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R&D Solutions for PHARMA & LIFE SCIENCES DRUG DISCOVERY & DEVELOPMENT From Concept to Reality: What’s Required to Achieve the Promise Held by Precision Medicine Summary Precision medicine, as currently envisioned, has incredible potential for the treatment of individuals, with improved therapeutic indexes. There is also considerable potential for drug development, as science-based selection of well-defined patient populations for clinical trials could improve efficacy, possibly meaning earlier regulatory submissions, better odds of approvals, and faster product launches. But can this promise be realized? This white paper looks at the development and requirements of precision medicine. The slogan “right patient, right drug, right dose, right time” captures the goals of precision medicine. The concept of precision medicine has made its way to the public consciousness, especially after President Obama announcement of the Precision Medicine Initiative (PMI), a $215 million investment in to accelerate biomedical research (1). The Initiative seeks to develop new tools to select the therapies that will work best in individual patients, with funding being channeled through the National Institutes of Health (NIH), the Food and Drug Administration (FDA) and the National Cancer Institute (NCI). Oncology has been a logical choice for the initial focus of the initiative, given that the first efforts to identify effective therapies through precision medicine leveraged knowledge of the genetics of disease, and that cancer is the ultimate “disease of the genome” (2). However, in the longer term, the ambitious plans are to study other disease areas as well. Precision medicine is an evolving concept, and its definition has been refined over time, with slightly different angles depending on the source. An aspirational slogan occasionally used is “right patient, right drug, right dose, right time,” and it certainly captures the overarching goals of precision medicine (3). The National Academy of Sciences describes precision medicine as “the use of genomic, epigenomic, exposure and other data to define individual patterns of disease, potentially leading to better individual treatment” (4), while the NIH defines it as “an emerging approach for disease treatment and prevention that takes into account individual variability in environment, lifestyle and genes for each person” (5). Although these definitions may suggest medical intervention at an individual level, when the term is interpreted in the context of multiple determinants of health, it is understood to lead to both individual and subpopulation interventions (6). At the core of this groundbreaking approach to medicine lies a more quantitative, mechanism-driven understanding of both progression from health to disease and response to medical treatments and interventions. This understanding means an ability to predict progressions, outcomes and variability within them, and to minimize the impact of such variability, which carries the power to improve the benefit-to-risk ratio of therapeutic interventions (the therapeutic index). The promise is that precision medicine would also allow a science-based selection of well-defined patient populations for clinical trials, enriched for responders, which would enable smaller databases to support efficacy. This would have the potential for earlier regulatory submissions, better odds of regulatory approvals based on improved therapeutic indexes, and faster and more focused product launches (7). The implementation of precision medicine paradigms will likely result in the establishment of “precision drug development” programs, as Dr. Janet Woodcock, Director of the FDA’s Center for Drug Evaluation and Research (CDER), discussed in a recent article (3). She anticipates that in the next decade, continuing advances in molecular biology and computational methodologies will allow a tremendous expansion in the capacity to analyze, predict and prevent drug toxicity and efficacy. Central to this will be the capability of these methodologies to reliably identify the increasingly precise deviations from normal physiological stages. These tools and methodologies will require a more detailed knowledge of human physiology—both normal and pathological—and this knowledge must encompass multiple levels, from the molecular and cellular to the whole organism. Section subtitle Some examples of precision medicine therapeutics and interventions have already been developed by leveraging knowledge about very large deviations of the disease from the healthy state. They have mostly been deviations in genetic sequences-like mutations driving some cancers or molecular phenotypes in such diseases as cystic fibrosis. Some successful approaches have included the following strategies: 1. Developing a therapeutic for a targeted subpopulation of cancer patients defined by a “driver” mutation, e.g., crizotiniv (small molecule ALK kinase inhibitor) for the treatment of ALKpositive non-small cell lung cancer (8). 2. Developing a novel therapeutic thanks to the insights gained from the analysis of human “omics” data sets, e.g., alirocumab and evolocumab (PCSK9 inhibitory antibodies) to treat high levels of low-density lipoprotein (LDL) cholesterol and the associated cardiac risk (9). 