In Silico Profiling of Regulatory MicroRNA Targets in Programmed Cell Death 1 Gene
In Silico Profiling of Regulatory MicroRNA Targets in Programmed Cell Death 1 Gene
Aftab Shaukat1,*, Sana Hanif2, Irfan Shaukat3, Muhammad Ahsan Naeem4,5, Shadab Shaukat6, Rizwan Shukat8, Shahid Ali Rajput9, Imran Shaukat10, Mubashar Hassan4, Khalid Mehmood7, Saqib Umar11 and Muhammad Ali Jamil1
1Department of Clinical Medicine and Surgery, Faculty of Veterinary Science, University of Agriculture, Faisalabad, Pakistan
2Department of Physics, University of Gujrat, Gujrat, Pakistan
3Department of Biochemistry, Faculty of Medicine, University of Lorraine, Nancy, France
4Department of Preventive Veterinary Medicine, College of Animal Science and Technology, Huazhong Agricultural University, Wuhan 430070, Hubei, China
5Department of Basic Sciences (Pharmacology), Khan Bahadar Choudhry Mushtaq Ahmed College of Veterinary and Animal Sciences (UVAS Campus), Narowal, Pakistan
6Department of Plant Breeding and Genetics, College of Agriculture, University of Sargodha, Sargodha, Pakistan
7University College of Veterinary and Animal Sciences, The Islamia University of Bahawalpur, Bahawalpur, Pakistan
8National Institute of Food Science and Technology, Faculty of Food, Nutrition and Home Sciences, University of Agriculture, Faisalabad, Pakistan
9Guangdong Provincial Key Laboratory of Animal Nutrition Control, College of Animal Science, South China Agricultural University Guanhzhou, Guangdong, China
10Department of Physics, University of Agriculture, Faisalabad, Pakistan
11Embryo Biotechnology and Reproduction Laboratory, Institute of Animal Sciences, Chinese Academy of Agricultural Sciences, Beijing 100193, China
ABSTRACT
MicroRNAs (miRNA) are the novel class of small non-coding RNAs comprising of 17-24 nucleotides that, targets in silencing of one or more genes. Despite their importance as gene regulator, computational strategies are still at its initial stages. Several computer based prediction databases remain the only foundation for rapid identification of putative microRNA target. By utilizing experimentally validated targets, the search of further targets via bioinformatics tools help to predict gene target site. Keeping this in view, a study has been planned to investigate PDCD1 gene regulatory miRNA targets, their sequences and their seed location in human using online server miRDB. We have identified 26 specific miRNAs (hsa-miR-939-3p, hsa-miR-661, hsa-miR-2861, hsa-miR-23b-5p, hsa-miR-23a-5p, hsa-miR-4764-5p, hsa-miR-6734-3p, hsa-miR-4441, hsa-miR-4267, hsa-miR-4456, hsa-miR-7847-3p, hsa-miR-6515-5p, hsa-miR-5692b, hsa-miR-4664-5p, hsa-miR-342-5p, hsa-miR-5692c, hsa-miR-3911, hsa-miR-3960, hsa-miR-6852-5p, hsa-miR-4253, hsa-miR-6862-5p, hsa-miR-4296, hsa-miR-4695-5p, hsa-miR-4447, hsa-miR-4532 and hsa-miR-6752-3p) in humans which can target different regions in PDCD1 gene. Multiple sequence alignments were also performed to investigate similarities among mature sequences of these miRNAs. Our data will provide concrete bases for the validation of these miRNAs.
Article Information
Received 19 October 2019
Revised 11 December 2019
Accepted 21 December 2019
Available online 22 April 2020
Authors’ Contributions
AS, MAN and SAR conceived the idea. AS wrote the manuscript. All other helped in preparation of the manuscript.
Key words
PDCD1, microRNAs, Computational prediction, miRDB and Multiple sequence alignment.
DOI: https://dx.doi.org/10.17582/journal.pjz/20191019021035
* Corresponding author: [email protected]
0030-9923/2020/0004-1587 $ 9.00/0
Copyright 2020 Zoological Society of Pakistan
Programmed cell death 1 (PDCD1) also called PD-1 cluster of differentiation 279 (CD279) is a member of B7 superfamily involved in immunomodulation. PDCD1 is an inhibitory cell surface receptor on T-cell, which is involved in the regulation of T-cell function during tolerance and immunity (Xia et al., 2018). PDCD1inhibits T-cell effector functions when binds to its ligand PDL1 and PDL2), in an antigen-specific manner. PDCD1 has been studied for cancer, human immunodeficiency virus (HIV), and Alzheimer’s diseases. Overexpression of PD1 on T cells is an indicator of exhaustion of T-cell or T-cell anergy (Syn et al., 2017).
