Pharmaceutical College, Guangxi Medical University, Nanning 530021, China.
School of Materials Science and Engineering, Nanyang Technological University, Singapore 639798, Singapore.
ACS Sens. 2024 Oct 25;9(10):5167-5178. doi: 10.1021/acssensors.4c01142. Epub 2024 Sep 19.
Conventional methods for detecting unsaturated fatty acids (UFAs) pose challenges for rapid analyses due to the need for complex pretreatment and expensive instruments. Here, we developed an intelligent platform for facile and low-cost analysis of UFAs by combining a smartphone-assisted colorimetric sensor array (CSA) based on MnO nanozymes with "image segmentation-feature extraction" deep learning (ISFE-DL). Density functional theory predictions were validated by doping experiments using Ag, Pd, and Pt, which enhanced the catalytic activity of the MnO nanozymes. A CSA mimicking mammalian olfactory system was constructed with the principle that UFAs competitively inhibit the oxidization of the enzyme substrate, resulting in color changes in the nanozyme-ABTS substrate system. Through linear discriminant analysis coupled with the smartphone App "Quick Viewer" that utilizes multihole parallel acquisition technology, oleic acid (OA), linoleic acid (LA), α-linolenic acid (ALA), and their mixtures were clearly discriminated; various edible vegetable oils, different camellia oils (CAO), and adulterated CAOs were also successfully distinguished. Furthermore, the ISFE-DL method was combined in multicomponent quantitative analysis. The sensing elements of the CSA (3 × 4) were individually segmented for single-hole feature extraction containing information from 38,868 images of three UFAs, thereby allowing for the extraction of more features and augmenting sample size. After training with the MobileNetV3 small model, the determination coefficients of OA, LA, and ALA were 0.9969, 0.9668, and 0.7393, respectively. The model was embedded in the smartphone App "Intelligent Analysis Master" for one-click quantification. We provide an innovative approach for intelligent and efficient qualitative and quantitative analysis of UFAs and other compounds with similar characteristics.
传统的不饱和脂肪酸(UFAs)检测方法由于需要复杂的预处理和昂贵的仪器,因此在快速分析方面存在挑战。在这里,我们结合基于 MnO 纳米酶的智能手机辅助比色传感器阵列(CSA)和“图像分割-特征提取”深度学习(ISFE-DL),开发了一种用于 UFAs 简便、低成本分析的智能平台。密度泛函理论预测通过使用 Ag、Pd 和 Pt 的掺杂实验得到了验证,这增强了 MnO 纳米酶的催化活性。基于 UFAs 竞争性抑制酶底物氧化的原理,构建了类似于哺乳动物嗅觉系统的 CSA,导致纳米酶-ABTS 底物系统的颜色发生变化。通过线性判别分析(LDA)结合智能手机应用程序“Quick Viewer”(利用多孔平行采集技术),可以清楚地区分油酸(OA)、亚油酸(LA)、α-亚麻酸(ALA)及其混合物;各种食用植物油、不同的茶籽油(CAO)和掺假的 CAO 也能成功区分。此外,还结合了 ISFE-DL 方法进行多组分定量分析。CSA(3×4)的传感元件分别进行单孔特征提取的分割,其中包含来自三种 UFA 的 38868 张图像的信息,从而可以提取更多特征并增加样本量。使用 MobileNetV3 小模型进行训练后,OA、LA 和 ALA 的决定系数分别为 0.9969、0.9668 和 0.7393。该模型被嵌入到智能手机应用程序“智能分析大师”中,用于一键定量。我们提供了一种创新的方法,用于对 UFAs 和其他具有类似特征的化合物进行智能和高效的定性和定量分析。