用于同时检测水生环境中干扰内分泌的化学物质的智能光谱识别方法。

IF 7.7 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Liulu Yao, Zhizhi Fu, Qiannan Duan, Mingzhe Wu, Fan Song, Haoyu Wang, Yiheng Qin, Yonghui Bai, Chi Zhou, Xudong Quan, Jianchao Lee
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引用次数: 0

摘要

随着工业化的快速发展,包括双酚 A(BPA)、辛基酚和壬基酚在内的内分泌干扰物(EDCs)的应用和释放量大幅增加,对健康造成了极大的危害。传统的分析技术,如高效液相色谱法和气相色谱-质谱法,非常精密,但存在程序复杂、成本高昂等问题。为了克服这些局限性,本研究引入了一种创新的光谱方法,用于同时检测多种水生多组分 EDC。通过利用化学机器视觉,特别是卷积神经网络(CNN)模型,我们采用了长路径全息光谱仪,对水样中的双酚A、4-叔辛基酚和 4-壬基酚进行了快速、经济高效的鉴定。采用 ResNet-50 架构改进的 CNN 表现出卓越的预测性能,检测限分别低至 3.34、3.71 和 4.36 μg/L。通过对光谱图像欧氏距离的分析,证实了我们方法的灵敏度和定量能力,同时通过对环境样本的评估,验证了其通用性和抗性特性。与传统技术相比,该技术在效率和成本方面具有明显优势,为水生环境中的 EDC 监测提供了一种新的解决方案。这项研究的意义不仅在于提高了检测速度和降低了成本,还提出了分析复杂化学系统的新方法,为环境保护和公众健康做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An intelligent spectral identification approach for the simultaneous detection of endocrine-disrupting chemicals in aquatic environments.

With the rapid progression of industrialization, the application and release of endocrine disruptors (EDCs), including bisphenol A (BPA), octylphenol and nonylphenol have significantly increased, presenting substantial health hazards. Conventional analytical techniques, such as high-performance liquid chromatography and gas chromatography-mass spectrometry, are highly sophisticated but suffer from complex procedures and high costs. To overcome these limitations, this study introduces an innovative spectral methodology for the simultaneous detection of multiple aquatic multicomponent EDCs. By leveraging chemical machine vision, specifically with convolutional neural network (CNN) models, we employed a long-path holographic spectrometer for rapid, cost-effective identification of BPA, 4-tert-octylphenol, and 4-nonylphenol in aqueous samples. The CNN, refined with the ResNet-50 architecture, demonstrated superior predictive performance, achieving detection limits as low as 3.34, 3.71 and 4.36 μg/L, respectively. The sensitivity and quantification capability of our approach were confirmed through the analysis of spectral image Euclidean distances, while its universality and resistance properties were validated by assessments of environmental samples. This technology offers significantly advantages over conventional techniques in terms of efficiency and cost, offering a novel solution for EDC monitoring in aquatic environments. The implications of this research extend beyond improved detection speed and cost reduction, presenting new methodologies for analyzing complex chemical systems and contributing to environmental protection and public health.

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来源期刊
Environmental Research
Environmental Research 环境科学-公共卫生、环境卫生与职业卫生
CiteScore
12.60
自引率
8.40%
发文量
2480
审稿时长
4.7 months
期刊介绍: The Environmental Research journal presents a broad range of interdisciplinary research, focused on addressing worldwide environmental concerns and featuring innovative findings. Our publication strives to explore relevant anthropogenic issues across various environmental sectors, showcasing practical applications in real-life settings.
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