version_number_image
 
 

This is the evidence view. Different line colors represent the types of evidence for the association.

 
   
Your Input:
mtnN
5'-methylthioadenosine/S-adenosylhomocysteine nucleosidase; Catalyzes the irreversible cleavage of the glycosidic bond in both 5'-methylthioadenosine (MTA) and S- adenosylhomocysteine (SAH/AdoHcy) to adenine and the corresponding thioribose, 5'-methylthioribose and S-ribosylhomocysteine, respectively (By similarity) (233 aa)
(Listeria welshimeri)
Predicted Functional Partners:
luxS
S-ribosylhomocysteine lyase; Involved in the synthesis of autoinducer 2 (AI-2) which is secrete [...] (155 aa)
    0.998
lcmA
cytosine methyl transferase (351 aa)
       0.899
fabD
malonyl CoA-acyl carrier protein transacylase (313 aa)
      0.734
lwe1504
GTPase family protein (366 aa)
       0.726
lwe1508
hypothetical protein (209 aa)
       0.697
nadD
Probable nicotinate-nucleotide adenylyltransferase; Catalyzes the reversible adenylation of nic [...] (188 aa)
       0.666
lwe0914
RNA methyltransferase, TrmH family, group 2 (169 aa)
       0.665
mnmA
tRNA-specific 2-thiouridylase mnmA; Catalyzes the 2-thiolation of uridine at the wobble positio [...] (371 aa)
       0.650
lwe1194
Nucleoside-triphosphatase (203 aa)
       0.650
folC
folylpolyglutamate synthase (429 aa)
       0.639
 
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Info & Parameters ...
Network Display - Nodes are either colored (if they are directly linked to the input - as in the table) or white (nodes of a higher iteration/depth). Edges, i.e. predicted functional links, consist of up to eight lines: one color for each type of evidence. Hover or click to reveal more information about the node/edge.

Active Prediction Methods:
Neighborhood Gene Fusion Co-occurrence
Co-expression Experiments Databases Textmining
 
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additional (white) nodes         or: network depth