| Literature DB >> 27776531 |
Gabrielle Bertier1,2, Jian Carrot-Zhang3, Vassilis Ragoussis4, Yann Joly3.
Abstract
Precision medicine (PM) can be defined as a predictive, preventive, personalized, and participatory healthcare service delivery model. Recent developments in molecular biology and information technology make PM a reality today through the use of massive amounts of genetic, 'omics', clinical, environmental, and lifestyle data. With cancer being one of the most prominent public health threats in developed countries, both the research community and governments have been investing significant time, money, and efforts in precision cancer medicine (PCM). Although PCM research is extremely promising, a number of hurdles still remain on the road to an optimal integration of standardized and evidence-based use of PCM in healthcare systems. Indeed, PCM raises a number of technical, organizational, ethical, legal, social, and economic challenges that have to be taken into account in the development of an appropriate health policy framework. Here, we highlight some of the more salient issues regarding the standards needed for integration of PCM into healthcare systems, and we identify fields where more research is needed before policy can be implemented. Key challenges include, but are not limited to, the creation of new standards for the collection, analysis, and sharing of samples and data from cancer patients, and the creation of new clinical trial designs with renewed endpoints. We believe that these issues need to be addressed as a matter of priority by public health policymakers in the coming years for a better integration of PCM into healthcare.Entities:
Keywords: Cancer; Genomics; Health policy; Next-generation sequencing; Precision medicine; Social-economic challenges
Mesh:
Year: 2016 PMID: 27776531 PMCID: PMC5075982 DOI: 10.1186/s13073-016-0362-4
Source DB: PubMed Journal: Genome Med ISSN: 1756-994X Impact factor: 11.117
The contribution of genomic information to precision cancer medicine
| The contribution of genomic information to precision cancer medicine | Typical example(s) |
|---|---|
| Cancer risk reduction | Genetic testing of |
| Early detection | Liquid biopsies |
| Accurate diagnosis | Using molecular markers in tumor classification |
| Targeted therapy | EGFR inhibitors to treat |
Integrating precision cancer medicine into healthcare—key challenges and opportunities
| Area | Challenge | Opportunity |
|---|---|---|
| Medical Practice | ||
| Detection | Many cancers diagnosed too late | Liquid biopsies |
| Turnaround time | Time from sample collection to clinically actionable result often too long | Optimization of sample collection and data analysis pipelines |
| Treatment | Limited efficiency of targeted treatments | Research on resistance mechanisms and tumor heterogeneity, and use of combined targeted and immune therapy |
| New standards needed | ||
| Publication and implementation of clinical guidelines | Multiple partly overlapping guidelines published, poor international and inter-sectorial operability | Collaborations between agencies such as the FDA, the EMA, Health Canada, and the NHS. Implementation projects (IGNITE and others) |
| Sample collection | Current gold standard (FFPE) suboptimal for genomic data analysis. | Standardization and implementation of new cancer sample collection strategies (for example, fresh frozen) to maximize quality, quantity, and purity of tumor cells. |
| Sample preparation and analysis | Suboptimal DNA extraction, library preparation, and sequencing protocols for molecular testing of cancer samples | Implementation of new standards to counteract unavoidable cancer sample limitations (low quality, quantity and purity, high heterogeneity) |
| Cancer genomic data analysis | Current bioinformatics pipelines and software suboptimal for the identification of actionable cancer mutations | Development and clinical validation of bioinformatics tools and pipelines for a thorough molecular analysis of tumor samples (including main and subclonal mutations, and cellular context) |
| Cancer genomic data sharing | Genetic diversity of the general population and cancer patients poorly represented in current publically available databases. | Development of improved and curated cancer-specific and population databases |
| Widely variable data sharing policies among clinical institutions and research projects | Alignment of international policies on cancer patients’ data sharing | |
| Clinical trials and compound registration fragmented and patchy | Improve databases of approved compounds and international clinical trial registries | |
| Test selection | Widely variable genetic testing practices for similar cancer patients across clinical institutions | Production of clinical guidelines on genetic test selection (single gene/gene panel/whole exome/whole-genome sequencing) |
| Clinical trials and cost of drugs | Classical clinical trial designs (large and diverse patient populations) inappropriate to test targeted therapies | New clinical trial designs: drug repositioning tests, ‘n-of-one’ trials, rotation therapies |
| Cost-effectiveness of targeted therapies widely contested | Thorough examination of cost-effectiveness of cancer genomic medicines, taking into account new clinical trial designs | |
| Intervention endpoints | Traditional endpoints and measures (QALYs) ill-adapted to personalized medicine interventions | Renewed, more holistic intervention endpoints, including patient experience, societal preferences, and values |
| Policy, ethical and legal norms | Border between research and healthcare increasingly porous | Development of adapted, international and interoperable ethical and legal norms (GA4GH, P3G) |
| Higher uncertainty associated with the clinical significance of genomic information | ||
| Tension between international research endeavors and national healthcare systems | ||
| Pre-implementation research needed | ||
| Identify priorities | Need for a systematic identification of unresolved scientific questions | International conferences and expert reviews in PCM |
| Non-genetic aspects of cancer | A number of elements still poorly understood | Support for targeted research in those domains, while continuing efforts to reduce known factors leading to increased cancer incidence and prevalence (smoking, alcohol consumption, and social deprivation) |
EMA European Medicines Agency, FDA Food and Drug Administration, FFPE formalin-fixed paraffin-embedded, GA4GH The Global Alliance for Genomics and Health, IGNITE Implementing Genomics in Practice, NHS National Health Service, PCM precision cancer medicine, P3G Public Population Project in Genomics and Society, QALY quality-adjusted life years