3. Creating novel anti-inflammatory drugs based on molecular knowledge of cytokine signaling pathways that mediate inflammatory responses, e.g., tofacitinib (a small molecule JAK kinase inhibitor) for the treatment of rheumatoid arthritis (10). Although these cases required cutting-edge genetics and molecular biology tools and techniques, they were relatively straightforward in terms of mechanism. However, in many diseases for which there is an unmet need for effective therapeutic interventions, pathophysiology is complex and multifactorial. Therefore, experts anticipate that precision drug development will be increasingly dependent on computational methods that can integrate results from human data and from laboratory and animal studies, and then generate models of health status, progression to disease and outcomes of therapeutic interventions (3). In addition to novel approaches to target discovery and validation, precision drug discovery will require an in-depth understanding of the consequences of diseases (and their treatments) at the molecular, cellular and whole-organism levels. This will have to be coupled with an ability to share data and expertise across disciplines in both private and public sectors (11). Successful drug discovery programs will rely on combining the modulation of the candidate drug targets in model systems with a better understanding of the biology of the potential target. For example, much more remains to be discovered about the role of genetic variants in disease onset and progression, as well as response to drugs. New technologies, such as “tissues on a chip,” and new computational tools will be required to elucidate complex biological mechanisms and to test different hypotheses. Perhaps most critically, precision drug development will depend on the development of computational models of disease and of response to intervention that can take into account the large variability in human responses to medicines and that have the capability of making reliable predictions. The Role of Biomarker Development The incorporation of precision medicine approaches into drug development will depend on the identification and validation of biomarkers that allow relevant patient stratification and reliable monitoring of drug responses. The combination of biomarker information with clinical phenotypes, at individual or subpopulation levels, is expected to be strongly synergistic with other complementary approaches, such as clinical risk assessments and therapeutic drug monitoring, and will be critical for the development of successful targeted therapeutics exhibiting a higher therapeutic index when prescribed to the right individual patient or patient population. Biomarkers include a wide range of measurable indicators that can be used to assess normal and pathogenic biological processes, or responses to therapeutic interventions. Under a precision medicine approach, new biomarkers with increased specificity and sensitivity (revealing physiological 3 Precision drug discovery requires the ability to share data and expertise across disciplines in both public and private sectors. differences between patients, stages of disease progression or response to treatment) will support the development of safer medications targeted to defined patient subpopulations. In the context of clinical development, there will be a need for stratification biomarkers to support the categorization of patients during the screening phase and for responsemonitoring biomarkers to assess drug safety and efficacy once the drug treatment has been initiated. Patient stratification biomarkers can include diagnostic, prognostic and predictive markers. Effective stratification biomarkers will ensure that only patients with the required driving phenotype or genotype enter the trial or, alternatively, that the patients are distributed equally across the different treatment arms. Even if no stratification biomarkers are available before a clinical trial, the use of banked biological samples can allow retrospective analysis whenever a subset of patients shows response, with the aim of identifying a marker characteristic to the responding group. In practice, stratification biomarkers are most likely to be developed as in vitro companion diagnostic tests or devices. “Companion diagnostics” refers to a class of tests that the FDA has determined to be essential for the safe and effective use of a particular therapeutic drug or class of drugs. They are usually developed in parallel with its corresponding therapeutic and used in pivotal clinical trials. Most currently marketed companion diagnostic tests are patient stratification biomarkers (12). Response biomarkers are widely used in early-stage clinical trials to help understand the mechanism of action and pharmacodynamic effects of drugs. Currently, there is only one approved companion diagnostic test based on a response biomarker, and the challenge for the coming years is to develop and implement new biomarkers that can be used to evaluate the response and progression of targeted therapies. While the use of biomarkers for patient stratification and as surrogate endpoints is already helping to advance clinical trial design, industry experts recognize that the availability of a wider range of qualified response biomarkers would expedite drug development and help deliver true precision medicine. The establishment of clearly defined regulatory frameworks for the qualification of new biomarkers and companion diagnostic devices will be central to the implementation of precision medicine approaches. Access to genetic and phenotypic information from specific subpopulations is becoming very attractive to drug developers. The Importance of New Genetic Bioresources The use of genetics-based drug discovery strategies has represented a very successful approach for the development of therapeutics. Indeed, the use of human genetic data for the selection of drug targets or medical indications can almost double the chance of success of a drug development program compared to those lacking a genetic basis (13). Thus, access to genetic and phenotypic information from specific subpopulations is becoming very attractive to drug development companies, many of which have started to partner with health care systems and private companies with curated genetic bioresources or large databases of genomic information. The goal of these partnerships is to identify potential therapeutic targets and to develop biomarker assays and targeted drugs. One such example is the recent partnership between Regeneron Pharmaceutical and the Geisinger Health System (14), which will assemble one of the largest U.S. populations of participants for the analysis and sequencing of genetic material and comparison to long-term health outcomes. During