genomic oncology and personalized medicine

47
Genomic Oncology and Personalized Medicine -Using lung cancers as a model Chung-Che (Jeff) Chang, M.D., Ph.D. Director, Hematology and Molecular Pathology Lab. Florida Hospital Professor of Pathology College of Medicine University of Central Florida E-mail: [email protected] Phone: 407-303-1879

Upload: c-jeff-chang-md-phd

Post on 13-Apr-2017

351 views

Category:

Health & Medicine


4 download

TRANSCRIPT

Page 1: Genomic oncology and personalized medicine

Genomic Oncology and Personalized

Medicine

-Using lung cancers as a model

Chung-Che (Jeff) Chang, M.D., Ph.D.

Director, Hematology and Molecular Pathology Lab.

Florida Hospital

Professor of Pathology

College of Medicine

University of Central Florida

E-mail: [email protected]

Phone: 407-303-1879

Page 2: Genomic oncology and personalized medicine

Image courtesy of Nature,

issue: Feb. 15, 2001

Thirty Years

to create a

“Strategic

Inflection” in

Cancer

Research.

The -OMICS

Revolution

Page 3: Genomic oncology and personalized medicine

GENOMIC ONCOLOGY AND

PERSONALIZED MEDICINE --

DEFINITION

To optimize cancer patient care using specific

and targeted therapies applying human

genome data

Page 4: Genomic oncology and personalized medicine

Major Technologies Enabling Genomic

Oncology

cDNA microarray: profiling thousands of genes simultaneously (transcriptomics).

Array-based comparative genomic hybridization (Array CGH) or single nucleotide polymorphism array (SNP array): determining the gene copy number alternation/loss of heterozygosity across the whole genome (genomics).

Next generation sequencing technologies: point mutations, insertions, deletion, gene fusions across the whole genome (exomics, genomics)

Bioinformatics

Page 5: Genomic oncology and personalized medicine

Gene Expression

Profiling by cDNA

microarray

-Landmark paper for

genomic oncology

“Distinct Types of DLBCL IdentifiedBy Gene Expression Profiling.”

Nature, 2000; 403:503.

Diffuse large B-cell lymphoma

(DLBCL) B-cells

Non-neoplasticB-cells

GC BDLBCL

Activated BDLBCL

Page 6: Genomic oncology and personalized medicine

cDNA microarray

Germinal Center (GC) B-cell gene expression

profiles have better prognosis than Activated

B-cells.

Alizadeh et al. Nature, 2000, 403: 503-511.

Page 7: Genomic oncology and personalized medicine

GC BDLBCL

Activated BDLBCL

Microscopy Pathologists Microarray Pathologistsvs

Page 8: Genomic oncology and personalized medicine

Expression Pattern A: Germinal Center B-

cell

Positive for at least

one:

CD10

Bcl-6

Negative for

BOTH:

MUM-1

CD138

Page 9: Genomic oncology and personalized medicine

Expression Pattern B: Activated

Germinal Center B-cell

Positive for at

least one:

CD10

Bcl-6

Positive for at

least one:

MUM-1

CD138

Page 10: Genomic oncology and personalized medicine

Expression Pattern C: Activated non-Germinal Center B-cell

Negative for

BOTH:

CD10

Bcl-6

Positive for at

least one:

MUM-1

CD138

Page 11: Genomic oncology and personalized medicine

0

.2

.4

.6

.8

1

0 20 40 60 80 100 120

Pattern B or C

Pattern A

P = 0.055,

log-rank test

Time (months)

Cum

. S

urv

ival

Chang, AJSP, 2004;28:464

0

.2

.4

.6

.8

1

0 20 40 60 80 100 120

Time (months)

Pattern C

Pattern B

Pattern A

P < 0.008,

log-rank testCum

. S

urv

ival

All patients Low clinical risk patients

Page 12: Genomic oncology and personalized medicine

Array-based Comparative Genomic Hybridization (Array

CGH) or Single Nucleotide Polymorphism array (SNP array)

to Determine the Gene Copy Number Alternation in Cancers

Page 13: Genomic oncology and personalized medicine

Plasmablastic Lymphoma (PL)

HIV, oral cavity, described in 1997

Considered as a subtype of diffuse large B-cell

lymphoma (DLBCL)

Immunophenotypically identical to plasma cell

myeloma (PCM):

CD20-, CD138+, PAX5-, CD56+

(Vega, Chang et al, Mod Pathol 2005)

Page 14: Genomic oncology and personalized medicine

Mod Pathol,

2005;18:806

Plasmblastic

LymphomaExtramedullary

Plasm Cell

Myeloma

MIB1

Page 15: Genomic oncology and personalized medicine

Extramedullary

Plasm Cell

Myeloma

Plasmblastic

Lymphoma

Page 16: Genomic oncology and personalized medicine

Without clinical information, differentiation of

PL and extramedullary plasma cell myeloma is

very difficult, if not possible, based on

morphology and/or IHC

Clinically very important: treatment and

prognosis of myeloma and lymphoma are very

different

How about the relationship between DLBCL,

PL and PCM at genomic level?

