< Back to previous page
Researcher
Nicholas Marshall
- Disciplines:Laboratory medicine, Palliative care and end-of-life care, Regenerative medicine, Other basic sciences, Other health sciences, Nursing, Other paramedical sciences, Other translational sciences, Other medical and health sciences
Affiliations
- Medical Physics & Quality Assessment (Division)
Member
From1 Oct 2015 → Today - Radiology (Division)
Member
From1 Jun 2009 → 29 Feb 2012
Projects
1 - 9 of 9
- Design and optimization of breast imaging techniques using virtual clinical trials and artificial intelligenceFrom20 Sep 2021 → TodayFunding: Own budget, for example: patrimony, inscription fees, gifts
- Improving breast cancer screening through dynamic big data analytics of Quantitative Imaging Biomarkers (QIBs)From6 Apr 2021 → TodayFunding: Own budget, for example: patrimony, inscription fees, gifts
- Development of deep learning and radiomics techniques for contrast enhanced mammography: in silico testing with synthetic images to encompass less common cancer subtypesFrom18 Nov 2020 → TodayFunding: Own budget, for example: patrimony, inscription fees, gifts
- Development of deep learning and radiomics techniques for contrast enhanced mammography: in silico testing with synthetic images to encompass less common cancer subtypesFrom1 Oct 2020 → 30 Sep 2022Funding: Own budget, for example: patrimony, inscription fees, gifts
- Development of deep learning and radiomics techniques for contrast enhanced mammography: in silico testing with synthetic images to encompass less common cancer subtypesFrom1 Oct 2020 → 30 Sep 2022Funding: BOF - doctoral mandates
- Completely virtual, three dimensional, clinical trial platform for evaluating new breast imaging design choices.From1 Mar 2018 → 10 Feb 2022Funding: Own budget, for example: patrimony, inscription fees, gifts
- Task based optimization of system parameters in image guided interventionsFrom1 Nov 2016 → 6 May 2020Funding: Own budget, for example: patrimony, inscription fees, gifts
- The development of mathematical observers for optimization in breast imagingFrom25 Feb 2016 → 23 Apr 2020Funding: Own budget, for example: patrimony, inscription fees, gifts
- Exploration of clinical applications of grating-based phase-contrast imagingFrom1 Sep 2014 → 14 Nov 2018Funding: Own budget, for example: patrimony, inscription fees, gifts
Publications
31 - 40 of 118
- Task-based artifact spread function estimation in digital breast tomosynthesis using a structured phantom(2020)
Authors: Dimitar Petrov, Hilde Bosmans, Nicholas Marshall
Number of pages: 4 - In-plane image quality and NPWE detectability index in digital breast tomosynthesis(2020)
Authors: Hilde Bosmans, Nicholas Marshall
- Task based optimization of system parameters in image guided interventions(2020)
Authors: Michiel Dehairs, Nicholas Marshall, Hilde Bosmans
- The development of mathematical observers for optimization in breast imaging(2020)
Authors: Dimitar Petrov, Hilde Bosmans, Nicholas Marshall
- Deep learning channelized Hotelling observer for multi-vendor DBT system image quality evaluation(2020)
Authors: Dimitar Petrov, Nicholas Marshall, Liesbeth Vancoillie, Hilde Bosmans
- Evaluation of possible phantoms for assessment of image quality in synthetic mammograms(2020)
Authors: Liesbeth Vancoillie, Nicholas Marshall, Hilde Bosmans
- Application of a model observer for detection of lesions in synthetic mammograms(2020)
Authors: Liesbeth Vancoillie, Dimitar Petrov, Nicholas Marshall, Hilde Bosmans
Number of pages: 8 - Evaluation of the visual realism of breast texture phantoms in digital mammography(2020)
Authors: Nicholas Marshall, Chantal Van Ongeval, Hilde Bosmans
Number of pages: 7 - Channelized Hotelling observer for multi-vendor breast tomosynthesis image quality estimation: detection of calcification clusters in an anthropomorphic phantom(2020)
Authors: Dimitar Petrov, Nicholas Marshall, Hilde Bosmans
Number of pages: 4 - Methodology for undertaking quality control testing of ghosting in digital breast tomosynthesis systems(2020)
Authors: Nicholas Marshall
Number of pages: 8