Title: Pharmacogenomics: Implications for Clinical Education
1Pharmacogenomics Implications for Clinical
Education
- Howard J Federoff, MD, PhD
- Georgetown University Medical Center
2Themes
- Progressive reductionism in medicine Right
direction? - Post-Genomics forecasting and implications of
pharmacogenomics (PGx) - The state of PGx (Warfarin illustration)
- PGx approaches will likely be extended by systems
approaches - Systems medicine as a paradigm
- Status of training needs for physicians of
tomorrow
3Progressive Reductionism Heading in the Right
Direction?
- Galen
- Observation and reasoning first experimental
physiologist - Mendel
- Describes dominance and recessiveness
- Darwin
- Natural selection and key role of the environment
- Flexner
- Articulated a standard for educating physicians
- Beadle and Tatum
- One gene - one enzyme
- Watson Crick
- Architecture of DNA and implications for its
replication - Human Genome Project
- 3 billion bp comes to life?
4Post-Genomic Forecasting and PGx
- Genetic diseases that are highly penetrant are
rare - Important but may not exemplars for
geno-management of prevalent diseases - Common diseases are genetically complex
- Small contributions are conveyed by multiple
genes - GWAS and massive parallel DNA sequencing may
prove inadequate to direct clinical management - Identified key SNPs, haplotypes or DNA code are
unlikely to guide individual management decisions - Population differences in linkage disequilibrium
may diminish generalizability - Environmental factors contribute substantively
through several mechanisms to modulate inherited
read-outs - Delineation of specifics effectors is required
(molecules, immune responses, etc) - Epigenomics appears essential for connecting
potentiality (genetically/genomically) with
reality (at-risk, preclinical dz and manifest dz) - Elucidation of which/where (CpG, location),
magnitude of effect (gene expressivity) and
demonstrable clinical impact (dx, prognosis and
management)
5Status of PGxwww.fda.gov/cder/genomics/genomic_bi
omarkers_table.htm
- Four drugs labeled as Test Required
- Eight drugs labeled as Test Recommended
- Thirteen drugs labeled as Information Only
6State of PGx Warfarin Illustration
7Illustration Warfarin
8The State of PGxwww.fda.gov/cder/genomics/genomic
_biomarkers_table.htm
1 Required 2 Recommended
9Warfarin Interactions
- Increase INR or bleeding risk
- Acetaminophen Alcohol
- Amiodarone Anabolic Steroids
- Antifungals Aspirin and Salicylates
- Cephalosporins Chloral Hydrate
- Cimetidine Clofibrate
- Cranberry Juice (CYP2C9 inhibitor)
- Danazol Diflunisal
- Disulfiram Fluvoxamine
- Ginkgo Biloba Heparin
- HMG CoA Reductase inhibitors
- Isoniazid (INH) Macrolides
- Metronidazole Nalidixic Acid
- NSAIDs Omeprazole
- Paroxetine Penicillin
- Propafenone Quinidine
- Quinolones Sulfinpyrazone
- Tamoxifen Tetracycline
- Thyroid Hormone Ticlopidine
Decrease INR/ Increase clotting risk American
Ginseng Barbiturates Binding
Resins Carbamazepine (Tegretol) Oral
Contraceptives Penicillin Rifampin St.
John's Wort Vitamin K
10Warfarin Summary
- Two genes, CYP2C9 and VKORC, have polymorphisms
that affect activity and/or expression - CYP2C9 is potently upregulated by drugs and other
ingested chemicals - Together these PGx contributions account for 55
of inter-individual variability
11Warfarin Dosing A Complex Problem
- Metabolizing enzyme (CYP2C9) genetic variation
(affecting substrate speciificity, Km or Vmax) - Metabolizing enzyme regulated transcriptionally
(affecting absolute rate of mRNA production
linked to gene product abundance) - Metabolizing enzyme inhibited catalytically (Ki)
- Drug target (VKORC) genetic variation
(specificity, Km, Vmax) - Drug target regulated transcriptionally (rate of
mRNA synthesis linked to gene product abundance) - Therefore, INR is a product of multiple dynamic
effects
12Estimation of Warfarin Dose with Clinical and
Pharmacogenetic Data
13 Required Patient Information  AgeÂ
         Sex        Ethnicity  Race
  Weight           Height   Smokes
     Liver Disease  Indication
 -Select-Atrial fibrillation/ Cardioembolic/
stroke/ Deep venous thrombosis/ Heart
failure/cardiomyopathy/ Heart valve
replacement/ Hip fracture/ Hip replacement/
Knee replacement/ Myocardial infarction/
Pulmonary embolism/ Pulmonary
hypertension Baseline INRÂ Â Â Â Target
INR CYP2C9 Genotype CYP2C91/1
(wildtype)CYP2C91/2CYP2C92/2CYP2C91/
3CYP2C92/3CYP2C93/ VKORC1-1639/3673
Genotype  Amiodarone/Cordarone DoseÂ
mg/day Statin/HMG CoA Reductase
Inhibitor -Select-Atorvastatin/Lipitor/CaduetFl
uvastatin/ LescolLovastatin/Mevacor/Altoprev/Ad
vicorPravastatin/PravacholRosuvastatin/ Crestor
Simvastatin/Zocor/VytorinNo statin/Any azole
(eg. Fluconazole) Sulfamethoxazole/Septra/Bact
rim/Cotrim/Sulfatrim Â
13 Variables
14Where is PGx heading?
