Presentation is loading. Please wait.

Presentation is loading. Please wait.

Imaging, Medical Analysis and Grid Environments (IMAGE) June 3, 2015 Translating Imaging Science to the Emerging Grid Infrastructure Jeffrey S. Grethe.

Similar presentations


Presentation on theme: "Imaging, Medical Analysis and Grid Environments (IMAGE) June 3, 2015 Translating Imaging Science to the Emerging Grid Infrastructure Jeffrey S. Grethe."— Presentation transcript:

1 Imaging, Medical Analysis and Grid Environments (IMAGE) June 3, 2015 Translating Imaging Science to the Emerging Grid Infrastructure Jeffrey S. Grethe - BIRN University of California, San Diego

2 We speak piously of taking measurements and making small studies that will add another brick to the temple of science. Most such bricks just lie around the brickyard. Platt, J.R. (1964) Strong Inference. Science. 146: 347-353.

3 Objectives Establish a stable, high performance network linking key Biotechnology Centers and General Clinical Research Centers Establish distributed and linked data collections with partnering groups - create a “Data GRID” for the BIRN Facilitate the use of "grid-based" computational infrastructure and integrate BIRN with other GRID middleware projects Enable data mining from multiple data collections or databases on neuroimaging and bioinformatics Build a stable software and hardware infrastructure that will allow centers to coordinate efforts to accumulate larger studies than can be carried out at one site.

4 Neuroscience Challenges Governance Informatics Morphometry BIRN FIRST BIRN Mouse BIRN Distributed Data Data Integration IRB HIPAA Policies Best Practices Community High Speed Network Computation User Access

5 Neuroscience Challenges Governance Informatics Morphometry BIRN FIRST BIRN Mouse BIRN Distributed Data Data Integration IRB HIPAA Policies Best Practices Community High Speed Network Computation User Access

6 CREATING BIRN TEST-BED PARTNERSHIPS Three Research Project “Application Test Beds” have been Assembled to Shape BIRN and Guide Infrastructure Development: Multi-scale Mouse BIRN - Animal Models of disease / Multi Scale/Multi Method - Examples: MS Mouse, DAT KOM (a schizophrenic and otherwise interesting mouse animal model) and a Parkinson’s Disease Mouse Brain Morphometrics (Human Structure BIRN) - Targets: neuroanatomical correlates of neuropsychiatric illness (Unipolar Depression, mild Alzheimer's Disease (AD), mild cognitive impairment (MCI) Functional Imaging BIRN – Development of a common functional magnetic resonance imaging (fMRI) protocol and to study regional brain dysfunction related to the progression and treatment of schizophrenia - attack on underlying cause of disease

7 A National Collaboratory

8 Science Drives The Infrastructure USE APPLICATION SCIENCE “PULL” TO GUIDE DEVELOPMENT OF THE NEXT GENERATION CYBERINFRASTRUCTURE Craft a plan to achieve an important scientific goal requiring development and implementation of innovative computational infrastructure. Articulate a Grand Challenge and define work to achieve this goal with increasing levels of specificity. Bring application scientists and computer scientists together in projects at each level to build elements of the new infrastructure.

9 Neuroscience Challenges Governance Informatics Morphometry BIRN FIRST BIRN Mouse BIRN Distributed Data Data Integration IRB HIPAA Policies Best Practices Community High Speed Network Computation User Access

10 User Access to Grid Resources Application environment being developed to provide centralized access to BIRN tools, applications, resources with a Single Login from any Internet capable location Provides simple, intuitive access to Grid resources for data storage, distributed computation, and visualization

11 Interfacing the Desktop with the Grid Developed a Java Grid Interface (JGI) that provides wrapper for applications on a users desktop. Brokers communications and information/data transfer between the application and BIRN resources (e.g. SRB) LONI Pipeline, 3D Slicer, FreeSurfer, and ImageJ Continue to extend and develop the JGI OGSA compliance

12 Grid Role Distribution of a Bioinformatics Toolbox Package and deploy test bed—specific software through the distribution of the BIRN bioinformatics toolbox Use ROCKS (http://www.rocksclusters.org) as the distribution mechanismhttp://www.rocksclusters.org AIR FreeSurfer AFNI FSL BIRN Roll ROCKS Core Grid Roll Grid Wrappers BIRN ROCKS Distribution Bioinformatics toolbox can be made available to any researcher interested in a robust package of neuroimaging applications. First release to occur this fall using the new ROCKS distribution model.

