precompetitive collaborations
Embed Size (px)
DESCRIPTION
Presentation delivered at Next Generation Pharmaceutical workshop in Miami on October 25, 2010.TRANSCRIPT

Precompetitive Collaborations
October 26, 2010
1

2
Precompetitive
Refers to standards, data, or processes that are common across an industry and where the adoption, use, or prosecution of which provides no competitive advantage relative to peers.

3
Precompetitive Mission Statement
Foster collaborations between pharmaceutical, biotechnology, technology, academic, and government organizations in precompetitive space to develop and promote the use of standards, identify partnerships, and transfer technology in order to drive greater process efficiency and lower costs.

4
Role Description (CW 2009)
The role consists of three primary elements: – (1) the definition and promotion of industry standards (e.g., data models,
APIs, processes, etc.) across the Research and Development and Medical continuum through participation on various non-profit entities (Pistoia Alliance, Inc.) and consortia (Clinical Research Information Exchange);
– (2) proactive pursuit of pre/non-competitive collaborative application or technology development opportunities (e.g., industry partners collaborating with a vendor on the development of the next generation life sciences electronic notebook), and
– (3) identification and cultivation of opportunities to generate revenue by monetizing our portfolio of products and services (e.g., divestment and/or licensing of Pfizer-developed applications).

5
R&D: Long, Expensive, and Risky
1614121086420
Years
Cost = $1.3B/new drug
TargetSelection
ChemicalSelection
ClinicalTrials
Launch
Discovery(2-10 years)
Pre-clinical TestingLaboratory and animal testing
Phase 120-80 healthy volunteers - safety and dosage
Phase 2100-300 patient volunteers efficacy & safety
Phase 33,000-5,000 patient volunteers used to monitor
adverse reactions to long-term use
FDA Review/Approval

6
Productivity is Decreasing
6 Source: Tufts Center for the Study of Drug development, PhRMA

7
Collaborations/Consortia Funding Opportunities
Critical Path Initiative– FDA March 16, 2006
– http://www.fda.gov/oc/initiatives/criticalpath/reports/opp_list.pdf

8
Critical Path Funding Opportunities
Better Evaluation Tools– Biomarkers (Disease, Safety), Pregnancy, Infectious Diseases,
Cancer, Neuropsychiatric, Presbyopia, Autoimmune/Inflammatory, Imaging, Disease Models (Animals to Humans)
Streamlining Clinical Trials– Innovative Trial Designs, Patient Responses, Process
Harnessing Bioinformatics
21st Century Manufacturing
Products to Advance Urgent Public Health Needs
Specific At-Risk Populations - Pediatrics

9
Industry Driver: Externalization
DA
TA
CR
OB
IO C
RO
CH
EM
CR
OP
HA
RM
A
REGISTER
DESIGN
ASSAY
REPORT
DISTRIBUTE
SYNTHESIZE
PHARMA
CHEM
BIO
DATA
PH
AR
MA
DISTRIBUTEREGISTER ASSAYSYNTHESIZE REPORTDESIGN
SelectivelyIntegrated
Model
Fully Internal Model
Cost pressures, disruptive technologies, and other forces often drive business processes to be externalized.

10
Emerging Net-centric PharmaProcesses
PHARMA1
PHARMA1
CRO2
CRO2
CRO1
CRO1
CRO3
CRO3
PHARMA2
PHARMA2
PHARMA3
PHARMA3
CRO4
CRO4

11
Opportunity: Changing Tech Landscape
More Robust Technologies
Web 2.0
Services-Oriented Architecture
Software-as-a-Service
Open Source Initiatives
More Robust External Content
Publicly available chem and bio sources
Richer literature content
Academic Sources of Tools and Data

