Emily D Schlafly, Daniel Carbonero, Catherine J Chu, Mark A Kramer
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引用次数: 0
摘要
癫痫是一种主要的神经系统疾病,其特点是反复、自发的癫痫发作。对于耐药性癫痫患者,治疗方法包括神经刺激或手术切除致痫区(EZ),即导致癫痫发作的脑区。要精确定位 EZ 需要可靠的生物标志物。尖峰波纹--与大振幅癫痫放电同时出现的高频振荡--作为一种候选生物标志物已逐渐受到重视。然而,尖峰波纹检测仍然是一项挑战。金标准方法需要专家手动观察和解释脑电压记录,这限制了可重复性和高通量分析。要解决这些局限性,需要更客观、高效和自动化的尖峰波纹检测方法,包括利用深度神经网络的方法。尽管取得了进步,但数据集的异质性和稀缺性严重限制了机器学习的性能。我们的研究探索了用于尖峰波纹检测的长短期记忆(LSTM)神经网络架构,利用数据增强来提高分类器性能。我们强调了在增强数据和活体数据上结合训练以增强尖峰波纹检测并最终提高癫痫治疗诊断准确性的潜力。
A data augmentation procedure to improve detection of spike ripples in brain voltage recordings.
Epilepsy is a major neurological disorder characterized by recurrent, spontaneous seizures. For patients with drug-resistant epilepsy, treatments include neurostimulation or surgical removal of the epileptogenic zone (EZ), the brain region responsible for seizure generation. Precise targeting of the EZ requires reliable biomarkers. Spike ripples - high-frequency oscillations that co-occur with large amplitude epileptic discharges - have gained prominence as a candidate biomarker. However, spike ripple detection remains a challenge. The gold-standard approach requires an expert manually visualize and interpret brain voltage recordings, which limits reproducibility and high-throughput analysis. Addressing these limitations requires more objective, efficient, and automated methods for spike ripple detection, including approaches that utilize deep neural networks. Despite advancements, dataset heterogeneity and scarcity severely limit machine learning performance. Our study explores long-short term memory (LSTM) neural network architectures for spike ripple detection, leveraging data augmentation to improve classifier performance. We highlight the potential of combining training on augmented and in vivo data for enhanced spike ripple detection and ultimately improving diagnostic accuracy in epilepsy treatment.
期刊介绍:
The international journal publishing original full-length research articles, short communications, technical notes, and reviews on all aspects of neuroscience
Neuroscience Research is an international journal for high quality articles in all branches of neuroscience, from the molecular to the behavioral levels. The journal is published in collaboration with the Japan Neuroscience Society and is open to all contributors in the world.