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IISc Bioinform atics C entre & Supercom puterEducation and R esearch C entre Approaches to developing data m ining tools K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA [email protected] Voice: (91)-80-3942469 FAX : (91)- 80-3600683 (91)-80-3601409 (91)-80-3600551

K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA [email protected] Voice: (91)-80-3942469 FAX : (91)-80-3600683 (91)-80-3601409 (91)-80-3600551. APPROACHES TO DEVELOPING DATA MINING TOOLS. Abstract. - PowerPoint PPT Presentation

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Page 1: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

K. SEKAR, Ph.D.BIOINFORMATICS CENTRE

INDIAN INSTITUTE OF SCIENCEBANGALORE 560 012

INDIA

[email protected]

Voice: (91)-80-3942469 FAX : (91)-80-3600683 (91)-80-3601409 (91)-80-3600551

Page 2: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

APPROACHES TO DEVELOPING DATA MINING

TOOLS

Page 3: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

Abstract

Bioinformatics is one of the fastest growing interdisciplinary areas in the biological sciences and has explored in such a way that we need powerful tools to organize and analyze the data. An overview will be presented on the general features of data mining tools, techniques and its applications.

Page 4: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

Bioinformatics is the fashionable new name for the field previously called computational biology.The name is preferred by many because it puts the emphasis on the data storage and analysis, rather than on the biology, and the field is really data driven.

Page 5: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

The term Bioinformatics is used to encompass almost all computer applications in biological sciences, but was originally coined in the mid 1980’s for the analysis of biological sequence data.

The quantity of known sequences data outweighs protein structural data and by virtue of the genome projects, sequence database are doubling in size every year.

A key challenge of bioinformatics is to analyze the wealth of sequence data in order to understand the amassed information in term of protein structure function and evolution.

Wherever possible, a range of different methods should be used, and the results should be married with all available biological information.

Page 6: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

The primary integrating technology that facilitates access to copious data is the world wide web.

Bioinformatics has provided us with a communication channel to reach and decode all this information in a comprehensive manner.

Both the large information repositories and the specialized tools to query them are held on distributed internet sites, therefore Bioinformatics require sound internet navigation skills.

Page 7: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

Comprises the entire collection of information management systems, analysis tools and communication networks supporting biology.

Refers to database-like activities involving persistent sets of data that are maintained in a consistent state over essentially indefinite periods of time.

Encompass the use of algorithmic tools to facilitate biological database analyses.

Page 8: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

DATA MINING

Datamining is defined as “exploration and analysis by automatic and semi-automatic means, of large quantities of data in order to discover meaningful patterns and rules”.

Page 9: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

The central challenge is to derive maximum results from the wealth of data.This can be achieved by establishing and maintaining databases and providing search and analysis tools to interpret the data.

Page 10: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

DATABASEDatabase is nothing but a collection of quantitative data resulting from experimental measurements or observations in various fields of science.Recently interest in database has been kindled through international efforts to organize and analyze the data and update the knowledge

Page 11: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

A database is essentially just a store of information.They are usually in the form of simple files (just a flat file, say).You can shove information into this store or retrieve it from the store.

Page 12: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

Derived DatabaseOne of the greatest challenges in database research is analyze the database in depth and create derived databases to meet the needs or demands without compromising the sustainability and quality of the existing database. Creating desired database is expected is expected to dramatically reduce the workload of the user community and will serve as a highly focused database.

