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tSNE_vs_UMAP_GlobalStructure
Here we address the global structure preservation by tSNE and UMAPHowUMAPWorks
Here I explain the math behind UMAP and show how to program it from scratch in PythonDeepLearningSingleCellBiology
Here I show how to use Deep Autoencoders for single cell RNA sequencing data analysisDeepLearningAncientDNA
Here I show how to use Convolutional Neural Networks (CNNs) for Ancient DNA analysisClusteringHighDimensions
Here I demonstrate how to automatically detect the number of clusters in scRNAseq dataDeepLearningDataIntegration
Here I show how to use Deep Learning for biological and biomedical Data Integration.UMAPDataIntegration
Graph based data integration with UMAPNormalizeSingleCell
Comparison of single cell normalization strategiesDeepLearningMicrobiome
LSTMNeanderthalDNA
Implementation of LSTM for detecting regions of Neanderthal introgression in modern human genomesDimReductSingleCell
Here I cover linear and non-linear dimension reduction techniques for single cell genomicsDeepLearningClinicalDiagnostics
Here I show how to utilize Bayesian Deep Learning using PyMC3 for making more accurate and safer predictions for biomedical applicationsSupervisedOMICsIntegration
Supervised intehration of CLL data with PLS-DA from DIABLO mixOmicsUnivariteVsMultivariteModels
Here we compare a few multivarite and univarite feature selection modelsDeepLearningMicroscopyImaging
Here I demonstrate how to use Faster-RCNN and Mask-RCNN for cell detection using Human Protein Atlas (HPA) digital image dataLMMFromScratch
Deriving and coding Linear Mixed Model (LMM) from scratchAdvancedPythonCourse
Material for advanced Python course 2019aMeta
DeepLearningNeanderthalIntrogression
Here I deposite input files and Jupyter notebooks on detecting Neanderthal introgression analysisGenomicsNewClothes
Here I discuss common pitfalls in Genetics research due to the high-dimensional nature of genetic variation data that suffers from the Curse of DimensionalitytSNELargePerplexityLimit
Here we investigate the degradation of tSNE to PCA / MDS at large perplexity valuesOsloBioinfoWeek2022
UMAP_VarianceExplained
Here I show a simple way to estimate data variance explained by UMAP and tSNE componentsHowToBatchCorrectSingleCell
Here I explain batch-effects correction techniques for scRNAseq experimentsSBW2022
This is a teaching material for scRNAseq workshop within SBW2022HowToInitializeUMAPtSNE
Checking how tSNE and UMAP depend on different initialization scenariosWhyPCALooksTriangular
Here I provide some insights on the peculiar triangular shape of PCA plots that can often be found in Life Science projectsUnsupervisedOMICsIntegration
Multi-OMICs Factor Analysis on scNMT data setIntegrativeOmicsWorkflow
Here we provide a primer-workflow for biological data integration analysis.FeatureSelectionIntegrOMICs
How to us univariate and multivariate feature selection for OMICs integrationREML
Deriving and coding Linear Mixed Model in Restricted Maximum Likelihood (REML) approachHowLinearMixedModelWorks
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