Department of Engineering and Architecture, University of Parma, 43124 Parma, Italy.
Department of Chemistry, Life Sciences and Environmental Sustainability, University of Parma, 43124 Parma, Italy.
Sensors (Basel). 2024 Jun 2;24(11):3586. doi: 10.3390/s24113586.
The potential of a voltametric E-tongue coupled with a custom data pre-processing stage to improve the performance of machine learning techniques for rapid discrimination of tomato purées between cultivars of different economic value has been investigated. To this aim, a sensor array with screen-printed carbon electrodes modified with gold nanoparticles (GNP), copper nanoparticles (CNP) and bulk gold subsequently modified with poly(3,4-ethylenedioxythiophene) (PEDOT), was developed to acquire data to be transformed by a custom pre-processing pipeline and then processed by a set of commonly used classifiers. The GNP and CNP-modified electrodes, selected based on their sensitivity to soluble monosaccharides, demonstrated good ability in discriminating samples of different cultivars. Among the different data analysis methods tested, Linear Discriminant Analysis (LDA) proved to be particularly suitable, obtaining an average F1 score of 99.26%. The pre-processing stage was beneficial in reducing the number of input features, decreasing the computational cost, i.e., the number of computing operations to be performed, of the entire method and aiding future cost-efficient hardware implementation. These findings proved that coupling the multi-sensing platform featuring properly modified sensors with the custom pre-processing method developed and LDA provided an optimal tradeoff between analytical problem solving and reliable chemical information, as well as accuracy and computational complexity. These results can be preliminary to the design of hardware solutions that could be embedded into low-cost portable devices.
已研究了将电化学 E 舌与定制数据预处理阶段相结合,以提高机器学习技术对不同经济价值品种的番茄泥进行快速分类的性能的潜力。为此,开发了一个带有丝网印刷碳电极的传感器阵列,这些电极经过金纳米粒子(GNP)、铜纳米粒子(CNP)和大块金的修饰,随后用聚(3,4-乙二氧基噻吩)(PEDOT)修饰,以获取数据,这些数据将通过定制的预处理管道进行转换,然后由一组常用的分类器进行处理。基于其对可溶性单糖的敏感性,选择了 GNP 和 CNP 修饰的电极,这些电极在区分不同品种的样品方面表现出良好的能力。在所测试的不同数据分析方法中,线性判别分析(LDA)被证明特别适用,平均 F1 评分为 99.26%。预处理阶段有利于减少输入特征的数量,降低整个方法的计算成本,即要执行的计算操作的数量,并有助于未来成本效益高的硬件实现。这些发现证明,将具有适当修饰传感器的多传感平台与开发的定制预处理方法以及 LDA 相结合,可以在分析问题解决、可靠的化学信息、准确性和计算复杂性之间实现最佳权衡。这些结果可以作为设计硬件解决方案的初步研究,这些解决方案可以嵌入到低成本便携式设备中。