Page 17: Genomic oncology and personalized medicine

10.78520.62660.228AIDS-DLBCL

0.785210.63530.1507DLBCL

0.62660.635310.1034PL

0.2280.15070.10341PCM

AIDS -DLBCLDLBCLPLPCM

10.78520.62660.228AIDS-DLBCL

0.785210.63530.1507DLBCL

0.62660.635310.1034PL

0.2280.15070.10341PCM

AIDS -DLBCLDLBCLPLPCM

1

2

3

4

5

6

7

8

9

10

11

12

13

14

15

16

1718

1920

2122

Chromo -

somePCM PL DLBCL AIDS -

DLBCL

0.0

0.2

- 0.4

- 0.2

0.4

0.6

0.8

1

2

3

4

5

6

7

8

9

10

11

12

13

14

15

16

1718

1920

2122

Chromo -

somePCM PL DLBCL AIDS -

DLBCL

0.2

0.4

0.6

0.8

Chang,

Br. J Hematol

Oncol,

2009;2:47

Gene copy

number

alternation

analysis

using array

CGH

Page 18: Genomic oncology and personalized medicine

At genomic level, PL is more closed to

DLBCL or DLBCL occurring in HIV+

patients than to PCM supporting the current

classification scheme and the treatment

approaches.

Page 19: Genomic oncology and personalized medicine

Next GenerationSequencing

(NGS)

Technologies

10 years to

complete

sequencing the

first human

genome

1 to 5days to

complete

a whole

genome

sequencing

Page 20: Genomic oncology and personalized medicine

Feero WG et al. N Engl J Med 2010;362:2001-2011.

Page 21: Genomic oncology and personalized medicine

Myelodysplastic Syndromes (MDS) Biomarker

and Mechanism Discovery by NGS

Clonal hematopoietic stem cell diseases

Peripheral cytopenias, hypercellular marrow and

dysplasia

No accurate diagnostic/prognostic biomarkers

for the early stage of MDSs

Page 22: Genomic oncology and personalized medicine

p38MAPK representing the hub of the 10 mutated genes (shaded ones)

detected by RNA-seq through IPA analysis. Chang Lab unpublished data

Page 23: Genomic oncology and personalized medicine

Control MDS patients

Shahjahan, Chang et al, Am J Clin Pathol, 2008;130:635

P38 MAPK is highly activated in MDS as compared to controls

Page 24: Genomic oncology and personalized medicine

The whole genome/transcriptome sequencing results

indicate that p38 MAPK pathway may play an

important role in the pathogenesis of MDS.

P38 MAPK inhibitors may help a subset of MDS

patients who carry mutations leading to over-

activation of the p38 MAPK pathway.

Page 25: Genomic oncology and personalized medicine

Genomic Oncology Diagnosis of Lung Cancers

Morphologic diagnosis is

the base for characterizing

cancers but more genomic

info is needed for patient

management

EGFR/ALK/ROS1/KRAS

etc mutation status is

needed for the

individualized treatment

for lung cancer patients.

Page 26: Genomic oncology and personalized medicine
Page 27: Genomic oncology and personalized medicine

EGFR Tyrosine Kinase Domain

Mutations

TK domain

Exons 18-24

Amino acids 718-94

200 mutations have

been identified

90% are in exon 19 or

21

Page 28: Genomic oncology and personalized medicine

My cancer genome

Page 29: Genomic oncology and personalized medicine

Tumor

proliferation

EGFR TKIs inhibit the proliferation and

survival signaling pathway

MAPK

Ras

Sos

Grb2

Raf

MEK

EGFR:EGFR EGFR:HER3

AK

T

PI3K

Tumor survival

PDK1

BAD

Bax FOXO1

Caspase 9

1. Wheeler et al. Oncogene. 2008;27:3944-3956. 2. Mukohara et al. J Natl Cancer Inst. 2005;97:1185-1194.3. Tarceva [package insert]. Melville, NY: OSI Pharmaceuticals Inc; 2009

