Abstract
The development of sequencing technologies has promoted the survey of genome-wide chromatin accessibility at single-cell resolution. However, comprehensive analysis of single-cell epigenomic profiles remains a challenge. Here, we introduce an accessibility pattern-based epigenomic clustering (APEC) method, which classifies each cell by groups of accessible regions with synergistic signal patterns termed "accessons". This python-based package greatly improves the accuracy of unsupervised single-cell clustering for many public datasets. It also predicts gene expression, identifies enriched motifs, discovers super-enhancers, and projects pseudotime trajectories. APEC is available at https://github.com/QuKunLab/APEC.
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Li, B., Li, Y., Li, K., Zhu, L., Yu, Q., Cai, P., … Qu, K. (2020). APEC: An accesson-based method for single-cell chromatin accessibility analysis. Genome Biology, 21(1). https://doi.org/10.1186/s13059-020-02034-y
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