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Structuring World-Class Informatics for a New Team
Technology Category
- Platform as a Service (PaaS) - Data Management Platforms
Applicable Industries
- Healthcare & Hospitals
- Life Sciences
Applicable Functions
- Product Research & Development
Services
- Data Science Services
The Challenge
Incyte’s antibody discovery group was starting from the ground-up and knew it would be pivotal to deploy a world-class informatics system as soon as possible. With a growing team and fluid processes, the antibody discovery group needed a flexible system, or else their data would be unreliable and difficult to track. Being able to work with external collaborators (including international collaborators) was a must.
About The Customer
Incyte is a company that develops a wide range of therapeutics, primarily for oncology. The case study focuses on their antibody discovery group. This group was starting from scratch and recognized the importance of implementing a top-tier informatics system from the get-go. As the team was expanding and their processes were fluid, they needed a system that could adapt to their needs. Otherwise, their data would be unreliable and challenging to track. Furthermore, the ability to work with external collaborators, including those from international locations, was a crucial requirement for them.
The Solution
Incyte's antibody discovery group chose to use Benchling, a data management platform, to meet their needs. Benchling provided the flexibility they needed to handle their growing team and evolving processes. It also offered the capability to work with external collaborators securely, which was a critical requirement for the group. Benchling's ability to automatically identify and register scFvs’ components made it easy to track constructs, providing the group with visibility into their key processes from the start of their operations.
Operational Impact
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