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Completed RESEARCH GRANT UKRI Gateway to Research

Development of Artificial Intelligence OCT Biomarkers for Accelerated Skin Disease Research and Diagnosis

£1.72M GBP

Funder UKRI Inn.Scholar
Recipient Organization Manchester Imaging Limited
Country United Kingdom
Start Date May 31, 2021
End Date May 30, 2023
Duration 729 days
Number of Grantees 3
Roles Co-Investigator; Principal Investigator; Award Holder
Data Source UKRI Gateway to Research
Grant ID MR/W003546/1
Grant Description

Our vision is to bring the power of machine learning and computer vision (also known as 'Artificial Intelligence' or AI) to the application of Optical Coherence Tomography (OCT) imaging of skin, in order to dramatically improve the speed, accuracy and utility of these OCT imaging devices to dermatologists and clinical scientists.

At present, end-user clinicians and scientists use OCT imaging devices to capture sub-surface images of skin and then they manually analyse the images to extract data, which is then used to assess the effects of pharmaceutical treatments on skin diseases. OCT imaging is faster, less invasive and less costly than taking skin biopsies, but the image analysis step is still time-consuming, somewhat subjective, and requires observer training.

This is a hindrance to the use of OCT imaging to accelerate drug development for skin diseases like skin cancer, atopic dermatitis and psoriasis, which are multi-billion-$ markets.

We believe that powerful machine learning algorithms will transform how OCT skin imaging is used by clinical scientists and clinical users to research and develop new drugs.

To achieve this vision, we propose seconding a leading expert from AI specialists Manchester Imaging Ltd (MIL) to the host organisation Michelson Diagnostics Ltd, UK SME manufacturer of the world-leading VivoSight Optical Coherence Tomography (OCT) skin imaging and measurement system, over 2-years, to develop and test novel machine learning algorithms for OCT.

Key barriers to the wider adoption of OCT for dermatology research is that the OCT images require trained experts to interpret them, and also that the image analysis is somewhat manual in nature. Dermatologists are often time-poor and may not have time to learn how to do this, and the manual nature of the analysis creates potential for unwanted bias.

Therefore the challenge is to reduce the barriers to adoption by: Automatically identifying image-markers for common skin diseases Automatically quantifying the image-markers Examples of OCT image-markers requested by Michelson's user base are: Thickened epidermis (Atopic Dermatitis) Loss of definition of dermis-epidermis junction (skin cancer)

Detection of tumour 'nests' in the dermis and their invasion-depth/extent (skin cancer) Increase in blood vessel density (all inflammatory diseases) Alterations in blood vessel shape/tortuosity (melanoma)

The challenge can only be met by bringing together expertise in AI-algorithms (image processing/machine learning) and OCT imaging technology (laser physics, optics and instrumentation) with close links to the end-user clinical science user base, to form a highly focused and motivated multi-disciplinary team and who will develop and test candidate algorithms on real clinical data.

All Grantees

The University of Manchester; Manchester Imaging Limited

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