13 Scientific Workflow Sequence of steps (utilities, applications, pipelines) required to acquire, process, visualize, and extract useful information from a scientific data. Advantages of workflow managed within the Portal: Progress through the workflow can be organized and tracked Automated and transparent mechanisms for the flow of data from one step to the next using SRB Tools are centralized and presented with uniform GUIs to improve usability Administration burden of each step (groups of steps) is eliminated Flexibility to enhance each process through direct, transparent access to the grid

14 Interactive Scientific Workflows Provide researchers with transparent access to a computing environment that supports their natural working paradigm while taking advantage of the evolving grid infrastructure Data curation requires determination of data quality and validity

15 Workflow Considerations Provide full provenance for data within the BIRN environment Morphometry BIRN is modifying tools to provide proper provenance information Data provenance is being taken into account in the human imaging database Workflow Optimization Take advantage of resource discovery services being deployed Use of data provenance information Global versus run time optimizations Incorporation of legacy applications LONI Pipeline (UCLA) Standard install Incorporation into Portal Advisement on future Grid enhancements to Pipeline

16 Neuroscience Challenges Governance Informatics Morphometry BIRN FIRST BIRN Mouse BIRN Distributed Data Data Integration IRB HIPAA Policies Best Practices Community High Speed Network Computation User Access

17 Governance Incorporating processes for Multi-sites studies and sharing of human data HIPPA Compliance Patient confidentiality Institutional Review Board (IRB) approvals Developing guidelines - for sharing data & authorship Breaking down the barriers Mistrust Open sharing of information Who gets credit Commercial products Governance Integrating new participants

18 IRB Working Group One member from each BIRN site required to participate Each member is required to review BIRN consents, waivers and procedures with local IRBs Regular video conferences among members to coordinate information and activities Produce BIRN template language for subject consent, IRB waiver for data upload and IRB waiver for data download Interact with Data Sharing Task Force

19 What Regulations Apply? State LawCommon RuleHIPAA IRB Interpretation Local Policy Institutional Policy It Depends!

20 Data Sharing Task Force Produce guidelines and procedures for data sharing across institutions taking into account Common Rule, HIPAA and state regulations Develop procedures to allow for longitudinal studies within BIRN Examine policies that are relevant to BIRN (e.g. revised policies being drafted for tissue banks and data banks) Interact with Architecture working groups to help define security and subject confidentiality infrastructure and policy Data Replication Certificate Policies Registration Authority Policies Local access control Auditing & activity logs

21 EU directive 95/46/EC: article 8 Member states shall prohibit the processing of personal data concerning health or sex life. Recommendation nr R (97) 5: Exceptions Diagnostic and therapeutic reasons Public health reasons, public interest Criminal offenses Specific contractual obligations fulfilment Legal claims Consent for specific purposes EU Privacy Directives

22 Data Classifications

23 Anonymization vs. De-Identification Both require deletion of direct identifiers Anonymization cannot have a link field (De- Identified data can). Anonymization makes protocol eligible for exemption from IRB review. De-Identification makes data exempt from HIPAA regulations. De-Identification with link field does NOT exempt data from IRB review.

24 Recommendation R (97)5 on the protection of medical data Personal data covers any information relating to an identified or identifiable individual. An individual shall not be regarded as ‘identifiable’ if identification requires an unreasonable amount of time and manpower. In cases where the individual is not identifiable, the data are referred to as anonymous EU Data Definitions

25 Identifiable Health Information RawSkull Stripped High-resolution structural images can be used as an identifier. Reconstruction of face from raw anatomical data might be able to be used to identify subject Some members of scientific community require/desire unaltered raw data Are allowed to provide both raw and skull stripped data Need to get approval from local IRB to allow for the sharing of raw anatomical data Users wishing to access data also require IRB approval Is there a scalable and distributed solution for researchers to access identifiable health information?

26 Data Sharing Infrastructure Security related metadata All data uploaded within BIRN must have associated metadata Data classification IRB agreements Subject consent Longitudinal data Data sharing permissions are dependent on metadata For example, de-identified data can not be shared with all users Secure environment required for the storage of protected information Linkage of BIRN ID with original subject ID Protected data Auditing of data access and movement required HIPAA Internal Security Data Usage Statistics

27


Download ppt "Imaging, Medical Analysis and Grid Environments (IMAGE) June 3, 2015 Translating Imaging Science to the Emerging Grid Infrastructure Jeffrey S. Grethe."

Similar presentations


Ads by Google