Artificial intelligence-based technology for enhancing the quality of simulation, navigation, and outcome prediction for hepatectomy

H. Shinkawa, T. Ishizawa
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引用次数: 2

Abstract

In the past decade, artificial intelligence (AI)-based technology has been applied to develop a simulation and navigation system and a model for predicting surgical outcomes in hepatobiliary surgery. To identify the intrahepatic vascular structure and accurate liver segmentation and volumetry, AI technology has been applied in three-dimensional (3D) simulation software. Recently, 3D and 4D printing have been used as innovative technologies for tissue and organ fabrication, medical education, and preoperative planning. AI can empower 3D and 4D printing technologies. Attempts have been made to use AI technology in augmented reality for navigating and performing intraoperative ultrasound. To predict surgical outcomes and postoperative early recurrence in patients with hepatocellular carcinoma, a deep learning model can be useful. Indocyanine green fluorescence imaging is used in hepatobiliary surgery to visualize the anatomy of the bile duct, hepatic tumors, and hepatic segmental areas. AI technology was applied to fuse intraoperative near-infrared fluorescence and visible images. Preoperative simulation, intraoperative navigation, and models to predict surgical outcomes using AI technology can be clinically applied in hepatobiliary surgery. As shown in reliable and robust clinical studies, AI can be a useful tool in clinical practice to improve the safety and efficacy of hepatobiliary surgery.
基于人工智能的技术,用于提高肝切除术的模拟、导航和结果预测的质量
在过去的十年中,基于人工智能(AI)的技术已被应用于开发肝胆手术的模拟和导航系统以及预测手术结果的模型。为了识别肝内血管结构和准确的肝脏分割和体积测量,在三维(3D)仿真软件中应用了AI技术。最近,3D和4D打印已被用作组织和器官制造、医学教育和术前规划的创新技术。人工智能可以增强3D和4D打印技术。已经尝试在增强现实中使用人工智能技术来导航和执行术中超声。为了预测肝细胞癌患者的手术结果和术后早期复发,深度学习模型可能是有用的。吲哚菁绿荧光成像在肝胆外科手术中用于显示胆管、肝脏肿瘤和肝节段区域的解剖结构。采用人工智能技术融合术中近红外荧光与可见光图像。利用人工智能技术进行术前模拟、术中导航、建立手术预后预测模型等,可在肝胆手术中得到临床应用。可靠而有力的临床研究表明,人工智能可以成为临床实践中提高肝胆手术安全性和有效性的有用工具。
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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