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TransforMesh: A Transformer Network for Longitudinal modeling of Anatomical Meshes

About

The longitudinal modeling of neuroanatomical changes related to Alzheimer's disease (AD) is crucial for studying the progression of the disease. To this end, we introduce TransforMesh, a spatio-temporal network based on transformers that models longitudinal shape changes on 3D anatomical meshes. While transformer and mesh networks have recently shown impressive performances in natural language processing and computer vision, their application to medical image analysis has been very limited. To the best of our knowledge, this is the first work that combines transformer and mesh networks. Our results show that TransforMesh can model shape trajectories better than other baseline architectures that do not capture temporal dependencies. Moreover, we also explore the capabilities of TransforMesh in detecting structural anomalies of the hippocampus in patients developing AD.

Ignacio Sarasua, Sebastian P\"olsterl, Christian Wachinger• 2021

Related benchmarks

TaskDatasetResultRank
Trajectory PredictionADNI
Median Error (x10^3)5.592
11
ExtrapolationADNI
Median Error (x10^3)5.57e+3
11
InterpolationADNI
Median Error0.0055
11
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