 |
Pharma
Changing the Way We Cure Diseases
Biomedical knowledge is exploding including
detailed clinical observations generated from high throughput assays,
electronic medical records, public biomarker research, and electronic
storage of pre-clinical or clinical trial experiments. But the odds of
a potential compound making it through the development pipeline and
becoming a drug are still less than 1/1,000,000. The new wealth of
knowledge has the potential to speed the process, reduce the costs, and
increase quality controls in drug discovery and development. Without
the appropriate technology and expertise to integrate and present the
knowledge the information is not available or useful to answer
questions for scientists and clinicians.
Pharmaceutical research and development
organizations can leverage clinical data through a Recombinant Pharma
Translational Research solution to:
• Reduce time and cost to new approved indications
• Define pharmacogenomic assays and personalization protocols
• Use pathway analysis and biomarkers to direct research
investment decisions
• Execute the transition to bench to bedside translational
research
Understanding how biomarkers can predict positive
outcomes can ensure that patients and clinical trial participants
maximize the benefit of therapies by personalizing treatments to their
biochemical and genetic profiles. Systems biology, the framework
scientists need to execute personalized medicine, requires a new
approach to data management and analysis. If a one size fits all
blockbuster drug strategy is not working then the full biological
environment around therapeutics needs to be investigated to understand
and optimize the impact to potential patients. A clear picture in
systems biology can only take form by taking into consideration the
many components and working to look into the complexity of the systems.
Experiments from across many areas are necessary to provide sufficient
visiblity to understand the mechanisms at work in the complex
biological systems affected by drugs. The old approach of running
experiments in silos is not proving effective at supporting this vision
and many resources are being wasted creating results that can't be
integrated.
Recombinant's Pharma Data Trust provides a data
repository for viewing data sets and analyses from across the
discovery and R&D process to find and understand the impact of
associations within gene variations, pathways, cell types, proteins,
diseases and the network of effects of biologically active therapeutic
compounds on them.
Key benefits:
• Accelerate the drug discovery and
development process by providing a scalable platform for biomarker
analysis
• Provide translational data to support target qualification
• Identify biomarkers to interpret efficacy and toxicity
throughout the drug development process
• Provide quantitative and qualitative information to inform
indication selection decisions for compounds in the development process
• Enable pharmacogenomic discoveries to optimize trial
protocols in order to establish trials with the highest potential for
success
• Integrate public trial data to enable enhanced trial design
• Deliver information and visualization of data to establish
the need and requirements for standardization of coding for common
information (e.g., clinical trials)
• Provide a platform for collaboration by
sharing information about common key concepts across groups
(pre-clinical and clinical, biologists, clinicians and
bioinformaticists)
The Recombinant pharma solution provides the
technology including the Recombinant Data Trust and expert services
needed to build and operate a data warehouse using clinical data sets.
• ETL design and loading of the data
repository
• Data governance and management of consent
• Integration of front-end tools to analyze data like the i2b2
translational research application
Additional services are available to establish
dictionaries, standards, ontologies, and operating procedures to align
data collected across locations with source or public systems for the
management and normalization of inbound data sets with regard to cell
lines, lab samples, diseases, clinical trial observations, and
molecular biology concepts.
|
Resources
Translational Research Portal
An open source application developed for pharmaceutical researchers to
access information from one source, reducing redundant work,
facilitating collaboration, and encouraging hypothesis formation.
Download
Case Study
Big Pharma Finds the Path to an Effective Consolidated Data Warehouse
Register to Download
Integrate multiple platforms
Leverage platforms including:
• Clinical trial management systems
(CTMS) / Electronic data capture (EDC)
• Tissue banks
• SAS analytics repositories
• Electronic laboratory notebooks
• Gene expression
• SNPs
• Copy Number Variation
• Rules Based Medicine
• miRNA
• Histology
• Flow cytometry
• Immunohistochemistry
• Epigenetics
• Clinicaltrials.gov
• Entrez, EBI, Pubmed
• GEO (Gene Expression Omnibus)
Breaking Down the Pharma Data Silos
Traditional analysis in pharma has occurred in
silos across many different groups all studying different angles of the
same biological concepts but no centralized approach to studying the
biomarkers themselves across groups. Results of pre-clinical
experiments rarely reach the teams conducting clinical trials and the
data can't be combined despite the common biomarkers and processes
being studied. Trials conducted on the same therapeutic compound
or indications rarely share results from common assays
conducted across trials. Assays that relate to the same genes but in
different states, e.g. mRNA vs. final proteins, can't be connected even
within a single trial because they are locked in separate SAS data sets
not connected by the biological references that tie the data together.
Publicly funded published research and data that would shed a light on
disease functions like Entrez, GEO, clinicaltrials.gov, and pubmed
are difficult to integrate with internal research because they are in
too basic of a state, poorly curated, or are unavailable.
|