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@SydneyBioX

Sydney Precision Data Science Centre

SPDSC alliance brings together multiple research groups and junior and senior researchers with shared interests in bioinformatics and computational sciences.

This is the public repository of the Sydney Precision Data Science Centre at the University of Sydney. Here, you can access R packages developed by members of Sydney Precision Data Science covering a broad range of topics ranging from generating predictive biomarkers to single cell data analysis.

Additionally, open analyses and data from published papers, workshops, workflows, and useful scripts are released here.

Our Packages

Name Description Single Cell Precision Medicine Spatial Multiomics On
CiteFuse (paper) A suite of tools for pre-processing, modality integration, clustering, differential RNA and ADT expression analysis, ADT evaluation, ligand-receptor interaction analysis, and interactive web-based visualisation of CITE-seq data ✔️ ✔️ BioC
ClassifyR (paper) A framework for cross-validated classification problems, with applications to differential variability and differential distribution testing ✔️ BioC
CPOP (paper) A statistical machine learning framework for wider implementation of precision medicine ✔️
DCARS (paper) Differential correlation across ranked samples
directPA (paper) Pathway analysis in experiments with multiple perturbation designs ✔️ CRAN
FuseSOM (paper) A correlation based Multiview Self Organizing Map for the characterisation of cell types in highly multiplexed in situ imaging cytometry assays ✔️ ✔️ BioC
hRUV (paper) Normalisation of multiple batches of metabolomics data in a hierarchical strategy with use of samples replicates in large-scale studies ✔️
lisaClust (paper) Clustering of local indicators of spatial association ✔️ ✔️ BioC
MoleculeExperiment (paper) Provide functionality for the representation and summarisation of imaging-based spatial transcriptomics data ✔️ ✔️ BioC
NEMoE (paper) A nutrition-aware regularised mixture of experts model ✔️
scClassify (paper) Single cell classification via cell-type hierarchies based on ensemble learning and sample size estimation. ✔️
scDC (paper) Perform differential composition analysis on scRNA-seq data ✔️
scdney (paper) A collection of single cell analysis R packages ✔️
scFeatures (paper) Generates multi-view representations of single-cell and spatial data through the construction of a total of 17 feature types ✔️ ✔️ BioC
scHOT (paper) Single cell higher order testing ✔️ ✔️ BioC
scMerge (paper) Statistical approach for removing unwanted variation from multiple single-cell datasets ✔️ BioC
scReClassify (paper) Post hoc cell type classification of single-cell RNA-sequencing data. ✔️ BioC
SimBench (paper) Benchmark simulation methods based on two key aspects of accuracy of data properties estimation and ability to retain biological signals
spicyR (paper) Spatial analysis of in situ cytometry data. ✔️ ✔️ BioC
StabMap (paper) Mosaic single cell data integration using non-overlapping features ✔️ ✔️
treekoR (paper) Utilise the hierarchical nature of single cell cytometry data, to find robust and interpretable associations between cell subsets and patient clinical end points ✔️ ✔️ BioC

Pinned Loading

  1. scMerge scMerge Public

    Statistical approach for removing unwanted variation from multiple single-cell datasets

    R 67 13

  2. localWorkshop localWorkshop Public

    Workshop Slides and Website for Cross-validated Classification Workshop Held on 29 June 2018 in Sydney

    HTML 1 1

  3. EMBLworkshop2018 EMBLworkshop2018 Public

    HTML

  4. CiteFuse CiteFuse Public

    CiteFuse:

    R 26 5

  5. scClassify scClassify Public

    Hierarchical classification of cells

    R 22 5

Repositories

Showing 10 of 104 repositories