Automatic identification of successful memory encoding in stereo-eeg of refractory, mesial temporal lobe epilepsy

Surgical resection of portions of the temporal lobe is the standard of care for patients with refractory mesial temporal lobe epilepsy. While this reduces seizures, it often results in an inability to form new memories, which leads to difficulties in social situations, learning, and suboptimal quality of life. Learning about the success or failure to form new memory in such patients is critical if we are to generate neuromodulation-based therapies. To this end, we tackle the many challenges in analyzing memory formation when their brains are recorded using stereoencephalography (sEEG) in a Free Recall task. Our contributions are threefold. First, we compute a rich measure of brain connectivity by computing the phase locking value statistic (synchrony) between pairs of regions, over hundreds of word memorization trials. Second, we leverage the rich information (over 400 values per pair of probed brain regions) to form consistent length feature vectors for classifier training. Third, we train and evaluate seven different types of classifier models and identify which ones achieve the highest accuracy and which brain features are most important for high accuracy. We assess our approach on data from 37 patients pre-resection surgery. We achieve up to 73% accuracy distinguishing successful from unsuccessful memory formation in the human brain from just 1.6 sec epochs of sEEG data.

[1]  M. Kahana,et al.  Synchronous and Asynchronous Theta and Gamma Activity during Episodic Memory Formation , 2013, The Journal of Neuroscience.

[2]  M. Kahana,et al.  Slow-Theta-to-Gamma Phase-Amplitude Coupling in Human Hippocampus Supports the Formation of New Episodic Memories. , 2016, Cerebral cortex.

[3]  Richard Simon,et al.  Bias in error estimation when using cross-validation for model selection , 2006, BMC Bioinformatics.

[4]  P Golland,et al.  Prediction of Successful Memory Encoding from fMRI Data. , 2008, Medical image computing and computer-assisted intervention : MICCAI ... International Conference on Medical Image Computing and Computer-Assisted Intervention.

[5]  Yong He,et al.  BrainNet Viewer: A Network Visualization Tool for Human Brain Connectomics , 2013, PloS one.

[6]  M. Kahana The Cognitive Correlates of Human Brain Oscillations , 2006, The Journal of Neuroscience.

[7]  Christian Bauckhage,et al.  Prediction of successful memory encoding based on single-trial rhinal and hippocampal phase information , 2016, NeuroImage.

[8]  F. Varela,et al.  Measuring phase synchrony in brain signals , 1999, Human brain mapping.