Program for Identification of sub-cellular localization of Eukaryotic proteins: Plants.

ProtcompDB-PL combines several methods of protein localization prediction - neural networks-based prediction; direct comparison with updated base of homologous proteins of known localization; comparisons of pentamer distributions calculated for query and DB sequences; prediction of certain functional peptide sequences, such as signal peptides, signal-anchors, GPI-anchors, transit peptides of mitochondria and chloroplasts and transmembrane segments; and search for certain localization-specific motifs. It means that the program treats correctly complete sequences only, containing signal sequences, anchors, and other functional peptides, if any. The program includes separately trained recognizers for animal/fungal and plant proteins, which dramatically improves recognition accuracy. The following table provides approximate prediction accuracy for each compartment of animal/fungal proteins. Testing was performed on a samples of proteins of known localization (~200 in each localization), which were NOT included in training samples for the programs.

Compartment Percent predicted correctly
  ver. 4 ver. 5 ver. 6
Nucleus 80 88 91
Plasma Membrane 80 87 100
Extracellular 69 83 86
Cytoplasm 46 63 88
Mitochondria 76 82 89
Endoplasmic Reticulum 67 83 89
Peroxisome 95 97 91
Lysosome 69 91 100
Golgi 57 77 91

Output sample for complete version:


Seq name: Q7M1E7 Location:Extracellular (Secreted)  DE  Polygalacturonase precursor (PG) 514
Significant similarity in Location DB -  Location:Extracellular (Secreted)
Database sequence: AC=P35336 Location:Extracellular (Secreted)  DE Polygalacturonase precursor (EC 3.
Score=7765, Sequence length=467, Alignment length=335
Predicted by Neural Nets - Extracellular (Secreted) with score    2.7
******** Signal 1-49 is found
Integral Prediction of protein location: Extracellular (Secreted) with score 4.4
Location weights:     LocDB / PotLocDB / Neural Nets / Pentamers / Integral
 Nuclear                0.0 /      0.0 /        0.70 /      0.08 /     0.77
 Plasma membrane        0.0 /      0.0 /        1.06 /      4.36 /     5.42
 Extracellular       7765.0 /      0.0 /        2.68 /      0.00 /     4.41
 Cytoplasmic            0.0 /      0.0 /        0.72 /      0.00 /     0.72
 Mitochondrial          0.0 /      0.0 /        0.70 /      0.00 /     0.70
 Chloroplast            0.0 /      0.0 /        0.65 /      0.00 /     0.65
 Endoplasm. retic.      0.0 /      0.0 /        1.58 /      0.00 /     1.58
 Peroxisomal            0.0 /      0.0 /        0.48 /      0.00 /     0.48

LocDB are scores based on query protein's homologies with proteins of known localization.
PotLocDB are scores based on homologies with proteins which locations are not experimentally known but are assumed based on strong theoretical evidence.
Neural Nets are scores have been assigned by neural networks.
Pentamers are scores based on comparisons of pentamer distributions calculated for QUERY and DB sequences.
Integral are final scores as combinations of previous four scores.

To speed up the recognition, a user may optionally abandon time consuming processes of DB search and/or comparisons of pentamers' distributions using appropriate marks. In these cases columns "LocDB" and "PotLocDB" (results of DB search) and/or "Pentamers" (results of comparisons of pentamers' distributions) are excluded from output tables. However, one should remember, that such abandonment will decrease recognition accuracy.

While interpreting output results, it must be kept in mind that:

1. Protcomp's scores per se, being weights of complex neural networks, do not represent probabilities of protein's location in a particular compartment.
2. Significant homology with protein of known location is a very strong indicator of query protein's location.
3. For neural networks scores, their relative values for different compartments are more important than absolute values, i.e. if the second best score is much lower than the best one, prediction is more reliable, regardless of absolute values.
4. If both neural networks and homology predictions point to the same compartment, this is very reliable prediction.