分光计
拉曼光谱
甲氨蝶呤
材料科学
纳米技术
色谱法
分析化学(期刊)
化学
医学
外科
光学
物理
作者
Yaman Göksel,Elodie Dumont,Roman Slipets,Sriram Thoppe Rajendran,Sevde Sarikaya,Lasse Højlund Eklund Thamdrup,Kjeld Schmiegelow,Tomas Rindzevicius,Kinga Zór,Anja Boisen
出处
期刊:ACS Sensors
[American Chemical Society]
日期:2022-07-18
卷期号:7 (8): 2358-2369
被引量:42
标识
DOI:10.1021/acssensors.2c01022
摘要
Therapeutic drug monitoring (TDM) is an essential clinical practice for optimizing drug dosing, thereby preventing adverse effects of drugs with a narrow therapeutic window, slow clearance, or high interperson pharmacokinetic variability. Monitoring methotrexate (MTX) during high-dose MTX (HD-MTX) therapy is necessary to avoid potentially fatal side effects caused by delayed elimination. Despite the efficacy of HD-MTX treatment, its clinical application in resource-limited settings is constrained due to the relatively high cost and time of analysis with conventional analysis methods. In this work, we developed (i) an electrochemically assisted surface-enhanced Raman spectroscopy (SERS) method for detecting MTX in human serum at a clinically relevant concentration range and (ii) a benchtop, Raman detection system with an integrated potentiostat, software, and data analysis unit that enables mapping of small areas of SERS substrates and quantitative SERS-based analysis. In the assay, by promoting electrostatic attraction between gold-coated nanopillar SERS substrates and MTX molecules in aqueous samples, a detection limit of 0.13 μM with a linear range of 0.43-2 μM was achieved in PBS. The implemented sample cleanup through gel filtration proved to be highly effective, resulting in a similar detection limit (0.55 μM) and linear range (1.81-5 μM) for both PBS and serum. The developed and optimized assay could also be used on the in-house built, Raman device. We showed that MTX detection can be carried out in less than 30 min with the Raman device, paving the way toward the TDM of MTX at the point-of-need and in resource-limited environments.
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