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Information visualization and machine learning driven methods for impedimetric biosensing

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Author(s):
Shimizu, Flavio M. ; de Barros, Anerise ; Braunger, Maria L. ; Gaal, Gabriel ; Riul, Antonio
Total Authors: 5
Document type: Journal article
Source: TRAC-TRENDS IN ANALYTICAL CHEMISTRY; v. 165, p. 17-pg., 2023-06-06.
Abstract

This review addresses the convergence of impedimetric biosensing technologies and computational methods facilitating data information visualization. The literature brings various methodologies and analytical techniques associated with impedance measurements for biosensing, ranging from versatile testing platforms to management decisions according to the reported detection level. To this end, there has been a growing need for multivariate methods in data analysis, with a steady increase in machine learning methods to determine biosensing parameters. It has been expanded to calibration, analysis, classification, regression procedures, and more recently, calibration space and data inspection rules to optimize the device performance. Consequently, there has been a significant improvement in the automation and accuracy of data, with immediate impacts on diagnostics and protocols in recent years. We focus here on impedimetric biosensing and how multivariate methods combined with machine learning tools (artificial neural network, random forest, decision three, support vector machine, etc.) contribute to the outstanding performance of these devices. (AU)

FAPESP's process: 22/02893-1 - Eco-friendly methods of metallic nanoparticles synthesis for application in evaluating soybean plants growth in the presence of the nanoparticles
Grantee:Anerise de Barros
Support Opportunities: Scholarships in Brazil - Post-Doctoral