Affiliation:
1. Key Laboratory for Neuro-Information of Ministry of Education, School of Life Science and Technology, Center for Informational Biology, University of Electronic Science and Technology of China, Chengdu 610054, China
Abstract
Nuclear receptors (NRs) are a superfamily of ligand-dependent transcription factors that
are closely related to cell development, differentiation, reproduction, homeostasis, and metabolism.
According to the alignments of the conserved domains, NRs are classified and assigned the
following seven subfamilies or eight subfamilies: (1) NR1: thyroid hormone like (thyroid hormone,
retinoic acid, RAR-related orphan receptor, peroxisome proliferator activated, vitamin D3-
like), (2) NR2: HNF4-like (hepatocyte nuclear factor 4, retinoic acid X, tailless-like, COUP-TFlike,
USP), (3) NR3: estrogen-like (estrogen, estrogen-related, glucocorticoid-like), (4) NR4: nerve
growth factor IB-like (NGFI-B-like), (5) NR5: fushi tarazu-F1 like (fushi tarazu-F1 like), (6) NR6:
germ cell nuclear factor like (germ cell nuclear factor), and (7) NR0: knirps like (knirps, knirpsrelated,
embryonic gonad protein, ODR7, trithorax) and DAX like (DAX, SHP), or dividing NR0
into (7) NR7: knirps like and (8) NR8: DAX like. Different NRs families have different structural
features and functions. Since the function of a NR is closely correlated with which subfamily it belongs
to, it is highly desirable to identify NRs and their subfamilies rapidly and effectively. The
knowledge acquired is essential for a proper understanding of normal and abnormal cellular
mechanisms. With the advent of the post-genomics era, huge amounts of sequence-known proteins
have increased explosively. Conventional methods for accurately classifying the family of NRs are
experimental means with high cost and low efficiency. Therefore, it has created a greater need for
bioinformatics tools to effectively recognize NRs and their subfamilies for the purpose of understanding
their biological function. In this review, we summarized the application of machine learning
methods in the prediction of NRs from different aspects. We hope that this review will provide
a reference for further research on the classification of NRs and their families.
Funder
Fundamental Research Funds for the Central Universities
Publisher
Bentham Science Publishers Ltd.
Cited by
6 articles.
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