MicroRNAs (miRNAs) are the evolutionarily conserved, short (19–25 nucleotides) sequences, single-stranded non-coding RNAs that bind to messenger RNA (mRNA) by a sequence-specific manner and regulate gene expression (Jiang et al., 2018) and play important roles in fields of development biology, cancer, infectious diseases and play important roles in various fields of life science. miRNAs hampers translation of target mRNAs into protein and to encourage degradation of mRNA targets which regulate the expression of more than 30% of protein-coding genes at the post transcriptional and translational level (Zhang et al., 2018).
The miRDB is an online computational tool for miRNA target prediction and functional annotations. All miRDB targets were predicated by MirTarget used to predict miRNA targets with machine learning methods. miRDB hosts predicted miRNA targets in five species: human, mouse, rat, dog and chicken (Wang, 2008; Chen and Wang, 2019). Thousands of genes in humans are regulated by these miRNAs (Jamieson et al., 2012). Despite of their admitted importance, miRNA regulating PDCD1 gene function in human are not well understood. So, the present study was planned to carry out in silico prediction of putative miRNA targets in human, with aim to declare early diagnostic markers for the fate of cancer, organ transplant and pregnancy/inflammatory process. In silico analyses in the present study for profiling miRNA of PDCD1 gene will be helpful for its correlation with T cell receptor (TCR) signaling.
Materials and methods
List of genes associated with TCR coinhibation identified in humans were collected from literature and publicly available databases. All the relevant publications were identified after searching PubMed with key words immunotolerence, graft transplant, cancer, materofetal or fetomaternal tolerance, Nivolumab etc. Out of all the genes obtained after keywords searching, PDCD1 was selected for this computational study as previously described study of Rahman et al. (2014).
The sequence of PDCD1 was retrieved from Genbank (NG_012110) (Benson et al., 2000). We used miRDB for searching of potential miRNA targets of PDCD1 gene. miRDB is an online computational tool for miRNA target prediction and functional annotations (Wang, 2008). The miRDB (MicroRNA target prediction and functional study data base http://mirdb.org/) was used for potential miRNA target identification in PDCD1 from NCBI Gene ID and predicts miRNA targets in for human.
Results and discussion
By using miRDB bioinformatic database, 26 potential miRNAs targeting PDCD1 gene in human were identified, given in Tables I as previously described study of Rahman et al. (2014) who predicted 11 targeting miRNA of GJB3 gene by using miRDB software. The miRDB is the computer based database for identification binding site in selected gene, which will provide strong further basis for experimental validation (Chen and Wang, 2019) of these novel miRNAs in PDCD1. If validated by experiments, these miRNAs might be used as novel biomarkers for regulation of PDCD1 gene.
Tio et al. (2018) studied anti-PD-1/PD-L1 immunotherapy in patients with solid organ transplant, HIV or hepatitis B/C infection. They came to know that among 6 patients with solid organ transplant shows graft rejection and including 1 death. Patients with HIV or hepatitis B/C respond well to anti-PD-1/PD-L1 immunotherapeutic treatment without any increased in toxicity.
Guleria and Sayegh (2007)studies that role of PD-1 upon binding with it ligand PD-L1 significantly increase rate of fetal survival due to shifting to Th2 cytokines, which are important for maintenance of successful pregnancy. Compared with the results of current study, PDCD1 may possibly responsible for programmed cell death.
Wang et al. (2017) reviewed that binding of PD1/PDL1 has been considered to play an important role in suppressing immune system which leads to invasion of tumor cells rejection of organ transplant and failure of fetomaternal tolerance. Thus, this study will provide the millstones for future researches to look on putative miRNA of PDCD1 gene.
The miR-661 has been well known to be involved in development of cancer in human beings (Wang et al., 2017). The hsa-miR-661 has helps the proliferation of the human cancerous cell line, this suggested that it may be a potential in therapy of lung cancer (Lu et al., 2019). miR-661 prevents the proliferation of human glioma cells, and their invasion and migration by targeting Telmerase reverse transcriptas TERT/hTERT) (Li et al., 2015). Another previous study reported that miR-661 can promotes the ovarian cancer cells by directing targeting the inositol polyphosphate-5-phosphate J (INPP5j) gene (Zhu et al., 2015).
Apoptosis, a form of program cell death has been studied in many degenerative diseases (Cheng et al. 2011). The downregulation of miR-2861 may prevents the apoptosis of endometriotic tissue through the regulation of the MMp2 and STAT3. So, miR-2861 might be a potential therapeutic biomarker in endometriosis (Yu et al., 2019). The previous study identified the miR-2861 as a regulator of cardiomyocyte necrosis and suggest potential therapeutic biomarker in cardiac disease (Weng et al., 2016). miR-6734 arrested the cellular growth and causes
Table I.- miRNA targeting PDCD1 in human and list of 26 miRNA predicated by online tool miRDB in the sequence of Programmed cell death 1 (PDCD1) gene. Gene 5133 is predicted to be targeted by 26 miRNAs in miRDB.
