Li Kezheng, Gupta Roopam, Drayton Alexander, Barth Isabel, Conteduca Donato, Reardon Christopher, Dholakia Kishan, Krauss Thomas F
Department of Physics, University of York, York YO10 5DD, U.K.
SUPA, School of Physics and Astronomy, University of St Andrews, Andrews KY16 9SS, U.K.
ACS Sens. 2020 Nov 25;5(11):3474-3482. doi: 10.1021/acssensors.0c01484. Epub 2020 Oct 27.
Optical biosensors have experienced a rapid growth over the past decade because of their high sensitivity and the fact that they are label-free. Many optical biosensors rely on tracking the change in a resonance signal or an interference pattern caused by the change in refractive index that occurs upon binding to a target biomarker. The most commonly used method for tracking such a signal is based on fitting the data with an appropriate mathematical function, such as a harmonic function or a Fano, Gaussian, or Lorentz function. However, these functions have limited fitting efficiency because of the deformation of data from noise. Here, we introduce an extended Kalman filter projection (EKFP) method to address the problem of resonance tracking and demonstrate that it improves the tolerance to noise, reduces the 3σ noise value, and lowers the limit of detection (LOD). We utilize the method to process the data of experiments for detecting the binding of C-reactive protein in a urine matrix with a chirped guided mode resonance sensor and are able to improve the LOD from 10 to 1 pg/mL. Our method reduces the 3σ noise value of this measurement compared to a simple Fano fit from 1.303 to 0.015 pixels. These results demonstrate the significant advantage of the EKFP method to resolving noisy data of optical biosensors.
在过去十年中,光学生物传感器因其高灵敏度和无需标记的特性而经历了快速发展。许多光学生物传感器依靠追踪共振信号或干涉图案的变化,这种变化是由与目标生物标志物结合时折射率的改变引起的。追踪此类信号最常用的方法是用合适的数学函数拟合数据,比如谐波函数、法诺函数、高斯函数或洛伦兹函数。然而,由于噪声导致的数据变形,这些函数的拟合效率有限。在此,我们引入一种扩展卡尔曼滤波器投影(EKFP)方法来解决共振追踪问题,并证明它提高了对噪声的耐受性,降低了3σ噪声值,还降低了检测限(LOD)。我们利用该方法处理用啁啾导模共振传感器检测尿液基质中C反应蛋白结合的实验数据,能够将检测限从10 pg/mL提高到1 pg/mL。与简单的法诺拟合相比,我们的方法将该测量的3σ噪声值从1.303像素降低到0.015像素。这些结果证明了EKFP方法在解决光学生物传感器噪声数据方面的显著优势。