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📄 Abstract
Abstract: Understanding temporal dynamics in medical imaging is crucial for
applications such as disease progression modeling, treatment planning and
anatomical development tracking. However, most deep learning methods either
consider only single temporal contexts, or focus on tasks like classification
or regression, limiting their ability for fine-grained spatial predictions.
While some approaches have been explored, they are often limited to single
timepoints, specific diseases or have other technical restrictions. To address
this fundamental gap, we introduce Temporal Flow Matching (TFM), a unified
generative trajectory method that (i) aims to learn the underlying temporal
distribution, (ii) by design can fall back to a nearest image predictor, i.e.
predicting the last context image (LCI), as a special case, and (iii) supports
$3D$ volumes, multiple prior scans, and irregular sampling. Extensive
benchmarks on three public longitudinal datasets show that TFM consistently
surpasses spatio-temporal methods from natural imaging, establishing a new
state-of-the-art and robust baseline for $4D$ medical image prediction.