. Moreover, the goodness of fit of the model predicted surgical outcome. Once adapted for each patient, the model can generate alternative hypothesis of the seizure onset zone and test different resection strategies in silico. Overall, our findings indicate that spreading models based on patient-specific MEG connectivity can be used to predict surgical outcomes, with better fit results and greater reduction on seizure propagation linked to higher likelihood of seizure freedom after surgery. Finally, we introduced a population model that can be individualized by considering only the patient-specific MEG network, and showed that it not only conserves but improves the group classification. Thus, it may pave the way to generalize this framework to patients without SEEG recordings, reduce the risk of overfitting and improve the stability of the analyses.
KW - Epilepsy surgery
KW - MEG brainn networks
KW - Seizure modeling
KW - Epidemic spreading model
KW - Personalized medicine
UR - http://www.scopus.com/inward/record.url?scp=85163374615&partnerID=8YFLogxK
U2 - 10.1162/netn_a_00305
DO - 10.1162/netn_a_00305
M3 - Article
SN - 2472-1751
VL - 7
SP - 811
EP - 843
JO - Network Neuroscience
JF - Network Neuroscience
IS - 2
ER -