HH model based smart deep brain stimulator to detect, predict and control epilepsy using machine learning algorithm

被引:6
作者
Narayanan, S. Nambi [1 ]
Subbian, Sutha [1 ]
机构
[1] Anna Univ, Dept Instrumentat Engg, MIT Campus, Chennai 44, Tamilnadu, India
基金
中国国家自然科学基金; 北京市自然科学基金;
关键词
Epilepsy; SDBS; HH Model; NARMA-L2; Controller; NMPC; Ensemble technique; LSTM-RNN; SINGLE-NEURON DYNAMICS;
D O I
10.1016/j.jneumeth.2023.109825
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Background: Epilepsy is the most common neurological disorder in the world. To control epilepsy, deep brain stimulation is one of the widely accepted treatment techniques. However, conventional deep brain stimulation technique provides continuous stimulation without optimizing the stimulation parameters, resulting in adverse side effects and unexpected death. Hence, understanding the dynamic behavior of brain neural networks at a cellular level is required for patient-specific epilepsy treatment. Considering the underlying mechanism of a single neuronal shift in the brain neural network, computational model-based techniques have a new face for healthcare, which aims to develop effective medical devices for preclinical investigations.New method: This paper discusses the design of a Smart Deep Brain Stimulator (SDBS) using the Hodgkin-Huxley (HH) conductance-based cellular model of brain neurons to automatically detect, predict and regulate epilepsy against patient-specific conditions. Epileptic activity is simulated as a spike train of action potential due to so-dium and potassium channel conductance variations in the single-neuron HH model. The proposed SDBS consists of three components:-i) seizure detection using bagging and boosting-based ensemble machine learning clas-sifiers, ii) channel conductance prediction using Long Short Term Memory-Recurrent Neural Network (LSTM-RNN) based Deep Neural Network (DNN) for updating model parameters of brain neuron, and iii) model-based intelligent control of epileptic seizure with Nonlinear Autoregressive Moving Average-L2 (NARMA-L2) Controller and Nonlinear Model Predictive Controller (NMPC).Results: For effective treatment, improving the overall accuracy and efficiency of SDBS is essential. For epilepsy detection, the ensemble bagging machine learning algorithm provides better accuracy of 92.7% compared to the ensemble boosting algorithm. LSTM-RNN deep neural network model with four layers predicts the variations in channel conductance with Root Mean Square Error (RMSE) of 0.00568 and 0.009081 for sodium and potassium channel conductance, respectively. From the closed-loop performances of SDBS with an intelligent control scheme, it is observed that SDBS with NMPC provides efficient and accurate stimulation with minimum energy consumption. From a stability point of view, SDBS with NMPC provides better stability than SDBS with NARMA-L2 Controller.Comparison with existing method: The proposed SDBS is designed to generate accurate stimulation pulses for epilepsy patients with specific conditions depending on the neuronal activity of a single neuron. Moreover, it will also adapt to the dynamic condition of epilepsy patients. The existing deep brain stimulator continuously pro-vides stimulation pulses without adapting to the patient's conditions.Conclusion: The proposed SDBS could provide patient-specific treatment based on sodium/potassium channel conductance variations of brain neurons. It will help increase the use of deep brain stimulation techniques and reduce sudden death. Furthermore, the proposed technique will be extended to neural network models with larger neuronal populations to improve the practical feasibility.
引用
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页数:17
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