用于计算机断层扫描图像解剖分割的深度学习模型的剂量鲁棒性。

IF 1.9 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Journal of Medical Imaging Pub Date : 2024-07-01 Epub Date: 2024-08-01 DOI:10.1117/1.JMI.11.4.044005
Artyom Tsanda, Hannes Nickisch, Tobias Wissel, Tobias Klinder, Tobias Knopp, Michael Grass
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引用次数: 0

摘要

目的:降低辐射剂量的趋势和计算机断层扫描(CT)重建技术的进步可能会影响预训练分割模型的运行,从而产生了估算现有分割模型剂量鲁棒性的问题。以往针对这一问题的研究要么缺乏已登记的低剂量和全剂量 CT 图像,要么只是进行了简化模拟:方法:我们采用全剂量采集的原始数据来模拟低剂量 CT 扫描,从而避免了重新扫描病人的需要。模拟的准确性通过对一个模型的真实 CT 扫描来验证。我们考虑将辐射剂量降低到 20%,为此我们测量了几个预训练分割模型与全剂量预测的偏差。此外,我们还考虑了与现有去噪方法的兼容性:结果表明,TotalSegmentator 方法具有令人惊讶的鲁棒性,即使不进行去噪处理,像素级的差异也微乎其微。鲁棒性较低的模型显示出与去噪方法的良好兼容性,这有助于在几乎所有情况下提高鲁棒性。使用基于卷积神经网络(CNN)的去噪方法后,除一个模型外,低剂量数据和全剂量数据之间的中位 Dice 值都不低于 0.9(豪斯多夫距离为 12)。我们观察到有效半径小于 19 毫米的标签结果不稳定,对比 CT 采集结果有所改善:结论:所提出的方法有助于对人体器官分割模型的剂量稳健性进行临床相关分析。结果概述了各种模型的稳健性。还需要进一步的研究来确定病灶分割方法的稳健性,并对影响剂量稳健性的因素进行排序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dose robustness of deep learning models for anatomic segmentation of computed tomography images.

Purpose: The trend towards lower radiation doses and advances in computed tomography (CT) reconstruction may impair the operation of pretrained segmentation models, giving rise to the problem of estimating the dose robustness of existing segmentation models. Previous studies addressing the issue suffer either from a lack of registered low- and full-dose CT images or from simplified simulations.

Approach: We employed raw data from full-dose acquisitions to simulate low-dose CT scans, avoiding the need to rescan a patient. The accuracy of the simulation is validated using a real CT scan of a phantom. We consider down to 20% reduction of radiation dose, for which we measure deviations of several pretrained segmentation models from the full-dose prediction. In addition, compatibility with existing denoising methods is considered.

Results: The results reveal the surprising robustness of the TotalSegmentator approach, showing minimal differences at the pixel level even without denoising. Less robust models show good compatibility with the denoising methods, which help to improve robustness in almost all cases. With denoising based on a convolutional neural network (CNN), the median Dice between low- and full-dose data does not fall below 0.9 (12 for the Hausdorff distance) for all but one model. We observe volatile results for labels with effective radii less than 19 mm and improved results for contrasted CT acquisitions.

Conclusion: The proposed approach facilitates clinically relevant analysis of dose robustness for human organ segmentation models. The results outline the robustness properties of a diverse set of models. Further studies are needed to identify the robustness of approaches for lesion segmentation and to rank the factors contributing to dose robustness.

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来源期刊
Journal of Medical Imaging
Journal of Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.10
自引率
4.20%
发文量
0
期刊介绍: JMI covers fundamental and translational research, as well as applications, focused on medical imaging, which continue to yield physical and biomedical advancements in the early detection, diagnostics, and therapy of disease as well as in the understanding of normal. The scope of JMI includes: Imaging physics, Tomographic reconstruction algorithms (such as those in CT and MRI), Image processing and deep learning, Computer-aided diagnosis and quantitative image analysis, Visualization and modeling, Picture archiving and communications systems (PACS), Image perception and observer performance, Technology assessment, Ultrasonic imaging, Image-guided procedures, Digital pathology, Biomedical applications of biomedical imaging. JMI allows for the peer-reviewed communication and archiving of scientific developments, translational and clinical applications, reviews, and recommendations for the field.
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