SPLGROMar 9, 2024

Deep Learning based acoustic measurement approach for robotic applications on orthopedics

arXiv:2403.05879v14 citationsh-index: 15ICRA
Originality Incremental advance
AI Analysis

This addresses the need for less invasive and more efficient bone tracking in orthopedic surgery, though it is incremental as it builds on existing ultrasound-based approaches.

The study tackled the problem of invasive bone tracking in Total Knee Replacement Arthroplasty by proposing a deep learning method using A-mode ultrasound, achieving sub-millimeter precision across most bone areas.

In Total Knee Replacement Arthroplasty (TKA), surgical robotics can provide image-guided navigation to fit implants with high precision. Its tracking approach highly relies on inserting bone pins into the bones tracked by the optical tracking system. This is normally done by invasive, radiative manners (implantable markers and CT scans), which introduce unnecessary trauma and prolong the preparation time for patients. To tackle this issue, ultrasound-based bone tracking could offer an alternative. In this study, we proposed a novel deep learning structure to improve the accuracy of bone tracking by an A-mode ultrasound (US). We first obtained a set of ultrasound dataset from the cadaver experiment, where the ground truth locations of bones were calculated using bone pins. These data were used to train the proposed CasAtt-UNet to predict bone location automatically and robustly. The ground truth bone locations and those locations of US were recorded simultaneously. Therefore, we could label bone peaks in the raw US signals. As a result, our method achieved sub millimeter precision across all eight bone areas with the only exception of one channel in the ankle. This method enables the robust measurement of lower extremity bone positions from 1D raw ultrasound signals. It shows great potential to apply A-mode ultrasound in orthopedic surgery from safe, convenient, and efficient perspectives.

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