Page 13: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

DBREF 1UNE 1 123 SWS P00593 PA2_BOVIN 23 145 SEQADV 1UNE ASN 122 SWS P00593 LYS 144 CONFLICT SEQRES 1 123 ALA LEU TRP GLN PHE ASN GLY MET ILE LYS CYS LYS ILE SEQRES 2 123 PRO SER SER GLU PRO LEU LEU ASP PHE ASN ASN TYR GLY SEQRES 3 123 CYS TYR CYS GLY LEU GLY GLY SER GLY THR PRO VAL ASP SEQRES 4 123 ASP LEU ASP ARG CYS CYS GLN THR HIS ASP ASN CYS TYR SEQRES 5 123 LYS GLN ALA LYS LYS LEU ASP SER CYS LYS VAL LEU VAL SEQRES 6 123 ASP ASN PRO TYR THR ASN ASN TYR SER TYR SER CYS SER SEQRES 7 123 ASN ASN GLU ILE THR CYS SER SER GLU ASN ASN ALA CYS SEQRES 8 123 GLU ALA PHE ILE CYS ASN CYS ASP ARG ASN ALA ALA ILE SEQRES 9 123 CYS PHE SER LYS VAL PRO TYR ASN LYS GLU HIS LYS ASN SEQRES 10 123 LEU ASP LYS LYS ASN CYS HET CA 124 1 HETNAM CA CALCIUM ION FORMUL 2 CA CA1 2+ FORMUL 3 HOH *134(H2 O1) HELIX 1 1 LEU 2 LYS 12 1 11 HELIX 2 2 PRO 18 ASP 21 1 4 HELIX 3 3 ASP 40 LYS 57 1 18 HELIX 4 4 ASP 59 VAL 63 1 5 HELIX 5 5 ALA 90 LYS 108 1 19 HELIX 6 6 LYS 113 HIS 115 5 3 SHEET 1 A 2 TYR 75 SER 78 0 SHEET 2 A 2 GLU 81 CYS 84 -1 N THR 83 O SER 76 SSBOND 1 CYS 11 CYS 77 SSBOND 2 CYS 27 CYS 123 SSBOND 3 CYS 29 CYS 45 SSBOND 4 CYS 44 CYS 105 SSBOND 5 CYS 51 CYS 98 SSBOND 6 CYS 61 CYS 91 SSBOND 7 CYS 84 CYS 96 LINK CA CA 124 O TYR 28 LINK CA CA 124 O GLY 32 CRYST1 47.120 64.590 38.140 90.00 90.00 90.00 P 21 21 21 4

Page 14: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

SUB-DERIVED DATABASEEXAMPLE-1

RADHASEKAR SHAMIASEKAR SARADASEKAR

EXAMPLE-2

XAXAXA

KAMALA SARADA YAMAHA KANAGA MANASA VANASA PANAMA

Page 15: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

Adding information

to the database

Software tocollate the required

Information from the database

Analyze the collated information

Page 16: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

Page 17: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

WHY A TOOL?

The amount of information in the world is growing exponentially, and it is becoming impossible to effectively manage the data.Machine assistance is clearly necessary, but the difficulty lies in designing systems and softwares that are capable of discovering “useful” information with minimal human intervention.

Page 18: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

PROTEIN DATA BANK(PDB)

GENOME DATABASE(GDB)

STRUCTURAL CLASSIFICATION OF PROTEINS(SCOP)

CAMBRIDGE STRUCTURAL DATABASE(CSD)

Page 19: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

Protein Data Bank (PDB)

&

Genome Database(GDB)

Page 20: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

PDB (Protein Data Bank)Anonymous FTP - SERVER

PDB Anonymous FTP – server is up to date and contains all the available 20,317 atomic coordinates of macro molecules (Proteins, Nucleic Acids and Carbohydrates) that have been deposited in the protein databank so far.

For Weekly updatehttp://iris.physics.iisc.ernet.in/index.html

For complete entries click on “COMPLETE LIST OF ALL PDB ENTRIES”

