Personalizing Federated Instrument Segmentation with Visual Trait Priors in Robotic Surgery
Personalized federated learning (PFL) for surgical instrument segmentation (SIS) is a promising approach. It enables multiple clinical sites to collaboratively train a series of models in privacy, with each model tailored to the individual distribution of each site. Existing PFL methods rarely consi...
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Zusammenfassung: | Personalized federated learning (PFL) for surgical instrument segmentation
(SIS) is a promising approach. It enables multiple clinical sites to
collaboratively train a series of models in privacy, with each model tailored
to the individual distribution of each site. Existing PFL methods rarely
consider the personalization of multi-headed self-attention, and do not account
for appearance diversity and instrument shape similarity, both inherent in
surgical scenes. We thus propose PFedSIS, a novel PFL method with visual trait
priors for SIS, incorporating global-personalized disentanglement (GPD),
appearance-regulation personalized enhancement (APE), and shape-similarity
global enhancement (SGE), to boost SIS performance in each site. GPD represents
the first attempt at head-wise assignment for multi-headed self-attention
personalization. To preserve the unique appearance representation of each site
and gradually leverage the inter-site difference, APE introduces appearance
regulation and provides customized layer-wise aggregation solutions via
hypernetworks for each site's personalized parameters. The mutual shape
information of instruments is maintained and shared via SGE, which enhances the
cross-style shape consistency on the image level and computes the
shape-similarity contribution of each site on the prediction level for updating
the global parameters. PFedSIS outperforms state-of-the-art methods with +1.51%
Dice, +2.11% IoU, -2.79 ASSD, -15.55 HD95 performance gains. The corresponding
code and models will be released at https://github.com/wzjialang/PFedSIS. |
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DOI: | 10.48550/arxiv.2408.03208 |