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Computing and Chemistry 3-41 Athabasca Hall Sept. 16, 2013.

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Presentation on theme: "Computing and Chemistry 3-41 Athabasca Hall Sept. 16, 2013."— Presentation transcript:

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2 Computing and Chemistry david.wishart@ualberta.ca 3-41 Athabasca Hall Sept. 16, 2013

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4 How Do We Know? Benzene Sucrose

5 How Do We Know? Hemoglobin

6 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

7 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

8 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

9 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

10 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

11 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

12 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

13 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

14 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

15 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

16 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

17 http://micro.magnet.fsu.edu/primer/java/scienceopticsu/powersof10/ Powers of 10

18 Our Seeing Limits (and Limitations) 1 m 1 x 10 -3 m 1x10 -6 m 1x10 -9 m Free $5 $5000 $500,000 Live, moving Live, moving Fixed, stained Fixed, stained

19 Our Seeing Limits (and Limitations) $5,000,000 $500,000,000 1x10 -10 m 1x10 -12 m Extracted, crystallized Atomized, vaporized

20 Seeing Molecules Can’t use visible light Can’t use electrons (EM) Have to use X-ray scattering Have to use Nuclear Magnetic Resonance (NMR) spectroscopy Have to use mass spectrometry All require computers & computing

21 X-ray Crystallography

22 Crystallization A Crystal

23 Crystallization Hanging Drop Experiment for Cyrstallization

24 Diffraction Apparatus

25 A Bigger Diffraction Apparatus Synchrotron Light Source

26 Diffraction Principles*** n  = 2dsin 

27 Diffraction Principles A string of atoms Corresponding Diffraction Pattern

28 F T Converting Diffraction Data to Electron Density

29 Fourier Transformation F(x,y,z) = f(hkl)e d(hkl)  xyz)(hkl) Converts from units of inverse space to cartesian coordinates

30 Resolution 1.2 Å 2 Å 3 Å Resolution describes the ability of an imaging system to resolve detail in the object that is being imaged.

31 Electron Density Tracing

32 Crystallography (Then & Now) 1959 2010

33 Crystallography (Then & Now) 1953 2010

34 X-ray Crystallography Key is to measure both phase and amplitude of X-rays (unfortunately we can’t measure phase) Trick is to guess phase, use a crutch (anomalous dispersion) or calculate the phase using pattern recognition (direct method) Direct method (purely computational) works for small molecules (<1000 atoms) but not for large Anyone who solves the “direct phasing problem” for all molecule sizes wins the Nobel Prize

35 Computational Challenges in X-ray Crystallography Solving the direct phase problem –Algorithmics, Parallelism Developing robotic crystallography stations (doing what humans do) –Robotics Predicting and planning optimal crystallization conditions –Machine learning, Neural Nets Automated electron density tracing –AI, Machine learning

36 2 Main Methods to Solve Structures in Chemistry X-ray NMR

37 NMR Spectroscopy Radio Wave Transceiver

38 Principles of NMR Measures nuclear magnetism or changes in nuclear magnetism in a molecule NMR spectroscopy measures the absorption of light (radio waves) due to changes in nuclear spin orientation NMR only occurs when a sample is in a strong magnetic field Different nuclei absorb at different energies (frequencies)

39 Principles of NMR

40 FT NMR FT Free Induction Decay NMR spectrum

41 Signal Processing

42 Fourier Transformation F(  ) = f(t)e dt  t Converts from units of time to units of frequency

43 1 H NMR Spectra Exhibit… 8.0 7.0 6.0 5.0 4.0 3.0 2.0 1.0 0.0 Chemical Shifts (peaks at different frequencies or ppm values) Splitting Patterns (from spin coupling) Different Peak Intensities (# 1 H)

44 NMR Spectra 8.0 7.0 6.0 5.0 4.0 3.0 2.0 1.0 0.0 9.0 8.0 7.0 6.0 5.0 4.0 3.0 2.0 1.0 0.0 Small Molecule Big Molecule

45 Simplifying Complex Spectra

46 Multidimensional NMR 1D 2D 3D MW ~ 500 MW ~ 10,000 MW ~ 30,000

47 The NMR Challenge Peak positions tell you atom types Peak clusters tells about atom type proximity or neighborhood Peak intensities tell you how many atoms How to interpret peak intensities, peak clusters and peak positions to generate a self-consistent structure?

48 Solving a Crossword Puzzle Dictionary of words and definitions (or your brain) Match word length Match overlapping or crossing words All words have to be consistent with geometry of puzzle

49 NMR Spectroscopy (The Old Way) Peak Positions Peak Height J-Couplings

50 NMR Spectroscopy (The New Way) Peak Positions Peak Height J-Couplings Computer Aided Structure Elucidation

51 Computer-Aided Structure Elucidation

52 Structure Elucidator

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54 Beating Human Experts

55 Key Computational Challenges in NMR Solving structures for large molecules (i.e. proteins or RNA) using automated CASE methods –Monte Carlo Sampling, Neural Nets Extracting information about molecular motions from raw NMR data –Pattern recognition, Machine Learning

56 Jobs in Computational Chemistry Pharmaceutical and biotechnology companies Chemical products companies Universities and national labs Chemistry software development companies Cheminformatics – a rapidly growing field (not as large as bioinformatics)

57 Questions? david.wishart@ualberta.ca 3-41 Athabasca Hall


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