Machine Learning-Driven, Sensor-Integrated Microfluidic Device for Monitoring and Control of Supersaturation for Automated Screening of Crystalline Materials.

continuous-flow crystallization electrochemical sensor machine learning sensor-integrated microfluidics supersaturation measurements

Journal

ACS sensors
ISSN: 2379-3694
Titre abrégé: ACS Sens
Pays: United States
ID NLM: 101669031

Informations de publication

Date de publication:
25 03 2022
Historique:
pubmed: 21 1 2022
medline: 12 4 2022
entrez: 20 1 2022
Statut: ppublish

Résumé

Integrating sensors in miniaturized devices allow for fast and sensitive detection and precise control of experimental conditions. One of the potential applications of a sensor-integrated microfluidic system is to measure the solute concentration during crystallization. In this study, a continuous-flow microfluidic mixer is paired with an electrochemical sensor to enable in situ measurement of the supersaturation. This sensor is investigated as the predictive measurement of the supersaturation during the antisolvent crystallization of l-histidine in the water-ethanol mixture. Among the various metals tested in a batch system for their sensitivity toward l-histidine, Pt showed the highest sensitivity. A Pt-printed electrode was inserted in the continuous-flow microfluidic mixer, and the cyclic voltammograms of the system were obtained for different concentrations of l-histidine and different water-to-ethanol ratios. The sensor was calibrated for different ratios of antisolvent and concentrations of l-histidine with respect to the change of the measured anodic slope. Additionally, a machine-learning algorithm using neural networks was developed to predict the supersaturation of l-histidine from the measured anodic slope. The electrochemical sensors have shown sensitivity toward l-histidine, l-glutamic acid, and

Identifiants

pubmed: 35045697
doi: 10.1021/acssensors.1c02358
doi:

Substances chimiques

Water 059QF0KO0R
Ethanol 3K9958V90M
Histidine 4QD397987E

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

797-805

Auteurs

Paria Coliaie (P)

Department of Chemical Engineering, University of Illinois Chicago, Chicago, Illinois 60607, United States.

Aditya Prajapati (A)

Department of Chemical Engineering, University of Illinois Chicago, Chicago, Illinois 60607, United States.

Rabia Ali (R)

Department of Chemical Engineering, University of Illinois Chicago, Chicago, Illinois 60607, United States.

Akshay Korde (A)

Center of Excellence for Isolation & Separation Technologies (CoExIST), Process R&D, AbbVie Inc., North Chicago, Illinois 60064, United States.

Manish S Kelkar (MS)

Center of Excellence for Isolation & Separation Technologies (CoExIST), Process R&D, AbbVie Inc., North Chicago, Illinois 60064, United States.

Nandkishor K Nere (NK)

Department of Chemical Engineering, University of Illinois Chicago, Chicago, Illinois 60607, United States.
Center of Excellence for Isolation & Separation Technologies (CoExIST), Process R&D, AbbVie Inc., North Chicago, Illinois 60064, United States.

Meenesh R Singh (MR)

Department of Chemical Engineering, University of Illinois Chicago, Chicago, Illinois 60607, United States.

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Classifications MeSH