A One-Shot Learning, Online-Tuning, Closed-Loop Epilepsy Management SoC with 0.97μJ/Classification and 97.8% Vector-Based Sensitivity

2021 Symposium on VLSI Circuits(2021)

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摘要
We propose a patient-specific closed-loop epilepsy tracking and real-time suppression SoC with the first-in-literature one-shot learning and online tuning. The entire SoC consumes the lowest energy reported to date of 0.97μJ/class. and occupies the smallest area of 0.13mm 2 /Ch. Verified with CHB-MIT database and a local hospital patient, the 9.8b ENOB 2-Cycle AFE combined with the GTCA-SVM DBE achieves vector-based sensitivity, specificity, and latency of 97.8%, 99.5%, and <1s.
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关键词
GTCA-SVM DBE,electroencephalography,CHB-MIT database,closed-loop epilepsy management,local hospital patient,first-in-literature one-shot learning,patient-specific closed-loop epilepsy tracking,vector-based sensitivity
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