Beyond Core and Penumbra: Bi-Temporal Image-Driven Stroke Evolution Analysis
Md Sazidur Rahman, Kjersti Engan, Kathinka D{\ae}hli Kurz, Mahdieh Khanmohammadi

TL;DR
This study introduces a bi-temporal imaging analysis framework combining CT and MRI to better understand stroke evolution, revealing that deep features can distinguish salvageable tissue from infarcted regions.
Contribution
It presents a novel bi-temporal analysis method using deep and radiomic features from two imaging modalities to characterize tissue fate in stroke patients.
Findings
Deep features effectively differentiate salvageable from non-salvageable tissue.
Penumbra regions show significant feature differences based on final outcome.
Bi-temporal features cluster regions according to tissue recovery and infarction.
Abstract
Computed tomography perfusion (CTP) at admission is routinely used to estimate the ischemic core and penumbra, while follow-up diffusion-weighted MRI (DWI) provides the definitive infarct outcome. However, single time-point segmentations fail to capture the biological heterogeneity and temporal evolution of stroke. We propose a bi-temporal analysis framework that characterizes ischemic tissue using statistical descriptors, radiomic texture features, and deep feature embeddings from two architectures (mJ-Net and nnU-Net). Bi-temporal refers to admission (T1) and post-treatment follow-up (T2). All features are extracted at T1 from CTP, with follow-up DWI aligned to ensure spatial correspondence. Manually delineated masks at T1 and T2 are intersected to construct six regions of interest (ROIs) encoding both initial tissue state and final outcome. Features were aggregated per region and…
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Taxonomy
TopicsAcute Ischemic Stroke Management · Advanced Neuroimaging Techniques and Applications · MRI in cancer diagnosis
