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Benchmarking algorithms for gene regulatory network inference from single-cell transcriptomic data.

Aditya PratapaAmogh Prabhav JalihalJeffrey N LawAditya BharadwajT M Murali
Published in: Nature methods (2020)
We present a systematic evaluation of state-of-the-art algorithms for inferring gene regulatory networks from single-cell transcriptional data. As the ground truth for assessing accuracy, we use synthetic networks with predictable trajectories, literature-curated Boolean models and diverse transcriptional regulatory networks. We develop a strategy to simulate single-cell transcriptional data from synthetic and Boolean networks that avoids pitfalls of previously used methods. Furthermore, we collect networks from multiple experimental single-cell RNA-seq datasets. We develop an evaluation framework called BEELINE. We find that the area under the precision-recall curve and early precision of the algorithms are moderate. The methods are better in recovering interactions in synthetic networks than Boolean models. The algorithms with the best early precision values for Boolean models also perform well on experimental datasets. Techniques that do not require pseudotime-ordered cells are generally more accurate. Based on these results, we present recommendations to end users. BEELINE will aid the development of gene regulatory network inference algorithms.
Keyphrases
  • single cell
  • rna seq
  • machine learning
  • high throughput
  • deep learning
  • transcription factor
  • big data
  • electronic health record
  • gene expression
  • induced apoptosis
  • depressive symptoms
  • oxidative stress
  • high resolution