Ultrasound examination for detecting fractures is ideally suited for Emergency Departments (ED) as it is relatively fast, safe (from ionizing radiation), has dynamic imaging capability and is easily portable. High interobserver variability in manual assessment of ultrasound scans has piqued research interest in automatic assessment techniques using Deep Learning (DL). Most DL techniques are supervised and are trained on large numbers of labeled data which is expensive and requires many hours of careful annotation by experts. In this paper, we propose an unsupervised, domain specific transporter framework to identify relevant keypoints from wrist ultrasound scans. Our framework provides a concise geometric representation highlighting regions with high structural variation in a 3D ultrasound (3DUS) sequence. We also incorporate domain specific information represented by instantaneous local phase (LP) which detects bone features from 3DUS. We validate the technique on 3DUS videos obtained from 30 subjects. Each ultrasound scan was independently assessed by three readers to identify fractures along with the corresponding x-ray. Saliency of keypoints detected in the image\ are compared against manual assessment based on distance from relevant features.The transporter neural network was able to accurately detect 180 out of 250 bone regions sampled from wrist ultrasound videos. We expect this technique to increase the applicability of ultrasound in fracture detection.
翻译:用于检测骨折的超声波检查非常适合应急部门(ED),因为它相对快、安全(来自电离辐射),具有动态成像能力且容易移动。超声波扫描手工评估中高超声波间观测器变化性对使用深层学习(DL)的自动评估技术具有很强的研究兴趣。大多数DL技术都受到监督,并接受大量标签数据的培训,这些数据昂贵,需要专家仔细批注许多小时。在本文中,我们提议建立一个不受监督的、具体域域域运输器框架,以确定手腕超声波扫描的相关关键点。我们的框架提供了简明的几何度代表法,突出3D超声波(3DUS)序列中结构变化较大的区域。我们还纳入了瞬时当地阶段(LP)所代表的具体域信息,从3DUS检测骨质特征。我们验证了从30个主题获得的3DUS视频的技术。每个超声波扫描器都经过三个读者的独立评估,以辨别断裂和相应的X射线。在图像中检测到的关键点的清晰度特征与从250超声波分辨率探测到超分辨率探测器的深度探测结果。我们能够从180的超力探测到超力探测到超声波路段。