Page 21: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

PDB-MIRROR site machine

3.06 GHz PIV machine

1 GB RD RAM

240 GB Hard Disk

32 MB Graphics Card

Powered by Red Hat 7.3 Linux Operating System

Page 22: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

Given PDB-Id : 1une

HEADER HYDROLASE 05-NOV-97 1UNE TITLE CARBOXYLIC ESTER HYDROLASE, 1.5 ANGSTROM ORTHORHOMBIC FORM TITLE 2 OF THE BOVINE RECOMBINANT PLA2 COMPND MOL_ID: 1; COMPND 2 MOLECULE: PHOSPHOLIPASE A2; COMPND 3 CHAIN: NULL; COMPND 4 EC: 3.1.1.4; COMPND 5 ENGINEERED: YES SOURCE MOL_ID: 1; SOURCE 2 ORGANISM_SCIENTIFIC: BOS TAURUS; SOURCE 3 ORGANISM_COMMON: BOVINE; SOURCE 4 EXPRESSION_SYSTEM: ESCHERICHIA COLI; SOURCE 5 EXPRESSION_SYSTEM_STRAIN: BL21 (DE3) PLYSS; SOURCE 6 EXPRESSION_SYSTEM_PLASMID: PTO-A2MBL21; SOURCE 7 EXPRESSION_SYSTEM_GENE: MATURE PLA2 KEYWDS HYDROLASE, ENZYME, CARBOXYLIC ESTER HYDROLASE EXPDTA X-RAY DIFFRACTION AUTHOR M.SUNDARALINGAM REVDAT 1 06-MAY-98 1UNE 0

Page 23: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

REMARK 1 REFERENCE 1 REMARK 1 AUTH K.SEKAR,A.KUMAR,X.LIU,M.-D.TSAI,M.H.GELB, REMARK 1 AUTH 2 M.SUNDARALINGAM REMARK 1 TITL CRYSTAL STRUCTURE OF THE COMPLEX OF BOVINE REMARK 1 TITL 2 PANCREATIC PHOSPHOLIPASE A2 WITH A TRANSITION STATE REMARK 1 TITL 3 ANALOGUE REMARK 1 REF TO BE PUBLISHED

REMARK 1 REFN 0353 REMARK 1 REFERENCE 2 REMARK 1 AUTH K.SEKAR,C.SEKARUDU,M.-D.TSAI,M.SUNDARALINGAM REMARK 1 TITL 1.72A RESOLUTION REFINEMENT OF THE TRIGONAL FORM OF REMARK 1 TITL 2 BOVINE PANCREATIC PHOSPHOLIPASE A2 REMARK 1 REF TO BE PUBLISHED REMARK 1 REFN 0353

REMARK 1 REFERENCE 3 REMARK 1 AUTH K.SEKAR,S.ESWARAMOORTHY,M.K.JAIN,M.SUNDARALINGAM REMARK 1 TITL CRYSTAL STRUCTURE OF THE COMPLEX OF BOVINE REMARK 1 TITL 2 PANCREATIC PHOSPHOLIPASE A2 WITH THE INHIBITOR REMARK 1 TITL 3 1-HEXADECYL-3-(TRIFLUOROETHYL)-SN-GLYCERO-2- REMARK 1 TITL 4 PHOSPHOMETHANOL REMARK 1 REF BIOCHEMISTRY V. 36 14186 1997

Page 24: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

REMARK 2 RESOLUTION. 1.5 ANGSTROMS. REMARK 3 REFINEMENT. REMARK 3 PROGRAM : X-PLOR 3.1 REMARK 3 AUTHORS : BRUNGER

REMARK 3 DATA USED IN REFINEMENT. REMARK 3 RESOLUTION RANGE HIGH (ANGSTROMS) : 1.5 REMARK 3 RESOLUTION RANGE LOW (ANGSTROMS) : 10.0 REMARK 3 DATA CUTOFF (SIGMA(F)) : 1.0 REMARK 3 DATA CUTOFF HIGH (ABS(F)) : 0.1 REMARK 3 DATA CUTOFF LOW (ABS(F)) : 1000000.0 REMARK 3 COMPLETENESS (WORKING+TEST) (%) : 92. REMARK 3 NUMBER OF REFLECTIONS : 17572

REMARK 3 FIT TO DATA USED IN REFINEMENT. REMARK 3 CROSS-VALIDATION METHOD : NULL REMARK 3 FREE R VALUE TEST SET SELECTION : X-PLOR REMARK 3 R VALUE (WORKING SET) : 0.184 REMARK 3 FREE R VALUE : 0.228 REMARK 3 FREE R VALUE TEST SET SIZE (%) : 7. REMARK 3 FREE R VALUE TEST SET COUNT : 1198 REMARK 3 ESTIMATED ERROR OF FREE R VALUE : 0.24

