2024
DOI: 10.1021/acs.jmedchem.3c01893
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PatentNetML: A Novel Framework for Predicting Key Compounds in Patents Using Network Science and Machine Learning

Ting-Fei Zhu,
Rong Qian,
Xiao Wei
et al.

Abstract: Patents play a crucial role in drug research and development, providing early access to unpublished data and offering unique insights. Identifying key compounds in patents is essential to finding novel lead compounds. This study collected a comprehensive data set comprising 1555 patents, encompassing 1000 key compounds, to explore innovative approaches for predicting these key compounds. Our novel PatentNetML framework integrated network science and machine learning algorithms, combining network measures, ADME… Show more

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