Training Dataset for DrLungker
收藏Figshare2025-12-02 更新2026-04-08 收录
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https://figshare.com/articles/dataset/_i_DrLungker_A_Deep_Ensemble_Learning_Framework_for_Predicting_Anti-Lung_Cancer_Compound_Activity_and_Validating_Multitarget_Potency_through_WaterMap_DFT_MD_Simulations_and_MM-GBSA_Analysis_i_/30763082/3
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资源简介:
<b>Article Title:</b> <i>DrLungker: A Deep Ensemble Learning Framework for Predicting Anti-Lung Cancer Compound Activity and Validating Multitarget Potency through WaterMap, DFT, MD Simulations, and MM-GBSA Analysis</i><br><b>Published in:</b> <i>Advanced Theory and Simulations</i><br><b>Manuscript DOI:</b> https://doi.org/10.1002/adts.202501550<br><b>More Information:</b> GitHub Repository<b>Description</b>This dataset (<code>DrLungker_Dataset.csv</code>) contains the fully curated molecular data used to train the <b>DrLungker deep ensemble learning framework</b> for predicting anti-lung cancer compound activity.<b>Sources:</b> PubChem and ChEMBL lung cancer bioassays<b>Processing:</b> Structure standardization, duplicate removal, descriptor generation using AlvaDesc and QikProp, and rigorous quality filtering<b>Contents:</b> 26,396 unique compounds, each encoded with 5,883 molecular descriptors<b>Usage:</b> Training the hybrid <b>ResNet–FNN–LSTM ensemble</b> using Averaging, Majority Voting, and Stacking techniquesThis dataset ensures <b>full reproducibility</b> of the DrLungker model and can be used for benchmarking, validation, and downstream computational drug-discovery applications.
提供机构:
Ahmad, Shaban; Raza, Khalid
创建时间:
2025-12-02



