Computational EEG attributes predict response to therapy for epileptic spasms.
Clin Neurophysiol
; 163: 39-46, 2024 Jul.
Article
in En
| MEDLINE
| ID: mdl-38703698
ABSTRACT
OBJECTIVE:
We set out to evaluate whether response to treatment for epileptic spasms is associated with specific candidate computational EEG biomarkers, independent of clinical attributes.METHODS:
We identified 50 children with epileptic spasms, with pre- and post-treatment overnight video-EEG. After EEG samples were preprocessed in an automated fashion to remove artifacts, we calculated amplitude, power spectrum, functional connectivity, entropy, and long-range temporal correlations (LRTCs). To evaluate the extent to which each feature is independently associated with response and relapse, we conducted logistic and proportional hazards regression, respectively.RESULTS:
After statistical adjustment for the duration of epileptic spasms prior to treatment, we observed an association between response and stronger baseline and post-treatment LRTCs (P = 0.042 and P = 0.004, respectively), and higher post-treatment entropy (P = 0.003). On an exploratory basis, freedom from relapse was associated with stronger post-treatment LRTCs (P = 0.006) and higher post-treatment entropy (P = 0.044).CONCLUSION:
This study suggests that multiple EEG features-especially LRTCs and entropy-may predict response and relapse.SIGNIFICANCE:
This study represents a step toward a more precise approach to measure and predict response to treatment for epileptic spasms.Key words
Full text:
1
Database:
MEDLINE
Main subject:
Spasms, Infantile
/
Electroencephalography
Limits:
Child
/
Child, preschool
/
Female
/
Humans
/
Infant
/
Male
Language:
En
Journal:
Clin Neurophysiol
Journal subject:
NEUROLOGIA
/
PSICOFISIOLOGIA
Year:
2024
Type:
Article
Affiliation country:
United States