Ismail Mostafa K, Araki Tetsuro, Gefter Warren B, Suzuki Yoshikazu, Raevsky Allie, Saleh Aya, Yusuf Sophia, Marquis Abigail, Alcudia Alyster, Duncan Ian, Schaubel Douglas E, Cantu Edward, Rizi Rahim
Department of Bioengineering, School of Engineering and Applied Sciences, University of Pennsylvania, Philadelphia, Pennsylvania, USA; Department of Radiology, Perelman School of Medicine, University of Pennsylvania, Philadelphia, Pennsylvania, USA.
Department of Radiology, Brigham and Women's Hospital, Harvard Medical School, Boston, Massachusetts, USA.
Am J Transplant. 2025 Jan;25(1):198-203. doi: 10.1016/j.ajt.2024.08.015. Epub 2024 Aug 23.
Lung size measurements play an important role in transplantation, as optimal donor-recipient size matching is necessary to ensure the best possible outcome. Although several strategies for size matching are currently used, all have limitations, and none has proven superior. In this pilot study, we leveraged deep learning and computer vision to develop an automated system for generating standardized lung size measurements using portable chest radiographs to improve accuracy, reduce variability, and streamline donor/recipient matching. We developed a 2-step framework involving lung mask extraction from chest radiographs followed by feature point detection to generate 6 distinct lung height and width measurements, which we validated against measurements reported by 2 radiologists (T.A. and W.B.G.) for 50 lung transplant recipients. Our system demonstrated <2.5% error (<7.0 mm) with robust interrater and intrarater agreement compared with an expert radiologist review. This is especially promising given that the radiographs used in this study were purposely chosen to include images with technical challenges such as consolidations, effusions, and patient rotation. Although validation in a larger cohort is necessary, this study highlights artificial intelligence's potential to both provide reproducible lung size assessment in real patients and enable studies on the effect of lung size matching on transplant outcomes in large data sets.
肺大小测量在移植中起着重要作用,因为供体与受体的最佳大小匹配对于确保可能的最佳结果是必要的。尽管目前使用了几种大小匹配策略,但所有策略都有局限性,且没有一种被证明是更优的。在这项初步研究中,我们利用深度学习和计算机视觉开发了一个自动化系统,使用便携式胸部X光片生成标准化的肺大小测量值,以提高准确性、减少变异性并简化供体/受体匹配。我们开发了一个两步框架,包括从胸部X光片中提取肺掩码,然后进行特征点检测,以生成6个不同的肺高度和宽度测量值,我们针对50名肺移植受者的测量值与两名放射科医生(T.A.和W.B.G.)报告的测量值进行了验证。与专家放射科医生的审查相比,我们的系统显示误差<2.5%(<7.0毫米),具有可靠的评分者间和评分者内一致性。鉴于本研究中使用的X光片特意选择包括具有诸如实变、积液和患者旋转等技术挑战的图像,这尤其有前景。尽管需要在更大的队列中进行验证,但这项研究突出了人工智能在为真实患者提供可重复的肺大小评估以及在大数据集中开展关于肺大小匹配对移植结果影响的研究方面的潜力。