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Highlight Crystal Powderdose installation at Ghent University's HighTru lab

May 20, 2025

Ghent University

High-Throughput Experimentation (HTE) is a method where a large number of experiments are conducted simultaneously using automated equipment and robotics. It is now being introduced in chemistry and pharmaceutical sciences to quickly collect and analyze large amounts of data. HTE utilizes miniaturization to save space and materials and advanced data management systems to handle the vast amounts of data generated. For example, it is now already used in the industry to rapidly screen compounds for biological activity. Due to automation and fast processing of experiments, HTE is cost-effective and accelerates innovation.

For details: 

Prof. Dr. ir. Christian Stevens Director, Prof. Dr. Richard Hoogenboom

HighTru HTE Centre Ghent

Link:  https://www.ugent.be/en/news-events/ghent-university-launches-high-throughput-experimentation-centre-ghent-for-innovative-pharmaceutical-research

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