| Literature DB >> 33597615 |
Matthias Seibold1,2, Steven Maurer3, Armando Hoch3, Patrick Zingg3, Mazda Farshad3, Nassir Navab4, Philipp Fürnstahl5,3.
Abstract
In this work, we developed and validated a computer method capable of robustly detecting drill breakthrough events and show the potential of deep learning-based acoustic sensing for surgical error prevention. Bone drilling is an essential part of orthopedic surgery and has a high risk of injuring vital structures when over-drilling into adjacent soft tissue. We acquired a dataset consisting of structure-borne audio recordings of drill breakthrough sequences with custom piezo contact microphones in an experimental setup using six human cadaveric hip specimens. In the following step, we developed a deep learning-based method for the automated detection of drill breakthrough events in a fast and accurate fashion. We evaluated the proposed network regarding breakthrough detection sensitivity and latency. The best performing variant yields a sensitivity of [Formula: see text]% for drill breakthrough detection in a total execution time of 139.29[Formula: see text]. The validation and performance evaluation of our solution demonstrates promising results for surgical error prevention by automated acoustic-based drill breakthrough detection in a realistic experiment while being multiple times faster than a surgeon's reaction time. Furthermore, our proposed method represents an important step for the translation of acoustic-based breakthrough detection towards surgical use.Entities:
Mesh:
Year: 2021 PMID: 33597615 PMCID: PMC7889943 DOI: 10.1038/s41598-021-83506-4
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379