Department of Electrical Engineering, The Pennsylvania State University, University Park, Pennsylvania 16802, United States.
Department of Biomedical Engineering, The Pennsylvania State University, University Park, Pennsylvania 16802, United States.
ACS Sens. 2024 Aug 23;9(8):4017-4027. doi: 10.1021/acssensors.4c00860. Epub 2024 Jul 15.
There is a significant demand for multiplexed fluorescence sensing and detection across a range of applications. Yet, the development of portable and compact multiplexable systems remains a substantial challenge. This difficulty largely stems from the inherent need for spectrum separation, which typically requires sophisticated and expensive optical components. Here, we demonstrate a compact, lens-free, and cost-effective fluorescence sensing setup that incorporates machine learning for scalable multiplexed fluorescence detection. This method utilizes low-cost optical components and a pretrained machine learning (ML) model to enable multiplexed fluorescence sensing without optical adjustments. Its multiplexing capability can be easily scaled up through updates to the machine learning model without altering the hardware. We demonstrate its real-world application in a probe-based multiplexed Loop-Mediated Isothermal Amplification (LAMP) assay designed to simultaneously detect three common respiratory viruses within a single reaction. The effectiveness of this approach highlights the system's potential for point-of-care applications that require cost-effective and scalable solutions. The machine learning-enabled multiplexed fluorescence sensing demonstrated in this work would pave the way for widespread adoption in diverse settings, from clinical laboratories to field diagnostics.
在众多应用中,对多路复用荧光传感和检测存在巨大需求。然而,开发便携式和紧凑型多路复用系统仍然是一个重大挑战。这种困难主要源于对光谱分离的内在需求,而这通常需要复杂且昂贵的光学元件。在这里,我们展示了一种紧凑、无透镜且具有成本效益的荧光传感设置,该设置结合了机器学习,可用于可扩展的多路复用荧光检测。该方法利用低成本的光学元件和经过预训练的机器学习 (ML) 模型,实现了无需光学调整的多路复用荧光传感。通过更新机器学习模型,其多路复用能力可以轻松扩展,而无需更改硬件。我们在基于探针的多路复用环介导等温扩增 (LAMP) 检测中展示了其实际应用,该检测旨在在单个反应中同时检测三种常见的呼吸道病毒。该方法的有效性突出了该系统在需要经济实惠且可扩展解决方案的即时护理应用中的潜力。本工作中展示的基于机器学习的多路复用荧光传感将为其在从临床实验室到现场诊断等各种环境中的广泛应用铺平道路。