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urp.ucsd.edu

From B Student to Associate Vice
Chancellor & Professor
Philip E. Bourne
pbourne@ucsd.edu
10/16/13

ACSSA

1
Lesson 1 Change is Good

• My high school
teacher Mr. Wilson
said I would be a
failure at chemistry
• My PhD is in
chemistry

• The opportunity to
live in different
places shaped my
life
• Good friends are
forever
Lesson 2 Nurture Friends &
Colleagues

50 Years Later
PhD – The Molecular Basis of
Cancer Treatment

Lesson 3 See things for what they are
• I thought I was at
the center of the
scientific universe
• I later discovered I
was actually in
deep space
Lesson 4: Follow Your Heart

• Your head will tell you stuff
• Your heart will tell you something different
• Follow your heart
Circa 1974
Postdoctoral Work – The
Molecular Basis of How the Body
Works
Lesson 5 Learn to live with regret

• Regrets: never
learnt another
language
How I Got Excited

10/16/13

ACSSA

7
Some Things Stay with You Your
Whole Life

10/16/13

ACSSA

8
Senior Scientist – Columbia
University New York

• Driven not by
career but wanting
to live in New York
City
The Authoring Years
Lesson 6
Make the most
of every day
Got Involved with the The Human Genome –
Was Only Possible by Applying Computers to
Problems in Biology
• Took at least 10 years
and ~$1Bn
• Biology’s equivalent of
landing on the moon
• We now have
thousands of genomes
• $50 genome is upon us
Came to UCSD to Apply Computers
to Big Biological Problems

• Possibly the best place in the
world to do computational
biology
Fell in Love with the Data Problem

10/16/13

ACSSA

14
Number of released entries

Proteomics Data
Its Not Just About Numbers its About Complexity

10/16/13

The Omics Revolution

ACSSA

Year

15

Courtesy of the RCSB Protein Data Bank
10/16/13

ACSSA

16
2005 - Started a New Journal to
Support My Field – Led to a Passion for
Open Access
Josh Sommer and Chordoma Disease

http://fora.tv/2010/04/23/Sage_Commons_Josh_Sommer_Chordoma_Foundation#fullprogram
10/16/13

ACSSA

18
Josh Sommer – A Remarkable Young Man
Co-founder & Executive Director the Chordoma Foundation

10/16/13

ACSSA

http://sagecongress.org/Presentations/Sommer.pdf
19
Motivation
Chordoma
• A rare form of brain
cancer
• No known drugs
• Treatment – surgical
resection followed by
intense radiation
therapy

http://upload.wikimedia.org/wikipedia/commons/2/2b/Chordoma.JPG

10/16/13

ACSSA

20
http://sagecongress.org/Presentations/Sommer.pdf

10/16/13

ACSSA

21
http://sagecongress.org/Presentations/Sommer.pdf
10/16/13

ACSSA

22
http://sagecongress.org/Presentations/Sommer.pdf
10/16/13

ACSSA

23
http://sagecongress.org/Presentations/Sommer.pdf
10/16/13

ACSSA

24
http://sagecongress.org/Presentations/Sommer.pdf

10/16/13

ACSSA

25
http://fora.tv/2010/04/23/Sage_Commons_Josh_Sommer_Chordoma_Foundation

10/16/13

ACSSA

26
Lesson 7 – Go After the Big
Problems
1.

2.

3.

4.
5.

August 14, 2009

Can we improve how science
is disseminated and
comprehended?
What is the ancestry of the
protein structure universe and
what can we learn from it?
Are there alternative ways to
represent proteins from which
we can learn something new?
What really happens when we
take a drug?
Can we contribute to the
treatment of neglected
{tropical} diseases?
2. Drug Discovery

10/16/13

ACSSA

28
The Worst of Times

Source: http://www.pharmafocusasia.com/strategy/drug_discovery_india_force_to_reckon.htm

10/16/13

ACSSA

29
Here is One Reason Why
• Tykerb – Breast cancer
• Gleevac – Leukemia, GI
cancers
• Nexavar – Kidney and liver
cancer
• Staurosporine – natural product
– alkaloid – uses many e.g.,
antifungal antihypertensive

10/16/13

30
ACSSA
Collins and Workman 2006 Nature Chemical Biology 2 689-700
Bioinformatics – Reverse Engineering
Drug Discovery
Characterize ligand binding
site of primary target
(Geometric Potential)

