Author:
Gong Julia,Holsinger F. Christopher,Noel Julia E.,Mitani Sohei,Jopling Jeff,Bedi Nikita,Koh Yoon Woo,Orloff Lisa A.,Cernea Claudio R.,Yeung Serena
Abstract
AbstractSurgeons must visually distinguish soft-tissues, such as nerves, from surrounding anatomy to prevent complications and optimize patient outcomes. An accurate nerve segmentation and analysis tool could provide useful insight for surgical decision-making. Here, we present an end-to-end, automatic deep learning computer vision algorithm to segment and measure nerves. Unlike traditional medical imaging, our unconstrained setup with accessible handheld digital cameras, along with the unstructured open surgery scene, makes this task uniquely challenging. We investigate one common procedure, thyroidectomy, during which surgeons must avoid damaging the recurrent laryngeal nerve (RLN), which is responsible for human speech. We evaluate our segmentation algorithm on a diverse dataset across varied and challenging settings of operating room image capture, and show strong segmentation performance in the optimal image capture condition. This work lays the foundation for future research in real-time tissue discrimination and integration of accessible, intelligent tools into open surgery to provide actionable insights.
Funder
Isackson Family Fund for Research in Head and Neck Surgery
Publisher
Springer Science and Business Media LLC
Cited by
14 articles.
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