Page 25: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

REMARK 3 PARAMETER FILE 1 : PARHCSDX.PRO REMARK 3 PARAMETER FILE 2 : NULL REMARK 3 TOPOLOGY FILE 1 : TOPHCSDX.PRO REMARK 3 TOPOLOGY FILE 2 : NULL REMARK 3 OTHER REFINEMENT REMARKS: NULL REMARK 4 1UNE COMPLIES WITH FORMAT V. 2.2, 16-DEC-1996 REMARK 200 REMARK 200 EXPERIMENTAL DETAILS REMARK 200 EXPERIMENT TYPE : X-RAY DIFFRACTION REMARK 200 DATE OF DATA COLLECTION : 26-JAN-1996 REMARK 200 TEMPERATURE (KELVIN) : 291 REMARK 200 PH : 7.2 REMARK 200 NUMBER OF CRYSTALS USED : 1 REMARK 200 REMARK 200 SYNCHROTRON (Y/N) : N REMARK 200 RADIATION SOURCE : NULL REMARK 200 BEAMLINE : NULL REMARK 200 X-RAY GENERATOR MODEL : R-AXIS IIC REMARK 200 MONOCHROMATIC OR LAUE (M/L) : M REMARK 200 WAVELENGTH OR RANGE (A) : 1.5418 REMARK 200 MONOCHROMATOR : GRAPHITE REMARK 200 OPTICS : NULL REMARK 200

Page 26: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

REMARK 200 IN THE HIGHEST RESOLUTION SHELL. REMARK 200 HIGHEST RESOLUTION SHELL, RANGE HIGH (A) : 1.5 REMARK 200 HIGHEST RESOLUTION SHELL, RANGE LOW (A) : 1.55 REMARK 200 COMPLETENESS FOR SHELL (%) : 63. REMARK 200 DATA REDUNDANCY IN SHELL : 3.7 REMARK 200 R MERGE FOR SHELL (I) : 0.172 REMARK 200 R SYM FOR SHELL (I) : NULL REMARK 200 FOR SHELL : NULL REMARK 200 REMARK 200 METHOD USED TO DETERMINE THE STRUCTURE: THE HIGH RESOLUTION REMARK 200 ATOMIC COORDINATES OF THE WILD TYPE (PDB ENTRY 1BP2) REMARK 200 WERE USED AS THE STARTING MODEL FOR REFINEMENT. REMARK 200 SOFTWARE USED: X-PLOR REMARK 200 STARTING MODEL: WILD TYPE (PDB ENTRY 1BP2) REMARK 200 REMARK 200 REMARK: NULL REMARK 280 REMARK 290 REMARK 290 CRYSTALLOGRAPHIC SYMMETRY REMARK 290 SYMMETRY OPERATORS FOR SPACE GROUP: P 21 21 21 REMARK 290 REMARK 290 SYMOP SYMMETRY REMARK 290 NNNMMM OPERATOR REMARK 290 1555 X,Y,Z REMARK 290 2555 1/2-X,-Y,1/2+Z REMARK 290 3555 -X,1/2+Y,1/2-Z REMARK 290 4555 1/2+X,1/2-Y,-Z