S. No. |
Precursor miRNA |
Mature miRNA |
Target Gene specifications |
||||||
miR Base ID |
Prec- ursor name |
miR Base ID |
mi RNA |
Sequence |
Len gth |
Genomic location |
Seed seq. |
Seed loc. |
|
1 |
MI000-5761 |
hsa-mir-939 |
MIMAT-0022939 |
hsa-miR-939 |
5' - CCCUGGGCC GCUCCCCAG - 3' |
21 |
chr8:144394149-144394230 (-) |
GCCC AGG |
201, 627 |
2 |
MI000-3669 |
hsa-mir-661 |
MIMAT0-003324 |
hsa-miR-661 |
5' - UGCCUGGGU GCCUGCGCGU-3' |
24 |
chr8:143945191-143945279 (-) |
CCCA GGC |
202, 628 |
3 |
MI001-3006 |
hsa-mir-2861 |
MIMAT-0013802 |
hsa-miR-2861 |
5' - GGGGCCUGG GUGGGCGG - 3' |
19 |
chr9:127785918-127786007 (+) |
CAGG CCC |
642, 704, 820 |
4 |
MI000-0439 |
hsa-mir-23b |
MIMAT-0004587 |
hsa-miR-23b- |
5' - UGGGUUCCU UGCUGAUUU - 3' |
22 |
chr9:95085208-95085304 (+) |
GGAA CCC |
913 |
5 |
MI000-0079 |
hsa-mir-23a |
MIMAT-0004496 |
hsa-miR-23a- |
5' - GGGGUUCCU GAUGGGAUUU-3' |
22 |
hr19:13836587-13836659 (-) |
GGA ACCC |
913 |
6 |
MI001-7405 |
hsa-mir-4764 |
MIMAT-0019914 |
hsa-miR-4764 |
5' - UGGAUGUGG GAGUUAUCU - 3' |
21 |
chr22:33436582-33436669 (-) |
CA CA TCC |
1029 |
7 |
MI002-2579 |
hsa-mir-6734 |
MIMAT-0027370 |
hsa-miR-6734 |
5' - CCCUUCCCU CUUCUCUCAG-3' |
23 |
chr1:43364648-43364715 (-) |
GGGA AGG |
563, 971 |
8 |
MI00-16784 |
hsa-mir-4441 |
MIMAT-0018959 |
hsa-miR-4441 |
5' - ACAGGGAG GAUUGUA - 3' |
17 |
chr2:239085827-239085926 (-) |
CTCC CTG |
292, 537 |
9 |
MI001-5871 |
hsa-mir-4267 |
MIMAT-0016893 |
hsa-miR-4267 |
5' - UCCAGCUC UGGCAC - 3' |
16 |
chr2:110069961-110070042 (-) |
GAG CTGG |
689 |
10 |
MI001-6802 |
hsa-mir-4456 |
MIMAT-0018978 |
hsa-miR-4456 |
5' - CCUGGUGG UCCUUUU - 3' |
17 |
chr5:535840-535882 (-) |
CCAC CAG |
14, 955, 1066 |
11 |
MI00-25517 |
hsa-mir-7847 |
MIMAT-0030422 |
hsa-miR-7847 |
5' - CGUGGAGGA GGAGGAGGC - 3' |
21 |
chr11:1880045-1880147 (+) |
CCTC CAC |
33, 610 |
12 |
MI00-22227 |
hsa-mir-6515 |
MIMAT-0025486 |
hsa-miR-6515- |
5' - UUGGAGGGU GAAGACAUC - 3' |
21 |
chr19:12940484-12940540 (+) |
CCC TCCA |
32, 609 |
13 |
MI00-19311 |
hsa-mir-5692b |
MIMAT-0022497 |
hsa-miR-5692 |
5' - AAUAAUAUC AGUAGGUGU - 3' |
20 |
chr21:42950928-42951014 (-) |
ATAT TAT |
1139 |
14 |
MI00-17294 |
hsa-mir-4664 |
MIMAT-0019737 |
hsa-miR-4664 |
5' - UGGGGUGCC CGCAAGUU - 3' |
22 |
chr8:143733083-143733153 (-) |
GCAC CCC |
1043 |
15 |
MI000-0805 |
hsa-mir-342 |
MIMAT-0004694 |
hsa-miR-342- |
5' - AGGGGUGCU GUGAUUGA - 3' |
21 |
chr14:100109655-100109753 (+) |
GCAC CCC |
1043 |
16 |
MI00-19288 |
hsa-mir-5692c-1 |
MIMAT-0022476 |
hsa-miR-5692 |
5' - AAUAAUAUC UAGGUGUAC - 3' |
22 |
chr5:135802985-135803075 (-) |
ATAT TAT |
1139 |
17 |
MI00-16415 |
hsa-mir-3911 |
MIMAT-0018185 |
hsa-miR-3911 |
5' - UGUGUGGAU GGAGGAGGCA-3' |
22 |
chr9:127690687-127690795 (-) |
TCCA CAC |
1033 |
18 |
MI00-16964 |
hsa-mir-3960 |
MIMAT-0019337 |
hsa-miR-3960 |
5' - GGCGGCGG GAGGCGGGG-3' |
20 |
chr9:127785833-127785923 (+) |
CCGC CGC |
732 |
19 |
MI00-22698 |
hsa-mir-6852 |
