Segmentation of cortical bone, trabecular bone, and medullary pores from micro-CT images using 2D and 3D deep learning models.

4区 医学 Q2 Agricultural and Biological Sciences Anatomical Record Pub Date : 2025-02-05 DOI:10.1002/ar.25633
Andrew H Lee, Julian M Moore, Brandon Vera Covarrubias, Leigha M Lynch
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Abstract

Computed tomography (CT) enables rapid imaging of large-scale studies of bone, but those datasets typically require manual segmentation, which is time-consuming and prone to error. Convolutional neural networks (CNNs) offer an automated solution, achieving superior performance on image data. In this methodology-focused paper, we used CNNs to train segmentation models from scratch on 2D and 3D patches from micro-CT scans of otter long bones. These new models, collectively called BONe (Bone One-shot Network), aimed to be fast and accurate, and we expected enhanced results from 3D training due to better spatial context. Contrary to expectations, 2D models performed slightly better than 3D models in labeling details such as thin trabecular bone. Although lacking in some detail, 3D models appeared to generalize better and predict smoother internal surfaces than 2D models. However, the massive computational costs of 3D models limit their scalability and practicality, leading us to recommend 2D models for bone segmentation. BONe models showed potential for broader applications with variation in performance across species and scan quality. Notably, BONe models demonstrated promising results on skull segmentation, suggesting their potential utility beyond long bones with further refinement and fine-tuning.

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计算机断层扫描(CT)可快速对骨骼进行大规模成像研究,但这些数据集通常需要人工分割,既费时又容易出错。卷积神经网络(CNN)提供了一种自动解决方案,可在图像数据上实现卓越的性能。在这篇以方法论为重点的论文中,我们使用 CNN 对水獭长骨显微 CT 扫描的二维和三维斑块进行了从头开始的分割模型训练。这些新模型统称为 BONe(Bone One-shot Network,骨骼单次扫描网络),目标是快速、准确。与预期相反,二维模型在标记骨小梁薄等细节方面的表现略好于三维模型。虽然在某些细节上有所欠缺,但三维模型似乎比二维模型的概括能力更强,预测的内表面也更光滑。然而,三维模型庞大的计算成本限制了其可扩展性和实用性,因此我们推荐使用二维模型进行骨分割。BONe 模型具有更广泛的应用潜力,但在不同物种和扫描质量下的性能存在差异。值得注意的是,BONe 模型在头骨分割方面表现出了良好的效果,这表明随着进一步的完善和微调,BONe 模型在长骨以外的领域也具有潜在的应用价值。
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来源期刊
Anatomical Record
Anatomical Record Agricultural and Biological Sciences-Ecology, Evolution, Behavior and Systematics
CiteScore
4.30
自引率
0.00%
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0
期刊介绍: The Anatomical Record
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