Cimmino Wanda, Esposito Simona, Kalligosfyri Panagiota M, Iaccarino Nunzia, Cinti Stefano
Department of Pharmacy, University of Naples "Federico II", 80131 Naples, Italy.
Sbarro Institute for Cancer Research and Molecular Medicine, Center for Biotechnology, College of Science and Technology, Temple University, Philadelphia, Pennsylvania 19122, United States.
Anal Chem. 2025 Apr 22;97(15):8182-8188. doi: 10.1021/acs.analchem.4c05402. Epub 2025 Apr 11.
Chemometrics represents a potent tool for optimizing the experimental setup and subsequently boosting the performance of analytical methods. In particular, design of experiments (DoE) allows the experimental conditions to be optimized with high accuracy and a lower number of experiments when compared with the classical univariate approach, also known as one variable at a time (OVAT), which provides only a partial understanding on how factors affect the response. In this work, DoE was exploited, specifically a D-optimal design was used, to improve the analytical performance of a hybridization-based paper-based electrochemical biosensor, taking as target of the study the miRNA-29c (miR-29c) that is related to triple negative breast cancer. The sensing platform is composed of six variables to be optimized, including both those related to the sensor's manufacture (i.e., gold nanoparticles, immobilized DNA probe) and those related to the working conditions (i.e., ionic strength, probe-target hybridization, electrochemical parameters). The adoption of DoE allowed us to optimize the device using only 30 experiments with respect to the 486 that would have been required with the OVAT approach, and as a consequence of the more accurate optimal conditions that have been reached, the detection of miRNA was more sensitive and repeatable when compared with previous data reported using the univariate approach for optimization, leading to a 5-fold limit of detection (LOD) improvement toward miRNA. It confirms that chemometrics might be considered a fundamental tool to be used in the development of various kinds of sensors and biosensors.
化学计量学是一种优化实验设置并进而提高分析方法性能的有力工具。特别是,实验设计(DoE)与经典的单变量方法(也称为一次一个变量,OVAT)相比,能够以更高的精度和更少的实验次数来优化实验条件,而经典单变量方法只能部分理解各因素如何影响响应。在这项工作中,利用了DoE,具体使用了D - 最优设计,以提高基于杂交的纸质电化学生物传感器的分析性能,将与三阴性乳腺癌相关的miRNA - 29c(miR - 29c)作为研究目标。传感平台由六个待优化变量组成,包括与传感器制造相关的变量(即金纳米颗粒、固定化DNA探针)以及与工作条件相关的变量(即离子强度、探针 - 靶标杂交、电化学参数)。采用DoE使我们仅通过30次实验就优化了该装置,而采用OVAT方法则需要486次实验。由于达到了更精确的优化条件,与之前使用单变量方法进行优化所报告的数据相比,miRNA的检测更加灵敏且可重复,使miRNA的检测限提高了5倍。这证实了化学计量学可被视为各类传感器和生物传感器开发中使用的一种基本工具。