Identify off-targets by ligand
binding site similarity
(Sequence order independent
profile-profile alignment)

Extract known drugs
or inhibitors of the
primary and/or off-targets
Search for similar
small molecules

…

Dock molecules to both
primary and off-targets

Statistics analysis
of docking score
correlations

10/16/13

ACSSA

31

Xie and Bourne 2009
Bioinformatics 25(12) 305-312
The Problem with Tuberculosis
•
•
•
•

One third of global population infected
1.7 million deaths per year
95% of deaths in developing countries
Anti-TB drugs hardly changed in 40
years
• MDR-TB and XDR-TB pose a threat to
human health worldwide
• Development of novel, effective and
inexpensive drugs is an urgent priority
10/16/13

ACSSA

32
Map 2 onto 1 – The TB-Drugome
http://funsite.sdsc.edu/drugome/TB/

Similarities between the binding sites of M.tb proteins (blue),
33
10/16/13
ACSSA
and binding sites containing approved drugs (red).
From a Drug Repositioning Perspective
• Similarities between drug binding sites and
TB proteins are found for 61/268 drugs
• 41 of these drugs could potentially inhibit
more than one TB protein

chenodiol
testosterone
ritonavir

10/16/13

conjugated
estrogens &
methotrexate

raloxifene

levothyroxine

alitretinoin

No. of potential TB targets
ACSSA

34
Top 5 Most Highly Connected
Drugs
Drug

Intended targets

Indications

levothyroxine

transthyretin, thyroid
hormone receptor α & β-1,
thyroxine-binding globulin,
mu-crystallin homolog,
serum albumin

hypothyroidism, goiter,
chronic lymphocytic
thyroiditis, myxedema coma,
stupor

alitretinoin

conjugated
estrogens
methotrexate

raloxifene
10/16/13

retinoic acid receptor RXR-α,
β & γ, retinoic acid receptor
cutaneous lesions in patients
α, β & γ-1&2, cellular
with Kaposi's sarcoma
retinoic acid-binding protein
1&2
estrogen receptor

menopausal vasomotor
symptoms, osteoporosis,
hypoestrogenism, primary
ovarian failure

dihydrofolate reductase,
serum albumin

gestational choriocarcinoma,
chorioadenoma destruens,
hydatidiform mole, severe
psoriasis, rheumatoid arthritis

estrogen receptor, estrogen
receptor β

osteoporosis in postmenopausal women
ACSSA

No. of
TB proteins
connections

14

adenylyl cyclase, argR, bioD,
CRP/FNR trans. reg., ethR,
glbN, glbO, kasB, lrpA, nusA,
prrA, secA1, thyX, trans. reg.
protein

13

adenylyl cyclase, aroG,
bioD, bpoC, CRP/FNR trans.
reg., cyp125, embR, glbN,
inhA, lppX, nusA, pknE, purN

10

acetylglutamate kinase,
adenylyl cyclase, bphD,
CRP/FNR trans. reg., cyp121,
cysM, inhA, mscL, pknB, sigC

10

acetylglutamate kinase, aroF,
cmaA2, CRP/FNR trans. reg.,
cyp121, cyp51, lpd, mmaA4,
panC, usp

9

adenylyl cyclase, CRP/FNR
trans. reg., deoD, inhA, pknB,
pknE, Rv1347c, secA1, sigC
35
Rule 8 – Give Back

10/16/13

ACSSA

36
What Would I Work On If Starting
Today?
• Neuroinformatics
• Translational research – interdisciplinary, lab
to market
• Science advocacy
• Anything big data

10/16/13

ACSSA

37
pbourne@ucsd.edu

Questions?
10/16/13

ACSSA

38

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Professional Development Presented to ACS Student Group Oct 16, 2013

