Dr Leonardo Rundo

Cambridge University Hospitals NHS Foundation Trust
University of Cambridge

University departments
Department of Radiology
University institutes
CRUK Cambridge Institute

Position: Research Associate
Personal home page: https://radiology.medschl.cam.ac.uk/about-us/departmental-staff/research-staff/leonardo-rundo/

PubMed journal articles - click here

Research description

Leonardo Rundo is currently a Research Associate at the Department of Radiology, University of Cambridge, Cambridge, UK. His research activities are focused on oncological image analysis, strictly collaborating also with the CRUK Cambridge Centre. These multidisciplinary efforts aim at performing integrative analyses to precisely characterize the cancer mechanisms at the single individual level, by appropriately combining the heterogeneous patient’s information conveyed by multiparametric or multimodal imaging datasets (exploiting advanced Machine Learning and Radiomics approaches) and high-throughput technologies.

His main scientific interests include Digital Image Processing, Biomedical Image Analysis, Machine Learning, Computational Intelligence, Natural Computing, Computational Biology, and High-Performance Computing. His research contributions concern oncological imaging (Magnetic Resonance Imaging, Computed Tomography, and Positron Emission Tomography), multimodal image registration and fusion, High Intensity Focused Ultrasounds, radiation therapy, and neuro-radiosurgery, as well as live-cell imaging.

Research Programme
Advanced Cancer Imaging
Secondary Programme
Ovarian Cancer
Methods and technologies
Clinical practice
Computational modelling
Imaging
Magnetic Resonance Imaging (MRI)
Tumour type interests
Brain and central nervous system
Breast
Kidney
Ovary
Pancreas
Prostate
Uterus and unspecified
Keywords
Medical Image Analysis
Machine Learning
Computational Intelligence
Bio-inspired Computing
Oncological Imaging
Integrative Biomedicine
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