12
Learn from Other Industries
Transportation
Geospatial
Automotive
ClinicalRetail
Banking
Healthcare

13
Collaborations in the Research Space
Industry Collaboration Groups– Enlight Biosciences
For-profit, Scientific technology development http://www.enlightbio.com/content/areas-of-interest/
– PRISM (Pharmaceutical Information Systems Management ) Forum Discussion group –stale since 2004 http://www.prismforum.org/charter.htm
– OMG (Object Management Group/Life Sciences Research) Open, NFP, Basic specifications http://www.omg.org/lsr/ - stale since 2005
– W3C (World Wide Web Consortium) Open, NFP, Basic specs “to lead the web to its full potential” http://www.w3.org/
– DCMI (Dublin Core Metadata Initiative) Open, NFP, Develops metadata standards http://dublincore.org/about/
– PRIME

14
Pistoia Description and Purpose
The primary purpose of the (Pistoia) Alliance is to streamline non-competitive elements of the life science workflow by the specification of common standards, business terms, relationships and processes
Goals– to allow this framework to encompass/support most
pre-competitive work between the organisations
– to support life science workflow prior to submission
– to work with other Standards organisations

1515
Phase III
Data -> Questions -> R&D Phases...
Phase IIPhase ILead OptLead ID Hit IDTarget ID
Which Target? Which Compound?Which Disease?
What Biomarkers?Which Patient?
Disease AssociationBioprocess AssocDruggability‘On Target’ Safety RiskValidation ToolsCompetitive PositionVariant Selection…
DMPK Properties?BioAssay DevelopmentActivity-Dose studies?‘Off Target’ Safety Risk?Synthesis routes?Competitive Position?…
CD positioning?Safety Biomarkers?Efficacy Biomarkers?…
Personalised Healthcare?What Dose?Combination Therapies?Safety Problem Solving…
Genome/Genetic Data
Sequence Data
Expression Data
Genome/Genetic Data
Pathway Data
Patent Data
Pharmacology Data
Literature Data
Clinical Trial Data
Exe
mp
lar
Dat
a(E
xter
nal
)E
xem
pla
r S
ub
-Qu
esti
on
sS
tag
es &
K
ey Q
ues
tio
ns
Structural Data

16
The Path Forward: Standardize, Simplify, Centralize
Standardize our interfaces and messages
Simplify our cross-industry architectures and support models
Centralize services to reap economies of scale and scope

17
Phase III
Current Working Groups
Phase IIPhase ILead OptLead ID Hit IDTarget ID
Which Target? Which Compound?Which Disease?
What Biomarkers?Which Patient?S
tag
es &
K
ey Q
ues
tio
ns
ELN Query Services
Wo
rkin
g
Gro
up
sE
mer
gin
g a
nd
E
nab
ling
Idea
s
Chemical Renderer Interface
Domain Model
Pistoia Workflow - CRO
Chem2.0 and Wiki interfaces
RDF and Triples standards
Vocabulary ServicesDisease Knowledge Services

18
Current Member Companiesas of January 2010
Accelrys
AstraZeneca
BioXPR
Boehringer Ingelheim
Bristol-Myers Squibb
Cambridge Crystallographic Data Centre (CCDC)
CambridgeSoft
ChemAxon
ChemITment
Collaborative Drug Discovery (CDD)
DeltaSoft
Edge Consultancy
GGA
• GlaxoSmithKline • Hoffmann-La Roche • Infosys Technologies Limited • Knime • Lundbeck • Merck • Novartis • Pfizer • Rescentris • Royal Society of Chemistry (RSC) • Symyx • Thomson Reuters • UPCO

19

20
Summary of the Work
Model End Points– Permeability (RRCK)
– Human Liver Microsomal Stability (HLM)
– Pg-p substrate Efflux (MDR)
– Molecular Properties such as LogD
– DDI CYP 450 Cocktail models (4)
– Herg/Dofetilide
– Solubility
– BBB
– ALT
– others…

