PetCaseFinder

Peer-reviewed veterinary case report

Forecasting seizures in dogs with naturally occurring epilepsy.

Journal:
PloS one
Year:
2014
Authors:
Howbert, J Jeffry et al.
Affiliation:
NeuroVista Corp. · United States
Species:
dog

Plain-English summary

Researchers looked into whether they could predict seizures in dogs with epilepsy by using a special device that continuously monitors brain activity. They studied three dogs with a type of epilepsy called focal epilepsy and recorded their brain waves over a period of 6.5 to 15 months, capturing a total of 125 seizures. The team found that their method of forecasting seizures was more effective than random guessing, especially when they focused on seizures that were spaced at least four hours apart. This study suggests that seizures in dogs are not random and that it might be possible to predict them using this brain monitoring technique. Overall, the treatment approach showed promise for improving seizure forecasting in dogs with epilepsy.

Abstract

Seizure forecasting has the potential to create new therapeutic strategies for epilepsy, such as providing patient warnings and delivering preemptive therapy. Progress on seizure forecasting, however, has been hindered by lack of sufficient data to rigorously evaluate the hypothesis that seizures are preceded by physiological changes, and are not simply random events. We investigated seizure forecasting in three dogs with naturally occurring focal epilepsy implanted with a device recording continuous intracranial EEG (iEEG). The iEEG spectral power in six frequency bands: delta (0.1-4 Hz), theta (4-8 Hz), alpha (8-12 Hz), beta (12-30 Hz), low-gamma (30-70 Hz), and high-gamma (70-180 Hz), were used as features. Logistic regression classifiers were trained to discriminate labeled pre-ictal and inter-ictal data segments using combinations of the band spectral power features. Performance was assessed on separate test data sets via 10-fold cross-validation. A total of 125 spontaneous seizures were detected in continuous iEEG recordings spanning 6.5 to 15 months from 3 dogs. When considering all seizures, the seizure forecasting algorithm performed significantly better than a Poisson-model chance predictor constrained to have the same time in warning for all 3 dogs over a range of total warning times. Seizure clusters were observed in all 3 dogs, and when the effect of seizure clusters was decreased by considering the subset of seizures separated by at least 4 hours, the forecasting performance remained better than chance for a subset of algorithm parameters. These results demonstrate that seizures in canine epilepsy are not randomly occurring events, and highlight the feasibility of long-term seizure forecasting using iEEG monitoring.

Find similar cases for your pet

PetCaseFinder finds other peer-reviewed reports of pets with the same symptoms, plus a plain-English summary of what was tried across them.

Search related cases →

Original publication: https://pubmed.ncbi.nlm.nih.gov/24416133/