Literature DB >> 35190950

RicENN: Prediction of Rice Enhancers with Neural Network Based on DNA Sequences.

Yujia Gao1, Yiqiong Chen1, Haisong Feng1, Youhua Zhang2, Zhenyu Yue3.   

Abstract

Enhancers are the primary cis-elements of transcriptional regulation and play a vital role in gene expression at different stages of plant growth and development. Having high locational variation and free scattering in non-encoding genomes, identification of enhancers is a crucial, but challenging work in understanding the biological mechanism of model plants. Recently, applications of neural network models are gaining increasing popularity in predicting the function of genomic elements. Although several computational models have shown great advantages to tackle this challenge, a further study of the identification of rice enhancers from DNA sequences is still lacking. We present RicENN, a novel deep learning framework capable of accurately identifying enhancers of rice, integrating convolution neural networks (CNNs), bi-directional recurrent neural networks (RNNs), and attention mechanisms. A combined-feature representation method was designed to extract the sequence features from original DNA sequences using six types of autocorrelation encodings. Moreover, we verified that the integrated model achieves the best performance by an ablation study. Finally, our deep learning framework realized a reliable prediction of the rice enhancers. The results show RicENN outperforms available alternative approaches in rice species, achieving the area under the receiver operating characteristic curve (AUROC) and the area under the precision-recall curve (AUPRC) of 0.960 and 0.960 on cross-validation, and 0.879 and 0.877 during independent tests, respectively. This study develops a hybrid model to combine the merits of different neural network architectures, which shows the potential ability to apply deep learning in bioinformatic sequences and contributes to the acceleration of functional genomic studies of rice. RicENN and its code are freely accessible at http://bioinfor.aielab.cc/RicENN/ .
© 2022. International Association of Scientists in the Interdisciplinary Areas.

Entities:  

Keywords:  DNA sequences; Deep learning; Enhancer; Rice

Mesh:

Year:  2022        PMID: 35190950     DOI: 10.1007/s12539-022-00503-5

Source DB:  PubMed          Journal:  Interdiscip Sci        ISSN: 1867-1462            Impact factor:   2.233


  38 in total

Review 1.  Functional and mechanistic diversity of distal transcription enhancers.

Authors:  Michael Bulger; Mark Groudine
Journal:  Cell       Date:  2011-02-04       Impact factor: 41.582

2.  Specific expression of LATERAL SUPPRESSOR is controlled by an evolutionarily conserved 3' enhancer.

Authors:  Bodo Raatz; Andrea Eicker; Gregor Schmitz; Elisabeth Fuss; Dörte Müller; Susanne Rossmann; Klaus Theres
Journal:  Plant J       Date:  2011-08-18       Impact factor: 6.417

Review 3.  Distant activation of transcription: mechanisms of enhancer action.

Authors:  Olga I Kulaeva; Ekaterina V Nizovtseva; Yury S Polikanov; Sergei V Ulianov; Vasily M Studitsky
Journal:  Mol Cell Biol       Date:  2012-10-08       Impact factor: 4.272

4.  SFAPS: an R package for structure/function analysis of protein sequences based on informational spectrum method.

Authors:  Su-Ping Deng; De-Shuang Huang
Journal:  Methods       Date:  2014-08-15       Impact factor: 3.608

5.  Genome-scale functional characterization of Drosophila developmental enhancers in vivo.

Authors:  Evgeny Z Kvon; Tomas Kazmar; Gerald Stampfel; J Omar Yáñez-Cuna; Michaela Pagani; Katharina Schernhuber; Barry J Dickson; Alexander Stark
Journal:  Nature       Date:  2014-06-01       Impact factor: 49.962

Review 6.  Plant Enhancers: A Call for Discovery.

Authors:  Blaise Weber; Johan Zicola; Rurika Oka; Maike Stam
Journal:  Trends Plant Sci       Date:  2016-09-02       Impact factor: 18.313

7.  Genome-Wide Prediction and Validation of Intergenic Enhancers in Arabidopsis Using Open Chromatin Signatures.

Authors:  Bo Zhu; Wenli Zhang; Tao Zhang; Bao Liu; Jiming Jiang
Journal:  Plant Cell       Date:  2015-09-15       Impact factor: 11.277

Review 8.  Spatiotemporal signalling in plant development.

Authors:  Erin Sparks; Guy Wachsman; Philip N Benfey
Journal:  Nat Rev Genet       Date:  2013-09       Impact factor: 53.242

