Abramson Haley G, Curry Eli J, Mess Griffin, Thombre Rasika, Kempski-Leadingham Kelley M, Mistry Shivang, Somanathan Subhiksha, Roy Laura, Abu-Bonsrah Nancy, Coles George, Doloff Joshua C, Brem Henry, Theodore Nicholas, Huang Judy, Manbachi Amir
Department of Biomedical Engineering, Johns Hopkins University School of Medicine, Baltimore, MD, United States.
Department of Neurosurgery, Johns Hopkins University School of Medicine, Baltimore, MD, United States.
Front Surg. 2022 Nov 30;9:1040066. doi: 10.3389/fsurg.2022.1040066. eCollection 2022.
Objects accidentally left behind in the brain following neurosurgical procedures may lead to life-threatening health complications and invasive reoperation. One of the most commonly retained surgical items is the cotton ball, which absorbs blood to clear the surgeon's field of view yet in the process becomes visually indistinguishable from the brain parenchyma. However, using ultrasound imaging, the different acoustic properties of cotton and brain tissue result in two discernible materials. In this study, we created a fully automated foreign body object tracking algorithm that integrates into the clinical workflow to detect and localize retained cotton balls in the brain. This deep learning algorithm uses a custom convolutional neural network and achieves 99% accuracy, sensitivity, and specificity, and surpasses other comparable algorithms. Furthermore, the trained algorithm was implemented into web and smartphone applications with the ability to detect one cotton ball in an uploaded ultrasound image in under half of a second. This study also highlights the first use of a foreign body object detection algorithm using real in-human datasets, showing its ability to prevent accidental foreign body retention in a translational setting.
神经外科手术后遗留在大脑中的异物可能会导致危及生命的健康并发症和侵入性再次手术。最常遗留的手术物品之一是棉球,它用于吸收血液以清理外科医生的视野,但在此过程中在视觉上与脑实质难以区分。然而,利用超声成像,棉球和脑组织不同的声学特性会产生两种可辨别的物质。在本研究中,我们创建了一种全自动异物跟踪算法,该算法可集成到临床工作流程中,以检测和定位大脑中遗留的棉球。这种深度学习算法使用定制的卷积神经网络,准确率、灵敏度和特异性均达到99%,并超过了其他可比算法。此外,经过训练的算法被应用到网络和智能手机应用程序中,能够在不到半秒的时间内检测上传超声图像中的一个棉球。这项研究还突出了首次使用基于真实人体数据集的异物检测算法,展示了其在转化环境中预防意外异物残留的能力。