version_number_image
 
 

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

 
   
Your Input:
allA
Ureidoglycolate hydrolase (169 aa)
(Brucella melitensis 2308)
Predicted Functional Partners:
BAB1_0532
Transthyretin (118 aa)
      0.941
ureC2
Urease subunit alpha 2; Disrupting the ure2 operon has no effect on urease activity or pathogen [...] (573 aa)
       0.899
ureB2
Urease subunit beta 2; Disrupting the ure2 operon has no effect on urease activity or pathogen [...] (159 aa)
       0.899
ureA2
Urease subunit gamma 2; Disrupting the ure2 operon has no effect on urease activity or pathogen [...] (100 aa)
       0.899
ureC1
Urease subunit alpha 1; May protect brucellae during their passage through the stomach. The maj [...] (570 aa)
       0.899
ureB1
Urease subunit beta 1; Disruption of the ure1 gene cluster suggests that it protects brucellae [...] (101 aa)
       0.899
ureA1
Urease subunit gamma 1; Disruption of the ure1 gene cluster suggests that it protects brucellae [...] (100 aa)
       0.899
glcB
Malate synthase-ATP/GTP-binding site motif A (P-loop)-Malate synthase G (728 aa)
      0.810
BAB1_0380
Chaperone XdhC, putative (248 aa)
      0.803
glcD
ATPase, E1-E2 type-FAD linked oxidase, C-terminal-FAD linked oxidase, N-terminal (498 aa)
       0.800
 
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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