首页 /研究 /Automated segmentation by deep learning of loose connective tissue fibers to define safe dissection planes in robot-assisted gastrectomy
SURGICAL

Automated segmentation by deep learning of loose connective tissue fibers to define safe dissection planes in robot-assisted gastrectomy

Yuta Kumazu, Nao Kobayashi, Naoki Kitamura, Elleuch Rayan, Paul Neculoiu, Toshihiro Misumi, Yudai Hojo, Tatsuro Nakamura, Tsutomu Kumamoto, Yasunori Kurahashi, Yoshinori Ishida, Munetaka Masuda, Hisashi Shinohara

发表年份
2021
引用次数
78
访问权限
开放获取

摘要

The prediction of anatomical structures within the surgical field by artificial intelligence (AI) is expected to support surgeons' experience and cognitive skills. We aimed to develop a deep-learning model to automatically segment loose connective tissue fibers (LCTFs) that define a safe dissection plane. The annotation was performed on video frames capturing a robot-assisted gastrectomy performed by trained surgeons. A deep-learning model based on U-net was developed to output segmentation results. Twenty randomly sampled frames were provided to evaluate model performance by comparing Recall and F1/Dice scores with a ground truth and with a two-item questionnaire on sensitivity and misrecognition that was completed by 20 surgeons. The model produced high Recall scores (mean 0.606, maximum 0.861). Mean F1/Dice scores reached 0.549 (range 0.335-0.691), showing acceptable spatial overlap of the objects. Surgeon evaluators gave a mean sensitivity score of 3.52 (with 88.0% assigning the highest score of 4; range 2.45-3.95). The mean misrecognition score was a low 0.14 (range 0-0.7), indicating very few acknowledged over-detection failures. Thus, AI can be trained to predict fine, difficult-to-discern anatomical structures at a level convincing to expert surgeons. This technology may help reduce adverse events by determining safe dissection planes.

关键词

SegmentationArtificial intelligenceGround truthDissection (medical)Computer scienceDeep learningF1 scoreDiceRecallPrecision and recall

相关论文

查看 SURGICAL 分类全部论文