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Automated detection of surgical wounds in videos of open neck procedures using a mask R-CNN

机译:使用掩模R-CNN自动检测张开颈部手术视频的手术伤口

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Open surgery represents a dominant proportion of procedures performed, but has lagged behind endoscopic surgery in video-based insights due to the difficulty obtaining high-quality open surgical video. Automated detection of the open surgical wound would enhance tracking and stabilization of body-worn cameras to optimize video capture for these procedures. We present results using a mask R-CNN to identify the surgical wound (the "area of interest", AOI) in image sets derived from 27 open neck procedures (a 2310-image training/validation set and a 1163-image testing set). Bounding box application to the surgical wound was reliable (F-1 > 0.905) in the testing sets with a <5% false positive rate (recognizing non-wound areas as the AOI). Mask application to greater than 50% of the wound area also had good success (F-1 = 0.831) under parameters set for high specificity. When applied to short video clips as proof-of-principle, the model performed well both with emerging AOI (i.e., identifying the wound as incisions were developed) and with recapture of the AOI following obstruction). Overall, we identified image lighting quality and the presence of distractors (e.g., bloody sponges) as the primary sources of model errors on visual review. These data serve as a first demonstration of open surgical wound detection using first-person video footage, and sets the stage for further work in this area.
机译:开放式手术代表了所做的程序的主要比例,但由于获得高质量开放外科视频,因此在基于视频的见解中落后于内窥镜手术。自动检测开放式外科伤口将增强身体磨损相机的跟踪和稳定,以优化这些程序的视频捕获。我们使用掩模R-CNN识别出从27个开放颈过程的图像组中的手术伤口(“感兴趣区域”,AOI)(A 2310图像训练/验证组和1163图像测试集) 。在试验组中,对手术伤口的限定盒施用是可靠的(F-1> 0.905),具有<5%的假阳性率(识别为AOI的非卷绕区域)。对于高于特异性的参数,掩模应用到伤口区域的大于50%的伤口区域也具有良好的成功(F-1 = 0.831)。当应用于短视频剪辑作为原则上的原理上时,该模型与新出现的AOI(即,识别伤口,因为切口被开发)并恢复阻碍后AOI)。总体而言,我们确定了图像照明质量和存在的分散体(例如,血腥海绵)作为视觉审查的主要模型误差的主要来源。这些数据用作使用第一人称视频镜头开放手术伤口检测的第一次演示,并在该区域中设置进一步工作的阶段。

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