Prof. Hilde Bosmans
Group Manager Medical Physics at UZ Leuven
SPIE Involvement:
Conference Program Committee | Author | Editor | Instructor
Publications (101)

Proceedings Article | 3 April 2024 Poster + Paper
T. Wagner, Z. Klanecek, Y. Wang, L. Cockmartin, A. Studen, R. Jeraj, H. Bosmans, N. Marshall
Proceedings Volume 12927, 1292725 (2024) https://doi.org/10.1117/12.3006670
KEYWORDS: Data modeling, Tumor growth modeling, Breast cancer, Solid modeling, Education and training, Cancer detection, Performance modeling, Cancer, Risk assessment, Computer aided detection

Proceedings Article | 1 April 2024 Presentation + Paper
Proceedings Volume 12925, 129250N (2024) https://doi.org/10.1117/12.3005765
KEYWORDS: Digital breast tomosynthesis, Modulation transfer functions, X-ray technology, Motion blur, Imaging systems

Proceedings Article | 29 March 2024 Presentation + Paper
Proceedings Volume 12929, 129290F (2024) https://doi.org/10.1117/12.3005416
KEYWORDS: Image quality, Scanners, Computed tomography, Reconstruction algorithms, Target detection, Image quality standards, X-ray computed tomography, Optical spheres, Image analysis, Education and training

SPIE Journal Paper | 12 September 2023 Open Access
JMI, Vol. 10, Issue S2, S22401, (September 2023) https://doi.org/10.1117/12.10.1117/1.JMI.10.S2.S22401
KEYWORDS: Digital breast tomosynthesis, Breast imaging, Breast, Cancer detection, Breast cancer, Artificial intelligence, Animal model studies, Mammography, Ultrasonography, Evolutionary algorithms

Proceedings Article | 7 April 2023 Poster + Paper
K. Houbrechts, R. Das, K. Koukoutegos, Y. Wang, M. Keupers, H. Bosmans
Proceedings Volume 12463, 124632G (2023) https://doi.org/10.1117/12.2653561
KEYWORDS: 3D modeling, Tumor growth modeling, Data modeling, Image segmentation, Breast, Digital breast tomosynthesis, Simulations, Cancer

Showing 5 of 101 publications
Proceedings Volume Editor (5)

SPIE Conference Volume | 13 July 2022

SPIE Conference Volume | 29 March 2021

SPIE Conference Volume | 29 May 2020

SPIE Conference Volume | 22 May 2020

SPIE Conference Volume | 9 July 2019

Conference Committee Involvement (17)
Physics of Medical Imaging
16 February 2025 | San Diego, United States
Physics of Medical Imaging
19 February 2024 | San Diego, California, United States
Physics of Medical Imaging
20 February 2023 | San Diego, California, United States
Sixteenth International Workshop on Breast Imaging
22 May 2022 | Leuven, Belgium
Physics of Medical Imaging
20 February 2022 | San Diego, California, United States
Showing 5 of 17 Conference Committees
Course Instructor
SC1292: Technological Assessment of X-Ray Based Breast Imaging Systems Using Anthropomorphic Phantoms
Development of new breast X-ray imaging technologies or improvements to hardware or software of current systems usually require the accurate assessment of image quality. Image quality assessment methods are also required for quality control (QC) of clinical systems, for example as required by the U.S. Mammography Quality Standards Act (MQSA) program. The gold standard for assessment of image quality is human reader studies assessing diagnostic performance over a cohort of representative clinical images. These clinical trials are often difficult and expensive to perform, and therefore researchers have been studying alternative approaches that can assess diagnostic task performance without imaging patients. This short course will discuss methods for objectively assessing task performance of breast imaging systems without conducting a clinical trial. One approach that will be discussed is the in silico modeling of a clinical trial. This approach involves complete computer modeling of each step in the imaging chain including: 1) modeling of breast and relevant breast lesions, 2) modeling of the imaging system, and 3) modeling of the observer. Another more experimental approach that will also be discussed involves: 1) development of anthropomorphic physical phantoms with diagnostic features, 2) imaging of these phantoms on breast imaging commercial or prototype systems, and 3) assessment of task performance with either model or human observers. For maximum efficiency, the proposed in silico and experimental approaches require the development of computer or model observers that can emulate either ideal or human observer task performance. This short course will discuss the use of new machine learning algorithms that can be used to model observer performance in the assessment of breast imaging technology. This course will describe and make attendees aware of useful open-source software tools that can be downloaded.
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