Jitendra B Zalke, Manish L Bhaiyya, Pooja A Jain, Devashree N Sakharkar, Jayu Kalambe, Nitin P Narkhede, Mangesh B Thakre, Dinesh R Rotake, Madhusudan B Kulkarni, Shiv Govind Singh
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Further, the CuO-MFs were synthesized using a standard sol-gel approach, and the obtained particles were subjected to various characterization techniques, including X-ray diffraction (XRD), field emission scanning electron microscopy (FESEM), and Fourier transform infrared (FTIR) spectroscopy. The sensor's performance for urea detection was evaluated by assessing the dependence of peak currents on analyte concentration using cyclic voltammetry (CV) at different scan rates of 50, 75, and 100 mV/s. The designed non-enzymatic biosensor showed an acceptable linear range of operation of 0.5-8 mM, and the limit of detection (LoD) observed was 78.479 nM, which is well aligned with the urea concentration found in human blood and exhibits a good sensitivity of 117.98 mA mM<sup>-1</sup> cm<sup>-2</sup>. Additionally, different regression-based ML models were applied to determine CV parameters to predict urea concentrations experimentally. 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引用次数: 0
摘要
检测尿素对于诊断相关健康状况和确保及时的医疗干预至关重要。机器学习(ML)技术的加入彻底改变了生化传感领域,提高了准确性和可靠性。本研究提出了一种 ML 辅助丝网印刷、柔性、电化学、非酶生物传感器,用于量化尿素浓度。为了检测尿素,该生物传感器采用了多壁碳纳米管-氧化锌(MWCNT-ZnO)纳米复合材料,该复合材料由氧化铜(CuO)微流体(MFs)功能化。此外,CuO-MFs 是采用标准的溶胶-凝胶法合成的,并对获得的颗粒进行了各种表征技术,包括 X 射线衍射 (XRD)、场发射扫描电子显微镜 (FESEM) 和傅立叶变换红外光谱 (FTIR)。在 50、75 和 100 mV/s 的不同扫描速率下,使用循环伏安法 (CV) 评估了峰值电流对分析物浓度的依赖性,从而评估了传感器的尿素检测性能。所设计的非酶生物传感器的线性工作范围为 0.5-8 mM,检测限(LoD)为 78.479 nM,与人体血液中的尿素浓度非常接近,灵敏度高达 117.98 mA mM-1 cm-2。此外,还应用了不同的基于回归的 ML 模型来确定 CV 参数,以在实验中预测尿素浓度。ML 大大提高了丝网印刷生物传感器的准确性和可靠性,从而能够准确预测尿素水平。最后,ML 与生物传感器设计的结合不仅强调了传感器的高灵敏度和准确性,还强调了其在复杂的非酶尿素检测应用中的潜力。这种强大而可靠的方法使精确生化传感技术的未来发展成为可能。
A Machine Learning Assisted Non-Enzymatic Electrochemical Biosensor to Detect Urea Based on Multi-Walled Carbon Nanotube Functionalized with Copper Oxide Micro-Flowers.
Detecting urea is crucial for diagnosing related health conditions and ensuring timely medical intervention. The addition of machine learning (ML) technologies has completely changed the field of biochemical sensing, providing enhanced accuracy and reliability. In the present work, an ML-assisted screen-printed, flexible, electrochemical, non-enzymatic biosensor was proposed to quantify urea concentrations. For the detection of urea, the biosensor was modified with a multi-walled carbon nanotube-zinc oxide (MWCNT-ZnO) nanocomposite functionalized with copper oxide (CuO) micro-flowers (MFs). Further, the CuO-MFs were synthesized using a standard sol-gel approach, and the obtained particles were subjected to various characterization techniques, including X-ray diffraction (XRD), field emission scanning electron microscopy (FESEM), and Fourier transform infrared (FTIR) spectroscopy. The sensor's performance for urea detection was evaluated by assessing the dependence of peak currents on analyte concentration using cyclic voltammetry (CV) at different scan rates of 50, 75, and 100 mV/s. The designed non-enzymatic biosensor showed an acceptable linear range of operation of 0.5-8 mM, and the limit of detection (LoD) observed was 78.479 nM, which is well aligned with the urea concentration found in human blood and exhibits a good sensitivity of 117.98 mA mM-1 cm-2. Additionally, different regression-based ML models were applied to determine CV parameters to predict urea concentrations experimentally. ML significantly improves the accuracy and reliability of screen-printed biosensors, enabling accurate predictions of urea levels. Finally, the combination of ML and biosensor design emphasizes not only the high sensitivity and accuracy of the sensor but also its potential for complex non-enzymatic urea detection applications. Future advancements in accurate biochemical sensing technologies are made possible by this strong and dependable methodology.
Biosensors-BaselBiochemistry, Genetics and Molecular Biology-Clinical Biochemistry
CiteScore
6.60
自引率
14.80%
发文量
983
审稿时长
11 weeks
期刊介绍:
Biosensors (ISSN 2079-6374) provides an advanced forum for studies related to the science and technology of biosensors and biosensing. It publishes original research papers, comprehensive reviews and communications. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Electronic files and software regarding the full details of the calculation or experimental procedure, if unable to be published in a normal way, can be deposited as supplementary electronic material.