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Afann: bias adjustment for alignment-free sequence comparison based on sequencing data using neural network regression.

Kujin TangJie RenFengzhu Sun
Published in: Genome biology (2019)
Alignment-free methods, more time and memory efficient than alignment-based methods, have been widely used for comparing genome sequences or raw sequencing samples without assembly. However, in this study, we show that alignment-free dissimilarity calculated based on sequencing samples can be overestimated compared with the dissimilarity calculated based on their genomes, and this bias can significantly decrease the performance of the alignment-free analysis. Here, we introduce a new alignment-free tool, Alignment-Free methods Adjusted by Neural Network (Afann) that successfully adjusts this bias and achieves excellent performance on various independent datasets. Afann is freely available at https://github.com/GeniusTang/Afann.
Keyphrases
  • neural network
  • single cell
  • gene expression
  • rna seq
  • electronic health record
  • dna methylation