异丙酚
支持向量机
结垢
检出限
持续监测
电极
生物医学工程
生物系统
治疗药物监测
计算机科学
人工智能
化学
材料科学
色谱法
麻醉
医学
膜
药理学
药代动力学
工程类
生物化学
生物
物理化学
运营管理
作者
Simone Aiassa,Ivan Ny Hanitra,Gabriele Sandri,Tiberiu Totu,Francesco Grassi,Francesca Criscuolo,Giovanni De Micheli,Sandro Carrara,Danilo Demarchi
标识
DOI:10.1016/j.bios.2020.112666
摘要
We present a new method for electrochemical sensing, which compensates the fouling effect of propofol through machine learning (ML) model. Direct and continuous monitoring of propofol is crucial in the development of automatic systems for control of drug infusion in anaesthesiology. The fouling effect on electrodes discourages the possibility of continuous online monitoring of propofol since polymerization of the surface produces sensor drift. Several approaches have been proposed to limit the phenomenon at the biochemical interface; instead, here, we present a novel ML-based calibration procedure. In this paper, we analyse a dataset of 600 samples acquired through staircase cyclic voltammetry (SCV), resembling the scenario of continuous monitoring of propofol, both in PBS and in undiluted human serum, to demonstrate that ML-based model solves electrode fouling of anaesthetics. The proposed calibration approach is based on Gaussian radial basis function support vector classifier (RBF-SVC) that achieves classification accuracy of 98.9% in PBS, and 100% in undiluted human serum. The results prove the ability of the ML-based model to correctly classify propofol concentration in the therapeutic range between 1μM and 60μM with levels of 10μM, continuously up to ten minutes, with one sample every 30s.
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