Machine Learning to Classify Relative Seizure Frequency From Chronic Electrocorticography

被引:5
|
作者
Sun, Yueqiu [1 ]
Friedman, Daniel [2 ,3 ]
Dugan, Patricia [2 ,3 ]
Holmes, Manisha [2 ,3 ]
Wu, Xiaojing [2 ,3 ]
Liu, Anli [2 ,3 ]
机构
[1] NYU Ctr Data Sci, New York, NY USA
[2] NYU, Comprehens Epilepsy Ctr, 223 East 34th St, New York, NY 10016 USA
[3] New York Univ Langone Hlth, Dept Neurol, New York, NY USA
基金
美国国家卫生研究院;
关键词
Electrocorticography; Responsive neurostimulation; Biomarker; Outcome prediction; Machine learning; LONG-TERM; BRAIN-STIMULATION; EPILEPSY; PATTERNS; HUMANS; SYSTEM;
D O I
10.1097/WNP.0000000000000858
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Purpose:Brain responsive neurostimulation (NeuroPace) treats patients with refractory focal epilepsy and provides chronic electrocorticography (ECoG). We explored how machine learning algorithms applied to interictal ECoG could assess clinical response to changes in neurostimulation parameters.Methods:We identified five responsive neurostimulation patients each with >= 200 continuous days of stable medication and detection settings (median, 358 days per patient). For each patient, interictal ECoG segments for each month were labeled as "high" or "low" to represent relatively high or low long-episode (i.e., seizure) count compared with the median monthly long-episode count. Power from six conventional frequency bands from four responsive neurostimulation channels were extracted as features. For each patient, five machine learning algorithms were trained on 80% of ECoG, then tested on the remaining 20%. Classifiers were scored by the area-under-the-receiver-operating-characteristic curve. We explored how individual circadian cycles of seizure activity could inform classifier building.Results:Support vector machine or gradient boosting models achieved the best performance, ranging from 0.705 (fair) to 0.892 (excellent) across patients. High gamma power was the most important feature, tending to decrease during low-seizure-frequency epochs. For two subjects, training on ECoG recorded during the circadian ictal peak resulted in comparable model performance, despite less data used.Conclusions:Machine learning analysis on retrospective background ECoG can classify relative seizure frequency for an individual patient. High gamma power was the most informative, whereas individual circadian patterns of seizure activity can guide model building. Machine learning classifiers built on interictal ECoG may guide stimulation programming.
引用
收藏
页码:151 / 159
页数:9
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