Abstract
Genomic research has generated much new knowledge into mechanisms of human disease, with the potential to catalyze novel drug discovery and development, prenatal and neonatal screening, clinical pharmacogenomics, more sensitive risk prediction, and enhanced diagnostics. Genomic medicine, however, has been limited by critical evidence gaps, especially those related to clinical utility and applicability to diverse populations. Genomic medicine may have the greatest impact on health care if it is integrated into primary care, where most health care is received and where evidence supports the value of personalized medicine grounded in continuous healing relationships. Redesigned primary care is the most relevant setting for clinically useful genomic medicine research. Taking insights gained from the activities of the Institute of Medicine (IOM) Roundtable on Translating Genomic-Based Research for Health, we apply lessons learned from the patient-centered medical home national experience to implement genomic medicine in a patient-centered, learning health care system.
INTRODUCTION
Genomic medicine has the potential to transform health care delivery and improve the precision of disease risk prediction, diagnostics, and therapeutics for patients. Personalized medicine has its roots in primary care, where evidence supports the value of continuous healing relationships and a thorough knowledge of individual patients.1 Genomic medicine may have its greatest impact when systematically integrated into the primary care setting, where most health care occurs in primary care is delivered,2,3 personalized through continuous, healing relationships. Francis Collins, director of the National Institutes of Health, has described personalized medicine as a process that will “depend on continued accurate identification of genetic and environmental risk factors, and the ability to utilize this information in the real world to influence health behaviors and achieve better outcomes.”4 By applying insights from workshops convened by the Institute of Medicine (IOM) Roundtable on Translating Genomic-Based Research for Health, we propose a model of clinical implementation science to address evidence gaps and guide the integration of genomic medicine into the patient-centered medical home (PCMH).
Realizing the Potential of Genomic Medicine in Primary Care
Primary care has been defined by the IOM as “the provision of integrated, accessible health care services by clinicians who are accountable for addressing most personal health care needs, developing a sustained partnership with patients, and practicing in the context of family and community.” 5 The key features of primary care (patient-centered, comprehensive, coordinated) (Table 1) also address the complex challenges of delivering genomic medicine.6,7 Genomic medicine encompasses a wide range of testing applications, from prenatal and neonatal testing to germ line and tumor diagnostics, risk stratification, and pharmacogenomics, and the guidelines for testing and interpreting results include family history and collaboration with subspecialists.
Two IOM reports8,9 shed light on the quality chasm in the fragmented US health care system, and the Future of Family Medicine project10 called for primary care redesign, now known as the PCMH. PCMH principles (eg, personal physician care, physician-directed teams, whole-person orientation, coordinated and integrated care, quality and safety, enhanced access, and payment for value) were adopted by many academic and professional organizations and employers to modernize frontline practice and achieve evidence-based care targets, which are well documented in other countries.11 The National Demonstration Project showed that implementation of the key PCMH features12,13 can improve quality and access to preventive health services.14,15 This national experience highlighted the need for external technical and systems support for practice transformation, health services research, and clinical implementation of PCMH features that work best for different strata of patient risk and health care utilization.12,16,17
There are opportunities within the national PCMH transformation movement (because of its successful experience with implementation, improving the Triple Aim of better health, better care, and lower costs, and utilizing team-based care coordination to improve patient outcomes) to generate value and synergy by fostering collaboration with genomic medicine implementation (Table 2).18 Both efforts require practice redesign, better data, and decision support at a time of increasingly limited health care resources. Integrating genomic medicine into an engaged and resourced PCMH, where personalized medicine is grounded in continuous healing relationships,19 could ensure its beneficial impact on health care.
In 2001–2002, Burke, Emery, and Hayflick challenged the primary care community to lead integration of genomics into practice through genetic literacy, collaboration with genetic counselors and genetic specialists, genetic risk assessment grounded in family history-taking, and educational programs and decision support tools.20,21 Despite progress with disseminating core genomic concepts to primary care educators,22–24 implementation of clinical genomics into primary care—and clinical practice at large—has been limited, primarily because, as Feero noted, “genomics remains a science of discovery rather than of clinical utility in most areas of medicine, despite enormous progress over the last decade,”25 and because a myriad of challenges must be overcome to integrate genomics in a complex, fragmented, health care system.18
Manolio and colleagues recently reported a consensus perspective from genomic medicine leaders affiliated with the National Human Genome Research Institute, which focused on designing a roadmap to guide clinical implementation across health systems (Table 2).18 Their report included systematic evidence reviews and protocols from successful projects and issued guidance for initiating pilot projects, evaluating outcomes, and disseminating findings to drive improvements. The National Demonstration Project overcame similar challenges by showcasing quality improvement efforts in primary care. For example, the Michigan Primary Care Transformation (MiPCT) project provided team-based care for hundreds of thousands of patients with chronic diseases.26,27 Another example is the University of California, Los Angeles/University of Southern California safety-net PCMH program, which demonstrated the benefits of care coordination on patient-reported coordination and access.28 Other programs in the Pacific Northwest have shown reduced health care utilization, emergency department visits, and costs, as well as improved quality, with PCMH transformation.29,30
Integrating Genomic Medicine and Primary Care
Any vision for comprehensive primary care redesign should include a strategy for integrating genomic medicine with primary care in academic and nonacademic settings and engage genomic medicine leaders in developing a clinical implementation strategy. Figure 1 illustrates a proposed roadmap for integration that includes 3 components: (1) evidence analysis and gap filling, (2) clinical implementation science, and (3) clinical implementation within a continuous improvement loop whereby clinical observations inform translational science and dissemination.
