Evolution of a surgical system using deep learning in minimally invasive surgery (Review).

IF 2.3 Q3 MEDICINE, RESEARCH & EXPERIMENTAL
Kenbun Sone, Saki Tanimoto, Yusuke Toyohara, Ayumi Taguchi, Yuichiro Miyamoto, Mayuyo Mori, Takayuki Iriyama, Osamu Wada-Hiraike, Yutaka Osuga
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引用次数: 2

Abstract

Recently, artificial intelligence (AI) has been applied in various fields due to the development of new learning methods, such as deep learning, and the marked progress in computational processing speed. AI is also being applied in the medical field for medical image recognition and omics analysis of genomes and other data. Recently, AI applications for videos of minimally invasive surgeries have also advanced, and studies on such applications are increasing. In the present review, studies that focused on the following topics were selected: i) Organ and anatomy identification, ii) instrument identification, iii) procedure and surgical phase recognition, iv) surgery-time prediction, v) identification of an appropriate incision line, and vi) surgical education. The development of autonomous surgical robots is also progressing, with the Smart Tissue Autonomous Robot (STAR) and RAVEN systems being the most reported developments. STAR, in particular, is currently being used in laparoscopic imaging to recognize the surgical site from laparoscopic images and is in the process of establishing an automated suturing system, albeit in animal experiments. The present review examined the possibility of fully autonomous surgical robots in the future.

Abstract Image

在微创手术中使用深度学习的手术系统的发展(综述)。
近年来,由于新的学习方法的发展,如深度学习,以及计算处理速度的显著进步,人工智能(AI)已被应用于各个领域。人工智能也被应用于医学领域,用于医学图像识别和基因组组学分析等数据。近年来,人工智能在微创手术视频中的应用也有所进展,相关研究也在不断增加。在本综述中,重点选择了以下主题的研究:i)器官和解剖鉴定,ii)器械鉴定,iii)程序和手术阶段识别,iv)手术时间预测,v)确定合适的切口线,vi)外科教育。自主手术机器人的发展也在取得进展,其中智能组织自主机器人(STAR)和RAVEN系统是报道最多的发展。尤其是STAR,目前正被用于腹腔镜成像,从腹腔镜图像中识别手术部位,并且正在建立一个自动缝合系统,尽管是在动物实验中。本综述探讨了未来全自动手术机器人的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biomedical reports
Biomedical reports MEDICINE, RESEARCH & EXPERIMENTAL-
CiteScore
4.10
自引率
0.00%
发文量
86
期刊介绍: Biomedical Reports is a monthly, peer-reviewed journal, dedicated to publishing research across all fields of biology and medicine, including pharmacology, pathology, gene therapy, genetics, microbiology, neurosciences, infectious diseases, molecular cardiology and molecular surgery. The journal provides a home for original research, case reports and review articles.
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