<span>Genomic Data Sharing: Case Studies, Challenges, and Opportunities for Precision Medicine</span><span> provides a comprehensive overview of current and emerging issues in genomic data sharing. In this book, international leaders in genomic data examine these issues in-depth, offering practical
Genomic Data Sharing. Case Studies, Challenges, and Opportunities for Precision Medicine
โ Scribed by Jennifer B. McCormick, Jyotishman Pathak
- Publisher
- Elsevier, Academic Press
- Year
- 2023
- Tongue
- English
- Leaves
- 232
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Table of Contents
Front cover
Half title
Title
Copyright
Contents
Contributors
1 Introduction to the volume
Acknowledgments
References
2 From public resources to improving health: How genomic data sharing empowers science and medicine
2.1 Introduction
2.2 The Human Genome Project set the paradigm for genomic data sharing
2.3 Genomic data sharing enables multiple areas of research
Ethical/moral
Scientific/practical
2.3.1 Research using model organisms
2.3.2 Research using human data
2.3.3 Technical analysis development
2.4 Putting data sharing into practice
2.5 Data sharing will propel precision medicine
2.6 Learning healthcare systems and data sharing
2.7 Need for responsible data stewardship
2.8 Barriers to genomic data sharing
2.9 Conclusion
References
3 Biobank case example: Marshfield clinic
3.1 Stakeholder engagement
3.1.1 External stakeholders
3.1.2 Internal stakeholders
3.2 Technical procedures to facilitate genomic data sharing with collaborators
3.3 Phase 1โSample identification, phenotyping, and quality controls
3.3.1 Phenotype data quality controls
3.3.2 Sample data quality controls
3.4 Phase 2โData integration and sample return
3.5 Phase 3โFinalizing datasets
3.6 Phase 4โData access
3.6.1 Pilot genomic data sharing projects with participants
3.7 Summary
References
4 Multidirectional genetic and genomic data sharing in the All of Us research program
4.1 Introduction
4.2 Sharing data with researchers
4.2.1 Relevant considerations
4.2.2 Guiding concepts for sharing data with researchers
4.2.3 Implementation
4.2.4 Lessons learned and future directions
4.3 Returning genetic and genomic results to participants
4.3.1 Relevant considerations
4.3.2 Guiding concepts for the return of genetic and genomic results
4.3.3 Implementation
4.3.4 Lessons learned and future directions
4.4 Concluding remarks
References
5 A community approach to standards development: The Global Alliance for Genomics and Health(GA4GH)
5.1 Introduction
5.2 The rationale for and promise of an international alliance(2012โ2014)
5.3 Convening the community (2014โ2017)
5.4 GA4GH connect (2017โ2019)
5.5 Gap analysis (2019โ2021)
5.5.1 Technical alignment
5.5.2 Implementation support
5.5.3 Clinical engagement
5.6 Beyond GA4GH connect(2021 and beyond)
5.7 A novel approach to funding and support
5.8 Three recommendations
5.8.1 Community needs should drive development
5.8.2 Create global equity and opportunity to ensure fit-for-purpose development
5.8.3 Strive for consensus and intentional decision-making
5.9 Conclusion
Acknowledgments
References
6 Clinical genomic data on FHIRยฎ:Case studies in the developmentand adoption of the GenomicsReporting Implementation Guide
6.1 Background
6.1.1 Health Level 7(HL7)
6.1.2 HL7 Clinical Genomics
6.2 Case studies: implementation of HL7 FHIR
6.2.1 Exchanging HLA data for histocompatibility and immunogenetics
6.2.2 Electronic medical records and genomics(eMERGE) network
6.2.3 Minimum common oncology data elements(mCODE)
6.3 Conclusion
Acknowledgments
References
7 Genomics data sharing
7.1 Introduction
7.2 Current practices
7.3 Case study: H3Africa model
7.3.1 Data archive
7.3.2 Data sharing, access and release policy
7.3.3 Data access committee
7.3.4 H3Africa catalog
7.4 Beacons
7.5 Data commons model
7.5.1 Data commons in Africa
7.6 Common challenges in genomic data sharing and managing risks
7.6.1 ELSI
7.6.2 Motivational challenges
7.6.3 Technical challenges
7.6.4 Infrastructure challenges
7.6.5 Economic and political challenges
7.6.6 Intellectual property rights
7.7 Executive summary
References
8 Data standardization in the omics field
8.1 Introduction
8.1.1 Defining standardization
8.2 Omics data standardization
8.2.1 Existing standards and resources
8.2.2 Data standardization and FAIR data
8.3 Challenges to data standardization
8.3.1 Adoption challenges
8.3.2 Policy challenges
8.4 Executive summary
Acknowledgments
Conflict of Interest
References
9 Data sharing: The public's perspective
9.1 Public willing to participate?
9.2 Concerns unique to genomic data?
9.2.1 Data concerns
9.2.2 Matters of trust
9.3 Support for broad data sharing
9.4 A question of context
9.5 Policy for the people
9.6 Further research
References
10 Genetic data sharing in the view of the EU general data protection regulation(GDPR)
10.1 Introduction
10.2 The special status of genetic/genomic data
10.3 The GDPR framework for scientific research
10.4 Consent for genetic data sharing under EU law
10.4.1 (Informed) consent for genetic data sharing: two distinct requirements arising from regulatory and ethics frameworks
10.4.2 What type of consent is considered valid under the GDPR?
10.5 Alternative legal bases for genetic data sharing: shifting attention away from consent
10.6 Concluding remarks
References
11 Genomic data sharing and intellectual property
11.1 Forms of intellectual property protection for genomic data
11.1.1 Copyright
11.2 Databases, data protection, and terms of use
11.3 Patents
11.3.1 Early biotech patents
11.3.2 Genetic patents and utility
11.3.3 Bermuda and official patent deterrence
11.3.4 The Ft. Lauderdale principles
11.3.5 NIH's evolving policy toward patenting
11.3.6 Patent deterrence outside the United States
11.3.7 Nongovernmental limitations on patenting genomic data
11.3.8 The SNP consortium and defensive patenting
11.3.9 Genetic sequence patents under Myriad11Detailed accounts of the gene patenting litigation involving Myriad Genetics can be found in Refs. [50] and [54].
11.3.10 Diagnostic patents under Mayo
11.3.11 Licensing of genomic inventions
11.4 Conclusion
References
12 Data governance
12.1 Background: precision medicine genomics and governance
12.2 How data governance shapes precision medicine
12.2.1 Retrospective data integration
12.2.2 Prospective data collection
12.2.3 Data access
12.3 The road ahead: how data governance should shape the future of precision medicine
References
Index
Back cover
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