RGB颜色模型
荧光
材料科学
检出限
计算机科学
信号(编程语言)
纳米技术
纳米纤维
采样(信号处理)
生物系统
航程(航空)
灵敏度(控制系统)
人工神经网络
静电纺丝
线性范围
全麦
模式识别(心理学)
人工智能
深度学习
作者
Ruiqing Sun,Yujuan Xie,Xinpeng Zhou,Qilong Zhan,Haoran Fan,Xiaorong Sun,Dongsheng Bai,Yangyang Wen,Hongyan Li,Jing Wang,Baoguo Sun
标识
DOI:10.1021/acsami.5c16331
摘要
High Resolution Image Download MS PowerPoint Slide The intelligent authentication of whole wheat products remains a significant challenge due to the difficulty in simultaneously monitoring multiple alkylresorcinol (AR) homologues within complex food matrices. To address this, we have developed a novel sensing platform integrating machine learning (ML) algorithms with advanced ratiometric fluorescence (FL) materials. The core component is a dual-emission g-C 3 N 4 /Ru, leveraging the blue fluorescence from g-C 3 N 4 nanosheets as the analytical signal and the red fluorescence from [Ru(bpy) 3 ] 2+ as an internal reference. Upon interaction with AR homologues, a visible color change from blue-violet to pink occured due to multiple synergistic effects of IFE, a-PET, electrostatic attraction, and π-π interactions. The system exhibited exceptional sensitivity for quantitative detection of five AR homologues (C17:0, C19:0, C21:0, C23:0, C25:0) within the concentration range of 0–60 μg·mL –1, achieving ultralow limit of detections (LODs) ranging from 2.1 to 9.9 ng·mL –1 . For precise and portable quantitative analysis, a random forest-back-propagation neural network (RF-BPNN) algorithm-assisted FL electrospun film (RuCN PAN NFs) was employed, enabling reliable on-site monitoring. RGB features were extracted using the OpenCV library, and 252 samples were evenly divided through stratified sampling to maintain data balance, yielding exceptional prediction accuracy ( R 2 = 0.9822) and robust performance by training with the RF-BPNN. Application to commercial wheat samples confirms the system’s utility for AR detection and whole wheat authentication. This integrated approach overcomes traditional analytical limitations by combining ML algorithms with advanced materials, enabling intelligent, rapid, and on-site detection of AR homologues. It provides a promising tool for verifying the authenticity of whole wheat products, offering significant potential for food safety monitoring and quality control applications.
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