Dieuwertje Alblas - MIA
Christian Amend - MIA
Riccardo Bardin - MACS
Vincent Bosboom - MACS
Giacomo Cristinelli - MIA
Sven Dummer - MIA
Elena Giamatteo - MACS
Leonardo del Grande - MIA
source: http://www.malinc.se/math/trigonometry/geocentrismen.php - Heeringa - MIA
Lucas Jansen Klomp - MIA
Muhammad Hamza Khalid - MACS
Nishant Kumar - MACS
Kaifang Liu - MACS
Xiangyi Meng - MACS
Floor van Maarschalkerwaart - MIA
Nida Mir - MIA / MDI-TNW
Hongliang Mu - MAST
Kevin Redosado - 3MS
Julian Suk - MIA
Hannah van Susteren - MIA
Johanna Tengler - MIA
Mei Vaish - MIA
Jens de Vries - MAST
Weihao Yan - MIA
Alexander Wierzba - MAST
Fengna Yan - MACS

Artificial intelligence for medical imaging

Medical images, such as computed tomography (CT), magnetic resonance imaging (MRI), and ultrasound, play a crucial role in providing patient-specific diagnosis, prognosis, and treatment. The value of medical imaging can be greatly amplified by robust and accurate AI-driven extraction of information from medical images. The MIA group is dedicated to developing AI methods that improve various aspects of the imaging pipeline, ranging from solving inverse problems and reconstruction to predicting complex hemodynamics-based biomarkers. To overcome challenges associated with data sparsity in medical imaging, we leverage the inherent structure within our data. By exploiting symmetries and incorporating prior knowledge, we can extract more meaningful insights even with limited data availability. Moreover, we aim to connect the appropriate data representation to each problem by learning on images, meshes, graphs, point clouds and continuous data representations. The MIA group collaborates closely with clinical partners and industry and is part of national and international externally funded research consortia with applications in prostate cancer and cardiovascular diseases. With our partners, we aim to bring artificial intelligence in precision medicine one step further.

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