  • 1. urp.ucsd.edu From B Student to Associate Vice Chancellor & Professor Philip E. Bourne pbourne@ucsd.edu 10/16/13 ACSSA 1
  • 2. Lesson 1 Change is Good • My high school teacher Mr. Wilson said I would be a failure at chemistry • My PhD is in chemistry • The opportunity to live in different places shaped my life • Good friends are forever
  • 3. Lesson 2 Nurture Friends & Colleagues 50 Years Later
  • 4. PhD – The Molecular Basis of Cancer Treatment Lesson 3 See things for what they are • I thought I was at the center of the scientific universe • I later discovered I was actually in deep space
  • 5. Lesson 4: Follow Your Heart • Your head will tell you stuff • Your heart will tell you something different • Follow your heart Circa 1974
  • 6. Postdoctoral Work – The Molecular Basis of How the Body Works Lesson 5 Learn to live with regret • Regrets: never learnt another language
  • 7. How I Got Excited 10/16/13 ACSSA 7
  • 8. Some Things Stay with You Your Whole Life 10/16/13 ACSSA 8
  • 9. Senior Scientist – Columbia University New York • Driven not by career but wanting to live in New York City
  • 11. Lesson 6 Make the most of every day
  • 12. Got Involved with the The Human Genome – Was Only Possible by Applying Computers to Problems in Biology • Took at least 10 years and ~$1Bn • Biology’s equivalent of landing on the moon • We now have thousands of genomes • $50 genome is upon us
  • 13. Came to UCSD to Apply Computers to Big Biological Problems • Possibly the best place in the world to do computational biology
  • 14. Fell in Love with the Data Problem 10/16/13 ACSSA 14
  • 15. Number of released entries Proteomics Data Its Not Just About Numbers its About Complexity 10/16/13 The Omics Revolution ACSSA Year 15 Courtesy of the RCSB Protein Data Bank
  • 17. 2005 - Started a New Journal to Support My Field – Led to a Passion for Open Access
  • 18. Josh Sommer and Chordoma Disease http://fora.tv/2010/04/23/Sage_Commons_Josh_Sommer_Chordoma_Foundation#fullprogram 10/16/13 ACSSA 18
  • 19. Josh Sommer – A Remarkable Young Man Co-founder & Executive Director the Chordoma Foundation 10/16/13 ACSSA http://sagecongress.org/Presentations/Sommer.pdf 19 Motivation
  • 20. Chordoma • A rare form of brain cancer • No known drugs • Treatment – surgical resection followed by intense radiation therapy http://upload.wikimedia.org/wikipedia/commons/2/2b/Chordoma.JPG 10/16/13 ACSSA 20
  • 27. Lesson 7 – Go After the Big Problems 1. 2. 3. 4. 5. August 14, 2009 Can we improve how science is disseminated and comprehended? What is the ancestry of the protein structure universe and what can we learn from it? Are there alternative ways to represent proteins from which we can learn something new? What really happens when we take a drug? Can we contribute to the treatment of neglected {tropical} diseases?
  • 29. The Worst of Times Source: http://www.pharmafocusasia.com/strategy/drug_discovery_india_force_to_reckon.htm 10/16/13 ACSSA 29
  • 30. Here is One Reason Why • Tykerb – Breast cancer • Gleevac – Leukemia, GI cancers • Nexavar – Kidney and liver cancer • Staurosporine – natural product – alkaloid – uses many e.g., antifungal antihypertensive 10/16/13 30 ACSSA Collins and Workman 2006 Nature Chemical Biology 2 689-700
  • 31. Bioinformatics – Reverse Engineering Drug Discovery Characterize ligand binding site of primary target (Geometric Potential) Identify off-targets by ligand binding site similarity (Sequence order independent profile-profile alignment) Extract known drugs or inhibitors of the primary and/or off-targets Search for similar small molecules … Dock molecules to both primary and off-targets Statistics analysis of docking score correlations 10/16/13 ACSSA 31 Xie and Bourne 2009 Bioinformatics 25(12) 305-312
  • 32. The Problem with Tuberculosis • • • • One third of global population infected 1.7 million deaths per year 95% of deaths in developing countries Anti-TB drugs hardly changed in 40 years • MDR-TB and XDR-TB pose a threat to human health worldwide • Development of novel, effective and inexpensive drugs is an urgent priority 10/16/13 ACSSA 32
  • 33. Map 2 onto 1 – The TB-Drugome http://funsite.sdsc.edu/drugome/TB/ Similarities between the binding sites of M.tb proteins (blue), 33 10/16/13 ACSSA and binding sites containing approved drugs (red).
  • 34. From a Drug Repositioning Perspective • Similarities between drug binding sites and TB proteins are found for 61/268 drugs • 41 of these drugs could potentially inhibit more than one TB protein chenodiol testosterone ritonavir 10/16/13 conjugated estrogens & methotrexate raloxifene levothyroxine alitretinoin No. of potential TB targets ACSSA 34
  • 35. Top 5 Most Highly Connected Drugs Drug Intended targets Indications levothyroxine transthyretin, thyroid hormone receptor α & β-1, thyroxine-binding globulin, mu-crystallin homolog, serum albumin hypothyroidism, goiter, chronic lymphocytic thyroiditis, myxedema coma, stupor alitretinoin conjugated estrogens methotrexate raloxifene 10/16/13 retinoic acid receptor RXR-α, β & γ, retinoic acid receptor cutaneous lesions in patients α, β & γ-1&2, cellular with Kaposi's sarcoma retinoic acid-binding protein 1&2 estrogen receptor menopausal vasomotor symptoms, osteoporosis, hypoestrogenism, primary ovarian failure dihydrofolate reductase, serum albumin gestational choriocarcinoma, chorioadenoma destruens, hydatidiform mole, severe psoriasis, rheumatoid arthritis estrogen receptor, estrogen receptor β osteoporosis in postmenopausal women ACSSA No. of TB proteins connections 14 adenylyl cyclase, argR, bioD, CRP/FNR trans. reg., ethR, glbN, glbO, kasB, lrpA, nusA, prrA, secA1, thyX, trans. reg. protein 13 adenylyl cyclase, aroG, bioD, bpoC, CRP/FNR trans. reg., cyp125, embR, glbN, inhA, lppX, nusA, pknE, purN 10 acetylglutamate kinase, adenylyl cyclase, bphD, CRP/FNR trans. reg., cyp121, cysM, inhA, mscL, pknB, sigC 10 acetylglutamate kinase, aroF, cmaA2, CRP/FNR trans. reg., cyp121, cyp51, lpd, mmaA4, panC, usp 9 adenylyl cyclase, CRP/FNR trans. reg., deoD, inhA, pknB, pknE, Rv1347c, secA1, sigC 35
  • 36. Rule 8 – Give Back 10/16/13 ACSSA 36
  • 37. What Would I Work On If Starting Today? • Neuroinformatics • Translational research – interdisciplinary, lab to market • Science advocacy • Anything big data 10/16/13 ACSSA 37

