TY - GEN
T1 - A Computationally Efficient Model for Predicting Successful Memory Encoding Using Machine-Learning-based EEG Channel Selection
AU - Saboo, Krishnakant V.
AU - Varatharajah, Yogatheesan
AU - Berry, Brent M.
AU - Sperling, Michael R.
AU - Gorniak, Richard
AU - Davis, Kathryn A.
AU - Jobst, Barbara C.
AU - Gross, Robert E.
AU - Lega, Bradley
AU - Sheth, Sameer A.
AU - Kahana, Michael J.
AU - Kucewicz, Michal T.
AU - Worrell, Gregory A.
AU - Iyer, Ravishankar K.
N1 - Funding Information:
ACKNOWLEDGMENT This work was partly supported by National Science Foundation grants CNS-1337732 and CNS-1624790, DARPA Restoring Active Memory program (Cooperative Agreement N66001-14-2-4032), and Mayo Clinic and Illinois Alliance Fellowships for Technology-based Healthcare Research. We thank Arjun Athreya, Subho Banerjee, Saurabh Jha, Jenny Applequist, Frances Baker and the reviewers for their valuable feedback.
Funding Information:
This work was partly supported by National Science Foundation grants CNS-1337732 and CNS-1624790, DARPA Restoring Active Memory program (Cooperative Agreement N66001-14-2-4032), and Mayo Clinic and Illinois Alliance Fellowships for Technology-based Healthcare Research. We thank Arjun Athreya, Subho Banerjee, Saurabh Jha, Jenny Applequist, Frances Baker and the reviewers for their valuable feedback.
Publisher Copyright:
© 2019 IEEE.
PY - 2019/5/16
Y1 - 2019/5/16
N2 - Computational cost is an important consideration for memory encoding prediction models that use data from dozens of implanted electrodes. We propose a method to reduce computational expense by selecting a subset of all the electrodes to build the prediction model. The electrodes were selected based on their likelihood of measuring brain activity useful for predicting memory encoding better than chance (in terms of AUC). A logistic regression prediction model was built using spectral features of intracranial electroencephalography (iEEG) from the selected electrodes. We demonstrate our method on iEEG data from 37 human subjects performing free recall verbal short-term memory tasks. The method achieves a 36.3% reduction in the number of electrodes used for prediction, resulting in a 64.9% reduction in inference computation time with just a 0.3% loss in prediction performance compared to the case when all electrodes were used. The electrodes selected using our method provided improved prediction performance compared to those electrodes that were not selected in 31 out of 37 patients. Building upon this observation, we also developed a method to identify the subjects for whom the proposed electrode selection method would be beneficial.
AB - Computational cost is an important consideration for memory encoding prediction models that use data from dozens of implanted electrodes. We propose a method to reduce computational expense by selecting a subset of all the electrodes to build the prediction model. The electrodes were selected based on their likelihood of measuring brain activity useful for predicting memory encoding better than chance (in terms of AUC). A logistic regression prediction model was built using spectral features of intracranial electroencephalography (iEEG) from the selected electrodes. We demonstrate our method on iEEG data from 37 human subjects performing free recall verbal short-term memory tasks. The method achieves a 36.3% reduction in the number of electrodes used for prediction, resulting in a 64.9% reduction in inference computation time with just a 0.3% loss in prediction performance compared to the case when all electrodes were used. The electrodes selected using our method provided improved prediction performance compared to those electrodes that were not selected in 31 out of 37 patients. Building upon this observation, we also developed a method to identify the subjects for whom the proposed electrode selection method would be beneficial.
UR - http://www.scopus.com/inward/record.url?scp=85066738980&partnerID=8YFLogxK
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U2 - 10.1109/NER.2019.8717057
DO - 10.1109/NER.2019.8717057
M3 - Conference contribution
AN - SCOPUS:85066738980
T3 - International IEEE/EMBS Conference on Neural Engineering, NER
SP - 323
EP - 327
BT - 9th International IEEE EMBS Conference on Neural Engineering, NER 2019
PB - IEEE Computer Society
T2 - 9th International IEEE EMBS Conference on Neural Engineering, NER 2019
Y2 - 20 March 2019 through 23 March 2019
ER -