2022 Annual Meeting
(697c) Machine Learning Assisted Development of Electrochemical Cortisol Sensor Based on Electropolymerized Molecularly Imprinted Polymer
Authors
Cortisol, popularly called âstress hormoneâ, is a highly valuable biomarker to be measured for stress management and personalized health monitoring. Pyrrole is selected as the functional monomer, and cortisol-imprinted-polypyrrole-based sensors are fabricated with 72 sets of synthesis parameters with replicates, including pyrrole concentration, cortisol concentration, number of electropolymerization CV cycles, electropolymerization CV scan rate, number overoxidation cycles for template elution. Their sensing performances are measured using a 12-channel potentiostat to construct the subsequent data-driven framework, which greatly improves experimental efficiency and ensures sensor reproducibility and data quality. The Gaussian process (GP) is employed as the mainstay of the integrated framework, which enables the probabilistic decision-making that accounts for various uncertainties in the synthesis and measurements. The Sobol index-based global sensitivity is then performed upon the GP surrogate model to elucidate the impact of e-MIPsâ synthesis parameters on sensing performance and interrelations among parameters. Based on the prediction of the established GP model and local sensitivity analysis, synthesis parameters are optimized and validated by experiment, which leads to remarkable sensing performance enhancement (1.5-fold increase in sensitivity). The proposed framework is novel in biosensor development, which is expandable and also generally applicable to other sensing materials development.