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基于多层反射率计算的相映射函数元建模在高重复性表面等离子体共振生物传感中的应用。

Multi-Layer Reflectivity Calculation Based Meta-Modeling of the Phase Mapping Function for Highly Reproducible Surface Plasmon Resonance Biosensing.

机构信息

Department of Biomedical Engineering, National Taiwan University, No. 1, Sec. 4, Roosevelt Rd., Taipei 10617, Taiwan.

Graduate Institute of Bio-Electronics and Bio-Informatics, National Taiwan University, No. 1, Sec. 4, Roosevelt Rd., Taipei 10617, Taiwan.

出版信息

Biosensors (Basel). 2021 Mar 23;11(3):95. doi: 10.3390/bios11030095.

Abstract

Phase-sensitive surface plasmon resonance biosensors are known for their high sensitivity. One of the technology bottle-necks of such sensors is that the phase sensorgram, when measured at fixed angle set-up, can lead to low reproducibility as the signal conveys multiple data. Leveraging the sensitivity, while securing satisfying reproducibility, is therefore is an underdiscussed key issue. One potential solution is to map the phase sensorgram into refractive index unit by the use of sensor calibration data, via a simple non-linear fit. However, basic fitting functions poorly portray the asymmetric phase curve. On the other hand, multi-layer reflectivity calculation based on the Fresnel coefficient can be employed for a precise mapping function. This numerical approach however lacks the explicit mathematical formulation to be used in an optimization process. To this end, we aim to provide a first methodology for the issue, where mapping functions are constructed from Bayesian optimized multi-layer model of the experimental data. The challenge of using multi-layer model as optimization trial function is addressed by meta-modeling via segmented polynomial approximation. A visualization approach is proposed for assessment of the goodness-of-the-fit on the optimized model. Using metastatic cancer exosome sensing, we demonstrate how the present work paves the way toward better plasmonic sensors.

摘要

相敏表面等离子体共振生物传感器以其高灵敏度而闻名。这种传感器的技术瓶颈之一是,在固定角度设置下测量的相位传感器图谱会导致低重现性,因为信号传达了多个数据。因此,利用灵敏度的同时确保令人满意的重现性是一个未充分讨论的关键问题。一种潜在的解决方案是通过使用传感器校准数据,通过简单的非线性拟合,将相位传感器图谱映射到折射率单位。然而,基本拟合函数不能很好地描绘非对称相位曲线。另一方面,基于菲涅耳系数的多层反射率计算可用于精确的映射函数。然而,这种数值方法缺乏明确的数学公式来用于优化过程。为此,我们旨在提供一种针对该问题的方法,其中映射函数是从实验数据的贝叶斯优化多层模型构建的。通过分段多项式逼近来解决将多层模型用作优化试验函数的挑战。提出了一种可视化方法来评估优化模型的拟合优度。通过转移性癌症外泌体传感,我们展示了本工作如何为更好的等离子体传感器铺平道路。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/49f0/8004883/44f09e76b905/biosensors-11-00095-g001.jpg

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