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通过层次聚类改进激光刻写石墨烯电极的高通量制造。

Improving high throughput manufacture of laser-inscribed graphene electrodes via hierarchical clustering.

作者信息

Qian Hanyu, Moreira Geisianny, Vanegas Diana, Tang Yifan, Pola Cicero, Gomes Carmen, McLamore Eric, Bliznyuk Nikolay

机构信息

Department of Agricultural and Biological Engineering, University of Florida, Gainesville, FL, 32611, USA.

Department of Agricultural Sciences, Clemson University, Clemson, SC, 29634, USA.

出版信息

Sci Rep. 2024 Apr 5;14(1):7980. doi: 10.1038/s41598-024-57932-z.

Abstract

Laser-inscribed graphene (LIG), initially developed for graphene supercapacitors, has found widespread use in sensor research and development, particularly as a platform for low-cost electrochemical sensing. However, batch-to-batch variation in LIG fabrication introduces uncertainty that cannot be adequately tracked during manufacturing process, limiting scalability. Therefore, there is an urgent need for robust quality control (QC) methodologies to identify and select similar and functional LIG electrodes for sensor fabrication. For the first time, we have developed a statistical workflow and an open-source hierarchical clustering tool for QC analysis in LIG electrode fabrication. The QC process was challenged with multi-operator cyclic voltammetry (CV) data for bare and metalized LIG. As a proof of concept, we employed the developed QC process for laboratory-scale manufacturing of LIG-based biosensors. The study demonstrates that our QC process can rapidly identify similar LIG electrodes from large batches (n ≥ 36) of electrodes, leading to a reduction in biosensor measurement variation by approximately 13% compared to the control group without QC. The statistical workflow and open-source code presented here provide a versatile toolkit for clustering analysis, opening a pathway toward scalable manufacturing of LIG electrodes in sensing. In addition, we establish a data repository for further study of LIG variation.

摘要

激光刻写石墨烯(LIG)最初是为石墨烯超级电容器而开发的,现已在传感器研发中得到广泛应用,尤其是作为低成本电化学传感的平台。然而,LIG制造过程中批次间的差异带来了不确定性,在制造过程中无法充分追踪,这限制了其可扩展性。因此,迫切需要强大的质量控制(QC)方法来识别和选择用于传感器制造的相似且功能良好的LIG电极。我们首次开发了一种统计工作流程和一个用于LIG电极制造中QC分析的开源层次聚类工具。QC过程面临着裸LIG和金属化LIG的多操作员循环伏安法(CV)数据的挑战。作为概念验证,我们将开发的QC过程应用于基于LIG的生物传感器的实验室规模制造。研究表明,我们的QC过程可以从大量(n≥36)电极中快速识别出相似的LIG电极,与没有QC的对照组相比,生物传感器测量变化减少了约13%。这里展示的统计工作流程和开源代码为聚类分析提供了一个通用工具包,为传感领域中LIG电极的可扩展制造开辟了一条道路。此外,我们建立了一个数据存储库,用于进一步研究LIG的变化。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/df71/10995179/5e06f01bed30/41598_2024_57932_Fig1_HTML.jpg

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