Raymond Mallory J, Biswal Biswajit, Pipaliya Royal M, Rowley Mark A, Meyer Ted A
Department of Otolaryngology-Head and Neck Surgery, Medical University of South Carolina, Jacksonville, USA.
Department of Otolaryngology-Head and Neck Surgery, Mayo Clinic Florida, Jacksonville, Florida, USA.
Otolaryngol Head Neck Surg. 2024 Jun;170(6):1555-1560. doi: 10.1002/ohn.733. Epub 2024 Mar 23.
To develop a convolutional neural network-based computer vision model to recognize and track 2 mastoidectomy surgical instruments-the drill and the suction-irrigator-from intraoperative video recordings of mastoidectomies.
Technological development and model validation.
Academic center.
Ten 1-minute videos of mastoidectomies done for cochlear implantation by varying levels of resident surgeons were collected. For each video, containing 900 frames, an open-access computer vision annotation tool was used to annotate the drill and suction-irrigator class images with bounding boxes. A mastoidectomy instrument tracking module, which extracts the center coordinates of bounding boxes, was developed using a feature pyramid network and layered with DETECTRON, an open-access faster-region-based convolutional neural network. Eight videos were used to train the model, and 2 videos were used for testing. Outcome measures included Intersection over Union (IoU) ratio, accuracy, and average precision.
For an IoU of 0.5, the mean average precision for the drill was 99% and 86% for the suction-irrigator. The model proved capable of generating maps of drill and suction-irrigator stroke direction and distance for the entirety of each video.
This computer vision model can identify and track the drill and suction-irrigator from videos of intraoperative mastoidectomies performed by residents with excellent precision. It can now be employed to retrospectively study objective mastoidectomy measures of expert and resident surgeons, such as drill and suction-irrigator stroke concentration, economy of motion, speed, and coordination, setting the stage for characterization of objective expectations for safe and efficient mastoidectomies.
开发一种基于卷积神经网络的计算机视觉模型,用于从乳突切除术中的视频记录中识别和跟踪两种乳突切除手术器械——钻头和吸引冲洗器。
技术开发与模型验证。
学术中心。
收集了由不同水平住院医师进行的10段时长1分钟的人工耳蜗植入乳突切除术视频。对于每个包含900帧的视频,使用一个开放获取的计算机视觉标注工具,用边界框标注钻头和吸引冲洗器类图像。使用特征金字塔网络开发了一个乳突切除器械跟踪模块,该模块提取边界框的中心坐标,并与DETECTRON(一种开放获取的基于区域的更快卷积神经网络)分层。8段视频用于训练模型,2段视频用于测试。结果指标包括交并比(IoU)、准确率和平均精度。
对于IoU为0.5的情况,钻头的平均精度为99%,吸引冲洗器的平均精度为86%。该模型能够生成每个视频中钻头和吸引冲洗器行程方向和距离的地图。
该计算机视觉模型能够以极高的精度从住院医师进行的术中乳突切除术视频中识别和跟踪钻头和吸引冲洗器。现在可以用它来回顾性研究专家和住院医师的客观乳突切除手术指标,如钻头和吸引冲洗器的行程集中度、动作经济性、速度和协调性,为确定安全高效乳突切除术的客观期望奠定基础。