Patch-based classification of gallbladder wall vascularity from laparoscopic images using deep learning

被引:14
作者
Loukas, Constantinos [1 ]
Frountzas, Maximos [2 ]
Schizas, Dimitrios [3 ]
机构
[1] Natl & Kapodistrian Univ Athens, Med Sch, Lab Med Phys, Athens, Greece
[2] Natl & Kapodistrian Univ Athens, Med Sch, Hippocrat Gen Hosp, Propaedeut Dept Surg 1, Athens, Greece
[3] Natl & Kapodistrian Univ Athens, Med Sch, Laikon Gen Hosp, Dept Surg 1, Athens, Greece
关键词
Surgery; Laparoscopic cholecystectomy; Gallbladder; Vascularity; Classification; CNN; Deep learning; FEATURES; VIDEOS; RECOGNITION;
D O I
10.1007/s11548-020-02285-x
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Purpose In this study, we propose a deep learning approach for assessment of gallbladder (GB) wall vascularity from images of laparoscopic cholecystectomy (LC). Difficulty in the visualization of GB wall vessels may be the result of fatty infiltration or increased thickening of the GB wall, potentially as a result of cholecystitis or other diseases. Methods The dataset included 800 patches and 181 region outlines of the GB wall extracted from 53 operations of the Cholec80 video collection. The GB regions and patches were annotated by two expert surgeons using two labeling schemes: 3 classes (low, medium and high vascularity) and 2 classes (low vs. high). Two convolutional neural network (CNN) architectures were investigated. Preprocessing (vessel enhancement) and post-processing (late fusion of CNN output) techniques were applied. Results The best model yielded accuracy 94.48% and 83.77% for patch classification into 2 and 3 classes, respectively. For the GB wall regions, the best model yielded accuracy 91.16% (2 classes) and 80.66% (3 classes). The inter-observer agreement was 91.71% (2 classes) and 78.45% (3 classes). Late fusion analysis allowed the computation of spatial probability maps, which provided a visual representation of the probability for each vascularity class across the GB wall region. Conclusions This study is the first significant step forward to assess the vascularity of the GB wall from intraoperative images based on computer vision and deep learning techniques. The classification performance of the CNNs was comparable to the agreement of two expert surgeons. The approach may be used for various applications such as for classification of LC operations and context-aware assistance in surgical education and practice.
引用
收藏
页码:103 / 113
页数:11
相关论文
共 31 条
[1]   A computer vision technique for automated assessment of surgical performance using surgeons' console-feed videos [J].
Baghdadi, Amir ;
Hussein, Ahmed A. ;
Ahmed, Youssef ;
Cavuoto, Lora A. ;
Guru, Khurshid A. .
INTERNATIONAL JOURNAL OF COMPUTER ASSISTED RADIOLOGY AND SURGERY, 2019, 14 (04) :697-707
[2]   Prediction of laparoscopic procedure duration using unlabeled, multimodal sensor data [J].
Bodenstedt, Sebastian ;
Wagner, Martin ;
Muendermann, Lars ;
Kenngott, Hannes ;
Mueller-Stich, Beat ;
Breucha, Michael ;
Mees, Soeren Torge ;
Weitz, Juergen ;
Speidel, Stefanie .
INTERNATIONAL JOURNAL OF COMPUTER ASSISTED RADIOLOGY AND SURGERY, 2019, 14 (06) :1089-1095
[3]   Predicting the quality of surgical exposure using spatial and procedural features from laparoscopic videos [J].
Derathe, Arthur ;
Reche, Fabian ;
Moreau-Gaudry, Alexandre ;
Jannin, Pierre ;
Gibaud, Bernard ;
Voros, Sandrine .
INTERNATIONAL JOURNAL OF COMPUTER ASSISTED RADIOLOGY AND SURGERY, 2020, 15 (01) :59-67
[4]   Video-based surgical skill assessment using 3Dconvolutional neural networks [J].
