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Pathology in the Genome Era:
Challenges to Diagnosis, Prognosis, Therapeutics,
and Implications for Training Programs
Mark E. Sobel, M.D., Ph.D.
Executive Officer
American Society for Investigative Pathology
[email protected]
Temple University School of Medicine
October 29, 2010
This presentation will be available at
http://www.asip.org/about/exec.htm
No relevant financial relationships to disclose
Goals
Understand
the future capabilities and changes to
pathology practice in the genome era
Recognize
the impact of whole genome sequence
analysis on pathology practice. What are the
potential benefits and pitfalls?
Describe
approaches to training of medical
students, residents and fellows in training, and
practicing pathologists to meet the challenges of the
genome era.
Dark Matter is 96% of the mass of the universe
The New Genetics: The Human Genome
3.1 x 109 bp
500,000 stretches of DNA that are conserved
through evolution
22,000 genes based on current algorithms =
5% of genome
30% have instructions to make proteins
70% have instructions to regulate the
protein-coding genes
© The American Society for Investigative Pathology
Complexity of the Human Genome
The other 70% (regulating)
Ribosomal (rRNA)
Transfer RNA (tRNA)
Small nucleolar RNA (snoRNA)
Micro RNA (miRNA)
95% “Junk DNA”
Pseudogenes
Other functions?
© American Society for Investigative Pathology
The Human Genome is NOT “Green”
Inefficiencies can be an advantage
Adapt quickly to rare, life-threatening
circumstances
Fill up your gas tank and have it ready
at all times for a long trip
Bleeding
Starvation
Extreme heat or cold
© American Society for Investigative Pathology
Human Genome Data: DNA
Methods
PCR
Sequencing
FISH
Microarrays
Data
SNPs (single nucleotide polymorphisms)
Insertions/Deletions/Rearrangements
Gene copy number
Whole Genome Sequence variants
© American Society for Investigative Pathology
Human Genome Data: Sequencing the Genome
ProgressToward Whole Genome Sequencing (WGS)
Time Period
Turn-around
Time
FTEs
Cost per
genome
1990 – 2003
~ 5 years
~5,000
~ $3 billion
2003-2009
~ 6 months
<50
2010-2014
< 1 month
4 + bioinformatics
analysts
2015
15 minutes
<1
$300,000
$3,800/exome
$20,000/WGS
$100
© American Society for Investigative Pathology
Whole Genome Analysis
Gene Expression
OncotypeDx, Mammaprint
Whole transcriptome analysis (cells, tissues)
Direct to Consumer Whole Genome SNP Analysis
23andMe
Navigenics
DeCode
How do we help patients interpret?
© American Society for Investigative Pathology
Whole Genome Sequencing
The New Microscope?
Beckman Coulter Genomics
Applied Biosystems
Complete Genomics
454 Sequencing
Helicos
Illumina
Pacific Biosciences
© American Society for Investigative Pathology
Human Genome Data: RNA
Methods
RT-PCR
qPCR
Microarrays
In situ Hybridization
Data
Whole transcriptome analysis
Sequence variants, copy number
Expression: increased, decreased, absent
© American Society for Investigative Pathology
Human Genome Data: Protein
Methods
Immunohistochemistry
Gel analysis (1D, 2D)
Mass spectrometry
Data
Presence and amount
Size
Modifications- phosphorylation, glycosylation
Whole cell and tissue expression
© American Society for Investigative Pathology
Current Practice of Molecular Pathology
Disease-specific tests and HLA typing
Centralized laboratories
Cost of a single test: $100 - $5,000
Individual test validation and performance
Troubleshooting
Interpretation
Clinical consultation
© American Society for Investigative Pathology
Genomic Pathology:
Whole Genome Sequencing
Replace current single and multi-gene tests
at a lower cost and faster turn-around time
Delineation of Signaling Pathways
Interpretative Dilemma – what is clinically
relevant?
© American Society for Investigative Pathology
Genomic Pathology:
Issues in Whole Genome Sequencing
Validation of testing method
Quality control
Validation of interpretative algorithm
Archive complete sequence?
Consent?
Confidentiality?
Patent and licensing restrictions?