Page 30: Genomic oncology and personalized medicine

Tumor

proliferation

EGFR TKIs inhibit the survival/proliferation

signaling pathway

MAPK

Ras

Sos

Grb2

Raf

MEK

EGFR:EGFR EGFR:HER3

AK

T

Tumor survival

PDK1

BAD

Bax FOXO1

Caspase 9

1. Wheeler et al. Oncogene. 2008;27:3944-3956. 2. Mukohara et al. J Natl Cancer Inst. 2005;97:1185-1194.3. Tarceva [package insert]. Melville, NY: OSI Pharmaceuticals Inc; 2009

Page 31: Genomic oncology and personalized medicine

Progression-Free Survival in EGFR Mutation

Positive and Negative Patients

EGFR mutation positive EGFR mutation negative

Treatment by subgroup interaction test, p<0.0001

HR (95% CI) = 0.48 (0.36, 0.64)

p<0.0001

No. events gefitinib, 97 (73.5%)

No. events C / P, 111 (86.0%)

Gefitinib (n=132)

Carboplatin / paclitaxel (n=129)

HR (95% CI) = 2.85 (2.05, 3.98)

p<0.0001

No. events gefitinib , 88 (96.7%)

No. events C / P, 70 (82.4%)

132 71 31 11 3 0129 37 7 2 1 0

108103

0 4 8 12 16 20 24

GefitinibC / P

0.0

0.2

0.4

0.6

0.8

1.0

Pro

babili

ty o

f pro

gre

ssio

n-f

ree s

urv

ival

At risk :91 4 2 1 0 085 14 1 0 0 0

2158

0 4 8 12 16 20 24

0.0

0.2

0.4

0.6

0.8

1.0

Pro

babili

ty o

f pro

gre

ssio

n-f

ree s

urv

ival

Gefitinib (n=91)

Carboplatin / paclitaxel (n=85)

Months Months

Page 32: Genomic oncology and personalized medicine
Page 33: Genomic oncology and personalized medicine

60

40

20

0

–20

–40

–60

–80

–100

Progressive disease

Stable disease

Confirmed partial response

Confirmed complete response

Maxim

um

ch

an

ge i

n t

um

or

siz

e (

%)

–30%

Tumor Responses to Crizotinib for

Patients with ALK-positive NSCLC

Page 34: Genomic oncology and personalized medicine
Page 35: Genomic oncology and personalized medicine
Page 36: Genomic oncology and personalized medicine
Page 37: Genomic oncology and personalized medicine

Integrated genomic classification of

endometrial cancers

G Getz et al. Nature 497, 67-73

Page 38: Genomic oncology and personalized medicine

Patel JP et al. N Engl J Med 2012;366:1079-1089

New Risk Stratification for

AML patients using

cytogenetic and NGS data

Page 39: Genomic oncology and personalized medicine

Patel JP et al. N Engl J Med 2012;366:1079-1089

Page 40: Genomic oncology and personalized medicine

C Kandoth et al. Nature 502, 333-339 (2013)

Page 41: Genomic oncology and personalized medicine

Distribution of mutations in 127 SMGs across Pan-Cancer

cohort

Page 42: Genomic oncology and personalized medicine

• Average number of driver mutations varies across tumor

types

• Most tumors have two to six, indicating that the number of

driver mutations required during oncogenesis is relatively

small.

• Highest (6 mutations per tumor) in UCEC, LUAD and

LUSC, and the lowest (2 mutations per tumor) in AML,

BRCA, KIRC and OV.

• Clinical association analysis identifies genes having a

significant effect on survival.

• Laying the groundwork for developing new diagnostics

and individualizing cancer treatment.

Page 43: Genomic oncology and personalized medicine

• Cluster-of-cluster

assignments (COCA)

• 11/28 lung squamous

samples reclassified as

lung adenoCa

• Merging of colon and

rectal Ca into a single

group

• BRCA: (BRCA/

Luminal, ER+/HER+) and

(BRCA/basal, Triple-)

• COCA classification

differs from tissue-of-

origin-classification in

only 10% of all samples.

• Reflecting tumor biology

and clinical outcome.

Cell. 2014

V158;p929

Page 44: Genomic oncology and personalized medicine

12/25/2015

Molecular Taxonomy

Cell 2014 158, 929-944

Page 45: Genomic oncology and personalized medicine
Page 46: Genomic oncology and personalized medicine

Identification of Cancer-Specific

Mutated genes or Chromosomal

Rearrangements from Sequencing of a Cancer Genome

Page 47: Genomic oncology and personalized medicine

AcknowledgementChang’s Lab

Albert Mo, BS

Joe Conway, MD

Wan-Ting Huang, MD

Jianguo Wen, PhD

Yongdong Feng, MD, PhD

David Choi, PhD

Collaborators

Lawrence Rice, MD

Kyriacos A. Athanasiou, PhD

Helen Heslop, MD

Jessica Shafer, MD

Funding Agency

NIH/NCI