EVIDENCE ANALYSIS AND GAP FILLING
The scope of genomic medicine ranges from diagnostic testing for rare diseases to cancer syndromes, longitudinal testing and surveillance of probands and family members, prenatal carrier screening, disease risk prediction, and pharmacogenomics. Genomic research informs drug discovery and development, resulting in potentially more effective therapies for such rare diseases as cystic fibrosis and such common diseases as advanced lung cancer. Pharmacogenomics is not yet a routine part of practice in primary care, yet more than 150 Food and Drug Administration drug labels contain guidance on pharmacogenomic testing to inform drug selection, dosing, or toxicity prevention.31
Evidentiary quality of genomic testing relies on analytic validity, clinical validity, and clinical utility.32 Analytic validity describes the accuracy of a genomic test for its intended measure. Clinical validity assesses whether a relationship exists between a genomic test and a clinical phenotype. Clinical utility is the degree to which a genomic result informs a change in management that improves clinical outcomes.
Because of the underdevelopment of clinical utility data, evidence-based guidelines exist for only a small subset of genomic tests (mostly diagnostic in nature). Accordingly, a systematic, multidisciplinary approach to addressing evidence gaps is needed33 to align evidence with established validity, safety, and effectiveness thresholds.34 Few studies provide sufficient clinical utility, however. For example, most genome-wide or whole-exome analyses are conducted within cross-sectional or cohort studies, and examples with minority populations are scarce. Other shortcomings include widespread publication bias, small sample sizes, low power, and overestimated effects. Information is limited for implementing genomic medicine into ambulatory care practices that comprise multidisciplinary teams.
These issues underlie some of the barriers to widespread clinical implementation.35 As gaps in scientific discovery and decision support are filled and aligned with public health priorities, the utility and value to health care systems will drive investment in clinical implementation beyond academic medical centers and into PCMHs.
CLINICAL IMPLEMENTATION SCIENCE
The reach, effectiveness, adoption, implementation, and maintenance (RE-AIM) framework was introduced36 to address the need to transfer knowledge from efficacy research conducted under optimal conditions into complex, real-world systems. RE-AIM follows a logical sequence to evaluate and promote clinical implementation.
The reach of innovation (eg, genomic testing) refers to number, proportion, and representativeness of the clinicians willing to use the innovation.36 Before introducing genomic testing or clinical initiatives, pre-implementation surveys can gauge interest and demand so implementation efforts can be focused on early adopters.
Effectiveness refers to improved patient outcomes within a clinical population.36 Once genetic testing is implemented in primary care settings, it is important that improvements in behavioral and clinical outcomes validate its impact. Moreover, evidence to guide whom to test and how to interpret the results should be used to develop clinical decision support tools within electronic health records (EHRs). A recent exploratory study at Stanford University underscores this point. Dewey et al conducted whole-genome sequencing in adults using 2 separate sequencing platforms. They found that depending on the sequencing platform, 10% to 19% of inherited disease genes were not covered to accepted standards for single nucleotide polymorphism (SNP) discovery,35 even though concordance was high for previously described SNP variants (99% to 100%), it was low for other variants (53% to 59%). Most (69%) of variants previously classified as causing disease were reclassified as variants of uncertain significance after expert review. Although whole-genome sequencing is not recommended for routine screening in primary care, and clinical-grade genomic tests are available in multiple clinical centers,37 the study by Dewey et al35 showed that even though whole genome sequencing can benefit certain individuals, technical issues, such as incomplete coverage of inherited disease genes, limited reproducibility of genetic variants with the highest clinical benefits, and considerable time for expert review per patient, will need to be addressed when determining its role in clinical practice.
Evidence-based clinical criteria for screening and interpreting genomic variants and prescribing could be annotated within EHRs by using such Web-based tools as UpToDate (Wolters Kluwer) and DynaMed (EBSCO). Examples of genomic medicine guidelines include the Evaluation of Genomic Applications in Practice and Prevention (EGAPP) guidelines for genomic testing (http://www.egappreviews.org), the National Comprehensive Cancer Network (NCCN) guidelines for detection, prevention, and risk reduction of cancer (http://www.nccn.org), and the Clinical Pharmacogenomics Implementation Consortium (CPIC) guidelines for drug selection and dosing (http://www.pharmgkb.org/page/cpic). Such resources could enable systematic, evidence-based, point-of-care decision support to help determine which patients would benefit from genomic predisposition screening or detection of drug-gene interactions. Combined with validated family history screening algorithms,38 health behaviors, and other risk factors, patients could be stratified by risk for prevention interventions.18,39–41
Adoption includes number, proportion, and representativeness of clinicians and other individuals interested in genomic medicine implementation.36 Multiple stakeholders must be engaged to enable adoption. An adoption assessment estimates the program’s potential value and patient demand; moreover, awareness of genomic medicine—including facilitators and barriers—further enables success.
