Research Article: Deep learning-based optic nerve diameter sheath characterization and structure quantification on transorbital ultrasound images
Abstract:
Optic nerve quantification plays a pivotal role as a biomarker in the non-invasive assessment of elevated intracranial pressure and other neuro-ophthalmic conditions. The manual identification of these optic nerve structures is both resource-intensive and time-consuming. The accuracy of optic nerve segmentation in automated methods directly depends on the quality of the ultrasound images. In instances of sub-optimal image quality, applying deep learning-based methodologies emerges as a more effective approach for precise segmentation. In this work, we propose a deep neural network combining the benefits of shared and specific feature extraction branches as well as the uncertainty-aware loss function. Such an uncertainty-aware loss function could enable the model to learn a robust object structure. Experiments on a multi-center publicly available dataset demonstrate the superior performance of our model in optic nerve segmentation and its strong potential of optic nerve sheath diameter quantification. Specifically, our model has achieved 73.3 % Dice score and 84.5% AUROC on the test dataset, outperforming the state-of-the-art models by a large margin.
Introduction:
In recent years, the growing number of surgical patients, together with advancements in surgical techniques and the widespread adoption of minimally invasive procedures, has imposed higher demands on anesthesia and perioperative management. During general anesthesia, factors such as surgical manipulation, carbon dioxide pneumoperitoneum, and specific patient positioning can increase cerebral blood flow, elevate resistance to intracranial venous return, and raise jugular bulb pressure, thereby increasing…
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