通过深度学习自动定位头部电影透视图像中的解剖标志。

IF 3.2 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Medical physics Pub Date : 2024-08-14 DOI:10.1002/mp.17349
Wilbur KS Fum, Mohammad Nazri Md Shah, Raja Rizal Azman Raja Aman, Khairul Azmi Abd Kadir, Sum Leong, Li Kuo Tan
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引用次数: 0

摘要

背景:透视引导下介入治疗(FGIs)具有长时间辐射照射的风险;为提高这些手术过程中的患者安全性,有必要对患者进行个性化剂量测定。然而,目前的 FGIs 系统并不能捕捉到患者的精确照射区域,这使得进行患者特定程序剂量测定具有挑战性。目的:提出一种深度学习(DL)方法,用于在随机准直和放大的二维头部透视图像上自动定位三维解剖地标:该模型的数据集包括 800 000 张伪二维合成图像(血管增强和非增强的混合图像),每张图像都有 55 个注释解剖地标(其中两个是眼球镜片地标),这些图像由 135 个回顾性收集的头部计算机断层扫描(CT)容积数据生成。在训练之前,进行了动态随机裁剪,以模拟 FGI 过程中不同的视野大小准直。对每幅图像都应用了高斯分布加性噪声,以增强 DL 模型在处理临床图像采集过程中可能出现的图像质量下降问题时的鲁棒性。该模型使用 629 370 幅合成图像进行了约 275 000 次迭代训练,并根据合成图像测试集和临床透视测试集进行了评估:结果:该模型在估计图像内和图像外地标位置方面表现出色,并显示出头骨形状实例化的可行性。在合成测试图像上,该模型分别成功检测出 96.4% 和 92.5% 的二维和三维地标,误差在 10 毫米以内。该模型的平均径向误差为 3.6 ± 2.3 毫米,在临床透视图像上成功检测到 96.8% 的二维地标,误差在 10 毫米以内:我们的深度学习模型成功定位了解剖学地标,并从准直二维投影视图中估算出了头骨结构的大致形状。这种方法可帮助确定 FGIs 手术中患者特定器官剂量测定所需的照射区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic localization of anatomical landmarks in head cine fluoroscopy images via deep learning

Background

Fluoroscopy guided interventions (FGIs) pose a risk of prolonged radiation exposure; personalized patient dosimetry is necessary to improve patient safety during these procedures. However, current FGIs systems do not capture the precise exposure regions of the patient, making it challenging to perform patient-procedure-specific dosimetry. Thus, there is a pressing need to develop approaches to extract and use this information to enable personalized radiation dosimetry for interventional procedures.

Purpose

To propose a deep learning (DL) approach for the automatic localization of 3D anatomical landmarks on randomly collimated and magnified 2D head fluoroscopy images.

Materials and methods

The model was developed with datasets comprising 800 000 pseudo 2D synthetic images (mixture of vessel-enhanced and non-enhancement), each with 55 annotated anatomical landmarks (two are landmarks for eye lenses), generated from 135 retrospectively collected head computed tomography (CT) volumetric data. Before training, dynamic random cropping was performed to mimic the varied field-size collimation in FGI procedures. Gaussian-distributed additive noise was applied to each individual image to enhance the robustness of the DL model in handling image degradation that may occur during clinical image acquisition in a clinical environment. The model was trained with 629 370 synthetic images for approximately 275 000 iterations and evaluated against a synthetic image test set and a clinical fluoroscopy test set.

Results

The model shows good performance in estimating in- and out-of-image landmark positions and shows feasibility to instantiate the skull shape. The model successfully detected 96.4% and 92.5% 2D and 3D landmarks, respectively, within a 10 mm error on synthetic test images. It demonstrated an average of 3.6 ± 2.3 mm mean radial error and successfully detected 96.8% 2D landmarks within 10 mm error on clinical fluoroscopy images.

Conclusion

Our deep-learning model successfully localizes anatomical landmarks and estimates the gross shape of skull structures from collimated 2D projection views. This method may help identify the exposure region required for patient-specific organ dosimetry in FGIs procedures.

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来源期刊
Medical physics
Medical physics 医学-核医学
CiteScore
6.80
自引率
15.80%
发文量
660
审稿时长
1.7 months
期刊介绍: Medical Physics publishes original, high impact physics, imaging science, and engineering research that advances patient diagnosis and therapy through contributions in 1) Basic science developments with high potential for clinical translation 2) Clinical applications of cutting edge engineering and physics innovations 3) Broadly applicable and innovative clinical physics developments Medical Physics is a journal of global scope and reach. By publishing in Medical Physics your research will reach an international, multidisciplinary audience including practicing medical physicists as well as physics- and engineering based translational scientists. We work closely with authors of promising articles to improve their quality.
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