Cross-Dimensional Medical Self-Supervised Representation Learning Based on a Pseudo-3D Transformation
This addresses data shortage issues in medical imaging by enabling joint training across dimensions, though it is incremental as it builds on existing SSL techniques.
The paper tackles the problem of data scarcity in 3D medical image analysis by proposing a cross-dimensional self-supervised learning framework that jointly uses 2D and 3D data, achieving superior performance on 13 downstream tasks compared to other SSL methods.
Medical image analysis suffers from a shortage of data, whether annotated or not. This becomes even more pronounced when it comes to 3D medical images. Self-Supervised Learning (SSL) can partially ease this situation by using unlabeled data. However, most existing SSL methods can only make use of data in a single dimensionality (e.g. 2D or 3D), and are incapable of enlarging the training dataset by using data with differing dimensionalities jointly. In this paper, we propose a new cross-dimensional SSL framework based on a pseudo-3D transformation (CDSSL-P3D), that can leverage both 2D and 3D data for joint pre-training. Specifically, we introduce an image transformation based on the im2col algorithm, which converts 2D images into a format consistent with 3D data. This transformation enables seamless integration of 2D and 3D data, and facilitates cross-dimensional self-supervised learning for 3D medical image analysis. We run extensive experiments on 13 downstream tasks, including 2D and 3D classification and segmentation. The results indicate that our CDSSL-P3D achieves superior performance, outperforming other advanced SSL methods.