Identifying seizure risk factors: A comparison of sleep, weather, and temporal features using a Bayesian forecast.
Daniel E PayneKatrina L DellPhillipa J KarolyVaclav KremenVaclav GerlaLevin KuhlmannGregory A WorrellMark J CookDavid B GraydenDean R FreestonePublished in: Epilepsia (2020)
Environmental and physiological data, including sleep, weather, and temporal features, provide significant predictive information on upcoming seizures. Although forecasts did not perform as well as algorithms that use invasive intracranial electroencephalography, the results were significantly above chance. Complementary signal features derived from an individual's historic seizure records may provide useful prior information to augment traditional seizure detection or forecasting algorithms. Importantly, many predictive features used in this study can be measured noninvasively.