IVLGJun 9, 2021

Domain Specific Transporter Framework to Detect Fractures in Ultrasound

arXiv:2106.05929v11 citations
Originality Incremental advance
AI Analysis

This work addresses the need for reliable automatic fracture detection in emergency departments using ultrasound, though it is incremental as it builds on existing deep learning and domain-specific techniques.

The paper tackled the problem of high interobserver variability in manual ultrasound fracture detection by proposing an unsupervised domain-specific transporter framework to identify keypoints in wrist ultrasound scans, achieving accurate detection of 180 out of 250 bone regions.

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.

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