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scMC learns biological variation through the alignment of multiple single-cell genomics datasets
by
Zhang, Lihua
, Nie, Qing
in
Algorithms
/ Animal Genetics and Genomics
/ Bioinformatics
/ Biological variation
/ Biomedical and Life Sciences
/ Chromatin Immunoprecipitation Sequencing
/ data collection
/ Databases, Genetic
/ Datasets
/ Epigenomics
/ Evolutionary Biology
/ genome
/ Genomics
/ Genomics - methods
/ Human Genetics
/ Life Sciences
/ Method
/ Methods
/ Microbial Genetics and Genomics
/ Plant Genetics and Genomics
/ Ribonucleic acid
/ RNA
/ sequence analysis
/ Sequence Analysis, RNA - methods
/ Single-Cell Analysis - methods
/ Single-cell genomics data, Data integration, Biological variation, Technical variation, Batch effect removal
/ Transcriptome
/ variance
/ Variance analysis
/ Variation
2021
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scMC learns biological variation through the alignment of multiple single-cell genomics datasets
by
Zhang, Lihua
, Nie, Qing
in
Algorithms
/ Animal Genetics and Genomics
/ Bioinformatics
/ Biological variation
/ Biomedical and Life Sciences
/ Chromatin Immunoprecipitation Sequencing
/ data collection
/ Databases, Genetic
/ Datasets
/ Epigenomics
/ Evolutionary Biology
/ genome
/ Genomics
/ Genomics - methods
/ Human Genetics
/ Life Sciences
/ Method
/ Methods
/ Microbial Genetics and Genomics
/ Plant Genetics and Genomics
/ Ribonucleic acid
/ RNA
/ sequence analysis
/ Sequence Analysis, RNA - methods
/ Single-Cell Analysis - methods
/ Single-cell genomics data, Data integration, Biological variation, Technical variation, Batch effect removal
/ Transcriptome
/ variance
/ Variance analysis
/ Variation
2021
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scMC learns biological variation through the alignment of multiple single-cell genomics datasets
by
Zhang, Lihua
, Nie, Qing
in
Algorithms
/ Animal Genetics and Genomics
/ Bioinformatics
/ Biological variation
/ Biomedical and Life Sciences
/ Chromatin Immunoprecipitation Sequencing
/ data collection
/ Databases, Genetic
/ Datasets
/ Epigenomics
/ Evolutionary Biology
/ genome
/ Genomics
/ Genomics - methods
/ Human Genetics
/ Life Sciences
/ Method
/ Methods
/ Microbial Genetics and Genomics
/ Plant Genetics and Genomics
/ Ribonucleic acid
/ RNA
/ sequence analysis
/ Sequence Analysis, RNA - methods
/ Single-Cell Analysis - methods
/ Single-cell genomics data, Data integration, Biological variation, Technical variation, Batch effect removal
/ Transcriptome
/ variance
/ Variance analysis
/ Variation
2021
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scMC learns biological variation through the alignment of multiple single-cell genomics datasets
Journal Article
scMC learns biological variation through the alignment of multiple single-cell genomics datasets
2021
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Overview
Distinguishing biological from technical variation is crucial when integrating and comparing single-cell genomics datasets across different experiments. Existing methods lack the capability in explicitly distinguishing these two variations, often leading to the removal of both variations. Here, we present an integration method scMC to remove the technical variation while preserving the intrinsic biological variation. scMC learns biological variation via variance analysis to subtract technical variation inferred in an unsupervised manner. Application of scMC to both simulated and real datasets from single-cell RNA-seq and ATAC-seq experiments demonstrates its capability of detecting context-shared and context-specific biological signals via accurate alignment.
Publisher
BioMed Central,Springer Nature B.V,BMC
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