一种模拟最接近类的多质心分类器实现,用于麻醉深度监测

Vassilis Alimisis, Vassilis Mouzakis, Georgios Gennis, Errikos Tsouvalas, P. Sotiriadis
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引用次数: 0

摘要

在手术过程中,监测患者的麻醉深度对于维持安全的镇静状态至关重要。高剂量会直接影响病人的健康,而低剂量可能会扰乱手术,进而导致不可避免的损害。为此,本研究提出了一种新颖的、低功耗(1.7 μ W)、低电压(0.6V)的多质心最近类分类器模拟架构,用于麻醉深度监测。该体系结构由钟形函数电路和Lazzaro argmax算子电路组成。为了验证所提出的分类器的正确操作,使用了真实世界的麻醉深度数据集。将布局后仿真结果与基于软件的仿真结果进行了比较,验证了所提设计的高精度。采用Cadence集成电路套件,在台积电90nm CMOS工艺中实现并进行了仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Analog Nearest Class with Multiple Centroids Classifier Implementation, for Depth of Anesthesia Monitoring
Monitoring the Depth of Anesthesia on a patient is crucial to maintain a safe sedation state during a surgical operation. A high dosage can directly affect the patient's health, while a low one may disrupt the operation and, in turn, lead to unavoidable damage. To this end, this work proposes a novel, low power $(1.7\mu W)$, low voltage (0.6V) analog architecture of a Nearest Class with Multiple Centroids classifier for depth of anesthesia monitoring. The architecture consists of a bell-shaped function circuit and the Lazzaro argmax operator circuit. To verify the proper operation of the proposed classifier a real-world depth of Anesthesia dataset is utilized. Post-layout simulation results were compared with software-based ones to confirm the high accuracy of the proposed design. The implemented architecture was realized and simulated in a TSMC 90nm CMOS process, using the Cadence IC Suite.
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