Code supporting the publication: Evaluating Molecular Representations for Predicting Cyclodextrin-PFAS Binding Energy with Machine Learning: Domain Transfer and Data Limitations
收藏DataCite Commons2026-05-11 更新2026-05-16 收录
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https://data.4tu.nl/datasets/a5051137-a93d-433e-9cfe-50980247930c/2
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This repository contains the data and analysis code for evaluating molecular representations for predicting binding between cyclodextrins and PFAS molecules via machine learning. The project aims to explore CD-PFAS binding prediction, impacts of limited data, and most effective molecular representations for later cyclodextrin-based polymer (CDP) modeling. These models will then be used for novel CDP design for PFAS removal from water systems. Data used in this analysis comes from the OpenCycloDatabase, a consolidation of experimental binding results from published studies for cyclodextrin and guest molecule pairs, and two additional experimental studies, containing experimental binding data for cyclodextrins and PFAS molecules.
提供机构:
4TU.ResearchData
创建时间:
2026-05-11