Page 27: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

DBREF 1UNE 1 123 SWS P00593 PA2_BOVIN 23 145 SEQADV 1UNE ASN 122 SWS P00593 LYS 144 CONFLICT SEQRES 1 123 ALA LEU TRP GLN PHE ASN GLY MET ILE LYS CYS LYS ILE SEQRES 2 123 PRO SER SER GLU PRO LEU LEU ASP PHE ASN ASN TYR GLY SEQRES 3 123 CYS TYR CYS GLY LEU GLY GLY SER GLY THR PRO VAL ASP SEQRES 4 123 ASP LEU ASP ARG CYS CYS GLN THR HIS ASP ASN CYS TYR SEQRES 5 123 LYS GLN ALA LYS LYS LEU ASP SER CYS LYS VAL LEU VAL SEQRES 6 123 ASP ASN PRO TYR THR ASN ASN TYR SER TYR SER CYS SER SEQRES 7 123 ASN ASN GLU ILE THR CYS SER SER GLU ASN ASN ALA CYS SEQRES 8 123 GLU ALA PHE ILE CYS ASN CYS ASP ARG ASN ALA ALA ILE SEQRES 9 123 CYS PHE SER LYS VAL PRO TYR ASN LYS GLU HIS LYS ASN SEQRES 10 123 LEU ASP LYS LYS ASN CYS HET CA 124 1 HETNAM CA CALCIUM ION FORMUL 2 CA CA1 2+ FORMUL 3 HOH *134(H2 O1) HELIX 1 1 LEU 2 LYS 12 1 11 HELIX 2 2 PRO 18 ASP 21 1 4 HELIX 3 3 ASP 40 LYS 57 1 18 HELIX 4 4 ASP 59 VAL 63 1 5 HELIX 5 5 ALA 90 LYS 108 1 19 HELIX 6 6 LYS 113 HIS 115 5 3 SHEET 1 A 2 TYR 75 SER 78 0 SHEET 2 A 2 GLU 81 CYS 84 -1 N THR 83 O SER 76 SSBOND 1 CYS 11 CYS 77 …

Page 28: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

REMARK 3 FIT IN THE HIGHEST RESOLUTION BIN. REMARK 3 TOTAL NUMBER OF BINS USED : 8 REMARK 3 BIN RESOLUTION RANGE HIGH (A) : 1.5 REMARK 3 BIN RESOLUTION RANGE LOW (A) : 1.55 REMARK 3 BIN COMPLETENESS (WORKING+TEST) (%) : 63. REMARK 3 REFLECTIONS IN BIN (WORKING SET) : 1176 REMARK 3 BIN R VALUE (WORKING SET) : 0.340 REMARK 3 BIN FREE R VALUE : 0.352 REMARK 3 BIN FREE R VALUE TEST SET SIZE (%) : 7. REMARK 3 BIN FREE R VALUE TEST SET COUNT : 81 REMARK 3 ESTIMATED ERROR OF BIN FREE R VALUE : NULL REMARK 3 REMARK 3 NUMBER OF NON-HYDROGEN ATOMS USED IN REFINEMENT. REMARK 3 PROTEIN ATOMS : 957 REMARK 3 NUCLEIC ACID ATOMS : 0 REMARK 3 HETEROGEN ATOMS : 1 REMARK 3 SOLVENT ATOMS : 134 REMARK 3 REMARK 3 B VALUES. REMARK 3 FROM WILSON PLOT (A**2) : NULL REMARK 3 MEAN B VALUE (OVERALL, A**2) : NULL REMARK 3 LOW RESOLUTION CUTOFF (A) : NULL REMARK 3 REMARK 3 CROSS-VALIDATED ESTIMATED COORDINATE ERROR.

