Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Hierarchical Mesh Transformers with Topology-Guided Pretraining for Morphometric Analysis of Brain Structures

About

Representation learning on large-scale unstructured volumetric and surface meshes poses significant challenges in neuroimaging, especially when models must incorporate diverse vertex-level morphometric descriptors, such as cortical thickness, curvature, sulcal depth, and myelin content, which carry subtle disease-related signals. Current approaches either ignore these clinically informative features or support only a single mesh topology, restricting their use across imaging pipelines. We introduce a hierarchical transformer framework designed for heterogeneous mesh analysis that operates on spatially adaptive tree partitions constructed from simplicial complexes of arbitrary order. This design accommodates both volumetric and surface discretizations within a single architecture, enabling efficient multi-scale attention without topology-specific modifications. A feature projection module maps variable-length per-vertex clinical descriptors into the spatial hierarchy, separating geometric structure from feature dimensionality and allowing seamless integration of different neuroimaging feature sets. Self-supervised pretraining via masked reconstruction of both coordinates and morphometric channels on large unlabeled cohorts yields a transferable encoder backbone applicable to diverse downstream tasks and mesh modalities. We validate our approach on Alzheimer's disease classification and amyloid burden prediction using volumetric brain meshes from ADNI, as well as focal cortical dysplasia detection on cortical surface meshes from the MELD dataset, achieving state-of-the-art results across all benchmarks.

Yujian Xiong, Mohammad Farazi, Yanxi Chen, Wenhui Zhu, Xuanzhao Dong, Natasha Lepore, Yi Su, Raza Mushtaq, Stephen Foldes, Andrew Yang, Yalin Wang• 2026

Related benchmarks

TaskDatasetResultRank
3D Semantic SegmentationScanNet
Semantics mIoU77.7
19
Amyloid positivity predictionAmyloid positivity (medium risk)
Accuracy81.5
16
ClassificationADNI Tet-mesh (AD vs CN)
Accuracy90.7
4
ClassificationADNI Tet-mesh AD vs MCI
Accuracy73.1
4
ClassificationADNI Tet-mesh (MCI vs CN)
Accuracy78.2
4
Focal Cortical Dysplasia SegmentationMELD
Lesion IoU51
3
Showing 6 of 6 rows

Other info

Follow for update