2021
DOI: 10.21203/rs.3.rs-1105250/v1
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Engineering Nonlinear Epileptic Biomarkers Using Deep Learning and Benford’s Law

Abstract: In this study we designed two deep neural networks to encode 16 feature latent spaces for early seizure detection in intracranial EEG and compared them to 16 widely used engineered metrics: Epileptogenicity Index (EI), Phase Locked High Gamma (PLHG), Time and Frequency Domain Cho Gaines Distance (TDCG, FDCG), relative band powers, and log absolute band powers (from alpha, beta, theta, delta, gamma, and high gamma bands. The deep learning models were pretrained for seizure identification on the time and frequen… Show more

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“…Our in silico approach using five different data sets, and Gini feature importance ranking to maximize generalizability, 44,45 identified 27 candidate markers. Expression of these genes was confirmed in tumor tissue collected at surgery and was elevated in the TCGA-PRAD data set.…”
Section: Discussionmentioning
confidence: 99%
“…Our in silico approach using five different data sets, and Gini feature importance ranking to maximize generalizability, 44,45 identified 27 candidate markers. Expression of these genes was confirmed in tumor tissue collected at surgery and was elevated in the TCGA-PRAD data set.…”
Section: Discussionmentioning
confidence: 99%