Hsieh, Yi YenYi YenHsiehLin, Yu ChengYu ChengLinCHIA-HSIANG YANG2023-08-212023-08-212023-01-0100189200https://scholars.lib.ntu.edu.tw/handle/123456789/634609This work presents the world's first neural signal processor for seizure prediction, which includes a preprocessing unit, a feature extractor, a reconfigurable support vector machine (SVM) kernel, and a postprocessing unit. Seizure prediction performance is enhanced by on-chip training for model adaptation. Design optimization is applied across the layers of abstraction to minimize the area and energy. The area of the feature extractor is reduced by 28% with an approximated energy operator (AEO). The proposed scaling-based Newton-Raphson (NR) divider reduces the required number of iterations for division by 62.5%. For alternating direction method of multipliers (ADMM)- based SVM training, the computational complexity is reduced by up to 99.9% through pointer-based matrix multiplication. By leveraging the LDL decomposition, 80% multiplications for updating weights are saved. The chip achieves a seizure prediction performance with a 92.0% sensitivity and a 0.57/h false alarm rate (FAR). The training latency is 8.44 ms with a power dissipation of 2.31 mW at 6.05 MHz. Compared with an ARM Cortex-M3 microcontroller, this work achieves a 124× higher area efficiency and a 299× higher energy efficiency. The chip also supports seizure detection and achieves a sensitivity of 98.6% and an FAR of 0.18/h, exceeding the state-of-the-art designs.Closed-loop system | digital CMOS integrated circuits | neuromodulation | seizure prediction | support vector machine (SVM)[SDGs]SDG7A 96.2-nJ/class Neural Signal Processor with Adaptable Intelligence for Seizure Predictionjournal article10.1109/JSSC.2022.32182402-s2.0-85141628701https://api.elsevier.com/content/abstract/scopus_id/85141628701