Interpretable ML for Cardiac MRI

This project is a Wellcome Trust Innovator Awards: Digital Technologies.

Cardiovascular diseases account for 26% of deaths in the UK. Current clinical imaging assessments rely on manual or semi-automated measurements. Emerging approaches focus on individual parts of the heart. We have developed the first tensor-based machine learning approach that holistically assesses the heart and surrounding structures on cardiovascular magnetic resonance imaging (CMRI) scans. We will develop this approach into a tool that can identify patients who respond to treatment or who will die early. Key advantages are rapid holistic assessment, minimal human error and full transparency with direct visualisation of features for the disease. We will assemble a large cohort of CMRI scans from 5, 000 patients with pulmonary hypertension, a severe condition affecting the heart, and assess the ability to predict treatment response and likelihood of early death. This tool will revolutionise disease assessment, and improve treatment delivery and patient care.

Samer Alabed
Samer Alabed
Clinical Lecturer at University of Sheffield (past PhD Student)
Shuo Zhou
Shuo Zhou
Academic Fellow at University of Sheffield (past PhD Student)
Johanna Uthoff
Johanna Uthoff
Postdoctoral Research Associate (now at Auto Trader)
Andrew Swift
Andrew Swift
Senior Clinical Research Fellow at University of Sheffield
Haiping Lu
Haiping Lu
Professor of Machine Learning, Head of AI Research Engineering, and Turing Academic Lead

I am a Professor of Machine Learning. I develop translational AI technologies for better analysing multimodal data in healthcare and beyond.

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