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胡学海

Supervisor of Doctorate Candidates
Supervisor of Master's Candidates
Name (Simplified Chinese):胡学海
Name (Pinyin):huxuehai
Administrative Position:大数据系系主任
Professional Title:Professor
Education Level:With Certificate of Graduation for Doctorate Study
Degree:Doctoral Degree in Science
Business Address:逸夫楼C609
E-Mail:
Alma Mater:武汉大学
Teacher College:College of Informatics
School/Department:信息学院
Discipline:Other specialties in Statistics    bioinformatics    
Other Contact Information:

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Paper Publications
Improved Prediction of Regulatory Element Using Hybrid Abelian Complexity Features with DNA Sequences
Release time:2021-04-30    Hits:

Impact Factor:4.556

DOI number:10.3390/ijms20071704

Journal:International Journal of Molecular Sciences

Key Words:regulatory element; enhancer; abelian complexity; prediction

Abstract:Deciphering the code of cis-regulatory element (CRE) is one of the core issues of current biology. As an important category of CRE, enhancers play crucial roles in gene transcriptional regulations in a distant manner. Further, the disruption of an enhancer can cause abnormal transcription and, thus, trigger human diseases, which means that its accurate identification is currently of broad interest. Here, we introduce an innovative concept, i.e., abelian complexity function (ACF), which is a more complex extension of the classic subword complexity function, for a new coding of DNA sequences. After feature selection by an upper bound estimation and integration with DNA composition features, we developed an enhancer prediction model with hybrid abelian complexity features (HACF). Compared with existing methods, HACF shows consistently superior performance on three sources of enhancer datasets. We tested the generalization ability of HACF by scanning human chromosome 22 to validate previously reported super-enhancers. Meanwhile, we identified novel candidate enhancers which have supports from enhancer-related ENCODE ChIP-seq signals. In summary, HACF improves current enhancer prediction and may be beneficial for further prioritization of functional noncoding variants.

Indexed by:Journal paper

Discipline:Natural Science

First-Level Discipline:Biology

Volume:20

Page Number:1704

Translation or Not:no

Date of Publication:2019-01-01

Included Journals:SCI