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Head of Group

Dr Stamatia Giannarou

About us

The Cognitive Vision in Robotic Surgery Lab is developing computer vision and AI techniques for intraoperative navigation and real-time tissue characterisation.

Research lab info

What we do

Surgery is undergoing rapid changes driven by recent technological advances and our on-going pursuit towards early intervention and personalised treatment. We are developing computer vision and Artificial Intelligence techniques for intraoperative navigation and real-time tissue characterisation during minimally invasive and robot-assisted operations to improve both the efficacy and safety of surgical procedures. Our work will revolutionize the treatment of cancers and pave the way for autonomous robot-assisted interventions.

Why it is important?

With recent advances in medical imaging, sensing, and robotics, surgical oncology is entering a new era of early intervention, personalised treatment, and faster patient recovery. The main goal is to completely remove cancerous tissue while minimising damage to surrounding areas. However, achieving this can be challenging, often leading to imprecise surgeries, high re-excision rates, and reduced quality of life due to unintended injuries. Therefore, technologies that enhance cancer detection and enable more precise surgeries may improve patient outcomes.

How can it benefit patients?

Our methods aim to ensure patients receive accurate and timely surgical treatment while reducing surgeons' mental workload, overcoming limitations, and minimizing errors. By improving tumor excision, our hybrid diagnostic and therapeutic tools will lower recurrence rates and enhance survival outcomes. More complete tumor removal will also reduce the need for repeat procedures, improving patient quality of life, life expectancy, and benefiting society and the economy.

Meet the team

Mr Alfie Roddan

Mr Alfie Roddan

Mr Alfie Roddan
Research Postgraduate

Mr Chi Xu

Mr Chi Xu

Mr Chi Xu
Research Assistant

Mr Yihang Zhou

Mr Yihang Zhou

Mr Yihang Zhou
Research Assistant

Citation

BibTex format

@inproceedings{Roddan:2024:10.1117/12.3017079,
author = {Roddan, A and Yu, Z and Leiloglou, M and Chalau, V and Anichini, G and Giannarou, S and Elson, D},
doi = {10.1117/12.3017079},
title = {Towards real-time hyperspectral imaging in neurosurgery},
url = {http://dx.doi.org/10.1117/12.3017079},
year = {2024}
}

RIS format (EndNote, RefMan)

TY  - CPAPER
AB - This study aims to integrate real-time hyperspectral (HS) imaging with a surgical microscope to assist neurosurgeons in differentiating between healthy and pathological tissue during procedures. Using the LEICA M525 microscope's optical ports, we register HS data and RGB, in an efforts to improve margin delineation and surgical outcomes. The CUBERT ULTRIS SR5 camera with 51 bands and 15 Hz is employed, and critical calibration steps are outlined for clinical application. Experimental validation is conducted on ex-vivo animal tissue using reflectance spectroscopy. We present the preliminary validation results of the performance comparison between the designed hyperspectral imaging microscope prototype and diffuse reflectance spectroscopy conducted on animal tissue.
AU - Roddan,A
AU - Yu,Z
AU - Leiloglou,M
AU - Chalau,V
AU - Anichini,G
AU - Giannarou,S
AU - Elson,D
DO - 10.1117/12.3017079
PY - 2024///
SN - 0277-786X
TI - Towards real-time hyperspectral imaging in neurosurgery
UR - http://dx.doi.org/10.1117/12.3017079
ER -

Contact Us

General enquiries
hamlyn@imperial.ac.uk

Facility enquiries
hamlyn.facility@imperial.ac.uk


The Hamlyn Centre
Bessemer Building
South Kensington Campus
Imperial College
London, SW7 2AZ
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