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基于可解释深度学习的荧光判别法用于氨基糖苷类抗生素鉴定。

Explainable Deep Learning-Assisted Fluorescence Discrimination for Aminoglycoside Antibiotic Identification.

机构信息

College of Chemistry and Materials Science, Guangdong Provincial Key Laboratory of Functional Supramolecular Coordination Materials and Applications, Guangdong Engineering & Technology Research Centre of Graphene-like Materials and Products, Jinan University, Guangzhou 510632, China.

College of Chemistry, Zhengzhou University, Zhengzhou 450001, China.

出版信息

Anal Chem. 2022 Jan 18;94(2):829-836. doi: 10.1021/acs.analchem.1c03508. Epub 2022 Jan 3.

Abstract

The complexity and multivariate analysis of biological systems and environment are the drawbacks of the current high-throughput sensing method and multianalyte identification. Deep learning (DL) algorithms contribute a big advantage in analyzing the nonlinear and multidimensional data. However, most DL models are data-driven black boxes suffering from nontransparent inner workings. In this work, we developed an explainable DL-assisted visualized fluorometric array-based sensing method. Based on a data set of 8496 fluorometric images of various target molecule fingerprint patterns, two typical DL algorithms and eight machine learning algorithms were investigated for the efficient qualitative and quantitative analysis of six aminoglycoside antibiotics (AGs). The convolutional neural network (CNN) approached 100% prediction accuracy and 1.34 ppm limit of detection of six AG analysis in domestic, industrial, medical, consumption, or aquaculture water. The class activation mapping assessment explicates how the CNN model assesses the importance of sensor elements and makes the discrimination decision. The feedback mechanism guides the sensor array evolution for less material using a simplified operation or efficient data acquisition. The explainable DL-assisted analysis method establishes an "end-to-end" strategy to resolve the black box of the DL algorithm, promote hardware design or principle optimization, and contribute facile indicators for environment monitoring, disease diagnosis, and even new scientific discovery.

摘要

生物系统和环境的复杂性和多变量分析是当前高通量传感方法和多分析物识别的缺点。深度学习(DL)算法在分析非线性和多维数据方面具有很大的优势。然而,大多数 DL 模型都是数据驱动的黑盒,其内部工作原理不透明。在这项工作中,我们开发了一种基于可解释的 DL 辅助可视化荧光阵列的传感方法。基于 8496 张各种目标分子指纹图谱的荧光图像数据集,研究了两种典型的 DL 算法和八种机器学习算法,用于对六种氨基糖苷类抗生素(AGs)进行有效的定性和定量分析。卷积神经网络(CNN)在国内、工业、医疗、消费或水产养殖水中对六种 AG 分析的预测准确率达到 100%,检测限达到 1.34ppm。类激活映射评估说明了 CNN 模型如何评估传感器元素的重要性并做出判别决策。反馈机制指导传感器阵列的进化,以更少的材料使用简化的操作或有效的数据采集。可解释的 DL 辅助分析方法建立了一种“端到端”策略,以解决 DL 算法的黑盒问题,促进硬件设计或原理优化,并为环境监测、疾病诊断,甚至新的科学发现提供简便的指标。

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