Funke, Isabel ;
Mees, Soeren Torge ;
Weitz, Juergen ;
Speidel, Stefanie .
INTERNATIONAL JOURNAL OF COMPUTER ASSISTED RADIOLOGY AND SURGERY, 2019, 14 (07) :1217-1225
[5]   Automatic detection of surgical haemorrhage using computer vision [J].
Garcia-Martinez, Alvaro ;
Vicente-Samper, Jose Maria ;
Sabater-Navarro, Jose Maria .
ARTIFICIAL INTELLIGENCE IN MEDICINE, 2017, 78 :55-60
[6]  
Han B, 2018, ADV NEUR IN, V31
[7]   Risk Factors for Difficult Laparoscopic Cholecystectomy in Acute Cholecystitis [J].
Hayama, Satoshi ;
Ohtaka, Kazuto ;
Shoji, Yasuhito ;
Ichimura, Tatsunosuke ;
Fujita, Miri ;
Senmaru, Naoto ;
Hirano, Satoshi .
JSLS-JOURNAL OF THE SOCIETY OF LAPAROENDOSCOPIC SURGEONS, 2016, 20 (04)
[8]   An opportunity in difficulty: Japan-Korea-Taiwan expert Delphi consensus on surgical difficulty during laparoscopic cholecystectomy [J].
Iwashita, Yukio ;
Hibi, Taizo ;
Ohyama, Tetsuji ;
Honda, Goro ;
Yoshida, Masahiro ;
Miura, Fumihiko ;
Takada, Tadahiro ;
Han, Ho-Seong ;
Hwang, Tsann-Long ;
Shinya, Satoshi ;
Suzuki, Kenji ;
Umezawa, Akiko ;
Yoon, Yoo-Seok ;
Choi, In-Seok ;
Huang, Wayne Shih-Wei ;
Chen, Kuo-Hsin ;
Watanabe, Manabu ;
Abe, Yuta ;
Misawa, Takeyuki ;
Nagakawa, Yuichi ;
Yoon, Dong-Sup ;
Jang, Jin-Young ;
Yu, Hee Chul ;
Ahn, Keun Soo ;
Kim, Song Cheol ;
Song, In Sang ;
Kim, Ji Hoon ;
Yun, Sung Su ;
Choi, Seong Ho ;
Jan, Yi-Yin ;
Shan, Yan-Shen ;
Ker, Chen-Guo ;
Chan, De-Chuan ;
Wu, Cheng-Chung ;
Lee, King-Teh ;
Toyota, Naoyuki ;
Higuchi, Ryota ;
Nakamura, Yoshiharu ;
Mizuguchi, Yoshiaki ;
Takeda, Yutaka ;
Ito, Masahiro ;
Norimizu, Shinji ;
Yamada, Shigetoshi ;
Matsumura, Naoki ;
Shindoh, Junichi ;
Sunagawa, Hiroki ;
Gocho, Takeshi ;
Hasegawa, Hiroshi ;
Rikiyama, Toshiki ;
Sata, Naohiro .
JOURNAL OF HEPATO-BILIARY-PANCREATIC SCIENCES, 2017, 24 (04) :191-198
[9]   SV-RCNet: Workflow Recognition From Surgical Videos Using Recurrent Convolutional Network [J].
Jin, Yueming ;
Dou, Qi ;
Chen, Hao ;
Yu, Lequan ;
Qin, Jing ;
Fu, Chi-Wing ;
Heng, Pheng-Ann .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 2018, 37 (05) :1114-1126
[10]   Region of Interest Detection in Fundus Images Using Deep Learning and Blood Vessel Information [J].
Kim, Jongwoo ;
Candemir, Sema ;
Thoma, George R. ;
Chew, Emily Y. .
2018 31ST IEEE INTERNATIONAL SYMPOSIUM ON COMPUTER-BASED MEDICAL SYSTEMS (CBMS 2018), 2018, :357-362