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深度学习辅助的基于智能手机的电化学发光视觉监测生物传感器:一个完全集成的便携式平台。

Deep Learning-Assisted Smartphone-Based Electrochemiluminescence Visual Monitoring Biosensor: A Fully Integrated Portable Platform.

作者信息

Bhaiyya Manish, Rewatkar Prakash, Pimpalkar Amit, Jain Dravyansh, Srivastava Sanjeet Kumar, Zalke Jitendra, Kalambe Jayu, Balpande Suresh, Kale Pawan, Kalantri Yogesh, Kulkarni Madhusudan B

机构信息

Department Electronics Engineering, Ramdeobaba University, Nagpur 440013, India.

Department of Mechanical Engineering, Israel Institute of Technology, Technion, Haifa 3200003, Israel.

出版信息

Micromachines (Basel). 2024 Aug 22;15(8):1059. doi: 10.3390/mi15081059.

Abstract

A novel, portable deep learning-assisted smartphone-based electrochemiluminescence (ECL) cost-effective (~10$) sensing platform was developed and used for selective detection of lactate. Low-cost, fast prototyping screen printing and wax printing methods with paper-based substrate were used to fabricate miniaturized single-pair electrode ECL platforms. The lab-made 3D-printed portable black box served as a reaction chamber. This portable platform was integrated with a smartphone and a buck-boost converter, eliminating the need for expensive CCD cameras, photomultiplier tubes, and bulky power supplies. This advancement makes this platform ideal for point-of-care testing applications. Foremost, the integration of a deep learning approach served to enhance not just the accuracy of the ECL sensors, but also to expedite the diagnostic procedure. The deep learning models were trained (3600 ECL images) and tested (900 ECL images) using ECL images obtained from experimentation. Herein, for user convenience, an Android application with a graphical user interface was developed. This app performs several tasks, which include capturing real-time images, cropping them, and predicting the concentration of required bioanalytes through deep learning. The device's capability to work in a real environment was tested by performing lactate sensing. The fabricated ECL device shows a good liner range (from 50 µM to 2000 µM) with an acceptable limit of detection value of 5.14 µM. Finally, various rigorous analyses, including stability, reproducibility, and unknown sample analysis, were conducted to check device durability and stability. Therefore, the developed platform becomes versatile and applicable across various domains by harnessing deep learning as a cutting-edge technology and integrating it with a smartphone.

摘要

开发了一种新型的、基于深度学习辅助的便携式智能手机电化学发光(ECL)低成本(约10美元)传感平台,并用于乳酸的选择性检测。采用低成本、快速成型的丝网印刷和蜡印方法,以纸质基底制作了小型化的单对电极ECL平台。实验室自制的3D打印便携式黑匣子用作反应室。该便携式平台与智能手机和降压-升压转换器集成在一起,无需昂贵的CCD相机、光电倍增管和笨重的电源。这一进展使该平台成为即时检测应用的理想选择。最重要的是,深度学习方法的集成不仅提高了ECL传感器的准确性,还加快了诊断过程。使用从实验中获得的ECL图像对深度学习模型进行训练(3600张ECL图像)和测试(900张ECL图像)。在此,为方便用户,开发了一个带有图形用户界面的安卓应用程序。该应用程序执行多项任务,包括捕获实时图像、裁剪图像以及通过深度学习预测所需生物分析物的浓度。通过进行乳酸传感测试了该设备在实际环境中的工作能力。所制备的ECL设备显示出良好的线性范围(从50 μM到2000 μM),检测限为5.14 μM,可接受。最后,进行了各种严格分析,包括稳定性、重现性和未知样品分析,以检查设备的耐用性和稳定性。因此,通过将深度学习作为一种前沿技术并与智能手机集成,所开发的平台变得通用且适用于各个领域。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d189/11356000/fb4b1e35cee0/micromachines-15-01059-g001.jpg

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