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  3. Deep Learning for Ischemic Penumbra Segmentation from MR Perfusion Maps: Robustness to the Deconvolution Algorithm
 

Deep Learning for Ischemic Penumbra Segmentation from MR Perfusion Maps: Robustness to the Deconvolution Algorithm

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Date of Publication
December 27, 2024
Publication Type
Conference Paper
Division/Institute

Institute of Diagnost...

Author
Leuliet, Theo
Institute of Diagnostic and Interventional Neuroradiology
Huwer, Stefan
Maréchal, Bénédicte
Ravano, Veronica
Kober, Tobias
Rafael-Patiño, Jonathan
Kaesmacher, Johannes
Institute of Diagnostic and Interventional Neuroradiology
Wiest, Roland
Institute of Diagnostic and Interventional Neuroradiology
Richiardi, Jonas
McKinley, Richard
Institute of Diagnostic and Interventional Neuroradiology
ISSN or ISBN (if monograph)
0302-9743
1611-3349
Publisher
Springer Nature Switzerland
Language
English
Publisher DOI
10.1007/978-3-031-76160-7_10
Description
Determining the penumbra, i.e., the at-risk but salvageable tissue, is crucial in the context of acute ischemic stroke imaging. Deep learning methods performing segmentation from perfusion parameter maps have shown promise in this regard. However, these methods rely on the computation of parameter maps via deconvolution algorithms, raising concerns about their generalizability across different medical centers. This study investigates the robustness of segmentation methods given different perfusion processing algorithms for dynamic susceptibility contrast magnetic resonance perfusion imaging. A neural network is first trained on a dataset of 94 patients with paired Tmax maps from a single MR perfusion algorithm, together with manual perfusion deficit segmentations. The network’s outputs are then compared on a second dataset of 268 patients, where Tmax inputs are generated with three different deconvolution algorithms. DICE coefficient along with the difference between estimated perfusion deficit volumes are used to quantify the agreement between predictions. Our findings demonstrate high variability in the predicted penumbra, even when Tmax inputs exhibit high similarity (SSIM > 0.8). This study therefore highlights the importance of exploring deconvolution-free methods to address the robustness issue for learning-based penumbra segmentation.
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/210527
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