BACKGROUND: Single-cell RNA sequencing is a powerful technology to discover new cell types and study biological processes in complex biological samples. A current challenge is to predict transcription factor (TF) regulation from single-cell RNA data. RESULTS: Here, we propose a novel approach for predicting gene expression at the single-cell level using cis-regulatory motifs, as well as epigenetic features. We designed a tree-guided multi-task learning framework that considers each cell as a task. Through this framework we were able to explain the single-cell gene expression values using either TF binding affinities or TF ChIP-seq data measured at specific genomic regions. TFs identified using these models could be validated by the literature. CONCLUSION: Our proposed method allows us to identify distinct TFs that show cell type-specific regulation. This approach is not limited to TFs but can use any type of data that can potentially be used in explaining gene expression at the single-cell level to study factors that drive differentiation or show abnormal regulation in disease. The implementation of our workflow can be accessed under an MIT license via https://github.com/SchulzLab/Triangulate.
Prediction of single-cell gene expression for transcription factor analysis.
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作者:Behjati Ardakani Fatemeh, Kattler Kathrin, Heinen Tobias, Schmidt Florian, Feuerborn David, Gasparoni Gilles, Lepikhov Konstantin, Nell Patrick, Hengstler Jan, Walter Jörn, Schulz Marcel H
| 期刊: | Gigascience | 影响因子: | 3.900 |
| 时间: | 2020 | 起止号: | 2020 Oct 30; 9(11):giaa113 |
| doi: | 10.1093/gigascience/giaa113 | ||
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