 | Authors: Amine Heddad, Andrea Krings, Markus Brameier and Bob MacCallum, Stockholm Bioinformatics Center, Stockholm University, Sweden. |
NucPred
Fetching Q9FF46 from www.uniprot.org...
The NucPred score for your sequence is 0.48 (see score help below)
1 MGRRNSYFPGNFVPLFFVFIVLILQQERVICQEDRSLDNPAANRLYNQFV 50
51 FDKISNLTEVFEDDIKRELGFCITNVKEDYNEAFNFSTKPDFLNACGKTT 100
101 KGDMMQRICTAAEVRIYFNGLLGGAKRATNYLKPNKNCNLSSWMSGCEPG 150
151 WACRTAKDVKVDLKDDKNVPVRTQQCAPCCAGFFCPRGITCMIPCPLGAY 200
201 CPEANLNRTTGLCDPYHYQLPSGQPNHTCGGADIWADIGSSSEVFCSAGS 250
251 FCPSTIDKLPCTKGHYCRTGSTAELNCFKLATCNPRSTNQNITAYGIMLF 300
301 AGLGFLLIILYNCSDQVLATRERRQAKSREKAVQSVRDSQSREKWKSAKD 350
351 IAKKHATELQQSFSRTFSRRKSMKQPDLMRGLSQAKPGSDAALPPMLGSS 400
401 SDTKKGKKKEKNKLTEMLHDIEQNPEDPEGFNLEIGDKNIKKHAPKGKAL 450
451 HTQSQMFRYAYGQIEKEKAMQEQNKNLTFSGVISMANDIDIRKRPMIEVA 500
501 FKDLSITLKGKNKHLMRCVTGKLSPGRVSAVMGPSGAGKTTFLTALTGKA 550
551 PGCIMTGMILVNGKVESIQSYKKIIGFVPQDDIVHGNLTVEENLWFSARC 600
601 RLPADLPKPEKVLVVERVIESLGLQHVRDSLVGTVEKRGISGGQRKRVNV 650
651 GLEMVMEPSLLILDEPTSGLDSSSSQLLLRALRREALEGVNICMVVHQPS 700
701 YTLFRMFDDLILLAKGGLICYQGPVKKVEEYFSSLGIVVPERVNPPDYYI 750
751 DILEGILKPSTSSGVTYKQLPVRWMLHNGYPVPMDMLKSIEGMASSASGE 800
801 NSAHGGSAHGSVVGDDGTSFAGEFWQDVKANVEIKKDNLQNNFSSSGDLS 850
851 EREVPGVYQQYRYFLGRLGKQRLREARTLAVDYLILLLAGICLGTLAKVS 900
901 DETFGAMGYTYTVIAVSLLCKITALRSFSLDKLHYWRESRAGMSSLAYFL 950
951 AKDTVDHFNTIVKPLVYLSMFYFFNNPRSTVTDNYVVLICLVYCVTGIAY 1000
1001 TLAILFEPGPAQLWSVLLPVVLTLIATSTNDNKIVDSISELCYTRWALEA 1050
1051 FVVSNAQRYKGVWLITRCGSLMENGYNIKHFPRCLVFLTLTGILSRCAAF 1100
1101 FCMVTFQKK 1109
Positively and negatively influencing subsequences are coloured according to the following scale:
(non-nuclear) negative ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||| positive (nuclear)
What does the NucPred score mean?
| You have to decide on a NucPred score threshold. Sequences which score greater than or equal to this threshold are predicted to spend some time in the nucleus. Higher thresholds yield fewer predicted nuclear proteins, but these predictions are more accurate (you can have higher confidence in them). The table below gives more details of the performance of NucPred estimated using the sequences it was trained on (by cross-validation). Another benchmark is available in the Bioinformatics 2007 paper. |
| NucPred score threshold | Specificity | Sensitivity |
| see above | fraction of proteins predicted to be nuclear that actually are nuclear | fraction of true nuclear proteins that are predicted (coverage) |
| 0.10 | 0.45 | 0.88 |
| 0.20 | 0.52 | 0.83 |
| 0.30 | 0.57 | 0.77 |
| 0.40 | 0.63 | 0.69 |
| 0.50 | 0.70 | 0.62 |
| 0.60 | 0.71 | 0.53 |
| 0.70 | 0.81 | 0.44 |
| 0.80 | 0.84 | 0.32 |
| 0.90 | 0.88 | 0.21 |
| 1.00 | 1.00 | 0.02 |
| Sequences which score >= 0.8 with NucPred and which
are predicted by PredictNLS to contain an NLS have been shown to be 93% correct with a coverage of 16%. (PredictNLS by itself is 87% correct with 26% coverage on the same data.) |
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