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Autores principales: Li, Zhuofu, Zhang, Yonghong, Wang, Chengxia, Liu, Shanshan, Song, Xiongkang, Ji, Xuquan, Jiang, Shuai, Zhong, Woquan, Hu, Lei, Li, Weishi
Formato: Preprint
Publicado: 2023
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Acceso en línea:https://arxiv.org/abs/2312.17266
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author Li, Zhuofu
Zhang, Yonghong
Wang, Chengxia
Liu, Shanshan
Song, Xiongkang
Ji, Xuquan
Jiang, Shuai
Zhong, Woquan
Hu, Lei
Li, Weishi
author_facet Li, Zhuofu
Zhang, Yonghong
Wang, Chengxia
Liu, Shanshan
Song, Xiongkang
Ji, Xuquan
Jiang, Shuai
Zhong, Woquan
Hu, Lei
Li, Weishi
contents Objective: This study aims to use artificial intelligence to realize the automatic planning of laminectomy, and verify the method. Methods: We propose a two-stage approach for automatic laminectomy cutting plane planning. The first stage was the identification of key points. 7 key points were manually marked on each CT image. The Spatial Pyramid Upsampling Network (SPU-Net) algorithm developed by us was used to accurately locate the 7 key points. In the second stage, based on the identification of key points, a personalized coordinate system was generated for each vertebra. Finally, the transverse and longitudinal cutting planes of laminectomy were generated under the coordinate system. The overall effect of planning was evaluated. Results: In the first stage, the average localization error of the SPU-Net algorithm for the seven key points was 0.65mm. In the second stage, a total of 320 transverse cutting planes and 640 longitudinal cutting planes were planned by the algorithm. Among them, the number of horizontal plane planning effects of grade A, B, and C were 318(99.38%), 1(0.31%), and 1(0.31%), respectively. The longitudinal planning effects of grade A, B, and C were 622(97.18%), 1(0.16%), and 17(2.66%), respectively. Conclusions: In this study, we propose a method for automatic surgical path planning of laminectomy based on the localization of key points in CT images. The results showed that the method achieved satisfactory results. More studies are needed to confirm the reliability of this approach in the future.
format Preprint
id arxiv_https___arxiv_org_abs_2312_17266
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Automatic laminectomy cutting plane planning based on artificial intelligence in robot assisted laminectomy surgery
Li, Zhuofu
Zhang, Yonghong
Wang, Chengxia
Liu, Shanshan
Song, Xiongkang
Ji, Xuquan
Jiang, Shuai
Zhong, Woquan
Hu, Lei
Li, Weishi
Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
Robotics
Objective: This study aims to use artificial intelligence to realize the automatic planning of laminectomy, and verify the method. Methods: We propose a two-stage approach for automatic laminectomy cutting plane planning. The first stage was the identification of key points. 7 key points were manually marked on each CT image. The Spatial Pyramid Upsampling Network (SPU-Net) algorithm developed by us was used to accurately locate the 7 key points. In the second stage, based on the identification of key points, a personalized coordinate system was generated for each vertebra. Finally, the transverse and longitudinal cutting planes of laminectomy were generated under the coordinate system. The overall effect of planning was evaluated. Results: In the first stage, the average localization error of the SPU-Net algorithm for the seven key points was 0.65mm. In the second stage, a total of 320 transverse cutting planes and 640 longitudinal cutting planes were planned by the algorithm. Among them, the number of horizontal plane planning effects of grade A, B, and C were 318(99.38%), 1(0.31%), and 1(0.31%), respectively. The longitudinal planning effects of grade A, B, and C were 622(97.18%), 1(0.16%), and 17(2.66%), respectively. Conclusions: In this study, we propose a method for automatic surgical path planning of laminectomy based on the localization of key points in CT images. The results showed that the method achieved satisfactory results. More studies are needed to confirm the reliability of this approach in the future.
title Automatic laminectomy cutting plane planning based on artificial intelligence in robot assisted laminectomy surgery
topic Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
Robotics
url https://arxiv.org/abs/2312.17266