Transcript
Page 1: Research Update: Gene Expression in SSc

RESEARCH UPDATE: GENE EXPRESSION IN SSC

Monique Hinchcliff MD, MS

Scleroderma Foundation Patient Education Day

October 19, 2013

Northwestern University

Page 2: Research Update: Gene Expression in SSc

Overview

• Physical exam findings for patients with SSc

• Classification of patients with SSc

• Genomics

– What it is

– How to measure

• Gene expression analysis

• Results of recent genomics work in SSc

– How genomic approaches can be used to select the right therapy for the right patient

Page 3: Research Update: Gene Expression in SSc

SSc Dogma

Disease subset Limited cutaneous

(lcSSc)

Diffuse cutaneous

(dcSSc)

Typical serum

autoantibody

produced

Anticentromere Anti-

topoisomerase

(Scl-70)

Pattern of lung

involvement

Pulmonary artery

hypertension

(PAH)

Interstitial lung

disease (ILD)

Major

pathophysiology

Vasculopathy

(Blood vessel

problems)

Fibrosis

(too much scar

tissue)

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SSc treatments • Immune modulatory agents

– Methotrexate

– D-Penicillamine

– Cyclophosphamide

– Mycophenolate mofetil (inhibits an enzyme that controls lymphocyte proliferation)

– Stem cell transplant (allogeneic and autologous)

– Corticosteroids

• Biologics

– TNF- inhibitors

– Rituximab (Anti-B-lymphocyte antibody)

– Tocilizumab (IL-6 inhibitor)

– Abatacept (blocks CD28 binding to the antigen-presenting cell)

• CAT-192 (soluble TGF- inhibitor)

• Tyrosine kinase inhibitors – Imatinib mesylate (Gleevec)

– Nilotinib (Tasigna)

– Dasatinib (Sprycel)

• Others, many in the pipeline

Some responders, partial responders and non-responders.

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Patients are different

Colon lung skin

healthy

SSc

Raynaud

phenomenon

Pulmonary

artery

hypertension

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SSc Clinical trials

• Most have not demonstrated overall benefit

– Subsets of patients seem to respond

• Trials are limited

– SSc is a rare disease

– Diagnosis is often delayed

– Need to complete the trial in a timely manner

• Need better methods to enroll patients with similar SSc disease

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Genomics (DNA, RNA) research

• Method to molecularly subset patients

– Blood (serum, plasma)

– Blood cells

– Skin biopsies

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WHAT HAVE GENE EXPRESSION STUDIES TAUGHT US ABOUT SYSTEMIC SCLEROSIS?

First a brief gene expression introduction

Page 9: Research Update: Gene Expression in SSc

Skin biopsies

• Performed before SSc treatment

• 4mm punch of skin removed

– Epidermis

– Dermis

• RNA isolated from the biopsy

Page 10: Research Update: Gene Expression in SSc

DNA:

Your genes

RNA:

The code

to make

proteins

DNA= the menu

RNA= your order: Gene expression

Proteins= the meal

Gene expression studies use RNA

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Gene expression test

NEJM 2006 354; 23

Page 12: Research Update: Gene Expression in SSc

Viewing Microarray Data

200 10000 50.00 5.64

4800 4800 1.00 0.00

9000 300 0.03 -4.91

Cy5

Cy3

Patient Control

Log2(red/green)

Adapted Michael Whitfield, PhD Slide

Patient samples

>30,0

00 G

enes

Heat map

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WHAT HAVE GENE EXPRESSION STUDIES TAUGHT US ABOUT SYSTEMIC SCLEROSIS?

Now we understand gene expression analyses (microarray)

Page 14: Research Update: Gene Expression in SSc

Four to five groups of systemic sclerosis patients

17 diffuse SSc, 7 limited SSc, 3 morphea (another skin disease), 6 healthy controls

61 biopsies, 75 total microarrays

* p < 0.001

Milano A et al, PLoS ONE (2008)

*P<0.001

Fibroproliferative genes:

Cell cycle check point

DNA repair

Regulation of mitosis

Inflammatory genes:

Immune response

Response to pathogen

Lymphocyte proliferation

Normal-like genes:

Fatty acid biosynthesis

Lipid biosynthesis

Electron transport activity

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Mycophenolate mofetil/MMF (Cellcept, Myfortic)

• Immunosuppressive agent

– Reduces production of inflammatory cells1

• FDA-approved for prevention of renal, liver and heart transplant rejection2

• Used in treatment of autoimmune disease (SSc3-7, lupus, myasthenia gravis, kidney disorders etc.)

• One of the treatment arms of Scleroderma Lung Study II

1 Ransom JT. Therapeutic Drug Monitoring. 1995 2 Villarroel MC et al. Drugs Today. 2009 3 Le EN et al. Ann Rheum Dis. 2011 4 Vanthuyne M et al. Clin Exp Rheumatol. 2007 5 Derk CT et al. Rheumatology. 2009 6 Herrick AL et al. Journal of Rheumatology. 2009 7 Nihtyanova SI et al. Rheumatology. 2007

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10 diffuse SSc, 2 limited SSc, 13 stable SSc, and 10 healthy controls Baseline and longitudinal arm and back skin biopsies

4 MMF improvers and 3 MMF non-improvers

Journal of Investigative Dermatology 2013

Fibroproliferative

Inflammatory

Normal-like

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MMF improvers

• Expression of 321 genes in skin at baseline is different between improvers and non-improvers

• This baseline signature may be useful in selecting appropriate patients for MMF therapy

• Ongoing work: Conduct a multi-center study to validate the MMF baseline signature and other signatures in skin

Hinchcliff et al Journal of Investigative Dermatology 2013

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Future implications

• Patients who are likely to respond to MMF can be identified

• Patients who are not likely to respond to MMF can be identified and randomized to a different therapy

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Summary

2010s: 4-5 SSc patient groups

• Fibroproliferative

– Diffuse 1

– Diffuse 2

• Limited

• Inflammatory

• Normal-like

Goal: Patient selection for clinical trials

• Molecular approaches – Genomic

– Proteomic

– Metabolomic

1980s: 2 SSc patient groups

• Limited

• Diffuse

Patient selection for clinical trials

• Disease duration

• Disease subtype

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Thank you • Mentors:

– Rowland W. Chang, MD MPH

– John Varga, MD

– Michael Whitfield, PhD

• Clinical coordinators:

– Mary Carns, MS

– Sofia Podlusky, BA

• Bioinformatics:

– Chiang-Ching Huang, PhD

– Viktor Martyanov, PhD

– Jaclyn Taroni, BS

• Statistics

– Jungwha Lee, PhD

– Orit Almagor, MS

• Cardiology

– Sanjiv J Shah, MD

– Lauren Beussink-Nelson

• Chest radiology

– Arlene Sirajuddin, MD


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