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IMP / IMP3
MIT LicenseUpdated -
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BDS / Ml Dyskinesia
MIT LicenseUpdated -
elixir / daisy
GNU Affero General Public License v3.0Data Information System (DAISY) is a data bookkeeping application designed to help Biomedical Research institutions with their GDPR compliance.
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LCSB-BioCore / publications / Hemedan 2023-Boolean modelling of PD
Apache License 2.0Updated -
SMASCH / scheduling-system
GNU Affero General Public License v3.0Scheduling assignments for Parkinson Research Clinic
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ESB / CO-INFECTOMICS
MIT LicenseCO-INFECTOMICS - identification of co-infections and other factors associated with COVID-19 severity in the gut microbiome
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Environmental Cheminformatics / pubchem
Artistic License 2.0A project for interactions with PubChem
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IDERHA / DRS-cli
Apache License 2.0Client for GA4GH Data Repository Service (DRS) API service
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R3 / apps / generator
Apache License 2.0This project includes the generator scripts for generating the index files of the howto-cards and modules (handbook, qms, ...)
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Janine Schulz / basic-practice-pages
MIT LicenseBasic practice repository for git trainings
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R3 / school / git / basic-practice-pages
MIT LicenseBasic practice repository for git trainings
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Elisa Gomezdelope / GRL_sample_similarity_PD
MIT LicenseGraph representation learning modelling pipeline exploiting sample-similarity networks derived from high-throughput omics profiles to learn PD-specific fingerprints from the spatial distribution of molecular abundance similarities in an end-to-end fashion. The scripts apply the graph representation learning modelling pipeline on sample-similarity networks of transcriptomics and metabolomics data from the PPMI and the LuxPARK cohort, respectively.
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Graph representation learning modelling pipeline exploiting molecular interaction networks of transcriptomics (protein-protein interactions) and metabolomics (metabolite-metabolite interactions) to learn PD-specific fingerprints from the spatial distribution of molecular relationships in an end-to-end fashion. The scripts apply the graph representation learning modelling pipeline on networks of molecular interactions, where transcriptomics and metabolomics data from the PPMI and the LuxPARK cohort, respectively, are projected.
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Elisa Gomezdelope / ML_PD_metab_transc
MIT LicenseThis repository contains the code for ML analyses performed in Chapter 4 of my PhD thesis "Interpretable Machine Learning on omics data for biomarker discovery in Parkinson's disease". The project consists on performing Parkinson's disease (PD) case-control classification from blood plasma metabolomics measurements at the baseline clinical visit from the LuxPARK cohort, and from whole blood transcriptomics data at baseline as well as dynamic features engineered from a short temporal series of 4 timepoints from the PPMI cohort. The study involves evaluation of different feature selection strategies, The goal was to build and test a collection of ML models and, most interestingly, identify molecular and higher-level functional representations associated with PD diagnosis.
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Elisa Gomezdelope / ML_UPDRSIII_metab_transc
MIT LicenseThis repository contains the code for ML analyses performed in Chapter 5 of my PhD thesis "Interpretable machine learning on omics data for the study of UPDRS III prognosis". The project consists on predicting the Unified Parkinson’s Disease Rating Scale Part III (UPDRS III) motor scores (mild/severe when classification) from whole blood transcriptomics and blood plasma metabolomics using measurements from the baseline clinical visit, and temporal or dynamic features engineered from a short temporal series of 4 and 3 timepoints, respectively, from the PPMI cohort and the LuxPARK cohort, aiming at identifying molecular and higher-level functional fingerprints linked specifically to the motor symptoms in PD.
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ICS-lcsb / NET-Ca-mito
Apache License 2.0Updated -
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Elisa Gomezdelope / digipd_ml
BSD 3-Clause "New" or "Revised" LicenseA package and environment with the NestedCV() class - a scikit-learn compatible class for nested cross-validation.
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