Published September 18, 2024 | Version v4

Data for the training and testing of ccAFv2

  • 1. Arizona State University

Description

Single-cell transcriptomics has unveiled a vast landscape of cellular heterogeneity in which the cell cycle is a significant component. We trained a high-resolution cell cycle classifier (ccAFv2) using single cell RNA-seq (scRNA-seq) characterized human neural stem cells. The features of this classifier are that it classifies six cell cycle states (G1, Late G1, S, S/G2, G2/M, and M/Early G1) and a quiescent-like G0 state, and it incorporates a tunable parameter to filter out less certain classifications. The ccAFv2 classifier performed better than or equivalent to other state-of-the-art methods even while classifying more cell cycle states, including G0. We showcased the versatility of ccAFv2 by successfully applying it to classify cells, nuclei, and spatial transcriptomics data in humans and mice, using various normalization methods and gene identifiers. We provide methods to regress the cell cycle expression patterns out of single cell or nuclei data to uncover underlying biological signals. The classifier can be used either as an R package integrated with Seurat (https://github.com/plaisier-lab/ccafv2_R) or a PyPI package integrated with scanpy (https://pypi.org/project/ccAF/). We proved that ccAFv2 has enhanced accuracy, flexibility, and adaptability across various experimental conditions, establishing ccAFv2 as a powerful tool for dissecting complex biological systems, unraveling cellular heterogeneity, and deciphering the molecular mechanisms by which proliferation and quiescence affect cellular processes.

Files

Files (35.0 GB)

Name Size
md5:c6ae57d13d135864d23ee3d1f212c801
475.5 MB Download
md5:9559d174c8de0bf9227ac8be20a945f8
3.1 GB Download
md5:87445c340bb30607cd3446757311433a
2.9 GB Download
md5:60a47ff17f618f22bccc183f6db33508
20.1 GB Download
md5:45067df5200ce4319d0fec1819e54a95
2.0 GB Download
md5:83ac0da51da324a41ad4f89c136739ad
15.9 MB Download
md5:8934ee2425f8cf6a58d0108928aaf86a
992.1 MB Download
md5:f4c6695b2a75df2e0a05b696cdcb423f
4.6 GB Download
md5:8ac69142519b639d1b9f69d8dca5b792
192.4 MB Download
md5:f2e0b79014cf69a8bb97fb3f3bfb67cb
4.0 MB Download
md5:ca4c480db6687aac123544b71e62a4a5
615.9 MB Download

Additional details

Software

Repository URL
https://github.com/plaisier-lab/ccAFv2
Programming language
R , Python