基于改进unet的显微外科面部神经自动识别。

IF 3 3区 医学 Q2 SURGERY
Xin Ding, Yu Huang, Yang Zhao, Xu Tian, Qing Zhang, Zhiqiang Gao, Guodong Feng
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引用次数: 0

摘要

开发一种深度学习模型,提高显微手术中面神经的分割和检测,从而提高手术精度和安全性。我们收集了25例面神经减压显微手术患者的录像。从这些视频中,我们提取并标注了来自14名患者的2724张图像,用于训练和验证(训练集:验证集= 2452:272)。将数据增强技术应用于训练集,增加了5倍(12,260张图像)。为了评估我们模型的准确性,我们仔细选择并注释了来自11名未受过训练的患者的1674张图像。然后,我们引入了一种改进的Unet模型,该模型集成了各种注意机制、特征丰富的跳过连接机制和多维卷积块,以克服传统Unet模型在处理模糊或小目标图像时面临的挑战。与最先进的方法相比,我们提出的模型取得了最好的性能。fullgrad生成的热图证明该模型已经学习了面部神经的特征。改进的Unet在验证集上的mIOU为0.9165,在测试集上的mIOU为0.6543。在各种复杂的显微手术环境下,包括血液、闭塞和模糊,我们的模型可以精确地检测和分割面神经。结果表明,该方法在显微外科中提供关键解剖结构的实时指导方面具有很高的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated facial nerve identification in microsurgery with an improved unet.

To develop a deep-learning model that improves the segmentation and detection of Facial Nerve in microsurgery, thereby increasing surgical precision and safety. We collected videos from 25 patients undergoing facial nerve decompression microsurgery. From these videos, we extracted and annotated 2724 images from 14 patients for training and validation (training set: validation set = 2452: 272). Data augmentation techniques were applied to the training set with a five-fold increase (12,260 images). To evaluate the accuracy of our model, we carefully selected and annotated 1674 images from 11 patients who had not been previously trained. We then introduced an Improved Unet model that integrates various attention mechanisms, a feature-rich skip connection mechanism, and a multi-dimensional convolutional block to overcome the challenges faced by traditional Unet models when dealing with blurred or small target images. Compared with the state-of-the-art method, our proposed model achieved the best performance. The FullGrad-generated heatmap certified that the model has learned the Facial Nerve features. The Improved Unet obtained an mIOU of 0.9165 with the validation set and an mIOU of 0.6543 with the test set. In various complex microsurgical environments including blood, occlusion, and blurriness, our model can detect and segment Facial Nerve precisely. The results demonstrate the proposed method is highly promising in providing real-time intraoperative guidance of the critical anatomical structures in microsurgery.

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来源期刊
CiteScore
4.20
自引率
8.70%
发文量
145
期刊介绍: The aim of the Journal of Robotic Surgery is to become the leading worldwide journal for publication of articles related to robotic surgery, encompassing surgical simulation and integrated imaging techniques. The journal provides a centralized, focused resource for physicians wishing to publish their experience or those wishing to avail themselves of the most up-to-date findings.The journal reports on advance in a wide range of surgical specialties including adult and pediatric urology, general surgery, cardiac surgery, gynecology, ENT, orthopedics and neurosurgery.The use of robotics in surgery is broad-based and will undoubtedly expand over the next decade as new technical innovations and techniques increase the applicability of its use. The journal intends to capture this trend as it develops.
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