Self-supervised Disentanglement of Disease Effects from Aging in 3D Medical Shapes
arXiv cs.CV / 3/18/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- The paper proposes a two-stage framework to disentangle disease effects from aging in 3D medical shapes using self-supervised learning and pseudo-label discovery.
- In stage one, it trains an implicit neural model with signed distance functions to learn stable shape embeddings and applies clustering to derive pseudo disease labels without ground-truth diagnoses.
- In stage two, it disentangles factors in a compact variational space using the discovered pseudo disease labels and available age labels, with a multi-objective loss combining covariance and a supervised contrastive term.
- On ADNI hippocampus and OAI distal femur shapes, the method achieves near-supervised performance, improves disentanglement and reconstruction over unsupervised baselines, and enables controllable synthesis and factor-based explainability; code is available at the provided GitHub link.
Related Articles
Day 10: 230 Sessions of Hustle and It Comes Down to One Person Reading a Document
Dev.to

5 Dangerous Lies Behind Viral AI Coding Demos That Break in Production
Dev.to
Two bots, one confused server: what Nimbus revealed about AI agent identity
Dev.to

OpenTelemetry just standardized LLM tracing. Here's what it actually looks like in code.
Dev.to
PIXIU: A Large Language Model, Instruction Data and Evaluation Benchmark forFinance
Dev.to