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STRATEGIC BRIEFINGS 

Novartis' Alex Gaither on How New Tools are Redefining Chemogenomics

By Laurie Sullivan
Senior Technology Editor, Pharma DD

Alex Gaither is a Speaker for the Chemogenomics conference part of CHI's Discovery on Target event in Boston, October 23-26, 2006.

October 11, 2006

Chemogenomics’ Evolvement:
From Cause-and-Effect Perturbation to Manipulation of Genomic Response
 
Chemogenomics is classically defined as an individual’s genomic response to a chemical compound. Alex Gaither, a researcher at the Novartis Institutes of Biomedical Research, believes that definition is evolving to encompass the influence a drug has in the context of different genetic backgrounds--heretofore coined as pharmacogenomics.  

Says Gaither, “I’m beginning to see these historically separate disciplines [chemogenomics and pharmacogenomics] overlapping in many different ways even though technically, from a bench perspective, they remain slightly distinct when it comes to designing an experiment or therapeutic approach.”  

How chemogenomics is changing, Gaither explains, is that in the past, the genomic response to a chemical was defined by microarrays: A compound was added to cells, and the genome was subsequently surveyed for its effects on mRNA modulation. With the advent of exciting new tools such as cDNAs, shRNAs, and siRNAs, it has become possible to actually go in and change that genomic response to the chemical.  

“That’s how my own definition of chemogenomics has changed,” notes Gaither. “It’s no longer a matter of simply observing an individual’s genomic response [to a compound]. It’s expanding to include our ability to alter a person’s genomic response.”
 

Chemogenomics and Small-Molecule Drug Discovery  

Gaither submits that RNAi technologies are currently the most promising approach for discovery of small-molecule drug targets, owing to the simple fact that an siRNA/shRNA can phenocopy a compound. The addition of a chemical compound triggers a pleiotropia of cellular effects, meaning that it can bind multiple proteins. Each binding event results in a distinct cellular response, collectively causing a phenotype. By using an siRNA/shRNA that has been designed against a specific gene, it is possible to mimic the phenotype that would have otherwise been caused by the chemical entity with greater specificity.  

“siRNA is so powerful because it allows us to dissect out the exact genes that are influencing the activity of a compound,” Gaither points out.  

Gaither adds that while things have not yet come completely to fruition, ongoing developments in the research arena point toward siRNAs as becoming a leading technology for small-molecule drug development.  

Gaither clarifies that RNAi reagents are biological molecules and as such, are not a chemogenomics approach on their own.  

“How chemogenomics will be influenced by RNAi is that the latter can alter a genomic response, allowing us to genetically tailor a chemical therapy or use a chemical under defined genetic conditions,” says Gaither. “RNAi approaches are able to not only phenocopy a compound but also identify additional pathways required for a compound’s activity, a genetic sensitization paradigm. Since RNAi reagents are biological molecules with a specific cellular target/response (because it is known what gene it’s hitting), the endpoint phenotype becomes easier to understand.”  

In other words, if siRNAs are used to knock out gene X, a certain phenotypic response is observed. But if a chemical compound were used instead, the result could be the same phenotypic response, but it would not be possible to know all the genes bound by the compound. Therein lies the power of the RNAi approach--increased specificity.
 

Chemogenomics’ Promise Comes With a Price…  

The key strength of using RNAi reagents in a chemogenomics approach is the ability for genome-wide coverage.  

“We’re not doing this one gene at a time. We’re doing it with all 20,000 genes simultaneously,” Gaither marvels. “It’s an amazing advancement that within a ten-year span, I’m now able to predict how a single gene can affect the activity of a compound or phenotype under study. The strength of using a chemogenomics approach today is whole-genome functionalization, and I don’t think there is any argument against that.”  

Although it is easy to tout how good this approach is, one of the main weaknesses of the genome-wide chemogenomics approach is that it is not easy technology to master. It requires a very distinct expertise (or multiple types of expertise), and extensive assay development--it can take months to optimize a screen. Even after the screen has been successfully completed, additional months are spent on validating the results.  