- PGx, while nascent, is derivative of genomics
- In the extreme, genomic information will be mined
to derive an understanding of a restricted set of
genes that confer variability to drug metabolism
and drug target action - While likely to drive drug discovery and
development and biomarker validation it will
likely have modest impact on individualizing
patient care - For greater precision a more comprehensive
approach is required incorporation genomic,
epigenomic and environmental assessments - Systems medicine is an example
15Systems Medicine
- A holistic quantitative approach to defining the
properties of a biological entity - Premised on Systems Biology, it examines the
interactions of elements (genes, proteins,
metabolites and environmental factors)
dynamically - The elements are nodes, their interactions edges
and their behavior constitutes a network - Networks are measured quantitatively, modeled and
their emergent properties herald unanticipated
biological outcomes - The continuum between wellness and disease is not
discontinuous but rather characterized by a
quantifiable perturbation to a network - When sufficiently robust the network perturbation
is manifest somatically by a symptom or sign
16Systems Medicine Dynamic Networks
- Elements (genes, proteins, etc)
nodes--measurements! - Interactions between the elements
edges--dynamic - Elements and their interactions are affected by
the context of other systems within--cells and
people AND the environment - Interactions between/among elements give rise to
the systems Emergent properties
Modified from Lee Hood
17Disease Arises from Perturbed Networks
dynamics of pathophysiology
diagnosis
therapy
prevention
Non-Diseased
Diseased
Courtesy of Lee Hood
18Getting ThereEpigenomics links inherited
vulnerability to environment
19The Central DogmaInformation Flow
DNA
RNA
Proteins
Metabolites
Biological Molecular Cast
But the dogma has changed!
Figures from Alberts, Johnson, Lewis, Raff,
Roberts, Walter, Molecular Biology of the Cell,
4th Edition, Garland Science, New York, NY (2002).
20DNA can be Modified by Methylation
What promotes non-coding epigenomic alteration?
21Environment-Gene Interaction
1,2 Epigenetic Changes
22Is epigenomic methylation a dynamic process?
23Global Change in Methylation in 7 years
24Epigenomics and Medicine
- Genomic methylation appears highly dynamic in
populations - As methylation and other epigenomic modifications
are linked to transcription this plasticity will
be likely reflected by altered gene expression
AND altered biology - Environmental factors are overwhelmingly likely
to be contributory to such epigenomic changes - Characterizing these epigenomic loci, their
functional correlates, implications for disease
and its management are critical for the future of
clinical medicine - A full understanding of these processes will
likely refine our understanding of disease
mechanisms, the selection of therapeutics,
measurements of responses and titration of dosing
25Training the Next Generation
- Design and implement curricula that include
systems medicine - Develop training modules for clinical educators
- Develop inpatient electives and outpatient
modules - Develop new measures and utilize existing
measures of the performance of graduates - First graduates 2015
- Develop GME and CME content
26Thank you
27A Strategy for Catalysis
- Structure a partnership comprising key
stakeholders Industry, the academy and the
relevant Federal agencies - Focus on small but scaleable investigative,
educational, clinical and ethical objectives - Leverage all available high quality digital data
that has application to human disease and its
management - Leverage supercomputing capacity through the DOE
funded national laboratories - Commit to blending of open source and proprietary
IP - Develop infrastructure to support varied growth
rates