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IBM and the FDA collaborate on blockchain health data

IBM Watson Health has announced a research initiative with the US Food and Drug Administration (FDA) aimed at defining a secure, efficient and scalable exchange of health data using blockchain technology.

IBM and the FDA will explore the exchange of owner mediated data from several sources, such as electronic medical records, clinical trials, genomic data, and health data from mobile devices, wearables and the ‘Internet of Things.’ The initial focus will be this data to explore and develop our understanding of oncology.

‘The healthcare industry is undergoing significant changes due to the vast amounts of disparate data being generated. Blockchain technology provides a highly secure, decentralised framework for data sharing that will accelerate innovation throughout the industry,’ said Shahram Ebadollahi, vice president for innovations and chief science officer, IBM Watson Health.

In the past, large-scale sharing of health data has been limited by concerns of data security and breaches of patient privacy during the data exchange process. However, the use of blockchain provides an audit trail of all transactions on an unalterable distributed ledger – which helps to establish accountability and transparency in the data exchange process. 

A recent IBM Institute for Business Value paper ‘Healthcare rallies for blockchains’, based on a survey of about 200 healthcare executives, found that more than seven in 10 industry leaders anticipate the highest benefits of blockchain in healthcare to accrue to managing clinical trial records, regulatory compliance and medical/health records.

IBM and the FDA will explore how a blockchain framework can potentially provide benefits to public health by supporting important use cases for information exchange across a wide variety of data types, including clinical trials and ‘real world’ evidence data. New insights combining data across the healthcare ecosystem can potentially lead to new biomedical discoveries. Patient data from wearables and connected devices for example, can help doctors and caregivers better manage population health.  

The collaboration will also address ways to leverage the large volumes of diverse data in today’s biomedical and healthcare industries. A secure owner-mediated data sharing ecosystem could potentially hold the promise of new discoveries and improved public health.

IBM brings extensive expertise in blockchain technology; for example, it is founding member and key contributor to the Linux Foundation's Hyperledger project.

As the promise of blockchain in healthcare becomes increasingly evident, IBM will work to define and build the technological solution for a scalable and decentralised data sharing ecosystem.

The initiative with the FDA is a two-year agreement. IBM Watson Health and the FDA plan to share initial research findings in 2017.

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