9.  The sequence of the human genome.

Authors:  J C Venter; M D Adams; E W Myers; P W Li; R J Mural; G G Sutton; H O Smith; M Yandell; C A Evans; R A Holt; J D Gocayne; P Amanatides; R M Ballew; D H Huson; J R Wortman; Q Zhang; C D Kodira; X H Zheng; L Chen; M Skupski; G Subramanian; P D Thomas; J Zhang; G L Gabor Miklos; C Nelson; S Broder; A G Clark; J Nadeau; V A McKusick; N Zinder; A J Levine; R J Roberts; M Simon; C Slayman; M Hunkapiller; R Bolanos; A Delcher; I Dew; D Fasulo; M Flanigan; L Florea; A Halpern; S Hannenhalli; S Kravitz; S Levy; C Mobarry; K Reinert; K Remington; J Abu-Threideh; E Beasley; K Biddick; V Bonazzi; R Brandon; M Cargill; I Chandramouliswaran; R Charlab; K Chaturvedi; Z Deng; V Di Francesco; P Dunn; K Eilbeck; C Evangelista; A E Gabrielian; W Gan; W Ge; F Gong; Z Gu; P Guan; T J Heiman; M E Higgins; R R Ji; Z Ke; K A Ketchum; Z Lai; Y Lei; Z Li; J Li; Y Liang; X Lin; F Lu; G V Merkulov; N Milshina; H M Moore; A K Naik; V A Narayan; B Neelam; D Nusskern; D B Rusch; S Salzberg; W Shao; B Shue; J Sun; Z Wang; A Wang; X Wang; J Wang; M Wei; R Wides; C Xiao; C Yan; A Yao; J Ye; M Zhan; W Zhang; H Zhang; Q Zhao; L Zheng; F Zhong; W Zhong; S Zhu; S Zhao; D Gilbert; S Baumhueter; G Spier; C Carter; A Cravchik; T Woodage; F Ali; H An; A Awe; D Baldwin; H Baden; M Barnstead; I Barrow; K Beeson; D Busam; A Carver; A Center; M L Cheng; L Curry; S Danaher; L Davenport; R Desilets; S Dietz; K Dodson; L Doup; S Ferriera; N Garg; A Gluecksmann; B Hart; J Haynes; C Haynes; C Heiner; S Hladun; D Hostin; J Houck; T Howland; C Ibegwam; J Johnson; F Kalush; L Kline; S Koduru; A Love; F Mann; D May; S McCawley; T McIntosh; I McMullen; M Moy; L Moy; B Murphy; K Nelson; C Pfannkoch; E Pratts; V Puri; H Qureshi; M Reardon; R Rodriguez; Y H Rogers; D Romblad; B Ruhfel; R Scott; C Sitter; M Smallwood; E Stewart; R Strong; E Suh; R Thomas; N N Tint; S Tse; C Vech; G Wang; J Wetter; S Williams; M Williams; S Windsor; E Winn-Deen; K Wolfe; J Zaveri; K Zaveri; J F Abril; R Guigó; M J Campbell; K V Sjolander; B Karlak; A Kejariwal; H Mi; B Lazareva; T Hatton; A Narechania; K Diemer; A Muruganujan; N Guo; S Sato; V Bafna; S Istrail; R Lippert; R Schwartz; B Walenz; S Yooseph; D Allen; A Basu; J Baxendale; L Blick; M Caminha; J Carnes-Stine; P Caulk; Y H Chiang; M Coyne; C Dahlke; A Deslattes Mays; M Dombroski; M Donnelly; D Ely; S Esparham; C Fosler; H Gire; S Glanowski; K Glasser; A Glodek; M Gorokhov; K Graham; B Gropman; M Harris; J Heil; S Henderson; J Hoover; D Jennings; C Jordan; J Jordan; J Kasha; L Kagan; C Kraft; A Levitsky; M Lewis; X Liu; J Lopez; D Ma; W Majoros; J McDaniel; S Murphy; M Newman; T Nguyen; N Nguyen; M Nodell; S Pan; J Peck; M Peterson; W Rowe; R Sanders; J Scott; M Simpson; T Smith; A Sprague; T Stockwell; R Turner; E Venter; M Wang; M Wen; D Wu; M Wu; A Xia; A Zandieh; X Zhu
Journal:  Science       Date:  2001-02-16       Impact factor: 47.728

10.  An atlas of active enhancers across human cell types and tissues.

Authors:  Robin Andersson; Claudia Gebhard; Michael Rehli; Albin Sandelin; Irene Miguel-Escalada; Ilka Hoof; Jette Bornholdt; Mette Boyd; Yun Chen; Xiaobei Zhao; Christian Schmidl; Takahiro Suzuki; Evgenia Ntini; Erik Arner; Eivind Valen; Kang Li; Lucia Schwarzfischer; Dagmar Glatz; Johanna Raithel; Berit Lilje; Nicolas Rapin; Frederik Otzen Bagger; Mette Jørgensen; Peter Refsing Andersen; Nicolas Bertin; Owen Rackham; A Maxwell Burroughs; J Kenneth Baillie; Yuri Ishizu; Yuri Shimizu; Erina Furuhata; Shiori Maeda; Yutaka Negishi; Christopher J Mungall; Terrence F Meehan; Timo Lassmann; Masayoshi Itoh; Hideya Kawaji; Naoto Kondo; Jun Kawai; Andreas Lennartsson; Carsten O Daub; Peter Heutink; David A Hume; Torben Heick Jensen; Harukazu Suzuki; Yoshihide Hayashizaki; Ferenc Müller; Alistair R R Forrest; Piero Carninci
Journal:  Nature       Date:  2014-03-27       Impact factor: 49.962

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