the initial five-year collaboration phase, samples from over 100,000 consenting volunteers collected by Geisinger will be sequenced and genotyped by Regeneron to generate de-identified genomic data. The size and scope of the study are meant to allow precision in identifying and validating the associations between genes and human disease. On the other hand, government agencies and academic investigators are exploring new joint opportunities to generate new genetic bioresources and the necessary analytical tools to extract relevant information. For example, the PMI itself includes the generation of a cohort of one million U.S. volunteers for longitudinal research, including genetic studies. Programs such as this can incentivize the formation of new collaboration and business models bringing together scientific and technological knowledge from different sectors, while enabling greater access to the genomic data of large clinical research cohorts. 5 Conclusion Precision medicine, as currently envisioned, will use big data cohorts to support genomic research. Thanks to the PMI and other initiatives, such data resources are already under construction. It will require the characterization of patients through new measurements of health state, like the use of wearable technology, as well as the characterization of comprehensive sets of genomic, transcriptomic, proteomic and other “omic” technologies. It will also include the combination of biomarker and molecular information for very specific clinical profiles of narrowly defined disease subpopulations, or even for individual patients. As some experts highlight, the impetus for the implementation of precision medicine strategies in drug development and clinical practice stems multiple factors: •Advocacy from patients, physicians, regulators and funding bodies, based on their interest to see higher treatment response rates with lower therapeutic risks •A growing appreciation of the complex heterogeneity that underlies diseases •Decreasing pharmaceutical R&D productivity •Fnancial constraints for a demonstrated added value in health care (15) To achieve the promise held by precision medicine, a new generation of therapeutics will be required, developed under a precision drug development model. Although the gap between this vision and its practical application remains wide, it will rapidly close over the next 10 years as the industry, regulatory agencies and different stakeholders embrace and support this new model. REFERENCES 1. Obama Whitehouse Archives. 2015. The Precision Medicine Initiative https:// obamawhitehouse.archives.gov/precision-medicine 2. Nature Special. 2011. Cancer Genomics www.nature.com/nature/focus/ cancergenomics 3. Woodcock J. 2016. “Precision” Drug Development? Clin. Pharmacol. Ther. 99(2), 152–154. 4. Board on Life Sciences. 2011. Toward Precision Medicine: Building a Knowledge Network for Biomedical Research and a New Taxonomy of Disease. Nat. Acad. Sci Eng. Med. Expert Report dels.nas.edu/Report/ Toward-Precision-Medicine-Building-Knowledge/13284 5. National Institutes of Health. Description of the All of Us Research Program www.nih. gov/research-training/allofus-research-program 6. Khoury, M.J. 2016. Precision Public Health: More Precision Ahead for Individual and Population Interventions. Centers for Disease Control and Prevention Genomics and Health Impact Blog blogs.cdc.gov/genomics/2016/09/07/precision_public_health 7. Dolsten, M. and Søgaard. 2012. Precision Medicine: an Approach to R&D for Delivering Superior Medicines to Patients. Clin. Trans. Med. 1:7. http://clintransmed. springeropen.com/articles/10.1186/2001-1326-1-7 8. Chuang, J.C. and Neal, J.W. 2015. Crizotinib as first line therapy for advanced ALKpositive Non-Small Cell Lung Cancers. Transl. Lung. Cancer Res. 4(5), 639–641. 9. Kolata, G. 2013. Rare Mutation Ignites Race for Cholesterol Drug. New York Times Health Section, July 9, 2013. www.nytimes.com/2013/07/10/health/rare-mutationprompts-race-for-cholesterol-drug.html 10.Liscinsky, M. 2012. FDA Approves Xeljanz for Rheumatoid Arthritis. FDA News Release, November 6, 2012. www.fda.gov/NewsEvents/Newsroom/PressAnnouncements/ ucm327152.htm 11.Roundtable on Genomics and Precision Health. Updated Resource of the National Academies of Sciences, Engineering, and Medicine. Cited November 2, 2016. http:// www.nationalacademies.org/hmd/Activities/Research/GenomicBasedResearch.aspx 12.U.S. Food & Drug Administration. 2017. List of Cleared or Approved Companion Diagnostic Devices (In Vitro and Imaging Tools). www.fda.gov/MedicalDevices/ ProductsandMedicalProcedures/InVitroDiagnostics/ucm301431.htm 13.Nelson, M.R., Tipney, H., Painter, J.L., Shen, J., Nicoletti, P., Shen, Y., Floratos, A., Sham, P.C., Li, M.J., Wang, J., Cardon, L.R., Whittaker, J.C. and Sanseau, P. 2015. The Support of Human Genetic Evidence for Approved Drug Indications. Nature Genetics 47, 856–860. www.nature.com/ng/journal/v47/n8/abs/ng.3314.html 14.Regeneron. 2014. Regeneron and Geisinger Health System Announce Major Human Genetics Research Collaboration. Press release from January 13, 2014. http://investor. regeneron.com/releasedetail.cfm?releaseid=818844 15.Vicini, P., Fields, O., Lai, E., Litwack, E.D., Martin, A.M., Morgan, T.M., Pacanowski, M.A., Papaluca, M., Perez, O.D., Ringel, M.S., Robson, M., Sakul, H., Vockley, J., Zaks, T., Dolsten, M. and Søgaard, M. 2016. Precision Medicine in the Age of big data: The present and future role of Large-Scale Unbiased Sequencing in Drug Discovery and Development. Clin. Pharmacol. Ther. 99(2), 198–207 www.ncbi.nlm.nih.gov/ pubmed/26536838 7 R&D Solutions for Pharma & Life Sciences Elsevier’s R&D Solutions is a portfolio of tools that integrate data, analytics and technology capabilities to help pharmaceutical & life sciences customers realize the potential of data-driven drug discovery and development. LEARN MORE To learn more about Elsevier’s R&D Solutions, visit elsevier.com/rd-solutions/pharma-and-life-sciences or contact your nearest Elsevier office. 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