| >Q9ULC5 (141 residues) NIFKLAQGEYIAPEKIENIYNRSQPVLQIFVHGESLRSSLVGVVVPDTDVLPSFAAKLGV KGSFEELCQNQVVREAILEDLQKIGKESGLKTFEQVKAIFLHPEPFSIENGLLTPTLKAK RGELSKYFRTQIDSLYEHIQD |
| Sequence |
20 40 60 80 100 120 140 | | | | | | | NIFKLAQGEYIAPEKIENIYNRSQPVLQIFVHGESLRSSLVGVVVPDTDVLPSFAAKLGVKGSFEELCQNQVVREAILEDLQKIGKESGLKTFEQVKAIFLHPEPFSIENGLLTPTLKAKRGELSKYFRTQIDSLYEHIQD |
| Prediction | CSSSCCCCCSSCHHHHHHHHHHCCCSSSSSSSSCCCCCCSSSSSSSCHHHHHHHHHHHCCCCCHHHHHCCHHHHHHHHHHHHHHHHHCCCCCCCSSSSSSSSCCCCCCCCCCSCHHHHHCHHHHHHHHHHHHHHHHHHHHC |
| Confidence | 928868995435699999997399835899995699872799997099999999999199999999961999999999999999997199964447579996799877779627445440899999999999999998019 |
| H:Helix; S:Strand; C:Coil | |
| Sequence |
20 40 60 80 100 120 140 | | | | | | | NIFKLAQGEYIAPEKIENIYNRSQPVLQIFVHGESLRSSLVGVVVPDTDVLPSFAAKLGVKGSFEELCQNQVVREAILEDLQKIGKESGLKTFEQVKAIFLHPEPFSIENGLLTPTLKAKRGELSKYFRTQIDSLYEHIQD |
| Prediction | 720322643413134015304714201100000365441000000034620450067373754253016275026203610451167570552030340302454423645202331333154037304720550375268 |
| Values range from 0 (buried residue) to 8 (highly exposed residue) | |
| Rank | PDB hit | ID1 | ID2 | Cov | Norm. Zscore | Downloadalignment | 20 40 60 80 100 120 140 | | | | | | | | |||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| SS Seq | CSSSCCCCCSSCHHHHHHHHHHCCCSSSSSSSSCCCCCCSSSSSSSCHHHHHHHHHHHCCCCCHHHHHCCHHHHHHHHHHHHHHHHHCCCCCCCSSSSSSSSCCCCCCCCCCSCHHHHHCHHHHHHHHHHHHHHHHHHHHC NIFKLAQGEYIAPEKIENIYNRSQPVLQIFVHGESLRSSLVGVVVPDTDVLPSFAAKLGVKGSFEELCQNQVVREAILEDLQKIGKESGLKTFEQVKAIFLHPEPFSIENGLLTPTLKAKRGELSKYFRTQIDSLYEHIQD | |||||||||||||||||||
| 1 | 6oz1A | 0.35 | 0.31 | 9.32 | 1.33 | DEthreader | NVLKLAQGEFVAVSKLEAAYTGSPLVRQIFVYGNSERSYLLAVVVPTPEALE-RY------A---DS--PDALKPLIQDSLQQVAKGAELQSYEIPRDFIVETVPFTVESGLLSDARKLLRPKLKEHYGERLEALYA-D-- | |||||||||||||
| 2 | 5mssA2 | 0.38 | 0.35 | 10.29 | 2.31 | SPARKS-K | NVLKLSQGEFVALSKLEAAYGTSPLVRQISVYGSSQRSYLLAVVVPT----PEALAKYG---------DGEAVKSALGDSLQKIAREEGLQSYEVPRDFIIETDPFTIENGILSDAGKTLRPKVKARYGERLEALYAQLAE | |||||||||||||
| 3 | 5mssA2 | 0.37 | 0.33 | 9.70 | 0.87 | MapAlign | NVLKLSQGEFVALSKLEAAYGTSPLVRQISVYGSSQRSYLLAVVVPTPEALAKY------------GDG-EAVKSALGDSLQKIAREEGLQSYEVPRDFIIETDPFTIENGILSDAGKTLRPKVKARYGERLEALYAQL-- | |||||||||||||
| 4 | 5mssA2 | 0.36 | 0.33 | 9.72 | 0.72 | CEthreader | NVLKLSQGEFVALSKLEAAYGTSPLVRQISVYGSSQRSYLLAVVVPTPEALAKYG-------------DGEAVKSALGDSLQKIAREEGLQSYEVPRDFIIETDPFTIENGILSDAGKTLRPKVKARYGERLEALYAQLAE | |||||||||||||
| 5 | 5mssA2 | 0.36 | 0.33 | 9.72 | 1.91 | MUSTER | NVLKLSQGEFVALSKLEAAYGTSPLVRQISVYGSSQRSYLLAVVVPTPEALAKYG-------------DGEAVKSALGDSLQKIAREEGLQSYEVPRDFIIETDPFTIENGILSDAGKTLRPKVKARYGERLEALYAQLAE | |||||||||||||
| 6 | 6oz1A | 0.36 | 0.32 | 9.51 | 1.50 | HHsearch | NVLKLAQGEFVAVSKLEAAYTGSPLVRQIFVYGNSERSYLLAVVVPTPEALERYA------------DSPDALKPLIQDSLQQVAKGAELQSYEIPRDFIVETVPFTVESGLLSDARKLLRPKLKEHYGERLEALYAD--- | |||||||||||||
| 7 | 5mssA2 | 0.35 | 0.32 | 9.52 | 2.26 | FFAS-3D | NVLKLSQGEFVALSKLEAAYGTSPLVRQISVYGSSQRSYLLAVVVPTPEA-------------LAKYGDGEAVKSALGDSLQKIAREEGLQSYEVPRDFIIETDPFTIENGILSDAGKTLRPKVKARYGERLEALYAQLAE | |||||||||||||
| 8 | 5mssA | 0.34 | 0.30 | 9.14 | 1.20 | EigenThreader | KNVKLSQGEFVALSKLEAAYGTSPLVRQISVYGSSQRSYLLAVVVPTPEALAKYG----DGEAVKSA---------LGDSLQKIAREEGLQSYEVPRDFIIETDPFTIENGILSDAGKTLRPKVKARYGERLEALYAQLAE | |||||||||||||
| 9 | 5mscA | 0.32 | 0.29 | 8.75 | 1.29 | CNFpred | NVLKLSQGEFVTVAHLEAVFASSPLIRQIFIYGSSERSYLLAVIVPTDDALRGR--------------DTATLKSALAESIQRIAKDANLQPYEIPRDFLIETEPFTIANGLLSGIAKLLRPNLKERYGAQLEQMYTDLAT | |||||||||||||
| 10 | 5mssA2 | 0.36 | 0.33 | 9.72 | 1.33 | DEthreader | NVLKLSQGEFVALSKLEAAYGTSPLVRQISVYGSSQRSYLLAVVVPTPEALA-KY-----------GDG-EAVKSALGDSLQKIAREEGLQSYEVPRDFIIETDPFTIENGILSDAGKTLRPKVKARYGERLEALYAQLET | |||||||||||||
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Top 10 structural analogs in PDB (as identified by
TM-align)
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Top 5 enzyme homologs in PDB
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Template proteins with similar binding site:
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| References: | |
| 1. | Wei Zheng, Qiqige Wuyun, Yang Li, Quancheng Liu, Xiaogen Zhou, Yiheng Zhu, P. Lydia Freddolino, Yang Zhang. Integrating deep learning potentials with I-TASSER for single- and multi-domain protein structure prediction. Submitted. 2023. |