Skip to menu Skip to content Skip to footer

Robust, valid and interpretable deep learning for quantitative imaging (2022-2025)

Abstract

One of the biggest challenges in employing artificial intelligence is the 'black-box' nature of the models used. This project aims to improve the effectiveness and trustworthiness of deep learning within quantitative magnetic resonance imaging. Deep learning has great promise in speeding-up complex image processing tasks, but currently suffers from variable data inputs, predictions are not guaranteed to be plausible and it is not clear to the end user how reliable the results are. The outcomes intend to deliver advanced knowledge and capability in artificial intelligence and machine learning that Australia urgently needs to capitalise on bringing deep learning into practical applications delivering economic, commercial and social impact.

Experts

Dr Steffen Bollmann

Affiliate of Queensland Digital Health Centre
Queensland Digital Health Centre
Faculty of Health, Medicine and Behavioural Sciences
Senior Research Fellow
School of Electrical Engineering and Computer Science
Faculty of Engineering, Architecture and Information Technology
Steffen Bollmann
Steffen Bollmann

Professor Markus Barth

Affiliate Professor of Australian Institute for Bioengineering and Nanotechnology
Australian Institute for Bioengineering and Nanotechnology
Affiliate of Queensland Digital Health Centre
Queensland Digital Health Centre
Faculty of Health, Medicine and Behavioural Sciences
Professor
School of Electrical Engineering and Computer Science
Faculty of Engineering, Architecture and Information Technology
Markus Barth
Markus Barth

Dr Shakes Chandra

Senior Lecturer
School of Electrical Engineering and Computer Science
Faculty of Engineering, Architecture and Information Technology
Shakes Chandra
Shakes Chandra