Blaivas Michael, Arntfield Robert, White Matthew
University of South Carolina School of Medicine, Columbia, South Carolina, USA.
Department of Emergency Medicine, St Francis Hospital, Columbus, Georgia USA.
J Ultrasound Med. 2020 Sep;39(9):1721-1727. doi: 10.1002/jum.15270. Epub 2020 Mar 17.
We sought to create a deep learning (DL) algorithm to identify vessels, bones, nerves, and tendons on transverse upper extremity (UE) ultrasound (US) images to enable providers new to US-guided peripheral vascular access to identify anatomy.
We used publicly available DL architecture (YOLOv3) and deidentified transverse US videos of the UE for algorithm development. Vessels, bones, tendons, and nerves were labeled with bounding boxes. A total of 203,966 images were generated from videos, with corresponding label box coordinates in a YOLOv3 format. Training accuracy, losses, and learning curves were tracked. As a final real-world test, 50 randomly selected images from unrelated UE US videos were used to test the DL algorithm. Four different versions of the YOLOv3 algorithm were tested with varied amounts of training and sensitivity settings. The same 50 images were labeled by 2 blinded point-of-care ultrasound (POCUS) experts. The area under the curve (AUC) was calculated for the DL algorithm and POCUS expert performance.
The algorithm outperformed POCUS experts in detection of all structures in the UE, with an AUC of 0.78 versus 0.69 and 0.71, respectively. When considering vessels, only one of the POCUS experts attained an AUC of 0.85, just ahead of the DL algorithm, with an AUC of 0.83.
Our DL algorithm proved accurate at identifying 4 common structures on cross-sectional US imaging of the UE, which would allow novice POCUS providers to more confidently and accurately target vessels for cannulation, avoiding other structures. Overall, the algorithm outperformed 2 blinded POCUS experts.
我们试图创建一种深度学习(DL)算法,用于识别上肢(UE)横向超声(US)图像上的血管、骨骼、神经和肌腱,以使初次接触超声引导外周血管通路的医护人员能够识别解剖结构。
我们使用公开可用的DL架构(YOLOv3)和经过去识别处理的UE横向超声视频进行算法开发。用边界框标记血管、骨骼、肌腱和神经。从视频中总共生成了203,966张图像,其对应的标签框坐标为YOLOv3格式。跟踪训练准确率、损失和学习曲线。作为最终的实际测试,从无关的UE超声视频中随机选择50张图像来测试DL算法。对四种不同版本的YOLOv3算法进行了测试,其训练量和灵敏度设置各不相同。由2名盲法的床旁超声(POCUS)专家对相同的50张图像进行标记。计算DL算法和POCUS专家表现的曲线下面积(AUC)。
该算法在检测UE中的所有结构方面优于POCUS专家,AUC分别为0.78,而POCUS专家的AUC分别为0.69和0.71。在考虑血管时,只有一名POCUS专家的AUC达到0.85,略高于DL算法的0.83。
我们的DL算法在识别UE横断面超声成像上的4种常见结构方面被证明是准确的,这将使新手POCUS医护人员能够更自信、准确地将血管作为穿刺目标,避开其他结构。总体而言,该算法的表现优于2名盲法POCUS专家。