Nanozyme-based colorimetric sensor arrays coupling with smartphone for discrimination and “segmentation-extraction-regression” deep learning assisted quantification of flavonoids

IF 10.7 1区 生物学 Q1 BIOPHYSICS
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Abstract

Achieving rapid, cost effective, and intelligent identification and quantification of flavonoids is challenging. For fast and uncomplicated flavonoid determination, a sensing platform of smartphone-coupled colorimetric sensor arrays (electronic noses) was developed, relying on the differential competitive inhibition of hesperidin, nobiletin, and tangeretin on the oxidation reactions of nanozymes with a 3,3′,5,5′-tetramethylbenzidine substrate. First, density functional theory calculations predicted the enhanced peroxidase-like activities of CeO2 nanozymes after doping with Mn, Co, and Fe, which was then confirmed by experiments. The self-designed mobile application, Quick Viewer, enabled a rapid evaluation of the red, green, and blue values of colorimetric images using a multi-hole parallel acquisition strategy. The sensor array based on three channels of CeMn, CeFe, and CeCo was able to discriminate between different flavonoids from various categories, concentrations, mixtures, and the various storage durations of flavonoid-rich Citri Reticulatae Pericarpium through a linear discriminant analysis. Furthermore, the integration of a “segmentation−extraction−regression” deep learning algorithm enabled single-hole images to be obtained by segmenting from a 3 × 4 sensing array to augment the featured information of array images. The MobileNetV3-small neural network was trained on 37,488 single-well images and achieved an excellent predictive capability for flavonoid concentrations (R2 = 0.97). Finally, MobileNetV3-small was integrated into a smartphone as an application (Intelligent Analysis Master), to achieve the one-click output of three concentrations. This study developed an innovative approach for the qualitative and simultaneous multi-ingredient quantitative analysis of flavonoids.

Abstract Image

基于纳米酶的色度传感器阵列与智能手机联用,实现黄酮类化合物的鉴别和 "分割-提取-回归 "深度学习辅助定量
实现快速、经济、智能地识别和定量黄酮类化合物具有挑战性。为了快速、简便地测定类黄酮,我们开发了一种智能手机耦合比色传感器阵列(电子鼻)传感平台,该平台依赖于橙皮甙、新橙皮甙和四橙皮甙对纳米酶与 3,3′,5,5′-四甲基联苯胺底物的氧化反应的不同竞争性抑制作用。首先,密度泛函理论计算预测了掺杂锰、钴和铁后 CeO2 纳米酶过氧化物酶样活性的增强,随后实验证实了这一点。自行设计的移动应用程序 "快速查看器 "采用多孔并行采集策略,可快速评估比色图像的红、绿、蓝值。基于 CeMn、CeFe 和 CeCo 三个通道的传感器阵列能够通过线性判别分析,对富含黄酮类化合物的 Citri Reticulatae Pericarpium 的不同类别、浓度、混合物和不同储存时间的不同黄酮类化合物进行判别。此外,通过集成 "分割-提取-回归 "深度学习算法,可从 3 × 4 传感阵列中分割获得单孔图像,从而增强阵列图像的特征信息。MobileNetV3-small 神经网络在 37,488 个单孔图像上进行了训练,对黄酮类化合物浓度的预测能力极佳(R2 = 0.97)。最后,MobileNetV3-small 被集成到智能手机的应用程序(智能分析大师)中,实现了一键输出三种浓度。本研究为黄酮类化合物的定性和多成分同步定量分析开发了一种创新方法。
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来源期刊
Biosensors and Bioelectronics
Biosensors and Bioelectronics 工程技术-电化学
CiteScore
20.80
自引率
7.10%
发文量
1006
审稿时长
29 days
期刊介绍: Biosensors & Bioelectronics, along with its open access companion journal Biosensors & Bioelectronics: X, is the leading international publication in the field of biosensors and bioelectronics. It covers research, design, development, and application of biosensors, which are analytical devices incorporating biological materials with physicochemical transducers. These devices, including sensors, DNA chips, electronic noses, and lab-on-a-chip, produce digital signals proportional to specific analytes. Examples include immunosensors and enzyme-based biosensors, applied in various fields such as medicine, environmental monitoring, and food industry. The journal also focuses on molecular and supramolecular structures for enhancing device performance.
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