MURAGAKI Yoshihiro
   Department   School of Medicine(Tokyo Women's Medical University Hospital), School of Medicine
   Position   Visiting Professor
Article types Original article
Language Japanese
Peer review Peer reviewed
Title Surgical Process Identification System in Awake Surgery for Glioma
Domestic / ForeginDomestic
Volume, Issue, Page pp.87-101
Publication date 2020/05/26
概要 In In glioma surgery, maximum tumor resection and minimum complications are important. An expert surgeon will resect the glioma based on the brain structure, function and tumors position for each patient, by considering postoperative complications. Therefore, surgical process, work contents and duration for surgery vary by cases. Hence, it is difficult for young surgeons and surgical staff to understand the surgical process and to predict the next work in awake surgery for glioma. We aim to develop the system of the surgical process identification that enables young surgeons and surgical staffs to understand surgical processes of the expert surgeon in real time during awake surgery for glioma. In this study, we propose of surgical workflow modeling and identification of surgical processes methods using machine learning by information obtained from multiple medical devices in operating room. First, we created the surgical processes model which has 12 surgical processes. Seconds, we automatically extract the features of surgical processes using medical image processing and YOLO (You Only Look Once) of machine learning by pre- and intra- operative images, navigation system’s log and microscope video. Finally, surgical processes are identified using HHMM (Hierarchical Hidden Markov Model). To estimate our method, we evaluated surgical process identification accuracy and system processing time using 3 past clinical cases in awake surgery for glioma. Then, it was shown that surgical processes can be identified with high accuracy while ensuring the real time properties of a processing.
DOI 10.5759/jscas.22.87
文献番号 U525300001<Pre 医中誌>