English

Level set image segmentation with velocity term learned from data with applications to lung nodule segmentation

Image and Video Processing 2021-01-20 v3 Computer Vision and Pattern Recognition Machine Learning

Abstract

Purpose: Lung nodule segmentation, i.e., the algorithmic delineation of the lung nodule surface, is a fundamental component of computational nodule analysis pipelines. We propose a new method for segmentation that is a machine learning based extension of current approaches, using labeled image examples to improve its accuracy. Approach: We introduce an extension of the standard level set image segmentation method where the velocity function is learned from data via machine learning regression methods, rather than a priori designed. Instead, the method employs a set of features to learn a velocity function that guides the level set evolution from initialization. Results: We apply the method to image volumes of lung nodules from CT scans in the publicly available LIDC dataset, obtaining an average intersection over union score of 0.7185(±\pm0.1114), which is competitive with other methods. We analyze segmentation performance by anatomical and appearance-based categories of the nodules, finding that the method performs better for isolated nodules with well-defined margins. We find that the segmentation performance for nodules in more complex surroundings and having more complex CT appearance is improved with the addition of combined global-local features. Conclusions: The level set machine learning segmentation approach proposed herein is competitive with current methods. It provides accurate lung nodule segmentation results in a variety of anatomical contexts.

Keywords

Cite

@article{arxiv.1910.03191,
  title  = {Level set image segmentation with velocity term learned from data with applications to lung nodule segmentation},
  author = {Matthew C Hancock and Jerry F Magnan},
  journal= {arXiv preprint arXiv:1910.03191},
  year   = {2021}
}
R2 v1 2026-06-23T11:37:12.695Z