Luo, H., Yin, D., Zhang, S., Xiao, D., He, B., Meng, F., Zhang, Y., Cai, W., He, S., Zhang, W., Hu, Q., Guo, H., Liang, S., Zhou, S., Liu, S., Sun, L., Guo, X., Fang, C., Liu, L., & Jia, F. (2020). Augmented reality navigation for liver resection with a stereoscopic laparoscope. Computer Methods and Programs in Biomedicine, 187, 文章 105099. https://doi.org/10.1016/j.cmpb.2019.105099
Luo, Huoling ; Yin, Dalong ; Zhang, Shugeng 等. / Augmented reality navigation for liver resection with a stereoscopic laparoscope. 在: Computer Methods and Programs in Biomedicine. 2020 ; 卷 187.
@article{9fc1f497f6c34a8d896c3d28bf8988f0,
title = "Augmented reality navigation for liver resection with a stereoscopic laparoscope",
abstract = "Objective: Understanding the three-dimensional (3D) spatial position and orientation of vessels and tumor(s) is vital in laparoscopic liver resection procedures. Augmented reality (AR) techniques can help surgeons see the patient's internal anatomy in conjunction with laparoscopic video images. Method: In this paper, we present an AR-assisted navigation system for liver resection based on a rigid stereoscopic laparoscope. The stereo image pairs from the laparoscope are used by an unsupervised convolutional network (CNN) framework to estimate depth and generate an intraoperative 3D liver surface. Meanwhile, 3D models of the patient's surgical field are segmented from preoperative CT images using V-Net architecture for volumetric image data in an end-to-end predictive style. A globally optimal iterative closest point (Go-ICP) algorithm is adopted to register the pre- and intraoperative models into a unified coordinate space; then, the preoperative 3D models are superimposed on the live laparoscopic images to provide the surgeon with detailed information about the subsurface of the patient's anatomy, including tumors, their resection margins and vessels. Results: The proposed navigation system is tested on four laboratory ex vivo porcine livers and five operating theatre in vivo porcine experiments to validate its accuracy. The ex vivo and in vivo reprojection errors (RPE) are 6.04 ± 1.85 mm and 8.73 ± 2.43 mm, respectively. Conclusion and Significance: Both the qualitative and quantitative results indicate that our AR-assisted navigation system shows promise and has the potential to be highly useful in clinical practice.",
keywords = "Augmented reality, Laparoscopic surgery, Liver resection, Surgical navigation",
author = "Huoling Luo and Dalong Yin and Shugeng Zhang and Deqiang Xiao and Baochun He and Fanzheng Meng and Yanfang Zhang and Wei Cai and Shenghao He and Wenyu Zhang and Qingmao Hu and Hongrui Guo and Shuhang Liang and Shuo Zhou and Shuxun Liu and Linmao Sun and Xiao Guo and Chihua Fang and Lianxin Liu and Fucang Jia",
note = "Publisher Copyright: {\textcopyright} 2019 Elsevier B.V.",
year = "2020",
month = apr,
doi = "10.1016/j.cmpb.2019.105099",
language = "English",
volume = "187",
journal = "Computer Methods and Programs in Biomedicine",
issn = "0169-2607",
publisher = "Elsevier Ireland Ltd",
}
Luo, H, Yin, D, Zhang, S, Xiao, D, He, B, Meng, F, Zhang, Y, Cai, W, He, S, Zhang, W, Hu, Q, Guo, H, Liang, S, Zhou, S, Liu, S, Sun, L, Guo, X, Fang, C, Liu, L & Jia, F 2020, 'Augmented reality navigation for liver resection with a stereoscopic laparoscope', Computer Methods and Programs in Biomedicine, 卷 187, 105099. https://doi.org/10.1016/j.cmpb.2019.105099
Augmented reality navigation for liver resection with a stereoscopic laparoscope. / Luo, Huoling; Yin, Dalong; Zhang, Shugeng 等.
在:
Computer Methods and Programs in Biomedicine, 卷 187, 105099, 04.2020.