Page 29: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining toolsATOM 1 N ALA 1 13.830 17.835 32.697 1.00 11.41 ATOM 2 CA ALA 1 12.869 16.725 32.889 1.00 11.31 ATOM 3 C ALA 1 12.106 16.547 31.592 1.00 12.00 ATOM 4 O ALA 1 12.366 17.226 30.614 1.00 11.37 ATOM 5 CB ALA 1 11.891 17.029 34.056 1.00 11.89 ATOM 6 N LEU 2 11.150 15.638 31.585 1.00 13.43 ATOM 7 CA LEU 2 10.392 15.362 30.376 1.00 14.98 ATOM 8 C LEU 2 9.556 16.543 29.879 1.00 14.65 ATOM 9 O LEU 2 9.465 16.764 28.657 1.00 13.62 ATOM 10 CB LEU 2 9.522 14.116 30.561 1.00 15.03 ATOM 11 CG LEU 2 8.919 13.539 29.291 1.00 17.13 ATOM 12 CD1 LEU 2 10.038 13.103 28.360 1.00 17.29 ATOM 13 CD2 LEU 2 8.027 12.361 29.656 1.00 17.65 ATOM 14 N TRP 3 8.960 17.305 30.796 1.00 14.18 ATOM 15 CA TRP 3 8.157 18.443 30.347 1.00 16.10 ATOM 16 C TRP 3 8.998 19.448 29.543 1.00 14.26 ATOM 17 O TRP 3 8.580 19.864 28.472 1.00 14.34 ATOM 18 CB TRP 3 7.359 19.103 31.491 1.00 19.02 ATOM 19 CG TRP 3 8.163 19.810 32.534 1.00 24.63 ATOM 20 CD1 TRP 3 8.699 19.262 33.683 1.00 25.51 ATOM 21 CD2 TRP 3 8.505 21.199 32.555 1.00 27.29 ATOM 22 NE1 TRP 3 9.348 20.230 34.403 1.00 27.56 ATOM 23 CE2 TRP 3 9.253 21.428 33.743 1.00 28.36 ATOM 24 CE3 TRP 3 8.258 22.278 31.686 1.00 27.60 ATOM 25 CZ2 TRP 3 9.754 22.695 34.083 1.00 28.94 ATOM 26 CZ3 TRP 3 8.761 23.542 32.026 1.00 28.78 ATOM 27 CH2 TRP 3 9.503 23.735 33.216 1.00 29.43

Page 30: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

IISc

Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

GDB-MIRROR site machine

3.06 GHz PIV machine

1 GB RD RAM

240 GB Hard Disk

32 MB Graphics Card

Powered by Red Hat 7.3 Linux Operating System

Page 31: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

Current Dictionary is /Pub/Genome

Upto higher level directory

A thaliana/

C elegans/

H sapiens/

MITOCHONDRIA/

P falciparum/

README

S cerevisiae/

Bacteria/

Page 32: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

*.faa= FASTA Amino Acid file

*.fna= FASTA Nuclei Acid file

*.gbk= GenBank flat file format

*.gbs= GenBank summary file format

*.ptt= ProTein Table

*.tab= Table to assemble genome

*.val= ASN.1 binary format

Page 33: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

CAMBRIDGE STRUCTURAL DATABASE

• The CAMBRIDGE STRUCTURAL DATABASE• Software for search, Retrieval Display and

Analysis of CSD contents

The CSD records bibliographic, 2D chemical and 3D structural results from crystallographic analysis of organics, organometallics and metal complexes .Both X-Ray and Neutron Diffraction studies are included for small and medium sized compounds containing upto 500 atoms including hydrogens).

Page 34: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

THREE DBACOMPONENTS

Database Integrity

Database Security

Database Recovery

Page 35: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

DATABASE INTEGRITY

However, certain safety measures can be built into a database to ensure that errors within the system are minimized.

The major issue for the database management is to ensure that the data in the database is accurate, correct, valid and consistent.Any inconsistency between two or more entries that represent the same entity demonstrates the lack of integrity.

Database technology cannot do very much to protect users against data errors made in the outside world before the data has been entered in the system.

Page 36: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

DATA RECOVERY

The most common way to achieve this is to dump the contents of the database with the defined frequency on another medium, magnetic tape or optical disk, which is then stored in the same place.

The process of recovery involves restoring the database to a state which is know to be correct following some kind of failure.

The technique of redundancy is used in the sense that it has to be possible to recover the database to its correct state from information available somewhere else in the system.

Page 37: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

Approaches to developing data mining tools

DATABASE SECURITY

A password and a list of privileges attach to it are most commonly used to control user access rights to database information.

The DBA has to ensure that adequate measures are taken to prevent unauthorized disclosure, alteration or destruction of both the data within the database and the database software itself.

Page 38: K. SEKAR, Ph.D. BIOINFORMATICS CENTRE INDIAN INSTITUTE OF SCIENCE BANGALORE 560 012 INDIA

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Bioinformatics Centre & Supercomputer Education and Research Centre

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THREE COMPONENTS OF DATABASE

Retrieval of the data by end users equipped with suitable analysis and display tools.

