ICube, University of Strasbourg, CNRS, IHU Strasbourg, France.
Fondazione Policlínico Universitario A. Gemelli IRCCS, Rome, Italy.
Ann Surg. 2022 May 1;275(5):955-961. doi: 10.1097/SLA.0000000000004351. Epub 2020 Nov 16.
To develop a deep learning model to automatically segment hepatocystic anatomy and assess the criteria defining the critical view of safety (CVS) in laparoscopic cholecystectomy (LC).
Poor implementation and subjective interpretation of CVS contributes to the stable rates of bile duct injuries in LC. As CVS is assessed visually, this task can be automated by using computer vision, an area of artificial intelligence aimed at interpreting images.
Still images from LC videos were annotated with CVS criteria and hepatocystic anatomy segmentation. A deep neural network comprising a segmentation model to highlight hepatocystic anatomy and a classification model to predict CVS criteria achievement was trained and tested using 5-fold cross validation. Intersection over union, average precision, and balanced accuracy were computed to evaluate the model performance versus the annotated ground truth.
A total of 2854 images from 201 LC videos were annotated and 402 images were further segmented. Mean intersection over union for segmentation was 66.6%. The model assessed the achievement of CVS criteria with a mean average precision and balanced accuracy of 71.9% and 71.4%, respectively.
Deep learning algorithms can be trained to reliably segment hepatocystic anatomy and assess CVS criteria in still laparoscopic images. Surgical-technical partnerships should be encouraged to develop and evaluate deep learning models to improve surgical safety.
开发一种深度学习模型,以自动分割肝胆解剖结构并评估腹腔镜胆囊切除术(LC)中安全关键视野(CVS)的定义标准。
CVS 的实施不佳和主观解释导致 LC 中胆管损伤的稳定率。由于 CVS 是通过视觉评估的,因此可以使用计算机视觉(人工智能的一个领域,旨在解释图像)来实现此任务的自动化。
使用 5 折交叉验证,使用 CVS 标准和肝胆解剖分割对 LC 视频的静态图像进行注释。训练和测试了一个由分割模型突出肝胆解剖结构和分类模型预测 CVS 标准实现的深度神经网络。计算交并比、平均精度和平衡准确性,以评估模型相对于注释的地面真实情况的性能。
共对 201 个 LC 视频中的 2854 张图像进行了注释,另外对 402 张图像进行了分割。分割的平均交并比为 66.6%。该模型评估 CVS 标准的实现情况,平均精度和平衡准确性分别为 71.9%和 71.4%。
可以训练深度学习算法来可靠地分割肝胆解剖结构并评估静态腹腔镜图像中的 CVS 标准。应鼓励手术技术合作伙伴开发和评估深度学习模型,以提高手术安全性。