21
1. Spend only 20% on descriptors and algorithms?
2. Selectively share your models with collaborators and control access?
3. Have someone else host the models / predictions?
What if you could…
Copyright © 2009 All Rights Reserved Collaborative Drug Discovery
Inside company
Collaborators
Current investments>$1M/yr
>$10-100’s M/yr

22
Collaborations in the Clinical Space
Clinical Data Interchange Standards Consortium (CDISC) Production Standards:– The Study Data Tabulation Model (SDTM) for the regulatory submission of Case Report
Tabulations, including the Standard for the Exchange of Nonclinical Data (SEND).
– The Analysis Data Model (ADaM) for the regulatory submission of analysis datasets.
– The Operational Data Model (ODM) for the transfer of case report form data.
– The Laboratory Model (LAB) for the transfer of clinical laboratory data, including pharmacogenomics.
– The Biomedical Integrated Research Domain Group (BRIDG) model.
– The Case Report Tabulation – Data Definition Specification (define.xml).
– The Terminology standard containing terminology that supports all CDISC standards.
– The Glossary standard providing common meanings for terms used within clinical research.
Those standards being developed are:– The Protocol Representation Group developing machine-readable medical research protocol
standards including the Trial Design model shared with SDTM.
– The Clinical Data Acquisition Standards Harmonisation (CDASH) developing data acquisition standards.

23
Partnership to Advance Clinical electronic Research (PACeR)
A Partnership between leading pharmaceutical companies, health technology vendors, New York-based academic medical centers, standards organizations, and regulators collaborating to build an advanced clinical research capability enabled by the re-purposing of electronic clinical care data

24
GoalTo accelerate the availability to patients of innovative medicines by improving capabilities to conduct clinical research
Major Objectives
More rapidly, accurately, and efficiently identify and enroll patients appropriate for clinical trials
Assess gaps between current clinical research capabilities (current state), and those required to meet project goals (ideal state)
Identify regulatory and legal issues, implications for business models, and data and systems necessary to close gaps
Develop a practical, implementable plan for closing the gaps, addressing the requirements of all stakeholders
While the initial phase of the work is a collaborative feasibility study, the long-term goal is to build a sustainable capability and business that delivers a
superior outcome for patients
Project Goal & Objectives

25
Provider Perspectives
Clinical trials recruitment is often cumbersome and legacy.
• Quality, Safety, ARRA, Clinical Research, Healthcare complexity
Better tools are absolutely needed• Capture of discrete coded condition and medication data is essential• Alerts woven into EHR to prompt provider at point of care• Reuse of EHR data through CDW/EDW technology
• Not uniformly implemented• Differing lexicons/ontologies describing conditions and medicationsEHRs are rapidly evolving due to many driving forces
• Data mapping issues• 21CFR11 compliance
Impact on Design/Redesign of current/future EHR technology
Impact on Privacy/Confidentiality, IRB approval
Impact on IT staffing for data mining & delivery
Integration with current CTMS

26
ConsumerScorecard
Physician
Pay forPerformance
Patient
Medical History
External Data (Labs, Other providers)
Presenting problem
RetrospectiveEvidence
RetrospectiveEvidence
PhysicianMetrics
PhysicianMetrics
Formulary/Individual
Benefit
Robust Decision Support
– Clinical outcome
– Cost effective
– Drug safety
– Epidemiology
– Bio surveillance
Clinical & Claims Data
Data AnalysisData Analysis
Protocol Modeling &
Assessment, Site Selection, Patient
Recruitment
PHRs
Consumers, healthcare providers, policy makers and payers are leveraging HIT, particularly Electronic Health Records (eHRs) and Health Information Exchanges (HIEs), to analyze health data, contain healthcare costs, and improve quality of clinical care.
Clinical Research is well positioned to take advantage of the HIT Pipeline

28

29
Discussion Questions
What are the barriers to precompetitive collaborations in research, development, commercial, medical, etc. arenas?
What are the factors that are stimulating precompetitive collaborations?
What is the “tipping point” and how far away is it?
More…

30
Thanks