Development of a database structure that allows the storage and maintenance of the required data.

Data entry, maintenance and management.

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DATABASE ADMINISTRATION

Once the data is entered, it has to be maintained and kept upto date.

The database administrator (DBA) is a person or a group of persons responsible for overall control of database systems.

The DBA is usually not only answerable for the design of the database, but also for choice of DBMS used, its implementation and training of all involved in the database running and use.

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knowledge

Patterns

“Cleaned”data

Target data

Data Selection

Preprocessing &

transformation

Data Mining

Interpolationevaluation &validation

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PROBLEMS WITH THE DATA

Incomplete data

Noisy data

Temporal data

An extremely large amount of data

Non-textual data

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INCOMPLETE DATA

Some data may be missing (e.g., some fields may be left blank)

Sometimes, the fact that missing data itself is a valuable piece of information.

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NOISY DATA

The field may contain incorrectly entered information.

We do not know how does this affect the certainty factor (or) confidence level of the results.

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TEMPORAL DATA

Since database grow rapidly, how can data be incrementally added to our results.

What effect should this have in the knowledge discovery process

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AN EXTREMELY LARGE AMOUNT OF DATA

The option is to perform parallel processing, where n processors, each process approximately 1/n’ th of the data in approximately 1/n’ th of the time.

Some datasets can grow significantly over time.

How should such datasets be processed?

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NON-TEXTUAL DATA

There are many types of data that need to be manipulated, including image data, multimedia data (Video and Sound), spatial data in GIS and user defined data types.

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Stand alone machine application

Web Application

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PERL

Application programming(Standalone machine)

Applet Programming (Web oriented)

Useful for graphics application over the WWW

Very powerful for string manipulation

Uses CGI as the interface

JAVA

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WHAT IS PERL?

PERL uses sophisticated pattern matching techniques to scan large amounts of data very quickly.Although optimized for scanning text, PERL can also deal with binary data and can make dbm files look associate arrays

PERL is an interpreted language optimized for scanning arbitrary test files, extracting information from those text files

The language is intended to be practical (easy to use, efficient, complete) rather than beautiful (tiny, elegant and minimal).

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CGI ( Common Gateway Interface)

CGI performs the task of translation, means translates the needs of clients into server requests and then back translates server replies to clients.

Common Gateway interface (CGI), as its name implies, provides a gateway between a user (Client) and command/logic oriented server.

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Client CGI Server

Client Java Servlet Server

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RMI concept is very useful for multitier architecture EXAMPLE

www.hotmail.com www.google.com

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Remote

machine

Server

Client RMI

Software(Search Engine)

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WEB-Page

Java Server pages(sun micro systems)

Active server pages(Microsoft corporation)

useful for dynamic web pagecreation

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GRAPHICAL USER INTERFACE

(GUI)The Programmer can quickly design the user interface by drawing and arranging the screen elements rather than writing the raw code

CGI is easily visualizable to users

It is user friendly

Example:

MS-WINDOWS OPERATING SYSTEMS

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GUI (Graphical User Interface)

Active X(Microsoft corporation)

Java swing(Sun micro systems)

Buttons, boxes and pull down menus (windows based)

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VB (Visual Basic) Application development languages.

Supports graphics.

Good for standalone applications.

Web programming is not possible.But it is possible to use script languages(vb script or java script) to make it web oriented.

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VC++System & Application

Programming

Almost same as VB

Additional advantage

System side

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WORLD WIDE WEB (W W W)

The hyper linked documents are known as HTML documents. They are written in a special language called HTML, stands for Hyper Text Markup Language. The HTML is nothing but ASCII text with embedded tags on it.

World Wide Web is the famous and fastest growing Internet function.It is the way of accessing information already on the Internet using the concept of hypertext to link information.Like FTP, any types of digital documents, images, artwork, movies and sounds on the remote computer can be made hyperlinks.The protocol used for accessing such information is HTTP (Hyper Text Transfer Protocol)

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DBMS & RDBMSDBMS: Dbase

MS-AccessMysql-server

FoxPro (partially RDBMS)

RDBMS: SybaseOracleSQL-server

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DATABASE

a bunch of tables

TABLES

Store numerous rows of information

FIELDS

The little boxes inside a tables

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The best way to create your own access database is by using, microsoft access.This tool chips with the professional edition of office-87 and enables you to graphically design your own tables and individual field.

