CVIVSYAug 7, 2025

F2PASeg: Feature Fusion for Pituitary Anatomy Segmentation in Endoscopic Surgery

arXiv:2508.05465v11 citationsh-index: 4Has CodeMICCAI
Originality Synthesis-oriented
AI Analysis

This work addresses a domain-specific problem for surgeons performing pituitary surgery, offering an incremental improvement in segmentation robustness.

The paper tackles the problem of segmenting pituitary anatomy in endoscopic surgery videos to enhance surgical safety, by introducing a new dataset and a feature fusion method that achieves real-time segmentation of critical structures.

Pituitary tumors often cause deformation or encapsulation of adjacent vital structures. Anatomical structure segmentation can provide surgeons with early warnings of regions that pose surgical risks, thereby enhancing the safety of pituitary surgery. However, pixel-level annotated video stream datasets for pituitary surgeries are extremely rare. To address this challenge, we introduce a new dataset for Pituitary Anatomy Segmentation (PAS). PAS comprises 7,845 time-coherent images extracted from 120 videos. To mitigate class imbalance, we apply data augmentation techniques that simulate the presence of surgical instruments in the training data. One major challenge in pituitary anatomy segmentation is the inconsistency in feature representation due to occlusions, camera motion, and surgical bleeding. By incorporating a Feature Fusion module, F2PASeg is proposed to refine anatomical structure segmentation by leveraging both high-resolution image features and deep semantic embeddings, enhancing robustness against intraoperative variations. Experimental results demonstrate that F2PASeg consistently segments critical anatomical structures in real time, providing a reliable solution for intraoperative pituitary surgery planning. Code: https://github.com/paulili08/F2PASeg.

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