Multi-branch convolutional neural network and intracranial EEG high-frequency oscillations predict post-surgical seizure outcomes

多分支卷积神经网络和颅内脑电图高频振荡可预测术后癫痫发作结果

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Abstract

OBJECTIVE: Pathological High-Frequency Oscillations (HFOs) identify epileptogenic cortex, but their surgical utility is unproven. Current epilepsy surgery planning relies on a "gold standard" multidisciplinary consensus. We tested if a Convolutional Neural Network (CNN), leveraging HFO features, neuroanatomy, and surgical boundaries, could predict seizure freedom. METHODS: HFOs were detected during NREM sleep EEG in 78 pre-surgical patients. A three-branch CNN was trained using SEEG contact inputs: stereotaxic coordinates, resection status, and 37 HFO features, utilizing known post-operative seizure outcome. Branches encoded spatial, electrophysiological, and surgical data. Outputs were concatenated and processed by fully connected layers; a final sigmoid layer predicted post-operative seizure freedom probability. Univariate HFO feature analysis employed two-way mixed-effect ANOVAs. RESULTS: The HFO-informed CNN model distinguished seizure-free patients with 92% accuracy using fivefold cross-validation. Univariate analysis suggested that fast ripples, especially those superimposed on epileptiform spikes, are important HFO features for the model. CONCLUSIONS: A trained CNN model integrating HFO features, neuroanatomy, and surgical boundaries can accurately predict seizure freedom following "gold standard" surgical planning. SIGNIFICANCE: This CNN model, using inter-ictal non-REM sleep recordings, can predict surgical success and allow counterfactual virtual resections to be iteratively tested by the CNN ML to potentially improve post-operative seizure outcome.

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