version_number_image
 
 

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

 
   
Your Input:
tagA
Putative N-acetylmannosaminyltransferase; Catalyzes the conversion of GlcNAc-PP-undecaprenol into ManNAc-GlcNAc-PP-undecaprenol, a key lipid intermediate in the de novo synthesis of teichoic acid (Potential) (254 aa)
(Staphylococcus aureus COL)
Predicted Functional Partners:
llm
Lipophilic protein which affects bacterial lysis rate and methicillin resistance level (351 aa)
     0.974
tagB
Teichoic acid biosynthesis protein B (367 aa)
     0.966
mnaA
UDP-N-acetylglucosamine 2-epimerase (375 aa)
     0.950
cap5P
UDP-N-acetylglucosamine 2-epimerase Cap5P (391 aa)
     0.948
cap5G
UDP-N-acetylglucosamine 2-epimerase Cap5G (374 aa)
       0.899
cap5O
Capsular polysaccharide biosynthesis protein Cap5O (420 aa)
      0.736
tagD
glycerol-3-phosphate cytidylyltransferase (132 aa)
      0.732
tagH
Teichoic acids export ATP-binding protein tagH; Part of the ABC transporter complex tagGH invol [...] (264 aa)
      0.630
rsmG
Ribosomal RNA small subunit methyltransferase G; Specifically methylates the N7 position of gua [...] (239 aa)
       0.608
mnmE
tRNA modification GTPase mnmE; Exhibits a very high intrinsic GTPase hydrolysis rate. Involved [...] (459 aa)
       0.607
 
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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
 
required confidence (score): interactors shown:
or custom value: or custom limit:

additional (white) nodes         or: network depth