Advancing 3D Medical Image Analysis with Variable Dimension Transform based Supervised 3D Pre-training
Shu Zhang, Zihao Li, Hong-Yu Zhou, Jiechao Ma, Yizhou Yu

TL;DR
This paper introduces a fully-supervised 3D pre-training framework leveraging large-scale 2D natural image data to improve 3D medical image analysis, reducing annotation efforts and enhancing model performance.
Contribution
It proposes a novel 3D network architecture and a supervised pre-training method that utilizes 2D natural images, addressing data scarcity and outperforming existing self-supervised approaches.
Findings
Accelerates convergence in 3D tasks
Improves accuracy across classification, segmentation, detection
Reduces annotation efforts by up to 60%
Abstract
The difficulties in both data acquisition and annotation substantially restrict the sample sizes of training datasets for 3D medical imaging applications. As a result, constructing high-performance 3D convolutional neural networks from scratch remains a difficult task in the absence of a sufficient pre-training parameter. Previous efforts on 3D pre-training have frequently relied on self-supervised approaches, which use either predictive or contrastive learning on unlabeled data to build invariant 3D representations. However, because of the unavailability of large-scale supervision information, obtaining semantically invariant and discriminative representations from these learning frameworks remains problematic. In this paper, we revisit an innovative yet simple fully-supervised 3D network pre-training framework to take advantage of semantic supervisions from large-scale 2D natural…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Medical Image Segmentation Techniques · Advanced Neural Network Applications
MethodsContrastive Learning
