High-throughput discovery of chemical structure-polarity relationships combining automation and machine learning techniques
Hao Xu, Jinglong Lin, Qianyi Liu, Yuntian Chen, Jianning Zhang, Yang, Yang, Michael C. Young, Yan Xu, Dongxiao Zhang, Fanyang Mo

TL;DR
This paper introduces an automated TLC system combined with machine learning to efficiently analyze and predict chemical polarity, improving reproducibility and reducing experimental effort in organic compound analysis.
Contribution
It presents a novel automated TLC platform integrated with machine learning models to accurately predict polarity, enabling high-throughput and standardized analysis of organic compounds.
Findings
ML models accurately predict Rf curves
Automated system enhances reproducibility
Provides insights into structure-polarity relationships
Abstract
As an essential attribute of organic compounds, polarity has a profound influence on many molecular properties such as solubility and phase transition temperature. Thin layer chromatography (TLC) represents a commonly used technique for polarity measurement. However, current TLC analysis presents several problems, including the need for a large number of attempts to obtain suitable conditions, as well as irreproducibility due to non-standardization. Herein, we describe an automated experiment system for TLC analysis. This system is designed to conduct TLC analysis automatically, facilitating high-throughput experimentation by collecting large experimental data under standardized conditions. Using these datasets, machine learning (ML) methods are employed to construct surrogate models correlating organic compounds' structures and their polarity using retardation factor (Rf). The trained…
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Taxonomy
TopicsComputational Drug Discovery Methods · Analytical Chemistry and Chromatography · Metabolomics and Mass Spectrometry Studies
