Literature DB >> 35279747

Prokaryotic and eukaryotic promoters identification based on residual network transfer learning.

Xiao Liu1, Yuqiao Xu2, Yachuan Luo2, Li Teng2.   

Abstract

Promoters contribute to research in the context of many diseases, such as coronary heart disease, diabetes and tumors, and one fundamental task is to identify promoters. Deep learning is widely used in the study of promoter sequence recognition. Although deep models have fast and accurate recognition capabilities, they are also limited by their reliance on large amounts of high-quality data. Therefore, we performed transfer learning on a typical deep network based on residual ideas, called a deep residual network (ResNet), to solve the problem of a deep network's high dependence on large amounts of data in the process of promoter prediction. We used binary one-hot encoding to represent the promoter and took advantage of ResNet to extract feature representations from organisms with a large amount of promoter data. Then, we transferred the learned structural parameters to target organisms with insufficient promoter data to improve the generalization performance of ResNet in target organisms. We evaluated the promoter datasets of four organisms (Bacillus subtilis, Escherichia coli, Saccharomyces cerevisiae and Drosophila melanogaster). The experimental results showed that the AUCs of ResNet's promoter prediction after deep transfer were 0.8537 and 0.8633, which increased by 0.1513 and 0.1376 in prokaryotes and eukaryotes, respectively.
© 2022. The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.

Entities:  

Keywords:  Deep learning; Promoter prediction; ResNet; Transfer learning

Mesh:

Year:  2022        PMID: 35279747     DOI: 10.1007/s00449-022-02716-w

Source DB:  PubMed          Journal:  Bioprocess Biosyst Eng        ISSN: 1615-7591            Impact factor:   3.210


  19 in total

1.  Prediction of DNA methylation in the promoter of gene suppressor tumor.

Authors:  Imane Saif; Yassine Kasmi; Karam Allali; Moulay Mustapha Ennaji
Journal:  Gene       Date:  2018-02-09       Impact factor: 3.688

2.  Collagenase-1 (-1607 1G/2G), Gelatinase-A (-1306 C/T), Stromelysin-1 (-1171 5A/6A) functional promoter polymorphisms in risk prediction of type 2 diabetic nephropathy.

Authors:  Srilatha Reddy Gantala; Mrudula Spurthi Kondapalli; Ramanjaneyulu Kummari; Chiranjeevi Padala; Mohini Aiyengar Tupurani; Keerthi Kupsal; Rajesh Kumar Galimudi; Kishore Kumar Gundapaneni; Kaushik Puranam; Nivas Shyamala; Swarnalatha Guditi; Ram Rapur; Surekha Rani Hanumanth
Journal:  Gene       Date:  2018-06-05       Impact factor: 3.688

3.  iPromoter-BnCNN: a novel branched CNN-based predictor for identifying and classifying sigma promoters.

Authors:  Ruhul Amin; Chowdhury Rafeed Rahman; Sajid Ahmed; Md Habibur Rahman Sifat; Md Nazmul Khan Liton; Md Moshiur Rahman; Md Zahid Hossain Khan; Swakkhar Shatabda
Journal:  Bioinformatics       Date:  2020-12-08       Impact factor: 6.937

4.  iPromoter-FSEn: Identification of bacterial σ70 promoter sequences using feature subspace based ensemble classifier.

Authors:  Md Siddiqur Rahman; Usma Aktar; Md Rafsan Jani; Swakkhar Shatabda
Journal:  Genomics       Date:  2018-07-29       Impact factor: 5.736

5.  Neural network optimization for E. coli promoter prediction.

Authors:  B Demeler; G W Zhou
Journal:  Nucleic Acids Res       Date:  1991-04-11       Impact factor: 16.971

6.  MMP 1 circulating levels and promoter polymorphism in risk prediction of coronary artery disease in asymptomatic first degree relatives.

Authors:  Mrudula Spurthi Kondapalli; Rajesh Kumar Galimudi; Kishore Kumar Gundapaneni; Chiranjeevi Padala; Anuradha Cingeetham; Srilatha Gantala; Altaf Ali; Nivas Shyamala; Sanjib Kumar Sahu; Pratibha Nallari; Surekha Rani Hanumanth
Journal:  Gene       Date:  2016-09-28       Impact factor: 3.688

7.  The cross-species prediction of bacterial promoters using a support vector machine.

Authors:  Michael Towsey; Peter Timms; James Hogan; Sarah A Mathews
Journal:  Comput Biol Chem       Date:  2008-07-15       Impact factor: 2.877

8.  DeePromoter: Robust Promoter Predictor Using Deep Learning.

Authors:  Mhaned Oubounyt; Zakaria Louadi; Hilal Tayara; Kil To Chong
Journal:  Front Genet       Date:  2019-04-05       Impact factor: 4.599

9.  Bacillus subtilis promoter sequences data set for promoter prediction in Gram-positive bacteria.

Authors:  Rafael Vieira Coelho; Scheila de Avila E Silva; Sergio Echeverrigaray; Ana Paula Longaray Delamare
Journal:  Data Brief       Date:  2018-05-13

10.  DeepGSR: an optimized deep-learning structure for the recognition of genomic signals and regions.

Authors:  Manal Kalkatawi; Arturo Magana-Mora; Boris Jankovic; Vladimir B Bajic
Journal:  Bioinformatics       Date:  2019-04-01       Impact factor: 6.937

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