Notas do Editor

  1. Tuberculosis, which is caused by the bacterial pathogen Mycobacterium tuberculosis, is a leading cause of mortality among the infectious diseases. It has been estimated by the World Health Organization (WHO) that almost one-third of the world's population, around 2 billion people, is infected with the disease. Every year, more than 8 million people develop an active form of the disease, which claims the lives of nearly 2 million. This translates to over 4,900 deaths per day, and more than 95% of these are in developing countries. Despite the current global situation, antitubercular drugs have remained largely unchanged over the last four decades. The widespread use of these agents has provided a strong selective pressure for M.tuberculosis, thus encouraging the emergence of resistant strains. Multidrug resistant (MDR) tuberculosis is defined as resistance to the first-line drugs isoniazid and rifampin. The effective treatment of MDR tuberculosis necessitates long-term use of second-line drug combinations, an unfortunate consequence of which is the emergence of further drug resistance. Enter extensively drug resistant (XDR) tuberculosis - M.tuberculosis strains that are resistant to both isoniazid plus rifampin, as well as key second-line drugs. Since the only remaining drug classes exhibit such low potency and high toxicity, XDR tuberculosis is extremely difficult to treat. The rise of XDR tuberculosis around the world imposes a great threat on human health, therefore reinforcing the development of new antitubercular agents as an urgent priority. Very few Mtb proteins explored as drug targets
  2. Multi-target therapy may be more effective than single-target therapy to treat infectious diseases Most of the proteins listed are potential novel drug targets for the development of efficient anti-tuberculosis chemotherapeutics. GSMN-TB: Genome Scale Metabolic Reaction Network of M.tb (http://sysbio/sbs.surrey.ac.uk/tb) 849 reactions, 739 metabolites, 726 genes Can optimize the model for in vivo growth Carry out multiple gene inhibition and compute the maximal theoretical growth rate (if close to zero, that combination of genes is essential for growth)