Department of Chemistry, Sharif University of Technology, Tehran, 11155-9516, Iran.
Department of Chemistry, Isfahan University of Technology, Isfahan, 84156-83111, Iran.
Talanta. 2024 Jan 15;267:125153. doi: 10.1016/j.talanta.2023.125153. Epub 2023 Sep 4.
Antibiotic (AB) resistance is one of daunting challenges of our time, attributed to overuse of ABs and usage of AB-contaminated food resources. Due to their detrimental impact on human health, development of visual detection methods for multiplex sensing of ABs is a top priority. In present study, a colorimetric sensor array consisting of two types of gold nanoparticles (AuNPs) were designed for identification and determination of ABs. Design principle of the probe was based on aggregation of AuNPs in the presence of ABs at different buffer conditions. The utilization of machine learning algorithms in this design enables classification and quantification of ABs in various samples. The response profile of the array was analyzed using linear discriminant analysis algorithm for classification of ABs. This colorimetric sensor array is capable of accurate distinguishing between individual ABs and their combinations. Partial least squares regression was also applied for quantitation purposes. The obtained analytical figures of merit demonstrated the potential applicability of the developed sensor array in multiplex detection of ABs. The response profiles of the array were linearly correlated to the concentrations of ABs in a wide range of concentration with limit of detections of 0.05, 0.03, 0.04, 0.01, 0.06, 0.05 and 0.04 μg.mL-1 for azithromycin, amoxicillin, ciprofloxacin, clindamycin, cefixime, doxycycline and metronidazole respectively. The practical applicability of this method was further investigated by analysis of mixture samples of ABs and determination of ABs in river and underground water with successful verification.
抗生素(AB)耐药性是我们这个时代面临的巨大挑战之一,这归因于 AB 的过度使用和 AB 污染的食物资源的使用。由于它们对人类健康的有害影响,开发用于 AB 多重感测的目视检测方法是当务之急。在本研究中,设计了由两种类型的金纳米粒子(AuNP)组成的比色传感器阵列,用于 AB 的识别和测定。探针的设计原理基于在不同缓冲条件下存在 AB 时 AuNP 的聚集。该设计中机器学习算法的使用能够对各种样品中的 AB 进行分类和定量。使用线性判别分析算法对数组的响应谱进行分析,以对 AB 进行分类。该比色传感器阵列能够准确区分单个 AB 及其组合。还应用偏最小二乘回归进行定量目的。获得的分析度量标准证明了所开发的传感器阵列在 AB 的多重检测中的潜在适用性。该阵列的响应谱与 AB 的浓度在宽浓度范围内呈线性相关,检出限分别为 0.05、0.03、0.04、0.01、0.06、0.05 和 0.04μg.mL-1,用于阿奇霉素、阿莫西林、环丙沙星、克林霉素、头孢克肟、强力霉素和甲硝唑。通过分析 AB 的混合物样品并成功验证测定河水和地下水中的 AB,进一步研究了该方法的实际适用性。