Litcius/Paper detail

Memristive Neural Networks for Predicting Seizure Activity

Svetlana A. Gerasimova, Albina Lebedeva, N V Gromov, Anton Malkov, Anastasiya Fedulina, Tatiana A. Levanova, Alexander N. Pisarchik

2023Sovremennye tehnologii v medicine10 citationsDOIOpen Access PDF

Abstract

is to assess the possibilities of predicting epileptiform activity using the neuronal activity data recorded from the hippocampus and medial entorhinal cortex of mice with chronic epileptiform activity. To reach this goal, a deep artificial neural network (ANN) has been developed and its implementation based on memristive devices has been demonstrated. Materials and Methods: (Y)/TiN/Ti. In order to train the developed ANN to predict epileptiform activity, a supervised learning algorithm was used, which allowed us to adjust the network parameters and train LSTM on the described recordings of neuronal activity. Results: After training on the LFP recordings from the hippocampus and medial entorhinal cortex of the mice with chronic epileptiform activity, the proposed deep ANN has demonstrated high values of evaluation metric (root-mean-square error, RMSE) and successfully predicted epileptiform activity shortly before its occurrence (40 ms). The results of the numerical experiments have shown that the RMSE value of 0.019 was reached, which indicates the efficacy of proposed approach. The accuracy of epileptiform activity prediction 40 ms before its occurrence is a significant result and shows the potential of the developed neural network architecture. Conclusion: The proposed deep ANN can be used to predict pathological neuronal activity including epileptic seizure (focal) activity in mice before its actual occurrence. Besides, it can be applied for building a long-term prognosis of the disease course based on the LFP data. Thus, the proposed ANN based on memristive devices represents a novel approach to the prediction and analysis of pathological neuronal activity possessing a potential for improving the diagnosis and prognostication of epileptic seizures and other diseases associated with neuronal activity.

Topics & Concepts

Local field potentialHippocampusNeuroscienceEntorhinal cortexArtificial neural networkPremovement neuronal activityNeural activityComputer scienceArtificial intelligencePsychologyEEG and Brain-Computer InterfacesAdvanced Memory and Neural ComputingFunctional Brain Connectivity Studies