Characterizing efficient feature selection for single-cell expression analysis.
Juok ChoBukyung BaikHai C T NguyenDaeui ParkDougu NamPublished in: Briefings in bioinformatics (2024)
Unsupervised feature selection is a critical step for efficient and accurate analysis of single-cell RNA-seq data. Previous benchmarks used two different criteria to compare feature selection methods: (i) proportion of ground-truth marker genes included in the selected features and (ii) accuracy of cell clustering using ground-truth cell types. Here, we systematically compare the performance of 11 feature selection methods for both criteria. We first demonstrate the discordance between these criteria and suggest using the latter. We then compare the distribution of selected genes in their means between feature selection methods. We show that lowly expressed genes exhibit seriously high coefficients of variation and are mostly excluded by high-performance methods. In particular, high-deviation- and high-expression-based methods outperform the widely used in Seurat package in clustering cells and data visualization. We further show they also enable a clear separation of the same cell type from different tissues as well as accurate estimation of cell trajectories.
Keyphrases
- single cell
- rna seq
- machine learning
- high throughput
- deep learning
- genome wide
- genome wide identification
- high resolution
- big data
- induced apoptosis
- poor prognosis
- stem cells
- cell therapy
- depressive symptoms
- cell cycle arrest
- mesenchymal stem cells
- dna methylation
- bone marrow
- cell death
- long non coding rna
- liquid chromatography
- signaling pathway
- data analysis
- endoplasmic reticulum stress