The Bencao (Herbal) Database(本草数据库)
miRNA_Atlas(miRNA地图)
sRNA_Atlas(sRNA地图)
miRNA_Target(miRNA靶基因)
sRNA_Target(sRNA靶基因)
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About(关于)
OmicsAtlas
TranscriptomeAtlas
miRNA Atlas
miR160
nnu-miR160b
Accession:
B48340102
Entry
Homologs
Rfam Alignments
Targets
Entry
ID:
nnu-miR160b
Alias:
F243.L000530.A29*
Sequence:
UGCCUGGCUCCCUGAAUGCCA
Description:
MIR160 putative
Species:
莲
  Species latin name:
Nelumbo nucifera
TCM Name:
Lianzi(莲子)
Lianzixin(莲子心)
Lianfang(莲房)
Liaxu(莲须)
Heye(荷叶)
Oujie(藕节)
TCM Resource (Sample number):
莲房(1)
莲须(1)
藕节(1)
Predicted by
Mirnovo
:
-
Evidence support:
Mirbase
Experimental status:
Not yet
Homologs
miRBase Homologs
ahy-miR160-5p
;
aof-miR160a
;
bdi-miR160e-5p
;
cme-miR160d
;
cpa-miR160d
;
mes-miR160f
;
mtr-miR160c
;
osa-miR160f-5p
;
ptc-miR160e-5p
;
ptc-miR160f
;
rco-miR160c
;
sbi-miR160f
;
tcc-miR160a
;
vca-miR160-5p
;
Bencao Homologs
cco-miR160a
;
hmu-miR160
;
lfo-miR160a
;
nnu-miR160b
;
Rfam Alignments
>> mir-160  mir-160 microRNA precursor family
 rank     E-value  score  bias mdl mdl from   mdl to       seq from      seq to       acc trunc   gc
 ----   --------- ------ ----- --- -------- --------    ----------- -----------      ---- ----- ----
  (1) ?     0.032   16.4   0.0  cm        4       24 ~~           1          21 + ~~ 1.00 5'&3' 0.62
                              ??? ??????? ?????????       NC
                         ~~~~~<<<-<<<<<<<-<<<<<<<<<~~~~~~ CS
              mir-160  1 <[3]*UGCCUGGCUCCCuGuAUGCCA*[66]> 90
                              UGCCUGGCUCCCUG AUGCCA
          nnu-miR160b  1 <[0]*UGCCUGGCUCCCUGAAUGCCA*[ 0]> 21
                         .....*********************...... PP
Targets
Predicted by TargetFinder
NM_001003828
;  
NM_001014431
;  
NM_001014432
;  
NM_001029883
;  
NM_001037806
;  
NM_001040703
;  
NM_001141979
;  
NM_001141980
;  
NM_001164586
;  
NM_001199427
;  
NM_001243385
;  
NM_001243386
;  
NM_001300832
;  
NM_001300833
;  
NM_001308370
;  
NM_001349608
;  
NM_001349609
;  
NM_001349610
;  
NM_001349612
;  
NM_001349613
;  
NM_001349614
;  
NM_001349615
;  
NM_001349616
;  
NM_001349617
;  
NM_001349618
;  
NM_001349619
;  
NM_001349620
;  
NM_001349621
;  
NM_001349622
;  
NM_001349623
;  
NM_001349624
;  
NM_001349625
;  
NM_001349626
;  
NM_001355001
;  
NM_001368048
;  
NM_002530
;  
NM_003300
;  
NM_005163
;  
NM_005657
;  
NM_007215
;  
NM_013327
;  
NM_015080
;  
NM_015215
;  
NM_015235
;  
NM_020643
;  
NM_031904
;  
NM_032283
;  
NM_052924
;  
NM_138732
;  
NM_145725
;  
NM_145726
;  
NM_152250
;  
NM_194312
;  
NR_027927
;  
NR_102401
;  
NR_110101
;  
NR_110759
;  
Predicted by TAPIR
NM_001014431
;  
NM_001014432
;  
NM_001029883
;  
NM_001037806
;  
NM_001164586
;  
NM_001178003
;  
NM_001199427
;  
NM_001300833
;  
NM_001308370
;  
NM_001350979
;  
NM_001350980
;  
NM_001350981
;  
NM_001350982
;  
NM_001350983
;  
NM_001350984
;  
NM_001350985
;  
NM_001350986
;  
NM_001368048
;  
NM_003300
;  
NM_005163
;  
NM_007215
;  
NM_015080
;  
NM_015235
;  
NM_020643
;  
NM_031904
;  
NM_032283
;  
NM_052924
;  
NM_138732
;  
NM_145115
;  
NM_145725
;  
NM_145726
;  
NM_194312
;  
NR_027927
;  
NR_110101
;  
NR_110759
;