Anatomical Region Recognition and Real-time Bone Tracking Methods by Dynamically Decoding A-Mode Ultrasound Signals
Bangyu Lan, Stefano Stramigioli, Kenan Niu

TL;DR
This paper presents a deep learning method for real-time bone tracking and anatomical region recognition using A-mode ultrasound signals, improving accuracy and safety in orthopedic applications.
Contribution
It introduces a novel deep learning approach with cascaded U-Nets for simultaneous bone tracking and anatomical region classification from ultrasound signals.
Findings
97% accuracy in anatomical region classification
~0.5mm precision in dynamic bone tracking
Potential for improved safety and accuracy in orthopedic procedures
Abstract
Accurate bone tracking is crucial for kinematic analysis in orthopedic surgery and prosthetic robotics. Traditional methods (e.g., skin markers) are subject to soft tissue artifacts, and the bone pins used in surgery introduce the risk of additional trauma and infection. For electromyography (EMG), its inability to directly measure joint angles requires complex algorithms for kinematic estimation. To address these issues, A-mode ultrasound-based tracking has been proposed as a non-invasive and safe alternative. However, this approach suffers from limited accuracy in peak detection when processing received ultrasound signals. To build a precise and real-time bone tracking approach, this paper introduces a deep learning-based method for anatomical region recognition and bone tracking using A-mode ultrasound signals, specifically focused on the knee joint. The algorithm is capable of…
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Taxonomy
TopicsMedical Imaging and Analysis
MethodsFocus