Yet another one my-SQL.

An expensive whopper of a database system called SQL server, which is used in corporation that needs to store huge wads of information.

ORACLE, which is another database format.

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Typical Web Search

Keywords

Search Engine

Output

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Flat file

Web Browser

W W W

CGI-Program

HTML

HTML

Form O/p (in HTML)

Form O/p (in HTML)

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Packages developed at theBioinformatics Centre

Raman BuildingIndian Institute of Science

Bangalore 560 012

Principal InvestigatorDr. K. Sekar

E-mail [email protected]

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Search Engines 144.16.71.10 / psst Protein Sequence Search Tool 144.16.71.2/bsdd Biomolecules Segment Display Device 144.16.71.10/msgs Motif Search in Genome Sequence 144.16.71.2/ssep Secondary Structural Elements in Protein

Programmers

1. S.Saravanan2. A.Ajmal Khan3. C.K.Rajesh4. T.Kamaraj5. P.Selvarani6. V.Shanthi7. S.Sirajuddin Sheik

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Database with Search facility144.16.71.2/lsdb Lipase Structural Database144.16.71.2/lysdb Lysozyme Structural Database144.16.71.2/asdb 3D-Amylase Database144.16.71.2/gsdb Globin Structural Database

Programmers1. C.K.Rajesh2. T.Kamaraj

3. P.Sundrarajan 4. P.Selvarani

5. V.Shanthi6. A.S.Zahir Hussain7. S.Sirajuddin Sheik

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Software for Structure analysis & manipulation

144.16.71.146/cap Conformation Angles Package144.16.71.146/rp Ramachandran Plot144.16.71.146/wap Water Analysis Package144.16.71.146/sem Symmetry Equivalent Molecules Generator144.16.71.146/pdbgoodies PDBGOODIES144.16.71.10/gpsm Geometrical Parameters for Small

Molecules144.16.71.146/mbd Measurability of Biovoet difference144.16.71.146/dtf Distribution of Temperature Factor

Programmers

1. C.K.Rajesh2. T.Kamaraj3. P.Sundarajan 4. P.Selvarani5. V.Shanthi6. S.Sirajuddin Sheik

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Water Analysis Package (WAP)V.Shanthi, C.K.Rajesh,J.Jayalakshmi,V.G.Vijay & K.SekarJ.APPL.CRYST. (2002) (in the press)

Protein Sequence Search Tool (PSST 1.1)S.Saravanan,A.Ajmul Khan & K.SekarCURR.SCIENCE, (2000) 550 – 552

PDB Goodies – A Web based GUI to manipulate Protein Data Bank filesA.S.Z.Hussain,V.Shanthi,S.S.Sheik,J.Jeyakanthan,P.Selvarani &K.SekarACTA CRYST. (2002), D58, 1385 – 1386

Ramachandran Plot (RP)S.Sheik,P. Sundararajan,A.S.Z Hussain & K.SekarBIOINFORMATICS (2002) (in the press)

Biomolecules Segment Display Device (BSDD)P.Selvarani,V.Shanthi,C.K.Rajesh,S.Saravanan & K.SekarJ.MOL. GRAPHICS & MODELLING (2002) (in press)

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Take Home Message

Datamining is nothing but exploiting the Hidden Trends in your data.

Create your own derived database.

No one tool or set of tools is universally applicable.

Present the data in a useful format such as graph or table.

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Department of BiotechnologyMinistry of Science & Technology

Govt. of IndiaIndia

&

Jai Vigyan National Science FoundationGovt. of India

India

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Professor M. Vijayan

Professor N. Balakrishnan

Professor S.M. Rao

Professor S. Ramakumar

Colleagues and Friends

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