Institute for Global Food Security, School of Biological Sciences, Queen's University of Belfast, 19 Chlorine Gardens, Belfast BT9 5DL, United Kingdom.
School of Electronics, Electrical Engineering and Computer Science, Queen's University Belfast, 125 Stranmillis Road, Belfast BT9 5AH, United Kingdom.
Anal Chem. 2020 Jun 2;92(11):7852-7860. doi: 10.1021/acs.analchem.0c01099. Epub 2020 May 21.
Quantification of colorimetric assays with smartphones is being increasingly reported. However, a complete characterization of the performance of existing color spaces and single-color channels for optimum color/intensity change quantification is absent. Moreover, it has not been ascertained if it is necessary to utilize existing color spaces to reach optimal assay quantification. In this study, a randomized channel approach was adapted utilizing all single channels from RGB, HSV, and CieLab color space and all nonrepeating random combinations of two and three channels of these color spaces. Assays based on color or intensity change using pH strips and gold or carbon black nanoparticle-containing paper strips were optimized using this approach. Several novel channel combinations showed great promise, in terms of prediction error and interphone variation reduction, outperforming RGB, HSV, and CieLab color spaces. These novel combinations were used in a custom-developed smartphone application that performed automated background subtraction and polynomial regression for the quantification of a lateral flow assay for the detection of goat milk adulteration with cow milk and for pH prediction in soil. For the lateral flow assay the channel combination BSA was found optimum (mean average error = 36% ± 6%; = 0.97). For the soil pH assay the channel combination RLC was found optimum (mean average error = 1.31% ± 0.02%; = 0.997). The study has shown that nonclassical channel combinations for colorimetric quantification of specific assays are very promising and should be considered for smartphone-based analysis.
智能手机的比色分析检测越来越多地被报道。然而,目前尚缺乏对现有颜色空间和单颜色通道性能的全面特征描述,以实现最佳颜色/强度变化的定量分析。此外,也不确定是否有必要利用现有的颜色空间来达到最佳的检测定量。在本研究中,采用了一种随机通道方法,利用 RGB、HSV 和 CieLab 颜色空间的所有单通道以及这些颜色空间的两个和三个通道的所有非重复随机组合。基于 pH 条带和金或碳黑纳米粒子纸带的颜色或强度变化的检测,利用这种方法进行了优化。几种新的通道组合在预测误差和电话间变异减少方面表现出了很大的潜力,优于 RGB、HSV 和 CieLab 颜色空间。这些新的组合被用于一个定制开发的智能手机应用程序中,该应用程序对侧向流动检测进行了自动背景减除和多项式回归,用于检测牛奶中羊奶的掺假和土壤 pH 的预测。对于侧向流动检测,BSA 通道组合被发现是最佳的(平均误差为 36%±6%; = 0.97)。对于土壤 pH 检测,RLC 通道组合被发现是最佳的(平均误差为 1.31%±0.02%; = 0.997)。研究表明,对于特定检测的比色定量分析,非经典的通道组合非常有前景,应该被考虑用于智能手机分析。