Deep-learning for seizure forecasting in canines with epilepsy

被引:64
|
作者
Nejedly, Petr [1 ,3 ,4 ]
Kremen, Vaclav [1 ,2 ,5 ]
Sladky, Vladimir [1 ,3 ]
Nasseri, Mona [1 ]
Guragain, Hari [1 ]
Klimes, Petr [1 ,4 ]
Cimbalnik, Jan [1 ,3 ]
Varatharajah, Yogatheesan [1 ,6 ]
Brinkmann, Benjamin H. [1 ,2 ]
Worrell, Gregory A. [1 ,2 ]
机构
[1] Mayo Clin, Dept Neurol, Mayo Syst Electrophysiol Lab, 200 First St SW, Rochester, MN 55905 USA
[2] Mayo Clin, Dept Physiol & Biomed Engn, Rochester, MN 55905 USA
[3] St Annes Univ Hosp, Int Clin Res Ctr, Brno, Czech Republic
[4] Czech Acad Sci, Inst Sci Instruments, Brno, Czech Republic
[5] Czech Tech Univ, Czech Inst Informat Robot & Cybernet, Prague, Czech Republic
[6] Univ Illinois, Dept Elect & Comp Engn, Urbana, IL USA
关键词
real-time seizure forecasting; epilepsy; canine epilepsy; machine learning; deep learning; convolutional neural networks (CNN); Monte Carlo simulation; NEURAL-NETWORKS; LONG-TERM; PREDICTION; SYSTEM;
D O I
10.1088/1741-2552/ab172d
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Objective. This paper introduces a fully automated, subject-specific deep-learning convolutional neural network (CNN) system for forecasting seizures using ambulatory intracranial EEG (iEEG). The system was tested on a hand-held device (Mayo Epilepsy Assist Device) in a pseudo-prospective mode using iEEG from four canines with naturally occurring epilepsy. Approach. The system was trained and tested on 75 seizures collected over 1608 d utilizing a genetic algorithm to optimize forecasting hyper-parameters (prediction horizon (PH), median filter window length, and probability threshold) for each subject-specific seizure forecasting model. The trained CNN models were deployed on a hand-held tablet computer and tested on testing iEEG datasets from four canines. The results from the iEEG testing datasets were compared with Monte Carlo simulations using a Poisson random predictor with equal time in warning to evaluate seizure forecasting performance. Main results. The results show the CNN models forecasted seizures at rates significantly above chance in all four dogs (p < 0.01, with mean 0.79 sensitivity and 18% time in warning). The deep learning method presented here surpassed the performance of previously reported methods using computationally expensive features with standard machine learning methods like logistic regression and support vector machine classifiers. Significance. Our findings principally support the feasibility of deploying trained CNN models on a hand-held computational device (Mayo Epilepsy Assist Device) that analyzes streaming iEEG data for real-time seizure forecasting.
引用
收藏
页数:10
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