A signal processing and deep learning framework for methylation detection using Oxford Nanopore sequencing
Children's Hospital of Philadelphia · University of Pennsylvania
Abstract
Oxford Nanopore sequencing can detect DNA methylations from ionic current signal of single molecules, offering a unique advantage over conventional methods. Additionally, adaptive sampling, a software-controlled enrichment method for targeted sequencing, allows reduced representation methylation sequencing that can be applied to CpG islands or imprinted regions. Here we present DeepMod2, a comprehensive deep-learning framework for methylation detection using ionic current signal from Nanopore sequencing. DeepMod2 implements both a bidirectional long short-term memory (BiLSTM) model and a Transformer model and can analyze POD5 and FAST5 signal files generated on R9 and R10 flowcells. Additionally, DeepMod2 can…
Citation impact
- FWCI
- 22.45
- Percentile
- 100%
- References
- 47
Authors
5- MUMian Umair AhsanCorresponding
Children's Hospital of Philadelphia
- AGAnagha Gouru
Children's Hospital of Philadelphia, University of Pennsylvania
- JCJoe Chan
Children's Hospital of Philadelphia
- WZWanding Zhou
Children's Hospital of Philadelphia, University of Pennsylvania
- KWKai Wang
Children's Hospital of Philadelphia, University of Pennsylvania
Topics & keywords
- Nanopore sequencing
- Nanopore
- Computational biology
- Deep sequencing
- Deep learning
- Computer science
- SIGNAL (programming language)
- DNA sequencing
- Life below water