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Self-Supervised Data-Driven Approach Defines Pathological High-Frequency Oscillations in Human. | LitMetric

AI Article Synopsis

  • The study examines high-frequency oscillations (HFOs) in the brain to find a reliable way to differentiate between harmful and normal oscillations during epilepsy monitoring.
  • Researchers analyzed over 686,000 HFOs from 185 epilepsy patients, using advanced techniques like variational autoencoders to identify unique characteristics of pathological HFOs that correlate with seizure activity.
  • The findings indicate that these pathological HFOs have distinct features, show a strong link to seizure onset zones, and provide better predictive outcomes for post-surgery seizure control compared to traditional classification methods.

Article Abstract

Objective: Interictal high-frequency oscillations (HFOs) are a promising neurophysiological biomarker of the epileptogenic zone (EZ). However, objective criteria for distinguishing pathological from physiological HFOs remain elusive, hindering clinical application. We investigated whether the distinct mechanisms underlying pathological and physiological HFOs are encapsulated in their signal morphology in intracranial EEG (iEEG) recordings and whether this mechanism-driven distinction could be simulated by a deep generative model.

Methods: In a retrospective cohort of 185 epilepsy patients who underwent iEEG monitoring, we analyzed 686,410 HFOs across 18,265 brain contacts. To learn morphological characteristics, each event was transformed into a time-frequency plot and input into a variational autoencoder. We characterized latent space clusters containing morphologically defined putative pathological HFOs (mpHFOs) using interpretability analysis, including latent space disentanglement and time-domain perturbation.

Results: mpHFOs showed strong associations with expert-defined spikes and were predominantly located within the seizure onset zone (SOZ). Discovered novel pathological features included high power in the gamma (30-80 Hz) and ripple (>80 Hz) bands centered on the event. These characteristics were consistent across multiple variables, including institution, electrode type, and patient demographics. Predicting 12-month postoperative seizure outcomes using the resection ratio of mpHFOs outperformed unclassified HFOs (F1=0.72 vs. 0.68) and matched current clinical standards using SOZ resection (F1=0.74). Combining mpHFO data with demographic and SOZ resection status further improved prediction accuracy (F1=0.83).

Interpretation: Our data-driven approach yielded a novel, explainable definition of pathological HFOs, which has the potential to further enhance the clinical use of HFOs for EZ delineation.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11261948PMC
http://dx.doi.org/10.1101/2024.07.10.24310189DOI Listing

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