© American Society for Investigative Pathology
The New Genetics and Personalized Medicine
Personalized Medicine is the use of human genome data
to optimize patient care
Treatments based on genomics
Subcategorize diseases based on genomics
Use disease susceptibility for prevention
Use disease susceptibility to direct early monitoring
Improve outcomes
Faster diagnosis
More precise prognosis
Effective therapy
Reduce healthcare costs
The New Genetics and Personalized Medicine
Personalized Medicine is the use of human genome data
to optimize patient care
Pharmacogenetics
The Study of Variations in Genes that Affect Responses to Drugs
50% of first treatments do not work
Optimize treatment for individual patients
Minimize adverse drug events
Maximize drug efficacy
Develop more targeted drugs
The right drug at the right dose
Application to Oncology
Determine the preferred therapeutic agent
for each tumor
Ascertain which patients are most likely to
benefit from a given therapy
Patients with same diagnosis
Adapted, Courtesy Slide from Howard L. McLeod
Institute for Pharmacogenomics and Individualized Therapy
UNC – Chapel Hill, NC
All patients with same diagnosis
Toxic Responder: Lower dose or alternate drug
All patients with same diagnosis
Non-Responder: higher dose or alternate drug
Pharmacogenetics: The Study of Variations in Genes
that Affect Responses to Drugs
Genetic changes specifically within malignant
tumor cells
Inherited genetic variability in a targeted gene or
group of functionally-related genes affecting
response to drugs
Pharmacogenetics: The Study of Variations in Genes
that Affect Responses to Drugs
Genetic changes specifically within malignant tumor
cells
Estrogen Receptor Status
Treatment with SERMs- selective ER modulators
Tamoxifen
Raloxifene
Multigene analysis:
OncoType DX assay (21 genes)
MammaPrint assay (70 genes)
Epidermal growth factor receptor (EGFR) Status
HER2/neu (Herceptin therapy)
Pharmacogenetics: The Study of Variations in Genes
that Affect Responses to Drugs
Genetic changes specifically within malignant
tumor cells
Inherited genetic variability in a targeted gene or
group of functionally-related genes affecting
response to drugs
Pharmacokinetics: What the Body Does to the Drug
Absorption – substance enters the body
Distribution – drug disperses to fluids and tissues
Metabolism – transform parent compound into
daughter compounds
Excretion – elimination of parent drug and daughter
compounds from the body
Pharmacokinetic Metabolism:
transform parent compound into daughter
metabolites
Parent compounds are converted to metabolites
that are more water soluble so they can be more
easily excreted
Bioactivation: Prodrugs are converted into
therapeutically active compounds
Cytochrome P450 Enzymes
Supergene family
Active in the liver and small intestine
Named for the characteristic absorption
spectra of
the protein products (450 nm)
Human genome: 57 CYP genes
15 genes involved in metabolism of xenobiotics
75% of total metabolism of drugs
14 genes involved in metabolism of sterols
4 genes oxidize fat-soluble vitamins
9 involved in metabolism of fatty acids and
eicosanoids
15 unknown function
CYP Nomenclature
CYP 2 D 6 *1
*1 is usually wild-type
Supergene family
Family
Subfamily
Isoenzyme
Allelic variant
Tamoxifen
Approved by the US FDA for the treatment
and prevention of breast cancer
Anti-estrogen
SERM: selective estrogen receptor
modulator
CYP2D6 and Tamoxifen
At least 70 CYP2D6 allelic variants
Reduced activity of CYP2D6
→ reduced metabolism of tamoxifen
→ poor response to tamoxifen
Classification of alleles
Poor metabolizers
Intermediate metabolizers
Extensive metabolizers
Ultrarapid metabolizers
Ethnic variation –
CYP2D6*4 – poor metabolizer
12% - 21% Northern Europeans
1% - 2% Asians and Black Africans
CYP2D6*10 – intermediate metabolizer
Most common allele in Asians
Tamoxifen:
A Prodrug Requiring Extensive Metabolism
Tamoxifen
4-hydroxyTAM
CYP2D6
MINOR METABOLITE 100X POTENCY
CYP3A4/5
CYP3A4/5
CYP2D6
N-desmethylTAM
MAJOR METABOLITESAME POTENCY
Endoxifen
MODERATE METABOLITE100X POTENCY
Genetic variants of CYP2D6 and drugs that modulate this enzyme
significantly affect outcome in tamoxifen-treated patients
Adapted from Goetz, M. P. et al. J Clin Oncol; 23:9312-9318 2005
Side effects of Tamoxifen and
Treatment with Antidepressants
Hot flashes most common side effect
Treated with antidepressants:
SSRIs (selective serotonin reuptake inhibitors)
Inhibit CYP2D6 activity
Potent inhibitors (paroxetene, fluoxetine) reduce
endoxifen levels
Less potent inhibitors (venlafaxine) have little
effect
Patients with decreased metabolism:
Shorter time to recurrence
Worse relapse-free survival
Potent CYP2D6 inhibitors such as certain SSRIs are
contraindicated in tamoxifen-treated patients
CYP2D6 Poor Metabolizers
•Patients diagnosed with breast cancer should be
treated with alternatives to tamoxifen (e.g.
aromatase inhibitors)
•For breast cancer prevention, raloxifene is a
viable alternative to tamoxifen
Recommended reading:
Snozek CLH, O’Kane DJ, and Algeciras-Schimnich A.:
Pharmacogenetics of Solid Tumors: Directed Therapy in Breast,
Lung, and Colorectal Cancer. J Mol Diagn 2009, 11:381-389, DOI:
10.2353/jmoldx.2009.090003
Training and Education
Haspel A et al. A Call to Action: Training Pathology
Residents in Genomics and Personalized Medicine.
Am J Clin Pathol 2010;133:832-834
Didactic presentations
Personalized Medicine Teaching Set of Genomic Cases
Voluntary commercial genome SNP analysis
Disease-gene investigation and presentation- each
resident investigates, interprets and discusses a case
Encourage translational research
© American Society for Investigative Pathology
Didactic Presentations
Haspel A et al. A Call to Action: Training Pathology
Residents in Genomics and Personalized Medicine. Am J
Clin Pathol 2010;133:832-834
Current state of genome analysis
Basics of next-generation sequencing technologies and
potential diagnostic applications
Genetic counselors:
Use of genetic information to guide and counsel patients
and physicians
Use of variation databases and linked literature review
HGVbaseG2P, DGV, dbSNP, …
© American Society for Investigative Pathology
Personalized Medicine Teaching Set of
Genomic Cases
Haspel A et al. A Call to Action: Training Pathology
Residents in Genomics and Personalized Medicine. Am J
Clin Pathol 2010;133:832-834
Multiple theoretical genomic cases, each consisting of:
Clinical case and family history for a patient
Genome sequence variations for patient compared to a
reference sequence
© American Society for Investigative Pathology