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Identification and Characterization of Lin12/Notch Repeats (LNRs): A Bioinformatics Approach Fathima F. Jahufar, Framingham High School 07. Didem Vardar-Ulu ... – PowerPoint PPT presentation

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Title: Identification and Characterization of Lin12/Notch Repeats (LNRs):


1
Identification and Characterization of
Lin12/Notch Repeats (LNRs)
A Bioinformatics ApproachFathima F. Jahufar,
Framingham High School 07. Didem Vardar-Ulu,
Chemistry Department
  • Abstract
  • Lin12 Notch Repeats (LNRs) are Ca2 binding,
    cysteine-rich protein domains.  They were first
    found in a block of three in a transmembrane
    receptor protein called Notch. Since then they
    have also been found in other types of
    multidomain proteins such as the
    Pregnancy-associated Plasma Protein (PAPP) and
    Stealth proteins.  In these proteins, the LNRs
    are present in a variety of different numbers and
    arrangements.
  • For this project, we have used a variety of
    different bioinformatics tools to identify,
    align, and compile information on different LNRs
    from different protein sources. These tools
    include BLAST, ClustalW, ExPASy Proteomics Tools,
    and UniProt. Using these tools, we have been able
    to compile a list of different LNRs along with
    certain physicochemical properties of each,
    including the theoretical pI, the molecular
    weight, the number of acidic and basic residues
    and the extinction coefficients. We have also
    broken down the percentages of each amino acid
    and each type of amino acid in each residue
    position relative to the cysteines.
  • Our preliminary results indicate that although
    all LNRs, regardless of their origin, are small,
    acidic sequences. There are important subtle
    differences in the details of each LNR sequence
    that might shed light into their unique
    biological function within the larger multidomain
    protein scaffold. The compilations presented in
    this work are useful in comparing different LNRs
    and deciding which LNRs would be valuable for
    further studies. .
  • Introduction
  • Lin12 Notch Repeats (LNRs) are relatively short
    protein domains (only about 35-40 amino acids
    long) found in a variety of different protein
    families. LNRs were first found in a block of
    three in Notch protein, a transmembrane receptor
    protein. In this protein, LNRs help maintain the
    receptor in a resting, metalloprotease-resistant
    conformation prior to ligand binding (1) . LNRs
    are also found in other multidomain proteins such
    as PAPP proteins and Stealth proteins. PAPP
    proteins, like the Notch, have three LNRs.
    However, the third LNR is separated from the
    second LNR by more than 1000 amino acids (2).
    LNRs in PAPP are thought to determine the
    proteolytic specificity of PAPP, which cleaves
    insulin-like growth factor-binding proteins (2) .
    In Stealth, LNRs come in ones or twos, but are
    not found in all Stealth proteins (3).
  • Average natural abundance of cysteine in
    proteins is about 2.3 (4). However, most LNRs
    are 15-17 cysteine. Hence, they are very
    cysteine rich and require Ca2 to fold properly
    into their native forms. Most LNRs have six
    cysteines, while a few have only four. These
    cysteines help to form three (or two) specific
    disulfide bridges that help give LNRs their
    structure. LNRs also contain several aspartic
    acids and asparagines that coordinate the binding
    of Ca2 ions.
  • Using bioinformatics to study LNRs involves the
    use of websites such as UniProt, BLAST,
    ClustalW2, and ExPASy Proteomics Tools. UniProt
    allows keyword/ text searches to identify amino
    acid sequences from different data bases. It
    also matches input sequences to sequences within
    proteins in a database and provides basic
    information about these proteins.  Protein BLAST
    (Basic Local Alignment Search Tool) compares
    amino acids sequence inputs to those in the
    protein database and outputs significant matches.
    ClustalW2 is an online tool that aligns multiple
    amino acid sequences facilitating one to one
    amino acid comparisons. Finally, ExPASy (Expert
    Protein Analysis System) Proteomics tools allow
    information to be gathered and predictions to be
    made about amino acids sequences. We have used
    UniProt and BLAST to first identify different LNR
    sequences within the protein database and to
    determine their location within their
    corresponding protein sources. Then, we used
    ClustalW to align these LNRs, after which we
    improved these automated alignments manually
    based on the position of the cyteines and the
    Ca2 coordinating residues that define an LNR.