MIMAT-0027604 |
hsa-miR-6852- |
5' - CCCUGGGG GAGGACAUG -3' |
21 |
chr9:35710676-35710741 (-) |
CCCC AGG |
521 |
20 |
MI00-15860 |
hsa-mir-4253 |
MIMAT-0016882 |
hsa-miR-4253 |
5' - AGGGCAUC CAGGGGGU - 3' |
18 |
chr1:22863159-22863226 (-) |
CATG CCC |
624 |
21 |
MI002-2709 |
hsa-mir-6862-1 |
MIMAT-0027625 |
hsa-miR-6862- |
5' - CGGGCAUG GGAGAGACU-3' |
22 |
chr16:28390982-28391051 (-) |
CATG CCC |
624 |
22 |
MI00-15823 |
hsa-mir-4296 |
MIMAT-0016845 |
hsa-miR-4296 |
5' - AUGUGGG CAGGCUCA - 3' |
17 |
chr10:125032783-125032870 (-) |
GCCC ACA |
190 |
23 |
MI001-7328 |
hsa-mir-4695 |
MIMAT-0019788 |
hsa-miR-4695 |
5' - CAGGAGGC GGCGAGCAG-3' |
22 |
chr1:18883202-18883275 (-) |
GCCT CCT |
382, 724 |
24 |
MI00-16790 |
hsa-mir-4447 |
MIMAT-0018966 |
hsa-miR-4447 |
5' - GGUGGGGC UGUUGUUU - 3' |
17 |
chr3:116850277-116850367 (-) |
CCCC CAC |
1046 |
25 |
MI001-6899 |
hsa-mir-4532 |
MIMAT-0019071 |
hsa-miR-4532 |
5' - CCCCGGG CCCGGCG - 3' |
17 |
chr20:57895394-57895444 (+) |
CCCC GGG |
989 |
26 |
MI00-22597 |
hsa-mir-6752 |
MIMAT-0027405 |
hsa-miR-6752 |
5' - UCCCUGCA UACUCCCAG-3' |
21 |
chr11:67490245-67490315 (+) |
GGCA GGG |
77, 594, 656, 801, 1059 |
the apoptosis of colon cancer cells by up-regulating the p-21 genes, which is suggesting the its key role in cancer cell survival and growth.
The miR-342 regulates the lumen formation of mammary gland morphogenesis (Weng et al., 2016). The Polymerase chain reaction (PCR) is a sensitive of molecular identification (Shaukat et al., 2019). Ding et al. (2016) has predicted that differentially expressed miRNAs in type 2 diabetes mellitus (T2DM) including hsa-miR-3960 by real time PCR. Their study might be helpful in subsequent experiments in T2DM.
Details of names of candidate miRNAs, their sequences, order of nucleotides, seed sequences and location target score and protein size of target gene has been shown in Table I, multiple sequence alignment, phylogenetic tree analysis of all the 26 miRNAs and purines and pyrimidines alignment of 26 miRNAs are shown in Supplementary Figure 1. All the miRNA targeting PDCD1 on miRDB were displayed in Tables I and Supplementary Figure 1.
Conclusion
The miRNAs are the novel class of small non-coding RNAs that targets in silencing of one or more genes. Keeping in view of importance of computer based prediction databases miRDB has been used in our study to mine the miRNAs targeting PDCD1 gene in human beings. We have identified 26 specific miRNAs in humans which can target different regions in PDCD1 gene. Our data will provide concrete bases for the validation of these miRNAs in silencing of PDCD1 gene.
Supplementary material
There is supplementary material associated with this article. Access the material online at: https://dx.doi.org/10.17582/journal.pjz/20191019021035
Statement of conflict of interest
Authors have declared no conflict of interest.
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