Neofytou Alexander Paul, Kowalik Grzegorz Tomasz, Vidya Shankar Rohini, Huang Li, Moon Tracy, Mellor Nina, Razavi Reza, Neji Radhouene, Pushparajah Kuberan, Roujol Sébastien
School of Biomedical Engineering and Imaging Sciences, Faculty of Life Sciences and Medicine, King's College London, London, United Kingdom.
Department of Paediatric Cardiology, Evelina London Children's Hospital, London, United Kingdom.
Front Cardiovasc Med. 2023 Sep 7;10:1233093. doi: 10.3389/fcvm.2023.1233093. eCollection 2023.
Magnetic Resonance Imaging (MRI) is a promising alternative to standard x-ray fluoroscopy for the guidance of cardiac catheterization procedures as it enables soft tissue visualization, avoids ionizing radiation and provides improved hemodynamic data. MRI-guided cardiac catheterization procedures currently require frequent manual tracking of the imaging plane during navigation to follow the tip of a gadolinium-filled balloon wedge catheter, which unnecessarily prolongs and complicates the procedures. Therefore, real-time automatic image-based detection of the catheter balloon has the potential to improve catheter visualization and navigation through automatic slice tracking.
In this study, an automatic, parameter-free, deep-learning-based post-processing pipeline was developed for real-time detection of the catheter balloon. A U-Net architecture with a ResNet-34 encoder was trained on semi-artificial images for the segmentation of the catheter balloon. Post-processing steps were implemented to guarantee a unique estimate of the catheter tip coordinates. This approach was evaluated retrospectively in 7 patients (6M and 1F, age = 7 ± 5 year) who underwent an MRI-guided right heart catheterization procedure with all images acquired in an orientation unseen during training.
The overall accuracy, specificity and sensitivity of the proposed catheter tracking strategy over all 7 patients were 98.4 ± 2.0%, 99.9 ± 0.2% and 95.4 ± 5.5%, respectively. The computation time of the deep-learning-based segmentation step was ∼10 ms/image, indicating its compatibility with real-time constraints.
Deep-learning-based catheter balloon tracking is feasible, accurate, parameter-free, and compatible with real-time conditions. Online integration of the technique and its evaluation in a larger patient cohort are now warranted to determine its benefit during MRI-guided cardiac catheterization.
磁共振成像(MRI)是一种很有前景的替代标准X射线荧光透视的技术,可用于心脏导管插入术的引导,因为它能够实现软组织可视化,避免电离辐射,并提供更好的血流动力学数据。目前,MRI引导的心脏导管插入术在导航过程中需要频繁手动跟踪成像平面,以追踪装有钆的球囊楔形导管的尖端,这不必要地延长了手术时间并使其复杂化。因此,基于图像的导管球囊实时自动检测有潜力通过自动切片跟踪改善导管可视化和导航。
在本研究中,开发了一种基于深度学习的自动、无参数后处理管道,用于实时检测导管球囊。使用带有ResNet-34编码器的U-Net架构在半人工图像上进行训练,以分割导管球囊。实施后处理步骤以确保对导管尖端坐标的唯一估计。对7例患者(6名男性和1名女性,年龄=7±5岁)进行了回顾性评估,这些患者接受了MRI引导的右心导管插入术,所有图像均在训练期间未见过的方向上采集。
所提出的导管跟踪策略在所有7例患者中的总体准确率、特异性和敏感性分别为98.4±2.0%、99.9±0.2%和95.4±5.5%。基于深度学习的分割步骤的计算时间约为10毫秒/图像,表明其与实时限制兼容。
基于深度学习的导管球囊跟踪是可行的、准确的、无参数的,并且与实时条件兼容。现在有必要在更大的患者队列中对该技术进行在线集成及其评估,以确定其在MRI引导的心脏导管插入术中的益处。