材料科学
聚合物
特征选择
随机森林
分子动力学
分子描述符
生物系统
计算机科学
核磁共振波谱
化学物理
核磁共振
人工智能
机器学习
化学
计算化学
数量结构-活动关系
物理
复合材料
生物
作者
Masayuki Okada,Yoshifumi Amamoto,Jun Kikuchi
出处
期刊:Polymers
[MDPI AG]
日期:2024-03-15
卷期号:16 (6): 824-824
被引量:9
标识
DOI:10.3390/polym16060824
摘要
Surface modification using hydrophilic polymer coatings is a sustainable approach for preventing membrane clogging due to foulant adhesion to water treatment membranes and reducing membrane-replacement frequency. Typically, both molecular descriptors and time-domain nuclear magnetic resonance (TD-NMR) data, which reveal physicochemical properties and polymer-chain dynamics, respectively, are required to predict the properties and understand the mechanisms of hydrophilic polymer coatings. However, studies on the selection of essential components from high-dimensional data and their application to the prediction of surface properties are scarce. Therefore, we developed a method for selecting features from combined high-dimensional molecular descriptors and TD-NMR data. The molecular descriptors of the monomers present in polyethylene terephthalate films were calculated using RDKit, an open-source chemoinformatics toolkit, and TD-NMR spectroscopy was performed over a wide time range using five-pulse sequences to investigate the mobility of the polymer chains. The model that analyzed the data using the random forest algorithm, after reducing the features using gradient boosting machine-based recursive feature elimination, achieved the highest prediction accuracy. The proposed method enables the extraction of important elements from both descriptors of surface properties and can contribute to the development of new sustainable materials and material-specific informatics methodologies encompassing multiple information modalities.
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