Suppression of immobilisation device on wrist radiography to improve fracture visualisation.

IF 4.7 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
European Radiology Pub Date : 2025-06-01 Epub Date: 2024-12-03 DOI:10.1007/s00330-024-11232-2
Sungwon Lee, Keum San Chun, Seungeun Lee, Hyemin Park, Tuan Dinh Le, Joon-Yong Jung
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引用次数: 0

Abstract

Objectives: This study validates the use of CycleGAN-generated wrist radiographs with digitally removed splints, specifically assessing their impact on fracture visualisation.

Materials and methods: We retrospectively collected wrist radiographs from 1748 patients who had imaging before and after splint application at a single institution. The dataset was divided into training (1696 patients, 5353 images) and testing sets (52 patients, 965 images). A CycleGAN-based model was trained to generate splint-free wrist radiographs (generated "splint-less") from the original "splint" images. A pre-trained fracture detection model (YOLO8s) was used to assess fracture detection performance on three image groups: original "splint-less" radiographs, original "splint" radiographs, and generated "splint-less" radiographs. Two radiologists scored the generated images. Subtraction images quantified overall image alterations. Precision, recall, and F1 scores were used to compare fracture detection performance.

Results: CycleGAN effectively generated splint-suppressed radiographs with minimal remaining splint density (< 10% remaining in 97.99%), hardware distortion (< 10% change in 100%), anatomical distortion (< 10% in 99.63%), and fracture lesion changes (< 10% change in 100%). New artefacts were rare (absent in 97.54%). Notably, the fracture detection model achieved higher precision (0.94 vs. 0.92), recall (0.63 vs. 0.5), and F1 score (0.75 vs. 0.65) on the generated "splint-less" radiographs compared to the original "splint" radiographs, approaching the performance on original "splint-less" radiographs (F1 0.71). Furthermore, greater image alterations by CycleGAN correlated with larger improvements in fracture detection.

Conclusion: CycleGAN successfully removed splint densities from wrist radiographs with splints.

Key points: Question Can CycleGAN (Generative Adversarial Networks), designed for image-to-image translation, generate synthetic "splint-less" radiographs to improve fracture visualisation in follow-up radiographs? Findings Removal of splint densities from wrist radiographs using Generative Adversarial Networks preserved anatomical structures and improved the performance of a fracture detection model. Clinical relevance Generated splint-less radiographs can enhance the performance of wrist fracture detection in wrist radiographs, benefiting both human clinicians and AI-powered diagnostic tools.

腕关节x线摄影中抑制固定装置以改善骨折显像。
目的:本研究验证了cyclegan生成的腕部x线片与数字移除夹板的使用,特别评估了它们对骨折可视化的影响。材料和方法:我们回顾性收集了1748例患者在夹板应用前后的腕关节x线片。数据集分为训练集(1696例患者,5353幅图像)和测试集(52例患者,965幅图像)。训练基于cyclegan的模型,从原始“夹板”图像生成无夹板手腕x线片(生成“无夹板”)。使用预训练的骨折检测模型(YOLO8s)评估三组图像的骨折检测性能:原始“无夹板”x线片、原始“夹板”x线片和生成的“无夹板”x线片。两名放射科医生对生成的图像进行评分。减法图像量化了整体图像的变化。精确度、召回率和F1评分用于比较骨折检测性能。结果:CycleGAN有效生成夹板抑制x线片,夹板剩余密度最小(97.99% < 10%),硬件畸变(100% < 10%变化),解剖畸变(99.63% < 10%变化),骨折病变改变(100% < 10%变化)。新的人工制品很少(97.54%没有)。值得注意的是,与原始“无夹板”x线片相比,骨折检测模型在生成的“无夹板”x线片上获得了更高的精度(0.94比0.92)、召回率(0.63比0.5)和F1评分(0.75比0.65),接近原始“无夹板”x线片的性能(F1为0.71)。此外,CycleGAN对图像的较大改变与裂缝检测的较大改进相关。结论:CycleGAN成功地消除了夹板腕部x线片上的夹板密度。专为图像到图像转换而设计的CycleGAN(生成对抗网络)能否生成合成的“无夹板”x线片,以改善后续x线片中的骨折可视化?使用生成对抗网络从腕关节x线片上去除夹板密度可以保留解剖结构,并提高骨折检测模型的性能。生成的无夹板x线片可以提高手腕x线片中手腕骨折检测的性能,使人类临床医生和人工智能诊断工具都受益。
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来源期刊
European Radiology
European Radiology 医学-核医学
CiteScore
11.60
自引率
8.50%
发文量
874
审稿时长
2-4 weeks
期刊介绍: European Radiology (ER) continuously updates scientific knowledge in radiology by publication of strong original articles and state-of-the-art reviews written by leading radiologists. A well balanced combination of review articles, original papers, short communications from European radiological congresses and information on society matters makes ER an indispensable source for current information in this field. This is the Journal of the European Society of Radiology, and the official journal of a number of societies. From 2004-2008 supplements to European Radiology were published under its companion, European Radiology Supplements, ISSN 1613-3749.
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