Physical and Chemical Properties of Substances
收藏Zenodo2026-01-14 更新2026-05-26 收录
下载链接:
https://zenodo.org/doi/10.5281/zenodo.18242973
下载链接
链接失效反馈官方服务:
资源简介:
This dataset is an extended version of the "Wikipedia Molecules Properties Dataset" with added SMILES representations, additional physicochemical properties calculated using the thermo library, and chemical classification according to the ClassyFire system for approximately 4,200 compounds.
Key Features
Original structural formulas taken from the Wikipedia Molecules Properties Dataset (15,000+ molecules)
SMILES representations obtained for ~4,200 compounds extracted from structural formulas using the thermo library
Calculated physicochemical properties (melting point, boiling point, etc.) obtained using the thermo library
Chemical classification according to the ClassyFire system (Kingdom, Superclass, Class, Subclass, etc.)
Feature Description
name: Name of the chemical compound
formula: Chemical formula of the compound
CAS: Unique CAS (Chemical Abstracts Service) identification number
smiles: Molecular structure representation in SMILES format (Simplified Molecular Input Line Entry System)
InChI: International Chemical Identifier
InChIKey: Hashed version of InChI for quick searching
molecular_weight: Molecular weight of the compound (g/mol)
melting_point_K: Melting point in Kelvin
boiling_point_K: Boiling point in Kelvin
heat_of_fusion: Heat of fusion (enthalpy of fusion), J/mol
heat_of_vaporization: Heat of vaporization (enthalpy of vaporization), J/mol
critical_temperature: Critical temperature, K
critical_pressure: Critical pressure, Pa
flash_point: Flash point, K
logP: Octanol-water partition coefficient (measure of lipophilicity)
improved_name: Improved/standardized name of the compound
kingdom: Kingdom in chemical taxonomy
superclass: Superclass of the compound
class: Class of the compound in chemical taxonomy
direct_parent: Direct parent class of the compound
substituents: Substituents and functional groups in the compound
Tools and Resources Used
Wikipedia Molecules Properties Dataset: the dataset used as the foundation
Thermo: A library for calculating thermodynamic and transport properties of chemicals
ClassyFire: A chemical taxonomy system and classifier for small molecules
License
CC0: Public Domain - This dataset is in the public domain. You can copy, modify, distribute and perform the data, even for commercial purposes, all without asking permission.
Citation
When using this dataset, please cite:
Original dataset: Wikipedia Molecules Properties Dataset
This extended dataset: "Ivan Yakovlev G. (2024). Physical and Chemical Properties of Substances. Kaggle."
Contact Information
Ivan YakovlevEmail: yakovlev.ivan.g@gmail.comLinkedIn: www.linkedin.com/in/ivanyakovlevg
Version 3.0.0 (2025-04-28)
Major Enhancements
Added functional group classification: Each compound is now classified according to 26 different functional groups including alcohols, alkanes, aromatics, ethers, and more
SMILES representation: Added canonical SMILES strings for all compounds with valid InChI identifiers
Organic/inorganic classification: Each compound is now labeled as organic or inorganic based on chemical structure
Data Processing Improvements
InChI standardization: Fixed inconsistent InChI prefixes, ensuring all follow the standard "InChI=1S/" format
Structure validation: All molecular structures have been validated using RDKit's chemical informatics toolkit
Missing data handling: Improved handling of compounds with invalid or missing structural identifiers
Technical Details
Used RDKit for chemical structure manipulation and SMILES conversion
Applied Thermo library for functional group classification
Conversion success rate: 98.7% of compounds with valid InChI were successfully converted to SMILES
Functional group identification completed for 97.9% of valid structures
Dataset Statistics
Top 5 functional groups identified:
Organic compounds: 76.4%
Hydrocarbons: 34.2%
Aromatics: 23.7%
Alcohols: 19.8%
Ethers: 14.3%
Known Limitations
Approximately 1.3% of InChI strings could not be converted to SMILES due to structural inconsistencies
Some complex metal-organic compounds may have inconsistent functional group classification
Polymers and mixtures may have limited functional group detection accuracy
Potential Applications
Enhanced structure-activity relationship modeling
More precise chemical similarity searches
Improved filtering and grouping based on chemical functionality
Better substructure-based analysis for drug discovery and material science
提供机构:
Zenodo创建时间:
2026-01-14



