Metadata-Driven Approach for Clinical Data Lakes, New Webinar Hosted by Xtalks
Tuesday, 5 March 2019 () Clinical data lakes can become complex, owing to variable sources of input data. More source systems can lead to redundancies and complicated data transformation or data fetching jobs. Learn how a metadata-driven approach will help data analysts and bioinformaticians focus on data analysis without worrying about data management-related activities.
TORONTO (PRWEB) March 05, 2019
Join this live webinar on Thursday, March 21, 2019 at 1pm EDT to learn how a metadata-driven approach will help data analysts and bioinformaticians focus on data analysis without worrying about data management-related activities.
Clinical data lakes store, cleanse and unify data that can come from different source systems. Some sources of data include:· Clinical Trial Management Systems (CTMS)
· Electronic Data Capture (EDC)
· Third-party data sources:
o Files from Application Program Interface (API)-based connection
o Trial Master File (TMF) systems
o Electronic Medical Records (EMR) or Electronic Health Records (EHR)
o Lab data
o Wearable devices
As a result of these variable sources of data, clinical data lakes can become complex, although the same datasets can be used in multiple business use cases. However, more source systems feeding the data lake means greater data redundancy, resulting in maintenance and support nightmares. Moreover, as more use cases emerge for the data store in the clinical data lakes, complexities and redundancies across data models, data transformation jobs and data fetching (read operations) also emerge.
Metadata-driven design and architecture can greatly reduce or solve these challenges.
It provides the ability for a system to treat each data element based on what is available in the system and what is needed to cater to a use case, then using a repository of metadata along with dynamic Artificial Intelligence/Machine Learning (AI/ML)-driven data pipelines to ingest, standardize, transform and read datasets without creating redundancy and support or maintenance overheads.
The key components of clinical data lakes which use Metadata Driven Approach are:
· Metadata Repository
· Metadata Identification, Parsing Service
· AI/ML Models as a Service for inference
· Workflow Automation Service
Key Amazon Web Services (AWS) solutionss can be leveraged to build a robust Metadata Driven Clinical Data Lake. These include:
· Amazon Simple Storage Service (Amazon S3)
· AWS Lambda
· Amazon Elastic Compute Cloud (Amazon EC2)
· Amazon Elastic Container Service (Amazon ECS)
· AWS Elastic Beanstalk
· Amazon Dynamo DB and Redis
· Amazon Redshift
The live session will feature Dr. Aaron Friedman, Partner Network Global Healthcare and Life Sciences Technical Lead at Amazon Web Services and Krunal Patel, Vice President of Engineering at Saama as presenters.
For more information or to register for this event, visit Metadata-Driven Approach for Clinical Data Lakes.
Xtalks, powered by Honeycomb Worldwide Inc., is a leading provider of educational webinars to the global life science, food and medical device community. Every year thousands of industry practitioners (from life science, food and medical device companies, private & academic research institutions, healthcare centers, etc.) turn to Xtalks for access to quality content. Xtalks helps Life Science professionals stay current with industry developments, trends and regulations. Xtalks webinars also provide perspectives on key issues from top industry thought leaders and service providers.
To learn more about Xtalks visit http://xtalks.com
For information about hosting a webinar visit http://xtalks.com/why-host-a-webinar/
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