麻豆淫院

November 30, 2020

A new hybrid X-ray detector goes toe-to-toe with state-of-the-art rivals

A new hybrid X-ray detector developed by the University of Surrey outperforms commercial devices鈥攁nd could lead to more accurate cancer therapy.

In a study published by the Advanced Functional Materials journal, researchers from Surrey's Advanced Technology Institute (ATI) demonstrate a new hybrid X-ray architecture with slightly higher sensitivity for X-rays than typically used for radiotherapy.

The authors also show that their new architecture brings several new benefits, including industry-standard ultra-low dark currents that are the lowest reported for such detectors. The device also has fast response characteristics that compete with commercial X-ray semiconductor detectors based on silicon and selenium.

Prabodhi Nanayakkara, the lead scientist of the study and Ph.D. student at the University of Surrey, said, "Our hybrid detector has shown promising results鈥攃hief of which is its ability to be more accurate than current X-ray detectors. We hope that our technology will lead to improved patient survival rates and ultimately to a healthier society."

Professor Ravi Silva, Director of ATI at the University of Surrey, said, "Technologies with unique capability such as this only appear once in a lifetime鈥攚ith its plethora of applications that range from low dose mammography to high-speed border security to non-destructive testing over large areas using portable wireless technology.

"We are proud of this cutting-edge breakthrough and look forward to further developing the technology via our university spin-out vehicle, SilverRay Ltd."

More information: M. Prabodhi A. Nanayakkara et al, Ultra鈥怢ow Dark Current Organic鈥揑norganic Hybrid X鈥怰ay Detectors, Advanced Functional Materials (2020).

Journal information: Advanced Functional Materials

Provided by University of Surrey

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