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Data associated with “Biophysical prediction of protein–peptide interactions and signaling networks using machine learning”

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NIAID Data Ecosystem2026-03-14 收录
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https://figshare.com/articles/dataset/Data_associated_with_Biophysical_prediction_of_protein_peptide_interactions_and_signaling_networks_using_machine_learning_/22105529
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Data associated with “Biophysical prediction of protein–peptide interactions and signaling networks using machine learning” by Joseph M. Cunningham, Julia R. Rogers, Grigoriy Koytiger, Peter K. Sorger, and Mohammed AlQuraishi (https://doi.org/10.1038/s41592-019-0687-1). General descriptions are provided below with further details given in READMEs. HSM data All data used for training and evaluating HSM is contained in data.zip. This includes pre-processed domain-level data; raw (unaligned) domain-level data; publication sources for HSM training data; pre-processed domain and peptide metadata used in HSM/P proteome-level predictions; and experimental protein-level data used to evaluate HSM/P. HSM training results Complete results from hyperparameter tuning and cross-fold evaluation of HSM/ID and HSM/D are contained in training.zip. PBD model comparisons Results from PSSMs and external models (PepInt and NetPhorest) evaluated on HSM domain-level data are contained in comparison_models.zip. HSM/P predictions Complete set of HSM/P predictions for ‘gold standard’ dataset and human proteome are contained in hsmp_predictions.zip. Published results Results from all analysis described in the publication along with source data for figures are contained in publication_results.zip. This also includes domain sequences and multiple sequence alignments used in both HSM/D and HSM/P and a complete list of novel HSM/P predicted PPIs in the human proteome (results/data/perf/hsmp/ppi_predictions.fdr0.01.csv).
创建时间:
2023-02-16
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