English

Robust deep learning-based semantic organ segmentation in hyperspectral images

Image and Video Processing 2022-07-12 v2 Computer Vision and Pattern Recognition Machine Learning

Abstract

Semantic image segmentation is an important prerequisite for context-awareness and autonomous robotics in surgery. The state of the art has focused on conventional RGB video data acquired during minimally invasive surgery, but full-scene semantic segmentation based on spectral imaging data and obtained during open surgery has received almost no attention to date. To address this gap in the literature, we are investigating the following research questions based on hyperspectral imaging (HSI) data of pigs acquired in an open surgery setting: (1) What is an adequate representation of HSI data for neural network-based fully automated organ segmentation, especially with respect to the spatial granularity of the data (pixels vs. superpixels vs. patches vs. full images)? (2) Is there a benefit of using HSI data compared to other modalities, namely RGB data and processed HSI data (e.g. tissue parameters like oxygenation), when performing semantic organ segmentation? According to a comprehensive validation study based on 506 HSI images from 20 pigs, annotated with a total of 19 classes, deep learning-based segmentation performance increases, consistently across modalities, with the spatial context of the input data. Unprocessed HSI data offers an advantage over RGB data or processed data from the camera provider, with the advantage increasing with decreasing size of the input to the neural network. Maximum performance (HSI applied to whole images) yielded a mean DSC of 0.90 ((standard deviation (SD)) 0.04), which is in the range of the inter-rater variability (DSC of 0.89 ((standard deviation (SD)) 0.07)). We conclude that HSI could become a powerful image modality for fully-automatic surgical scene understanding with many advantages over traditional imaging, including the ability to recover additional functional tissue information. Code and pre-trained models: https://github.com/IMSY-DKFZ/htc.

Keywords

Cite

@article{arxiv.2111.05408,
  title  = {Robust deep learning-based semantic organ segmentation in hyperspectral images},
  author = {Silvia Seidlitz and Jan Sellner and Jan Odenthal and Berkin Özdemir and Alexander Studier-Fischer and Samuel Knödler and Leonardo Ayala and Tim J. Adler and Hannes G. Kenngott and Minu Tizabi and Martin Wagner and Felix Nickel and Beat P. Müller-Stich and Lena Maier-Hein},
  journal= {arXiv preprint arXiv:2111.05408},
  year   = {2022}
}

Comments

The first two authors (Silvia Seidlitz and Jan Sellner) contributed equally to this paper

R2 v1 2026-06-24T07:32:59.417Z