Scientific Reports (Dec 2024)

An effective and open source interactive 3D medical image segmentation solution

  • Yi Gao,
  • Xiaohui Chen,
  • Qinzhu Yang,
  • Andras Lasso,
  • Ivan Kolesov,
  • Steve Pieper,
  • Ron Kikinis,
  • Allen Tannenbaum,
  • Liangjia Zhu

DOI
https://doi.org/10.1038/s41598-024-80206-7
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 19

Abstract

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Abstract 3D medical image segmentation is a key step in numerous clinical applications. Even though many automatic segmentation solutions have been proposed, it is arguably that medical image segmentation is more of a preference than a reference as inter- and intra-variability are widely observed in final segmentation output. Therefore, designing a user oriented and open-source solution for interactive annotation is of great value for the community. In this paper, we present an effective interactive segmentation method that employs an adaptive dynamic programming approach to incorporates users’ interactions efficiently. The method first initializes an segmentation through a feature-based geodesic computation. Then, the segmentation is further refined by using an efficient updating scheme requiring only local computations when new user inputs are available, making it applicable to high resolution images and very complex structures. The proposed method is implemented as a user-oriented software module in 3D Slicer. Our approach demonstrates several strengths and contributions. First, we proposed an efficient and effective 3D interactive algorithm with the adaptive dynamic programming method. Second, this is not just a presented algorithm, but also a software with well-designed GUI for users. Third, its open-source nature allows users to make customized modifications according to their specific requirements.

Keywords