“The power and the potential [of chemogenomics] are undeniably there,” Gaither asserts. “The downfall is the expense. Academic labs, for example, might have more difficulty getting into routine genome-wide RNAi-based chemogenomics experiments, simply because the necessary technology and equipment can be prohibitively expensive.”
 

…Yet It Is Broadly Applicable  

A chemogenomics approach to drug discovery could benefit almost all therapeutic areas.  Like others, Gaither believes the indication where chemogenomics will prove most useful is cancer.  

“Simply the idea of using RNAi to identify essential [genetic] components affected by a chemical compound will allow for patient stratification and biomarker identification, which is where the pharmacogenomics component comes in. If a person’s genome reveals they carry a specific mutation or particular expression profile, it could call for administration of one particular set of drugs vis-a-vis another,” says Gaither. “That’s the clear benefit of using RNAi technologies as a chemogenomics approach.”  

Current chemotherapies are known to work, but cause adverse side effects. Chemoresistance is another significant problem, meaning cells can become resistant to therapy and the cancer progression is not fully inhibited, entering remission. “To us, it simply means that the tumor cells will find a way to mutate and tolerate the treatment only and return five years later. Everyone is aware of these issues, but there is really no clear way around them,” Gaither says.  

Identifying novel approaches to combat disease is one application [of chemogenomics], but a second, very important use would be to improve current therapies.  

“If only we could screen standard-of-care, front-line chemotherapies with RNAi libraries, we could likely find novel combination therapies,” says Gaither. “We could use chemogenomic approaches to better understand the response to particular genetic perturbation. Thus we could treat only those patients who could benefit from the treatment, and possibly identify combination therapies that could improve the therapeutic window of efficacy. Then chemotherapies could be designed to be less toxic and more specific to an individual’s cancer. Taking this approach, I think we could vastly improve the way in which patients are treated.”  

Case in point. Gaither singles out Agenerase (amprenivir), from Vertex and GlaxoSmithKline, as a good example. Agenerase is an FDA-approved protease inhibitor for treatment of HIV, but it’s being studied for additional indications. Using a chemogenomics approach, Agenerase has been shown to be efficacious in cancer, and it has also shown promise in other, non-HIV viral infections (e.g., HCV).  

“Neurodegeneration is another therapeutic indication where we know RNAi chemogenomics screens would be beneficial. To screen disease-associated mutations against certain chemicals or RNAi reagents, find the best combination of targets (e.g. with the best efficacy against those diseases), and treat an individual’s genetic profile appropriately, depending upon the mutations (or lack of mutations) they carry,” adds Gaither. “Although this is an optimistic endeavor, it could be a direct application of chemogenomics tools.”
 

Chemogenomics’ Best-Practice Approach to Drug Discovery  

“Cell-based assays that directly translate in vivo are the best model systems,” says Gaither. “Everything should be done in cell lines derived from an animal or in cells amenable to transplantation (xenograft) into a live animal.”  

A major problem with the cell-based model is the lack of correlation between the cellular phenotype and the activity in vivo. “Since adopting a chemogenomics paradigm in our research, we are trying to use only those cell lines that are directly relevant to the specific disease being analyzed,” notes Gaither.  

Cancer again serves as an obvious example. Traditionally, people have carried out chemogenomics experiments in cell-based assays, looking for the cause-and-effect relationships and phenotypes, opting to worry about how the effects will translate in vivo at a later time. For drug discovery efforts, it is more efficient to study cells that are derived directly from tumors or tumor cells, which can be transplanted back into animals, where it is possible to immediately look for in vivo efficacy.  

“Being able to condense our screening process by running model-system assays that can be tested directly in a live animal is a major advance. There’s just an enormous disconnect between a cell-based assay and an animal,” Gaither concludes. “The idea is that if we can get one step closer to in vivo efficacy during our screening process and drug target development, we can be one step closer to success in humans.”

Copyright 2006, All Rights Reserved. Cambridge Healthtech Institute.