科研成果: 期刊稿件 › 文章 › 同行评审
TY - JOUR
T1 - Augmented reality navigation for liver resection with a stereoscopic laparoscope
AU - Luo, Huoling
AU - Yin, Dalong
AU - Zhang, Shugeng
AU - Xiao, Deqiang
AU - He, Baochun
AU - Meng, Fanzheng
AU - Zhang, Yanfang
AU - Cai, Wei
AU - He, Shenghao
AU - Zhang, Wenyu
AU - Hu, Qingmao
AU - Guo, Hongrui
AU - Liang, Shuhang
AU - Zhou, Shuo
AU - Liu, Shuxun
AU - Sun, Linmao
AU - Guo, Xiao
AU - Fang, Chihua
AU - Liu, Lianxin
AU - Jia, Fucang
N1 - Publisher Copyright:
© 2019 Elsevier B.V.
PY - 2020/4
Y1 - 2020/4
N2 - Objective: Understanding the three-dimensional (3D) spatial position and orientation of vessels and tumor(s) is vital in laparoscopic liver resection procedures. Augmented reality (AR) techniques can help surgeons see the patient's internal anatomy in conjunction with laparoscopic video images. Method: In this paper, we present an AR-assisted navigation system for liver resection based on a rigid stereoscopic laparoscope. The stereo image pairs from the laparoscope are used by an unsupervised convolutional network (CNN) framework to estimate depth and generate an intraoperative 3D liver surface. Meanwhile, 3D models of the patient's surgical field are segmented from preoperative CT images using V-Net architecture for volumetric image data in an end-to-end predictive style. A globally optimal iterative closest point (Go-ICP) algorithm is adopted to register the pre- and intraoperative models into a unified coordinate space; then, the preoperative 3D models are superimposed on the live laparoscopic images to provide the surgeon with detailed information about the subsurface of the patient's anatomy, including tumors, their resection margins and vessels. Results: The proposed navigation system is tested on four laboratory ex vivo porcine livers and five operating theatre in vivo porcine experiments to validate its accuracy. The ex vivo and in vivo reprojection errors (RPE) are 6.04 ± 1.85 mm and 8.73 ± 2.43 mm, respectively. Conclusion and Significance: Both the qualitative and quantitative results indicate that our AR-assisted navigation system shows promise and has the potential to be highly useful in clinical practice.
AB - Objective: Understanding the three-dimensional (3D) spatial position and orientation of vessels and tumor(s) is vital in laparoscopic liver resection procedures. Augmented reality (AR) techniques can help surgeons see the patient's internal anatomy in conjunction with laparoscopic video images. Method: In this paper, we present an AR-assisted navigation system for liver resection based on a rigid stereoscopic laparoscope. The stereo image pairs from the laparoscope are used by an unsupervised convolutional network (CNN) framework to estimate depth and generate an intraoperative 3D liver surface. Meanwhile, 3D models of the patient's surgical field are segmented from preoperative CT images using V-Net architecture for volumetric image data in an end-to-end predictive style. A globally optimal iterative closest point (Go-ICP) algorithm is adopted to register the pre- and intraoperative models into a unified coordinate space; then, the preoperative 3D models are superimposed on the live laparoscopic images to provide the surgeon with detailed information about the subsurface of the patient's anatomy, including tumors, their resection margins and vessels. Results: The proposed navigation system is tested on four laboratory ex vivo porcine livers and five operating theatre in vivo porcine experiments to validate its accuracy. The ex vivo and in vivo reprojection errors (RPE) are 6.04 ± 1.85 mm and 8.73 ± 2.43 mm, respectively. Conclusion and Significance: Both the qualitative and quantitative results indicate that our AR-assisted navigation system shows promise and has the potential to be highly useful in clinical practice.
KW - Augmented reality
KW - Laparoscopic surgery
KW - Liver resection
KW - Surgical navigation
UR - http://www.scopus.com/inward/record.url?scp=85073003483&partnerID=8YFLogxK
U2 - 10.1016/j.cmpb.2019.105099
DO - 10.1016/j.cmpb.2019.105099
M3 - Article
C2 - 31601442
AN - SCOPUS:85073003483
SN - 0169-2607
VL - 187
JO - Computer Methods and Programs in Biomedicine
JF - Computer Methods and Programs in Biomedicine
M1 - 105099
ER -
Luo H, Yin D, Zhang S, Xiao D, He B, Meng F 等. Augmented reality navigation for liver resection with a stereoscopic laparoscope. Computer Methods and Programs in Biomedicine. 2020 4月;187:105099. doi: 10.1016/j.cmpb.2019.105099