CVLGFeb 14, 2024

Weakly Supervised Segmentation of Vertebral Bodies with Iterative Slice-propagation

arXiv:2402.08892v11 citationsh-index: 32DART/MIL3ID@MICCAI
Originality Incremental advance
AI Analysis

This work addresses the tedious and time-consuming annotation process for medical experts in spinal disease diagnosis, offering a cost-effective solution with only a slight performance trade-off.

The paper tackles the problem of expensive pixel-level annotations for vertebral body segmentation in CT images by proposing a weakly supervised method using only four corner landmarks per slice, achieving dice coefficients of 91.7% and 83.7% on a public dataset while reducing labeling costs.

Vertebral body (VB) segmentation is an important preliminary step towards medical visual diagnosis for spinal diseases. However, most previous works require pixel/voxel-wise strong supervisions, which is expensive, tedious and time-consuming for experts to annotate. In this paper, we propose a Weakly supervised Iterative Spinal Segmentation (WISS) method leveraging only four corner landmark weak labels on a single sagittal slice to achieve automatic volumetric segmentation from CT images for VBs. WISS first segments VBs on an annotated sagittal slice in an iterative self-training manner. This self-training method alternates between training and refining labels in the training set. Then WISS proceeds to segment the whole VBs slice by slice with a slice-propagation method to obtain volumetric segmentations. We evaluate the performance of WISS on a private spinal metastases CT dataset and the public lumbar CT dataset. On the first dataset, WISS achieves distinct improvements with regard to two different backbones. For the second dataset, WISS achieves dice coefficients of $91.7\%$ and $83.7\%$ for mid-sagittal slices and 3D CT volumes, respectively, saving a lot of labeling costs and only sacrificing a little segmentation performance.

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