Implementation refers to the extent to which a program is delivered as intended in a real-world setting.36 Implementation can also be thought of as interacting with efficacy to determine effectiveness (efficacy × implementation = effectiveness). The National Institutes of Health (NIH)-funded Electronic Medical Records and Genomics (eMERGE) Consortium proposed a definition of successful implementation as (1) generation of new knowledge, (2) dissemination of knowledge, (3) translating personalized medicine into clinical practice, and (4) transforming health care by empowering patients with data.42
Maintenance is how a program is sustained over time.34 Maintenance includes program-level measures of institutionalization and is based on the extent to which genomic medicine becomes part of routine primary care and the norms of practice.
Extending the RE-AIM framework beyond academic medical centers to wide-scale PCMH projects helps identify best practices and expand the reach of primary care-based genomic medicine. This step is critical to creating the institutional evidence base for clinical implementation in community-based primary care practices. The evaluation of maintenance of genomic-based practices—once implemented—should be a dynamic process that informs research needs and guides future efforts.
Clinical Implementation and Evaluation
Beyond clinical implementation science into a future health care system informed by the RE-AIM framework, principles of continuing quality improvement would enable incorporation of advances in genomics-based discoveries. Clinical and patient safety outcomes could be monitored and measured within the framework to encourage value-driven innovation. Using standardized EHR terminology to link phenotypes with clinical outcomes could validate the effectiveness of interventions after health system adoption. Required would be continuous reevaluation of technologies to facilitate identifying errors in medical records and mistakes in medical decisions informed by genomic testing. Houwink and colleagues proposed a roadmap for stepwise integration of family history data with primary care and genomic services based upon the Dutch research experience, which provides a useful illustration for primary practices and health care centers undergoing clinical implementation.43 Emery and colleagues, in the United Kingdom and Australia, have already shown that combining primary care education, partnership models, and systematic integration of the family history within EHRs is effective in improving hereditary cancer screening.21,38 Finally, multiple US health care systems—including the Cleveland Clinic, Duke University Medical Center, Intermountain Healthcare, Vanderbilt University Medical Center, and St. Jude Children’s Research Hospital—have successfully integrated family history and genomic medicine within EHRs.18
Given the complexity and heterogeneity of care delivery across primary care practice settings, genomic medicine integration must align with translational research to optimize use and cost of personalized health care and continue to engage and educate the primary care workforce. Because genomic discovery often outpaces clinical guideline development, educational efforts have shifted to emphasize practical, electronic, clinical decision support tools (including point-of-care educational materials) that capitalize on multi-institutional collaboration and dissemination of best practices.18
If the roadmap to genomic medicine integration into PCMHs (Figure 1) is successfully followed in partnership with primary care and genomics professionals, the need for evidence-gap analyses and gap filling should diminish (box 1). Primary care physicians will be more informed and engaged, genomic medicine will be systematically adopted by multidisciplinary teams, and the health outcomes can be promoted and measured with the RE-AIM framework (box 2). Once realized, the future of genomic medicine will focus on continual quality improvement and promotion of population health (box 3).
Re-engineering the health care system to integrate genomic medicine is an ambitious task. It would be possible to instill continual quality improvement and a culture of renewal into this system by incorporating iterative processes that ask what can be done better, what improves efficiency, and what adds value to patient-centered outcomes. In this way, the system can adapt as knowledge accumulates ahead of adoption.
Integration of genomic medicine into a primary care renewal process offers the potential to catalyze clinical implementation and contribute to improved patient-centered outcomes. Making personalized health care even more personal, however, requires reaiming translational pipelines toward greater healing relationships in a continuously improving PCMH. Doing so could enable realization of the primary care–genomics partnership models envisaged by leaders in both fields.20,21,44
Acknowledgments
The authors thank the members of the IOM Roundtable on Translating Genomic-Based Research for Health, particularly Wylie Burke, MD, PhD, from the University of Washington, Seattle, Washington, and Russell Glasgow, MS, PhD, from the University of Colorado, Denver, Colorado, for their thoughtful reviews and insights.
Footnotes
Conflicts of interest: David is a scientific advisory with BaseHealth, Inc. The authors declare no other conflicts of interest.
Funding support: Drs David and Johnson were fellows with the Institute of Medicine Roundtable on Translating Genomics-based Research for Health.
Disclaimer: The views expressed in this article are those of the individual authors and do not necessarily represent the views of their affiliated organizations, institutions, government agencies, the Institute of Medicine, or the United States government.
- Received for publication June 3, 2014.
- Revision received December 29, 2014.
- Accepted for publication January 21, 2015.
- © 2015 Annals of Family Medicine, Inc.