Enhanced Nanoparticle Recognition via Deep Learning-Accelerated Plasmonic Sensing

Biosensors Pub Date : 2024-07-26 DOI:10.3390/bios14080363
Ke-Xin Jin, Jia Shen, Yi-Jing Wang, Yu Yang, Shuo-Hui Cao
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Abstract

Surface plasmon microscopy proves to be a potent tool for capturing interferometric scattering imaging data of individual particles at both micro and nanoscales, offering considerable potential for label-free analysis of bio-particles and bio-molecules such as exosomes, viruses, and bacteria. However, the manual analysis of acquired images remains a challenge, particularly when dealing with dense samples or strong background noise, common in practical measurements. Manual analysis is not only prone to errors but is also time-consuming, especially when handling a large volume of experimental images. Currently, automated methods for sensing and analysis of such data are lacking. In this paper, we develop an accelerated approach for surface plasmon microscopy imaging of individual particles based on combining the interference scattering model of single particle and deep learning processing. We create hybrid datasets by combining the theoretical simulation of particle images with the actual measurements. Subsequently, we construct a neural network utilizing the EfficientNet architecture. Our results demonstrate the effectiveness of this novel deep learning technique in classifying interferometric scattering images and identifying multiple particles under noisy conditions. This advancement paves the way for practical bio-applications through efficient automated particle analysis.
通过深度学习加速等离子传感增强纳米粒子识别能力
事实证明,表面等离子体显微镜是捕捉微米和纳米尺度单个粒子干涉散射成像数据的有效工具,为生物粒子和生物分子(如外泌体、病毒和细菌)的无标记分析提供了巨大的潜力。然而,对获取的图像进行人工分析仍然是一项挑战,尤其是在处理实际测量中常见的高密度样本或强背景噪声时。人工分析不仅容易出错,而且耗时,尤其是在处理大量实验图像时。目前,还缺乏感知和分析此类数据的自动化方法。在本文中,我们开发了一种基于单颗粒干涉散射模型和深度学习处理相结合的单颗粒表面等离子显微成像加速方法。我们将粒子图像的理论模拟与实际测量相结合,创建了混合数据集。随后,我们利用 EfficientNet 架构构建了一个神经网络。我们的研究结果证明了这种新型深度学习技术在干扰条件下对干涉散射图像进行分类和识别多个粒子的有效性。这一进步通过高效的自动颗粒分析为实际生物应用铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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