    Finally, in order to better understand and
    predict the biochemical and biophysical
    characteristics of LNRs, we used EXPASY
    Proteomics Tools to compile a list of
    physicochemical properties for each of the
    identified LNR sequences. The alignments of the
    LNRs (each slot numbered) and small sections of
    the tables detailing the properties of the LNRs
    and of each slot in the alignments are presented
    here.

Slot Total High. Perc. Hydr. (G, A, V, L, I, M, P) Arom. (F, Y, W) Basic (H, K, R) Acidic (D, E) Polar (S, C, T, N, Q)
1 9 78 L 9 100 Hydrophobic
2 10 40 N 3 1 6 60 Polar
3 12 33 F 8 4 67 Hydrophobic
4 12 25 N 5 1 2 4 42 Hydrophobic
5 18 33 D 4 1 4 6 3 33 Acidic
6 19 47 P 13 2 4 68 Hydrophobic
7 29 31 E 7 8 2 10 2 34 Acidic
8 29 21 K 15 8 3 3 52 Hydrophobic
9 29 28 N 7 1 4 17 59 Polar
10 29 100 C 29 100 Polar
11 2 50 V, E 1 1 50 Acid/Hydr.
12 3 33 D, V, T 1 1 1 33 Hydr/Acid/Polar
13 3 33 Y, S, L 1 1 1 33 Hydr/Arom/Polar
14 3 33 Q, N, R 33 Q, N, R 1 2 67 Polar
15 10 50 N 1 1 1 7 70 Polar
16 10 60 P 7 1 2 70 Hydrophobic
17 18 33 L 11 1 6 61 Hydrophobic
18 28 25 Y 5 8 1 7 7 29 Aromatic
19 32 22 D 13 4 8 7 41 Hydrophobic
20 32 22 Q 13 7 3 9 41 Hydrophobic
Fig. 4 Alignment Slots Statisticss Some of
Them. Each slot (see Fig. 3) is analyzed for the
most abundant amino acid (Column 3 Highest
Percentage) and then analyzed for different types
of amino acids (Columns 4-8). Many slots are made
predominantly of a certain type of amino acid.
Information for slots 1-20 is shown.
Name Accession Sequence Residues Cys MW pI (Theor.) neg. Pos. Instability Index aliphatic Aromatic Basic Acidic Total Ex. Co. (all half)
hN1 LNRA P46531 EEACELPECQEDAGNKVCSLQCNNHACGWDGGDCS 1447-1481 6 3715.9 3.89 8 1 92.14 10 1 2 13 35 5875
hN1 LNRB P46531 LNFNDPWKNCTQSLQCWKYFSDGHCDSQCNSAGCLFDGFDCQ 1482-1523 6 4827.2 4.28 5 2 53.47 7 7 3 13 42 12865
hN1 LNRC P46531 RAEGQCNPLYDQYCKDHFSDGHCDQGCNSAECEWDGLDCA 1524-1563 6 4484.7 4.12 9 2 20.63 9 4 4 14 40 8855
hN2 LNRA Q04721 PATCLSQYCADKARDGVCDEACNSHACQWDGGDC 1422-1455 6 3593.8 4.17 6 2 52.41 10 2 3 9 34 7365
hN2 LNRB Q04721 LTMENPWANCSSPLPCWDYINNQCDELCNTVECLFDNFECQ 1457-1497 6 4804.3 3.26 7 0 50.62 7 5 0 15 41 12865
hN2 LNRC Q04721 GNSKTCKYDKYCADHFKDNHCDQGCNSEECGWDGLDCA 1498-1535 6 4261.5 4.64 8 4 36.11 7 4 6 12 38 8855
hN3 LNRA Q9UM47 EPRCPRAACQAKRGDQRCDRECNSPGCGWDGGDCS 1384-1418 6 3785.1 6.31 6 6 69.21 8 1 6 9 35 5875
hN3 LNRB Q9UM47 LSVGDPWRQCEALQCWRLFNNSRCDPACSSPACLYDNFDCH 1419-1459 6 4722.2 4.75 5 3 95.14 9 5 4 10 41 12865
hN3 LNRC Q9UM47 AGGRERTCNPVYEKYCADHFADGRCDQGCNTEECGWDGLDCA 1460-1501 6 4616.9 4.35 9 4 34.81 12 4 5 12 42 8855
hN4 LNRA Q5STG5 CEGRSGDGACDAGCSGPGGNWDGGDCS 1180-1206 4 2490.5 3.71 5 1 48.32 11 1 1 6 27 5750
Q5STG5 PGAKGCEGRSGDGACDAGCSGPGGNWDGGDCS 1175-1206 4 2900.9 4.04 5 2 37.03 14 1 2 6 32 5750
hN4 LNRB Q5STG5 LGVPDPWKGCPSHSRCWLLFRDGQCHPQCDSEECLFDGYDCE 1207-1248 6 4830.3 4.57 8 3 83.37 9 5 5 10 42 12865
hN4 LNRC Q5STG5 TPPACTPAYDQYCHDHFHNGHCEKGCNTAECGWDGGDCR 1249-1287 6 4297.6 5.2 6 2 69.48 8 4 6 9 39 8855
mN1 LNRA Q01705 EEACELPECQVDAGNKVCNLQCNNHACGWDGGDCS 1446-1480 6 3713 3.95 7 1 74.68 11 1 2 13 35 5875
mN1 LNRB Q01705 LNFNDPWKNCTQSLQCWKYFSDGHCDSQCNSAGCLFDGFDCQ 1481-1522 6 4827.2 4.28 5 2 53.47 7 7 3 13 42 12865
mN1 LNRC Q01705 LTEGQCNPLYDQYCKDHFSDGHCDQGCNSAECEWDGLDCA 1523-1562 6 4471.7 3.93 9 1 25.45 9 4 3 14 40 8855
dN LNRA P07207 RAMCDKRGCTECQGNGICDSDCNTYACNFDGNDCS 1479-1513 7 3771 4.17 6 3 60.46 7 2 3 11 35 1865
Fig. 5 Physichochemical characteristics of LNRs.
Each LNR sequence is characterized using ExPASy
Proteomics. Information such as the theoretical
pI and total number of residues tells us that all
LNRs are acidic and are less than 45 amino acids
long. This tables shows a few of the
characteristics and compiled information for some
selected LNR sequences.
LNR A
LNR B
LNR C
Conclusion/Future Work Our preliminary results
indicate that although all LNRs, regardless of
their origin, are small, acidic sequences, there
are important subtle differences in the details
of each LNR sequence that might shed light into
their unique biological function within the
larger multidomain protein scaffold. We have
also found that some slots in the alignment of
the LNRs predominantly contain a certain type of
amino acid, either acidic, basic, hydrophobic,
polar or aromatic. This compiled information, in
the future, will be used in deciding which LNRs
are relevant for further experimental
characterization study and comparison of the
bioinformatics data with experimental results
will give us a clearer understanding of the
characteristics of LNRs from such a diverse
variety of protein families.
LNR C
LNR A
LNR B
  • References
  • Notch Subunit Heterodimerization and Prevention
    of Ligand-Independent Proteolytic Activation
    Depend, Respectively, on a Novel Domain and the
    LNR Repeats. Cheryl lSanchez-Irizarry, Andrea C.
    Carpenter, Andrew P. Weng, Warren S. Pear, Jon C.
    Aster, and Stephen C. Blacklow. Molecular and
    Cellular Biology, Nov.2004, Vol.24, No.21. p
    92659273.
  • The Lin12-Notch Repeats of Pregnancy-associated
    Plasma Protein-A Bind Calcium and Determine its
    Proteolytic Specificity. Henning B. Boldt, Kasper
    Kjaer-Sorensen, Michael T. Overgaard, Kathrin
    Weyer, Christine B. Poulsen, Lars Sottrup-Jensen,
    Cheryl A. Conovers, Linda C. Giudice, Claus
    Oxvig. Journal of Biological Chemistry, Sept.
    2004, Vol. 279, No. 37, p. 38525-38531.
  • Stealth Proteins In Silico Identification of a
    Novel Protein Family Rendering Bacterial
    Pathogens Invisible to Host Immune Defense. Peter
    Sperisen, Christoph D. Schmid, Philipp Bucher,
    Olav Zilian. PLoS Comput Biol. 1(6) e63. 2005.
  • Number of Cysteines Histogram. UCSC Genome
    Bioinformatics. Updated 12 Feb. 2004.
  • lthttp//genome.ucsc.edu/google/goldenPath/help/pb
    TracksHelpFiles/pbcCnt.shtmlgt
  •  

Acknowledgements - National Science Foundation
Research Experiences for Undergraduates (NSF-REU)
in Chemistry and Physics - Professor Didem
Vardar-Ulu, Christina Hao, Sharline Madera, and
Ursela Siddiqui.
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